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Food and Beverage Chemistry/Biochemistry
Chemical Characteristics of Sangiovese Wines from California and Italy of 2016 Vintage Valentina Canuti, Scott Clifford Frost, Larry Lerno, Courtney K. Tanabe, Jerry A Zweigenbaum, Bruno Zanoni, and Susan E. Ebeler J. Agric. Food Chem., Just Accepted Manuscript • Publication Date (Web): 13 Feb 2019 Downloaded from http://pubs.acs.org on February 13, 2019
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Journal of Agricultural and Food Chemistry
Chemical Characteristics of Sangiovese Wines from California and Italy of 2016 Vintage Valentina Canuti*†, Scott Frost‡,§, Larry A. Lerno§, Courtney K. Tanabe‡, Jerry Zweigenbaum#, Bruno Zanoni†, Susan E. Ebeler‡,§ †GESAAF-Department of Agriculture, Food and Forestry Systems, University of Florence, via Donizetti 6, 50144, Florence, Italy. ‡Department of Viticulture and Enology, University of California, Davis, One Shields Avenue, Davis, CA, 95616, United States. §Food Safety and Measurement Facility, University of California, Davis, One Shields Avenue, Davis, CA, 95616, United States. #Agilent
Technologies, Inc., 2850 Centerville Rd, Wilmington, DE, 19808, United States.
Corresponding Author *Telephone: +39 055 2755517; Fax: +39 055 2755500; E-mail:
[email protected] ACS Paragon Plus Environment
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ABSTRACT: Sangiovese is the most widespread Italian red cultivar and constitutes the basis of
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internationally known wines such as Chianti and Brunello di Montalcino. Outside of Europe,
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Argentina is the largest producer, followed by the United States. This study sought to define and
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compare 2016 vintage Sangiovese wine composition from various production regions in California
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and Italy. Forty-six commercial Sangiovese wines from California and Italy were analyzed for
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volatile profile, color, phenolic and elemental content. This study demonstrates that it is possible to
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determine regional differences among wines based on these chemical profiles. However, some
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Californian and Italian wine had similar chemical compositions. In order to compare Californian
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and Italian wines, Californian wine reference models were developed using the chemical parameters
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from Sangiovese wines, performing a Soft Independent Modelling of Class Analogy (SIMCA). To
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our knowledge, this is the first time that an extensive regionality study has been attempted for
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Sangiovese wines.
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KEYWORDS: elemental analysis; phenolic compounds; Sangiovese; SIMCA; volatile profile;
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wine regionality.
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INTRODUCTION Sangiovese is the most cultivated red grape variety in Italy (53,865 ha representing 7.9 % of
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the national vineyard in 2017) and, constitutes the basis of internationally known wines such as
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Chianti, Brunello di Montalcino, and Nobile di Montepulciano.1,2 Furthermore, Sangiovese is
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certified for the production of several DOCG (Denominazione di Origine Controllata e Garantita),
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DOC (Denominazione di Origine Controllata) and IGT (Indicazione Geografica Tipica) wines all
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over Italy. Worldwide, Sangiovese has been introduced in different countries and regions by Italian
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immigrants. According to 2017 data, Argentina is the largest cultivator of Sangiovese outside
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Europe (1,805 ha), followed by the United States with 802 ha, mostly in California (727 ha), and
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Australia with 438 ha.2 According to the California Wine Institute3 and to the Cal-Italia.com,4 there
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were 4,653 wineries in California by 2017 and 133 of them produce Sangiovese wines (around 3%
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of California’s wineries). Despite its global distribution and importance, there is a lack of
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international studies on Sangiovese grapes and wines. The most substantial scientific works were
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presented at the International Symposium of Sangiovese5,6 between 2000 and 2004 in Italy These
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works showed the influence of regionality and terroir on the flavor profile of Sangiovese wine.7
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According to the International Organisation of Vine and Wine (OIV) vitivinicultural terroir
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is a holistic concept which refers to an area in which collective knowledge of the interactions
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between the identifiable physical and biological environment and applied vitivinicultural practices
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provides distinctive characteristics for the products originating from this area. Regionality, terroir,
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or typicality, is the unique characteristic that the geography, geology, and climate of a particular
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place bestows upon a wine. It can provide recognition of a style specific to an area in a
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representative wine sample.8 Terroir includes growing conditions, microbial differences in
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vineyards9 and wineries as well as common regional winemaking practices. However, in the
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popular media and wine marketing efforts, discussions of the term terroir are further simplified and
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commonly limited to defining a delimited geographical area with distinct soils as it is believed soils ACS Paragon Plus Environment
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are responsible for the unique sensory characteristics of wine. Additionally, soil differences are
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thought to provide key points of differentiation when comparing wines from differing terroirs.10
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A recently proposed a multivariate approach related the typicality of a red Protected
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Denomination of Origin wine to its chemical composition and the chemical composition of the
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original grapes.11 Chemical characteristics of grapes and wines demonstrate that their quality is
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geographically controlled since they frequently vary with the geographical origin of the grapes or
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with the place of the manufacture of wine.12 For these reasons, when comparing wines produced
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from the same cultivar, it is essential to understand how varietal characteristics are recognized.
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Grape derived volatile compounds can define the typicality of a wine and represent an expression of
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terroir. For example, different soils can influence the aromatic composition of grapes,13 and
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therefore distinguish countries by chemical means. This could be useful in the elucidation of
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regionality, in particular when studying wines on a broader scale.14
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There have been numerous studies characterizing regional chemical differences in wines.
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Typical characterization of wines includes volatile compounds,15 polyphenols16-17 and metals.18 In
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particular, a first-time extensive regional study on Malbec was conducted in Argentina and
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California to show the compositional differences of the wines between the two countries;8 a similar
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study19 was conducted on Cabernet Sauvignon wines from Australia to investigate the role of
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geographic origin on sensory and chemical characteristics
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Due to a large number of compounds present in wine, discrimination and classification
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could be better accomplished by grouping compounds by chemical family.20 For this purpose, some
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authors combine various physicochemical parameters of wine, such as trace and major
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elements,21,22 polyphenolic fingerprint,23 amino acids,24 and volatile compounds.25 The elemental
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profile of finished wines, in particular, has been used to identify the geographical origin.21,26-29
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Numerous studies were performed to explain the differences between wines from different regions
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within a country, but only a few of them have compared elemental composition to distinguish
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various countries of origin.29,30 ACS Paragon Plus Environment
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This study sought to define and compare the regional chemical characteristics of Californian
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and Italian Sangiovese wines from the 2016 vintage. Two aspects were considered: a) chemical
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characterization and differentiation of wines for the definition and comparison of Sangiovese wines
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from California and Italy; b) the expression of Sangiovese varietal character in two different regions
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by creating predictive models based on compositional profiles. To our knowledge, this is the first
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extensive regionality study attempted for Sangiovese wines.
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MATERIALS AND METHODS Wines. Forty-six commercial wines from the 2016 harvest (20 from Italy and 26 from
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California) were collected to be representative samples of both regions. All the wines used in this
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study were sourced from commercial producers and required to be 100% Sangiovese, no oak barrel
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aged. As the wines were made solely from Sangiovese grapes under commercial winemaking
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conditions, the differences in composition should reflect the regional styles. A minimum of two
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bottles was received for each wine sample. The wines were coded as reported in Table 1. The pH,
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titratable acidity and alcohol content were evaluated following the OIV official analytical
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methods.31 In California, the wines were chosen from four different American Viticultural Areas
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(AVAs); Central Coast, Sierra Foothills, North Coast, and the San Joaquin Valley region of
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California. The AVAs incorporate the following counties/regions: Amador County, Paso Robles,
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Napa Valley, San Joaquin Valley, Sonoma County, Mendocino County, and Alameda County. In
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Italy, the wines were chosen from two different regions, Tuscany and Emilia Romagna,
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representing the wine areas of Chianti, Chianti Classico, Montalcino and Maremma. In this study,
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we had no control over the viticultural practices and winemaking except for asking for a “best
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representation of the Sangiovese”.
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Volatiles analysis by Headspace SPME GC-MS. Free volatile compounds were quantitated according to the method developed previously.32 Thirty-three compounds were ACS Paragon Plus Environment
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identified in the wines (Table 2) and verified by analyzing reference compounds, except for
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(2R,5R)-2,6,6-trimethyl-10-methylidene-1-oxaspiro[4.5]dec-8-ene (vitispirane), ethyl 2-
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methylbutanoate, 1,1,4a-trimethyl-3,4,4a,5,6,7-hexahydro-2(1H)-naphthalenone, ethyl dec-9-
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enoate, (6E)-7, 11-dimethyl-3-methylidenedodeca-1,6,10-triene (-farnesene), 1,1,6-trimethyl-1,2-
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dihydronaphthalene (TDN), and decanoic acid. Volatile standards ethyl acetate ≥ 99%, ethyl
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butanoate 99%, propan-1-ol ≥ 99.5%, 2-methylpropan-1-ol 99%, ethyl 3-methylbutanoate ≥ 99.7%,
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3-methylbutyl acetate ≥ 95%, 3-methylbutan-1-ol ≥ 99%, ethyl hexanoate 98%, hexyl acetate 99%,
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methyl octanoate 99%, octan-2-ol 99%, ethyl octanoate ≥ 98%, benzaldehyde 99%, ethyl nonanoate
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97%, ethyl decanoate ≥ 98%, 2-phenylethyl acetate 99%, ethyl dodecanoate ≥ 98%, octanoic acid ≥
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99%, were purchased from Aldrich (Milwaukee, WI, USA). 2-Phenylethanol, 99%, and octan-1-ol,
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99% were purchased from Sigma-Aldrich (St. Louis, MO, USA). Hexan-1-ol, 99.9%, and 3,7-
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dimethyloct-6-en-1-ol (-citronellol) 95% were purchased from Fluka (Sigma-Aldrich, St. Louis,
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MO, USA). (E)-1-(2,6,6-Trimethylcyclohexa-1,3-dien-1-yl) but-2-en-1-one (-damascenone), 1.1–
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1.3% (w/w) in absolute ethanol 99.5%, ethyl 2-hydroxypropanoate 99% and diethyl butanedioate
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(diethyl succinate) 99% were purchased from SAFC Supply Solution (Sigma-Aldrich, St. Louis,
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MO, USA). Hexanoic acid 99% was purchased from Acros Organics (Thermo Fisher Scientific,
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Geel, Belgium). The retention times of the authentic standards were matched to the compounds
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measured. The compounds were also verified using quantifier/qualifier ion ratios and published
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retention indices reported for a DB-Wax column. Chemical volatiles standard mixtures were
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prepared in a model wine solution consisting of 5 g/L of tartaric acid 99% (Sigma-Aldrich, St.
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Louis, MO, USA) dissolved in Milli-Q water, pH adjusted to 3.6 with NaOH (Sigma-Aldrich, St.
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Louis, MO, USA) and 12% v/v absolute ethanol. Water was purified through a Milli-Q Water
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System (Millipore, Billerica, MA, USA) prior to use. Absolute ethanol, 200 proof, was purchased
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from Rossville Gold Shield (Hayward, CA, USA).
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Standard concentrations were selected to bracket the concentrations of each individual compound in the wine samples. All standards were analyzed in triplicate. The peak area of each ACS Paragon Plus Environment
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standard (calculated as total ion), relative to the peak area of the octan-2-ol internal standard were
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plotted against the standard concentration to create a standard curve. All the compounds where the
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reference standards were not available were quantitated based on relative response to the octan-2-ol
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internal standard. The linear regression equations obtained were used to calculate the concentration
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(g/L) of each compound in the wine samples.
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Samples were prepared by transferring an 8 mL aliquot of wine to a 20 mL glass headspace
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sample vial containing 3 g of NaCl (Fisher Scientific, Fair Lawn, NJ, USA) then adding 5 L of the
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octan-2-ol internal standard solution (82 mg/L in ethanol solution), for a final concentration of 5.1 ×
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10−2 mg/L. The mixture was carefully shaken to dissolve the NaCl and then left for 1 h in the dark
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at room temperature (22 ± 1 °C) to equilibrate before the analysis. The SPME fiber used for the
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extraction was polydimethylsiloxane (PDMS), 100 m thickness, 23 gauge. The fiber was
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purchased from Supelco (Sigma-Aldrich, St. Louis, MO, USA) and thermally conditioned before
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the first use in accordance with the manufacturer’s recommendations.
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A Gerstel MPS2 autosampler (Gerstel, Baltimore, MD, USA) mounted to an Agilent 6890N
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gas chromatograph (Little Falls, DE, USA) paired with an Agilent 5975 mass selective detector
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constituted the analytical system for the GC-MS analysis. The software used was MSD
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ChemStation (G1701-90057, Agilent Technology, Little Falls, DE, USA). The prepared wine
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samples were warmed to 40 °C for 10 min before exposing the SPME fiber to the sample
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headspace. Headspace extraction times of 30 min, at the temperature of 40 °C, were performed with
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continuous stirring (500 rpm). Thermal desorption of analytes from the SPME fiber occurred during
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splitless injection of the fiber (straight glass liner, 0.8 mm I.D.) at 240 °C for 1 min. Following the
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SPME desorption, the inlet was switched to purge-on for the remainder of the GC-MS run, and the
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SPME fiber was conditioned for 9 min more before it was removed from the injector. There was no
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carry-over between samples observed with a 10 min desorption time.
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A DB-wax column (30 m x 0.25 mm O.D., 0.25 m film thickness, Agilent Technology, Little
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Falls, DE, USA) was used for all the analyses. Helium carrier gas was used with a total flow of 2.33 ACS Paragon Plus Environment
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mL/min (constant pressure). The oven parameters were as follows: initial temperature of 40 °C held
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for 4.0 min, followed by an increase to 80 °C at a rate of 2.5 °C/min, a second increase to 110 °C at
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a rate of 5 °C/min, and a final increase to 220 °C at a rate of 10°C/min. The oven was then held at
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220 °C for 5 min before returning to the initial temperature (40 °C). The total cycle time, including
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oven cool-down, was 50 min. The MS detector was operated in scan mode (mass range 50-200 m/z)
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and the transfer line to the MS system was maintained at 240 °C. All the wine samples were
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analyzed in triplicates.
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Color indices. Color intensity (CI) and hue (Hue) were measured according to the method
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of Glories33 and the total phenols index (TPI) as described by Ribereau-Gayon.34 CI was measured
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using a 1 mm path length quartz cell, and expressed as the sum of absorbances at 420 nm (A420),
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520 nm (A520), and 620 nm (A620). Wine Hue was measured using a 1 mm path length quartz cell,
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and expressed as the ratio between absorbance at 420 nm (A420) and 520 nm (A520). TPI was
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measured as absorbance at 280 nm using a 1 mm path length quartz cell and samples were diluted
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1:10 with Milli-Q water. The ultraviolet-visible (UV/Vis) absorbance of the samples were measured
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on an Agilent spectrophotometer Cary 8454 UV-Visible diode array detector and the software used
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was MSD ChemStation (G1701-90057, Agilent Technology, Little Falls, DE, USA). Milli-Q water
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was use as a reference. All the analyses were performed in triplicate.
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Phenolic analysis by UHPLC q-TOF MS. All wines were analyzed for monomeric
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phenolic and wine pigments using an Agilent 6545 quadrupole time-of-flight mass spectrometer (Q-
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TOF MS; Santa Clara, CA) equipped with a dual JetStream ESI source operated in positive ion
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mode and based on a previously published method.35 A modified solvent system and gradient was
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used for the analyses in order to obtain better chromatographic performance of the anthocyanins. A
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binary solvent system consisting of water + 1% formic acid (v/v) (mobile phase A) and acetonitrile
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+ 1% formic acid (v/v) (mobile phase B) was used and the gradient employed was: 0 min., 3% B;
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10 min., 80% B; 13 min., 80% B; 14 min., 3% B; 18 min., 3% B. Q-TOF MS tuning, source ACS Paragon Plus Environment
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conditions, and reference masses were the same as those presented in the previously published
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method.35 Aliquots of wine were taken from unopened bottles and spiked with decylglycoside (0.1
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g/mL) as an internal standard. Samples were centrifuged for 5 minutes at 15,000 rpm and the
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supernatant was collected for analysis. Data was analyzed in Agilent Profinder (ver. 8, Santa Clara,
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CA) using the find by formula algorithm with database matching, using an in-house database
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consisting of 88 grape and wine phenolics (Table 4). The retention time of the phenolics in the
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database were previously verified using authentic standard or by tandem mass spectrometry to
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confirm the identity of potential phenolics in the samples. All potential matches were confirmed by
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inspection of mass spectral data and retention time. Relative quantitation amongst samples was
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performed.
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Elemental analysis by ICP-MS/MS. Fifty-four elements were quantitated in each wine using a
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similar dilute-and-shoot method previously established/used at UC Davis36 (Table 5). The samples
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were diluted 5-fold with a solution of 3% nitric acid (70%, J.T. Baker, Ultrex II Ultrapure, Center
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Valley, PA, USA) and 1% hydrochloric acid (35%, Fisher Science, Optima Grade, Pittsburgh, PA,
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USA) in metal-free centrifuge tubes (VWR, Radnor, PA, USA). Ultrapure water (18 Mcm, EMD
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Millipore Bellerica, MA, USA) was used to prepare all solutions. In order to analyze elements with
200
high concentrations (>2 g/mL; Ca, Na, Mg, K, S, P), samples were also analyzed after a 250-fold
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dilution. Each wine was prepared and analyzed in triplicate at the two different dilution levels. The
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diluted samples were centrifuged (15,000 rpm) and stored at 4 C up to a week before analysis.
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Calibration functions were made using multi-element calibration standards 1, 2A, 3, and 4
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from SPEX CertiPrep (Metuchen, NJ, USA) and Calibration Mix Majors from Agilent
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Technologies (Santa Clara, CA, USA). Single-element standards were also used for elements: B
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(High Purity Standards, Charleston, SC, USA), K (Agilent Technologies, Santa Clara, CA, USA), S
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(High Purity Standards, Charleston, SC, USA), and P (SPEX CertiPrep, Metuchen, NJ, USA). An
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environmental spike mix was obtained from Agilent Technologies (Santa Clara, CA, USA) for a ACS Paragon Plus Environment
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recovery study. Due to the lack of certified reference material (CRM) prepared in a wine matrix,
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NIST 1643e Trace Metals in Water (Gaithersburg, MD, USA) was analyzed to monitor the method
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performance and accuracy and also aid in the selection of analysis mode for each element.
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All calibration standards, blanks, and CRMs were made with a matrix-matched solution of
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3% nitric acid, 1% hydrochloric acid, and 3% ethanol (200 proof, Koptec, King of Prussia, PA,
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USA) when analyzing the 5-fold diluted wine samples. Because the percentage of ethanol in the
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higher diluted samples was negligible, ethanol was not included in the calibration standards, blanks,
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and CRMs solutions while analyzing the higher diluted samples. In all cases, 6-point calibration
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curves were created for all quantitated elements.
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All elemental profiling was completed with an Agilent 8800 triple quadrupole inductively
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coupled plasma-mass spectrometer (ICP-QQQ, Santa Clara, CA, USA) equipped with a Scott-type
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double-pass quartz spray chamber, MicroMist concentric nebulizer (Glass Expansion, Pty, Ltd,
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Australia), and nickel sampler and skimmer cones. Internal Standard Mix 1 (SPEX CertiPrep,
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Metuchen, NJ, USA) diluted 1:10 in 1% nitric acid was constantly mixed with the sample stream
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during analysis. Elements were monitored in both single quadrupole MS and MS/MS modes in
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triplicate with 100 sweeps per replicate. To ensure the instrument performance and validity of the
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method, the ICP-QQQ was tuned and calibrated daily and a set of quality controls, consisting of
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continuous calibration blank (CCB), continuous calibration verification (CCV), and CRMs, were
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analyzed every 20 samples.
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The monitored elemental isotopes were quantitated using the MassHunter ICP-MS software
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(version 4.3, Agilent Technologies, Santa Clara, CA, USA). Limits of detection (LOD) were
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calculated according to the IUPAC from the analysis of 10 replicates of the lowest level calibration
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standards. A specific gas mode and isotope were selected for each element based on the LOD and
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reported background equivalent concentrations (BEC). For statistical testing, in all cases where the
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element concentration was measured below the LOD, a value of that element’s LOD/10 was
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Statistical analysis. Analysis of variance (ANOVA), considering country/growing region
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and replications as factors, and frequency distribution, analyzed by the Chi-square test, were
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performed using Statgraphics Centurion (Ver.XV, StatPoint Technologies, Warrenton, VA).
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Principal Component Analysis (PCA) and the Soft Independent Modelling of Class Analogy
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(SIMCA) were performed using Unscrambler (V9.1, CAMO Process AS, Oslo, Norway). PCA
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allows visualizing the information of the data set in a few principal components retaining the
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maximum possible variability within that set, the SIMCA method instead is a very useful modelling
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technique that builds a box for each category. With SIMCA, a PCA is applied to each group
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separately and provides additional information on the different groups such as the relevance of the
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different variables and measures of separation.
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The classification method (SIMCA) consisted in describing each class of samples (wines),
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identified by their chemical composition, in independent Principal Component Analysis (PCA)
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models. Wine samples were classified on the basis of their membership limit within the different
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PCA models.37
249 250
RESULTS AND DISCUSSION
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Chemical characterization and differentiation of Sangiovese wines from California and Italy.
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Volatile profile. Thirty-three volatile aroma compounds were identified and quantitated in
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both Californian and Italian Sangiovese wines using HS-SPME-GC-MS. Table 2 shows the
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compounds list and the ANOVA results comparing the differences between California and Italy,
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and regions within each country. No significant differences among the analytical replicates were
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observed for any volatile compounds (data not shown). Volatile aroma compounds were all
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significantly different (p-value < 0.05) between the wine from California and Italy, except for 2-
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methyl-1-propanol (#7), (2R,5R)-2,6,6-trimethyl-10-methylidene-1-oxaspiro[4.5]dec-8-ene
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(vitispirane I) (#16), benzaldehyde (#17), ethyl nonanoate (#19), ethyl decanoate (#21), (6E)-7,11-
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dimethyl-3-methylidenedodeca-1,6,10-triene (-farnesene) (#24), 1,1,6-trimethyl-1,2ACS Paragon Plus Environment
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dihydronaphthalene (TDN) (#25), (E)-1-(2,6,6-Trimethylcyclohexa-1,3-dien-1-yl)but-2-en-1-one
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(-damascenone) (#28) and ethyl dodecanoate (#29). The compounds vitispirane I, benzaldehyde,
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-farnesene, TDN and -damascenone are considered grape derived flavors.38 -Damascenone is a
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commonly identified norisoprenoid and has a floral/fruity odor with a reported aroma detection
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threshold in water of 9 ng/L.39,40 Vitispirane has an aroma note described as eucalpytus-like or
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camphoraceous and an aroma detection threshold in wine of 800 g/L.40,41 TDN contributes a
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characteristic diesel or kerosene-like aroma to aged Riesling and has an aroma detection threshold
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of 20 g/L.40,42 The norisoprenoids occur in grapes and wines predominately as glycosidically
269
bound precursors. Other authors7,10 have identified -damascenone in Sangiovese grapes and wines
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and TDN in Sangiovese wines. Benzaldehyde also originates in grape43 and in high concentrations
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it is associated with fruit aromas.44 -farnesene, an acyclic sesquiterpene related with floral
272
characteristics of wines, was previously found at trace levels in Syrah, Nero d’Avola and Frappato
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wines.45 Sesquiterpenes are originally from grapes.46 In this study, these data demonstrated that all
274
the Sangiovese wines have some common grape-derived volatile compounds and, thus, can be
275
related to the expression of the variety in California and Italy regions.
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Based on an ANOVA, only the compounds that were significantly different between
277
California and Italy were used to create PCA scores and loadings plots of the wine samples (Figure
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1 a and b). The first two dimensions of the PCA explained 49% of the variance in the data set. The
279
wines were divided in two groups corresponding to the Italian wines on the left side of the graph
280
and Californian wines on the right side (Figure 1a). Along the first PC (35% of the total explained
281
variance) the Italian wines were characterized by the compounds ethyl 2-methyl butanoate (#5),
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ethyl 3-methylbutanoate (#6), 3-methylbutan-1-ol (#9), 1,1,4a-trimethyl-3,4,4a,5,6,7-hexahydro-
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2(1H)-naphthalenone (#18) and 2-phenylethanol (#31) that explained between 50 and 100% of the
284
variance according to the correlation loadings plot in Figure 1b. Italian wines also had higher
285
amounts of 3,7-dimethyloct-6-en-1-ol (-citronellol) (#26) compared to the California wines. The
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California wines, on the right side of Figure 1a, were characterized by 2-methylpropyl acetate (#2),
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hexyl acetate (#11), ethyl 2-hydroxypropanoate (ethyl lactate) (#12), hexan-1-ol (#13), octan-1-ol
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(#20), octanoic acid (#32) and decanoic acid (#33), that explained between 50 and 100% of the
289
variance as shown in the correlation loadings plot (Figure 1b). The results demonstrate that the
290
Californian and the Italian wines are separated into two groups mostly according to the fermentative
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volatiles, which were generally higher in the California wines.
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A similar analysis was carried out for the Californian and the Italian wines separately to
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determine if the different wine regions within each country could be distinguished from each other.
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Only the volatiles that were significantly different among regions for the California wines were
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used for the analysis. Figure 2 a and b shows the PCA scores and correlation loadings plots for the
296
volatile compounds for Sangiovese wines from California. Along the first PC (27% of variance
297
explained) the wines were separated according to the different amounts of ethyl acetate (#1), 2-
298
methylpropyl acetate (#2), ethyl 2-methylbutanoate (#5), 2-methylpropan-1-ol (#7), ethyl 2-
299
hydroxypropanoate (ethyl lactate) (#12); the wines on the right side of the graph are richer in these
300
compounds. Along the second PC (22%) the wines were associated with higher amounts of ethyl
301
butanoate (#3), ethyl hexanoate (#10), hexyl acetate (#11), methyl octanoate (#14), ethyl octanoate
302
(#15), ethyl decanoate (#21), 3,7-dimethyloct-6-en-1-ol (-citronellol) (#26), and ethyl dodecanoate
303
(#29), which explains 50-100% of the variance. In general wines from Amador County (AM) and
304
the North Coast (NV, Napa Valley; ME, Mendocino; RV, Redwood Valley) were distinguished
305
from each other. However, other regions/AVAs could not be completely distinguished from these
306
two areas.
307
The Italian wines were also evaluated, and no clear separations based on growing regions
308
were obtained (figure not shown). Overall < 50% of the total variance was explained indicating that
309
volatiles alone may not differentiate the wines. The Italian wines all came from Tuscany (with the
310
exception of two wines from Emilia Romagna). The Tuscany region in Italy comprises a defined
311
region and thus might have a more uniform composition within the region compared to other ACS Paragon Plus Environment
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regions in Italy. The California wines represent a number of different regions that have greater
313
diversity in climate, soil, and elevation than that represented by the Tuscan region.
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314 315
Color indices. CI, Hue, and TPI were used to discriminate the wine samples from California
316
and Italy. All three indices were highly significant according to ANOVA. A PCA was used to
317
visualize the difference between the wines from California and Italy (Figure 3 a and b) and the first
318
two PCs explained 98% of the total variance. The Sangiovese Italian wines were mostly on the right
319
side of the plot and were characterized by a high CI and a high TPI; on the left side of the plot, the
320
California Sangiovese wines were characterized by a high Hue measurement. These differences
321
between the two groups of wine could be explained by the data in Figure 4 (a, b and c) and Table 3
322
that showed the minimum and maximum, 25% and 75% percentiles, median, average and standard
323
deviation for the three different color indices. Italian wines had a higher CI and TPI with an average
324
of 17.52 and 56.79, respectively, compared to the Californian wines with average values of 10.20
325
and 41.33, respectively. However, there were seven Italian wines that were not distinguished from
326
the Californian wines showing/inferring that they have similar color indices (Figure 3). The values
327
shown in Table 3 were consistent with other findings for Sangiovese wines.47
328
Phenolic composition. Seventy-four phenolic compounds were identified in the Sangiovese
329
wines (Table 4) but only 47 were significantly different between Californian and Italian wines
330
according to the ANOVA (p < 0.05). Within each region, a significant difference in phenolic
331
composition was not found among the different Californian wines or Italian wines. A PCA was
332
performed using only the phenolics that were significantly different between the two regions
333
(Figure 5 a and b). The first two PCs explained 53% of the total variance. The wine samples were
334
positioned according different phenols compounds.
335
The Californian and Italian wines were separated in two different groups, with Italian wines
336
on the left side of the graph (Figure 5 a); these wines were mostly Sangiovese wines from the
337
Chianti Classico area (CC). These wines were characterized by the phenolic compounds malvidinACS Paragon Plus Environment
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glucoside-ethyl-epicatechin (#4), malvidin-glucoside-ethyl-catechin (#5), malvidin-glucoside-
339
pyruvic acid (vitisin A) (#12), catechin-malvidin-glucoside (# 33), malvidin-glucoside- epicatechin
340
(#35), (+)-catechin (#41), (+)-(epi)gallocatechin (#43), quercetin (#46), myricetin (#47), dimer
341
(#68), and dimer (#69).
342
On the right side (Figure 5 b), the Californian wines were characterized mostly by
343
compounds kaempferol 3-O-galactoside (#48), kaempferol 3-O-glucoside (#49), kaempferol 3-O-
344
glucuronide (#50), quercetin 3-O-galactoside (#51), and quercetin 3-O-glucoside (#52). Some of the
345
Italian Sangiovese wines, e.g., those from the Chianti area (CH) and Montalcino (MO), were also
346
positioned close to the California Sangiovese wines from the Amador county region (AM). This
347
could be a result of similarities in winemaking techniques among these regions and wineries in AM,
348
CH and MO, but further studies are needed to test this hypothesis.
349
One of the main characteristics distinguishing Sangiovese from other red wines is its
350
delicate pigment profile.48 In fact, regarding the relative abundance of anthocyanins, the pigments
351
were mainly represented by delphinidin-3-O-glucoside (DEL), cyanidin-3-O-glucoside (CYA),
352
peonidin-3-O-glucoside (PEO), petunidin-3-O-glucoside (PET) and malvidin-3-O-glucoside
353
(MAL). These are all very unstable and oxidizable phenols. In agreement with results reported
354
elsewhere,48,49 the more chemically stable acylated anthocyanins were found in very low amounts
355
(sum of total relative area below 2% of the total content in anthocyanins, data not shown).
356
Elemental profiling. A total of 54 elements in the mass range from 6-238 m/z were detected
357
in the 46 wines using the described ICP-QQQ method. Of these 54 elements, 38 were significantly
358
different between the Californian and Italian wines (p < 0.05) in the ANOVA (Table 5). K and Ca,
359
are natural components of grape, with K being the predominant element in Vitis vinifera juice;50 K
360
and Ca levels were not significantly different between California and Italy. Fe levels were also not
361
significantly different between the two regions. These findings are in contrast with other research
362
that reported that Fe, Ca and K could be used to characterize wines according to geographical
363
origin,51 because their concentrations in wines can be influenced by regional variations in fertilizing ACS Paragon Plus Environment
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practices and winemaking. Additionally, some authors52 considered that K and Fe were the key
365
elements to discriminate between two Andalusian Denomination of Origin fine wines.
366
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The OIV (Organisation Internationale de la Vigne et du Vin) has set maximum allowable
367
limits for some elements such as B (80 mg/L), Cu (1 mg/L), Zn (5 mg/L), As (0.2 mg/L), Cd (0.01
368
mg/L), and Pb (0.15 mg/L). All wines analyzed here were below the maximum acceptable limits
369
according to the OIV.
370
Only the 38 elements that were significantly different between the wines from California
371
and Italy were used in the PCA to obtain the elemental space of the studied wines, shown in Figure
372
6 a and b. The first two PCs explained 57% of the total variance. The wines were divided in two
373
groups corresponding to the Italian wines on the lower left side of the graph and Californian wines
374
on the right side (Figure 6 a). California wines from Amador County (CAM) tended to group
375
together in the upper half of the plot (Figure 6 a). Along the first PC (43% of the total explained
376
variance), the wines were separated based on their concentration of the elements Yb, Tm, Er, Mo,
377
Nb, La, Re, Ce, Ho, Ce, Ga and U on the right side of the plot; according to the correlation loadings
378
plot (Figure 6 b) these elements explained between 50-100% of variance. The Italian wines on the
379
left side were principally characterized by higher levels of Lu, Cu and Pb. Along the second
380
dimension PC2, (14% of the total explained variance), the wines were separated based on their
381
levels in Na and Sr (top side of plot). The Na soil content can depend on the distance from the sea
382
or from soil composition.51 From these results, Californian wines resulted to be richer in most of the
383
measured elements.
384 385
Californian Sangiovese wine models and evaluation of the variety expression in two different
386
regions.
387
In order to better understand similarities and differences that emerged from the PCA
388
between wines from California and Italy, California Sangiovese wine models were built using
389
SIMCA. This analysis was applied to compare the Sangiovese wines from the different regions of ACS Paragon Plus Environment
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Italy to the different wines in California in order to understand whether the California wine regions
391
produced wines with similar chemical profiles to the Italian wines. Italian wines were used as the
392
basis of comparison since Italy is the country of origin for the Sangiovese cultivar.
393
Five models were built by applying PCA to the 26 Californian wines. The variables
394
considered for the models were the volatiles, phenolic, color indices, elements and combined
395
variable profiles as reported in Table 6. The models were then used to classify a total of 20 Italian
396
Sangiovese wines (11 wines from Chianti Classico area, 4 from Chianti area, 2 from Montalcino
397
area, 1 from Maremma and 2 from Emilia Romagna) according to their chemical composition. The
398
SIMCA analysis reported in Table 6 allowed the classification of a different number of Italian
399
wines for each of the California Sangiovese wine models. When using the volatile compounds alone
400
as variables to create the model, it was observed that the highest numbers of Italian wines matched:
401
9 wines from Chianti Classico area, 3 from Chianti area, 2 from Montalcino, 1 from Emilia
402
Romagna and 1 from Maremma area. The phenols model was the least representative for the Italian
403
wines since only four wines fit this model. The vintage and climate could have a greater impact
404
than terroir on wine color and polyphenols as evidenced in a recent study on Sangiovese grapes and
405
wines through three different years.53 For these reasons an extended study on more vintages could
406
be carried out to better understand the differences related to the different terroir or the climatic
407
conditions. Further studies also needed to evaluated the influence of the winemaking methods on
408
the wines composition.
409
This study sought to define and compare the regional chemical characteristics of Sangiovese
410
wines from two regions, California and Italy, by combining multiple chemical analyses. The
411
findings demonstrated that the California Sangiovese wines have common characteristics with the
412
Italian wines, particularly related to the volatile composition. Thus the chemical composition of the
413
Sangiovese variety can be largely maintained when it is cultivated abroad, as the wines in each
414
region retain a common set of characteristics. These compounds were grape derived and can be
415
associated with the varietal character of Sangiovese in both regions. The results of this study ACS Paragon Plus Environment
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expand our current knowledge of Sangiovese wines and the contribution of regional characteristics
417
to the composition of wine.
418
By combining multiple chemical analyses, volatile profile, color indices, phenol
419
composition and elemental profiles, it was possible to describe the differences and similarities
420
between the two regions. Volatile and elemental profiles were most effective at characterizing the
421
wine from the two regions.
422
This is the first time that an extensive regionality study has been attempted for Sangiovese
423
wines made in California and Italy. The results of this study expand our current knowledge of
424
Sangiovese wines and the contribution of regional characteristics to the composition of wine. Wines
425
from the 2016 vintage were considered for the study. In the future, comparison among two or more
426
vintages would help, to better understand the year to year variability between the wines produced in
427
the two regions. Future studies to characterize the sensory profiles and relate the chemical
428
properties to sensory characteristics are also needed.
429 430
AKNOWLEDGMENTS
431
We thank all the Californian and Italian wineries and the “Vignaioli di Radda Association” for
432
supplying and donate the Sangiovese wine samples.
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REFERENCES
438
(1) Bergamini, C.; Caputo, A. R.; Gasparro, M.; Perniola, R.; Cardone, M. F.; Antonacci, D.
439
Evidences for an alternative genealogy of ‘Sangiovese’. Molecular Biotech. 2013, 53(3), 278-
440
288.
441
(2) Distribution of the world’s grapevine varieties. OIV Focus 27 February 2017. URL
442
(http://www.oiv.int/en/oiv-life/the-distribution-of-the-worlds-grapevine-varieties-new-oiv-
443
study-available)
444
(3) California Wine Institute. URL (https://www.wineinstitute.org)
445
(4) Cal-Italia.com URL (http://cal-italia.com)
446
(5) Various authors. In Il Sangiovese vitigno tipico e internazionale: identità e peculiarità.
447
Proceedings of the 2nd International Sangiovese Symposium, Florence 17-19 November 2004,
448
Ed. Arsia Firenze.
449 450 451 452 453
(6) Various authors. In Il Sangiovese Proceedings of the 1st International Sangiovese Symposium, Florence 15-17 February 2000, Ed. Arsia Firenze. (7) Bertuccioli, M.; Rosi, I.; Canuti, V.; Giovani, G.; Picchi, M. La tipicità dei vini: il Sangiovese. Industria delle bevande. 2011, 233, 7-14. (8) King, E. S.; Stoumen, M.; Buscema, F.; Hjelmeland, A. K.; Ebeler, S. E.; Heymann, H.;
454
Boulton, R. B. Regional sensory and chemical characteristics of Malbec wines from Mendoza
455
and California. Food Chem. 2014, 143, 256-267.
456
(9) Knight, S.; Klaere, S.; Fedrizzi, B.; Goddard, M. R. Regional microbial signatures positively
457
correlate with differential wine phenotypes: evidence for a microbial aspect to terroir.
458
Scientific reports. 2015, 5, 14233.
ACS Paragon Plus Environment
19
Journal of Agricultural and Food Chemistry
459 460 461
Page 20 of 43
(10) Herderich, M.; Barter, S.; Black, C. A.; Bramley, R.; Capone, D.; Dry, P.; Siebert, T.; Zhang, P. Terroir effects on grape and wine aroma compounds. ACS Symp. Ser. 2015, 1203, 131−146. (11) Canuti, V.; Picchi, M.; Zanoni, B.; Fia, G.; Bertuccioli, M. A multivariate methodological
462
approach to relate wine to characteristics of grape composition: The case of typicality. Am. J.
463
Enol. Vitic. 2017, 68 (1), 49-59.
464 465
(12) Vaudour, E. The quality of grapes and wine in relation to geography: Notions of terroir at various scales. J. Wine Res. 2002, 13 (2), 117-141.
466
(13) Sabon, I.; De Revel, G.; Kotseridis, Y.;Bertrand, A. Determination of volatile compounds in
467
Grenache wines in relation with different terroirs in the Rhone Valley. J. Agric. Food Chem.
468
2002, 50 (22), 6341-6345.
469
(14) Heymann, H.; Robinson, A. L.; Buscema, F.; Stoumen, M. E.; King, E. S.; Hopfer, H.; R.B.
470
Boulton; Ebeler, S. E. Effect of region on the volatile composition and sensory profiles of
471
Malbec and Cabernet Sauvignon wines. ACS Symp. Ser. 2015, 109-122.
472
(15) Sabon, I.; de Revel, G.; Kotseridis, Y.; Bertrand, A. Determination of volatile compounds in
473
Grenache wines in relation with different terroirs in the Rhone Valley. J. Agric. Food Chem.
474
2002, 50 (22), 6341–6345
475
(16) Csomós, E.; Héberger, K.; Simon-Sarkadi, L. Principal component analysis of biogenic amines
476
and polyphenols in Hungarian wines. J. Agric. Food Chem. 2002, 50 (13), 3768–3774.
477
(17) Zanoni, B.; Siliani, S.; Canuti, V.; Rosi, I.; Bertuccioli, M. A kinetic study on extraction and
478
transformation phenomena of phenolic compounds during red wine fermentation. Int. J. Food
479
Sci. Tech. 2010, 45 (10), 2080-2088.
480
(18) Brainina, K. Z.; Stozhko, N. Y.; Belysheva, G. M.; Inzhevatova, O. V.; Kolyadina, L. I.;
481
Cremisini, C. Determination of heavy metals in wines by anodic stripping voltammetry with
482
thick-film modified electrode. Anal. Chim. Acta. 2004, 514 (2), 227–234. ACS Paragon Plus Environment
20
Page 21 of 43
Journal of Agricultural and Food Chemistry
483
(19) Robinson, A. L.; Adams, D. O.; Boss, P. K.; Heymann, H.; Solomon, P. S.; Trengove, R. D.
484
Influence of geographic origin on the sensory characteristics and wine composition of Vitis
485
vinifera cv. Cabernet Sauvignon wines from Australia. Am. J. Enol. Vitic. 2012, 63, 467−476.
486
(20) Serrano-Lourido, D.; Saurina, J.; Hernández-Cassou, S.; Checa, A. Classification and
487
characterisation of Spanish red wines according to their appellation of origin based on
488
chromatographic profiles and chemometric data analysis. Food Chem. 2012, 135 (3), 1425-
489
1431.
490
(21) Almeida, C.M.R.; Vasconcelos M.T.SD. Multielement composition of wines and their
491
precursors including provenance soil and their potentialities as fingerprints of wine origin. J.
492
Agric. Food Chem. 2003, 51 (16),4788–4798
493
(22) Gonzálvez, A; Llorens, A; Cervera, M.L.; Armenta, S.; De la Guardia, M. Elemental
494
fingerprint of wines from the protected designation of origin Valencia. Food Chem. 2009, 112
495
(1), 26–34.
496
(23) Makris, D.P.; Kallithraka, S.; Mamalos, A. Differentiation of young red wines based on
497
cultivar and geographical origin with application of chemometrics of principal polyphenolic
498
constituents. Talanta. 2006, 70 (5),1143–1152.
499
(24) Hernandez-Orte, P.; Cacho, J.F.; Ferreira, V. Relationship between varietal amino acid profile
500
of grapes and wine aromatic composition. Experiments with model solutions and chemometric
501
study. J. Agric. Food Chem. 2002, 50 (10), 2891–2899.
502
(25) Ivanova, V.; Stefova, M.; Vojnoski, B.; Stafilov, T.; Bìrò, I.; Bufa, A.; Felinger, A.; Kilàr, F.
503
Volatile composition of Macedonian and Hungarian wines assessed by GC/MS. Food
504
Bioprocess Technol. 2013, 6 (6) 1609–1617.
505 506
(26) Ashurst, P. R.; Dennis, M. J. In Analytical Methods of Food Authentication, Springer Science & Business Media, Eds. Blackie: London, U.K., 1998; 368 pp.
ACS Paragon Plus Environment
21
Journal of Agricultural and Food Chemistry
507 508 509 510
Page 22 of 43
(27) Coetzee, P. P.; Van Jaarsveld, F. P.; Vanhaecke, F. Intraregional classification of wine via ICPMS elemental fingerprinting. Food Chem. 2014, 164, 485-492. (28) Saurina, J. Characterization of wines using compositional profiles and chemometrics. Trends Anal. Chem. 2010, 29 (3), 234-245.
511
(29) Serapinas, P.; Venskutonis, P. R.; Aninkevičius, V.; Ežerinskis, Ž.; Galdikas, A.; Juzikienė, V.
512
Step by step approach to multi-element data analysis in testing the provenance of wines. Food
513
Chem. 2008, 107 (4), 1652-1660.
514 515 516 517 518
(30) Baxter, M. J.; Crews, H. M.; Dennis, M. J.; Goodall, I.; Anderson, D. The determination of the authenticity of wine from its trace element composition. Food Chem. 1997, 60 (3), 443-450. (31) OIV, Compendium of international methods of wine and must analysis. International Organisation of Vine and Wine: Paris, France, 2009, 154-196. (32) Canuti, V.; Conversano, M.; Calzi, M. L.; Heymann, H.; Matthews, M. A.; Ebeler, S. E.
519
Headspace solid-phase microextraction–gas chromatography–mass spectrometry for profiling
520
free volatile compounds in Cabernet Sauvignon grapes and wines. J. Chrom. A. 2009, 1216
521
(15), 3012-3022.
522 523 524 525 526
(33) Glories, Y. La couler des vins rouges. II Partie – mesure, origine et interpretation. Connaiss. la Vigne du Vin. 1984, 18, 253–271. (34) Ribereau-Gayon, P. Le dosage des composés phénoliques totaux dans les vins rouges. Chim. Anal. 1970, 52, 627–631. (35) Bokulich, N.; Collins, T.; Masarweh, C.; Allen, G.; Heymann, H.; Ebeler, S. E.; Mills, D. A.
527
Associations among wine grape microbiome, metabolome, and fermentation behavior suggest
528
microbial contribution to regional wine characteristics. MBio. 2016, 7 (3), e00631-16.
ACS Paragon Plus Environment
22
Page 23 of 43
529
Journal of Agricultural and Food Chemistry
(36) Hopfer, H.; Nelson, J.; Collins, T. S.; Heymann, H.; Ebeler, S. E. (2015). The combined impact
530
of vineyard origin and processing winery on the elemental profile of red wines. Food Chem.
531
2015, 172, 486-496.
532 533 534 535 536 537 538 539 540 541 542 543
(37) Wold, S.; Sjostrom, M. SIMCA: a method for analyzing chemical data in terms of similarity and analogy. Chemometr Theory Appl. 1977, 52, 243-282. (38) Ebeler, S. E. (2001). Analytical chemistry: Unlocking the secrets of wine flavor. Food Rev. Int. 2001, 17 (1), 45-64. (39) Strauss, C. R.; Wilson, B.; Anderson, R.; Williams, P. J. Development of precursors of C13 nor-isoprenoid flavorants in Riesling grapes. Am. J. Enol. Vitic. 1987, 38 (1), 23-27. (40) Ohloff, G. Importance of minor components in flavors and fragrances. Perfum. Flav. 1978, 3, 11. (41) Simpson, R. F. Aroma and compositional changes in wine with oxidation, storage and ageing. Vitis. 1978, 17 (3), 274-287. (42) Simpson, R. F. 1, 1, 6-Trimethyl-1, 2-dihydronaphthalene-important contributor to bottle aged bouquet of wine. Chem. Ind. 1978, 1, 37.
544
(43) Rosillo, L.; Salinas, M. R.; Garijo, J.; Alonso, G. L. Study of volatiles in grapes by dynamic
545
headspace analysis: Application to the differentiation of some Vitis vinifera varieties. J.
546
Chrom. A. 1999, 847 (1), 155-159.
547
(44) Spillman, P. J.; Sefton, M. A.; Gawel, R. The effect of oak wood source, location of seasoning
548
and coopering on the composition of volatile compounds in oak‐matured wines. Aust. J. Grape
549
Wine Res. 2004, 10 (3), 216-226.
550 551
(45) Cincotta, F.; Verzera, A.; Tripodi, G.; Condurso, C. Determination of sesquiterpenes in wines by HS-SPME coupled with GC-MS. Chromatography. 2015, 2 (3), 410-421.
ACS Paragon Plus Environment
23
Journal of Agricultural and Food Chemistry
552 553 554
(46) May, B.; Wüst, M. Temporal development of sesquiterpene hydrocarbon profiles of different grape varieties during ripening. Flav. Fragr. J. 2012, 27 (4), 280-285. (47) Canuti, V.; Puccioni, S.; Giovani, G.; Salmi, M.; Rosi, I.; Bertuccioli, M. Effect of oenotannin
555
addition on the composition of Sangiovese wines from grapes with different characteristics.
556
Am. J. Enol. Vitic. 2012, 63, 220–231
557
Page 24 of 43
(48) Mattivi, F.; Scienza, A.; Failla, O.; Villa, P.; Anzani, R.; Tedesco, G.; Gianazza, E.; Righetti,
558
P. Vitis vinifera − a chemotaxonomic approach: anthocyanins in the skin. Vitis (Special Issue)
559
1990, 29, 119−133.
560
(49) Canuti, V.; Puccioni, S.; Storchi, P.; Zanoni, B.; Picchi, M.; Bertuccioli, M. Enological
561
eligibility of grape clones based on the SIMCA method: the case of the Sangiovese cultivar
562
from Tuscany. Ital. J. Food Sci. 2018, 30 (1), 184-199.
563 564
(50) Marengo, E.; Aceto, M. Statistical investigation of the differences in the distribution of metals in Nebbiolo-based wines. Food Chem. 2003, 81 (4), 621-630.
565
(51) Latorre, M. J.; Garcia-Jares, C.; Medina, B.; Herrero, C. Pattern recognition analysis applied to
566
classification of wines from Galicia (Northwestern Spain) with certified brand of origin. J.
567
Agric. Food Chem. 1994, 42 (7), 1451-1455.
568
(52) Álvarez, M.; Moreno, I. M.; Jos, Á. M.; Cameán, A. M.; González, A. G. Study of mineral
569
profile of Montilla-Moriles “fino” wines using inductively coupled plasma atomic emission
570
spectrometry methods. J. Food Comp. Anal. 2007, 20 (5), 391-395.
571
(53) Priori, S.; Pellegrini, S.; Perria, R.; Puccioni, S.; Storchi, P.; Valboa, G.; Costantini, E. A.
572
Scale effect of terroir under three contrasting vintages in the Chianti Classico area (Tuscany,
573
Italy). Geoderma. 2019, 334, 99-112.
574 575
(54) Humpf, H. U.; Schreier, P. Bound aroma compounds from the fruit and the leaves of blackberry (Rubus laciniata L.). J. Agric. Food Chem. 1991, 39, 1830−1832. ACS Paragon Plus Environment
24
Page 25 of 43
576
Journal of Agricultural and Food Chemistry
(55) Selli, S.; Cabaroglu, T.; Canbas, A.; Erten, H.; Nurgel, C.; Lepoutre, J. P.; Gunata, Z. Volatile
577
composition of red wine from cv. Kalecik Karasι grown in central Anatolia. Food Chem. 2004,
578
85 (2), 207-213.
579
(56) Kelebek, H.; Selli, S. Determination of volatile, phenolic, organic acid and sugar components
580
in a Turkish cv. Dortyol (Citrus sinensis L. Osbeck) orange juice. J. Sci. Food Agr. 2011, 91
581
(10), 1855-1862.
582
(57) Ugliano, M.; Moio, L. Free and hydrolytically released volatile compounds of Vitis vinifera L.
583
cv. Fiano grapes as odour-active constituents of Fiano wine. Anal. Chim. acta. 2008, 621 (1),
584
79-85.
585 586 587 588 589 590
(58) Fariña, L.; Villar, V.; Ares, G.; Carrau, F.; Dellacassa, E.; Boido, E. Volatile composition and aroma profile of Uruguayan Tannat wines. Food Res. Int. 2015, 69, 244-255. (59) Qian, M.; Reineccius, G. Identification of aroma compounds in Parmigiano-Reggiano cheese by gas chromatography/olfactometry. J. Dairy Sci. 2002, 85 (6), 1362-1369. (60) Wei, Z.; Liu, X.; Huang, Y.; Lu, J.; Zhang, Y. Volatile aroma compounds in wines from Chinese wild/hybrid species. J. Food Biochem. 2018, e12684, 1-20.
591 592 593 594 595 596 597 598 ACS Paragon Plus Environment
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Figure captions
600 601
Figure 1. Principal Component Analysis (PCA) scores (a) and loadings (b) plots of the volatile
602
compounds for Sangiovese wines from California and Italy. See Table 1 for wine codes and Table 2
603
for compounds numbers. a) score plot showing the volatile space of the wines. Italian wines in bold;
604
b) correlation loadings plot (ellipse represent the interval 50-100% of explained variance).
605 606
Figure 2. Principal Component Analysis (PCA) scores (a) and loadings (b) plots of the volatile
607
compounds for Sangiovese wines from California. See Table 1 for wine codes and Table 2 for
608
compounds numbers. a) score plot showing the volatile space of the wines. Same color represents
609
the same wine area; b) correlation loadings plot (ellipse represent the interval 50-100% of explained
610
variance).
611 612
Figure 3. Principal Component Analysis (PCA) scores (a) and loadings (b) plots of the color indices
613
(color intensity, hue and total phenols index) for Sangiovese wines from California and Italy. See
614
Table 1 for wine codes. a) score plot showing the color indices space of the wines. Italian wines in
615
bold; b) correlation loadings plot (ellipse represent the interval 50-100% of explained variance).
616 617
Figure 4. Color intensity (a), hue (b), and total phenols index (c) for Sangiovese wines from
618
California and Italy: minimum and maximum, 25% and 75% percentiles, and median.
619 620
Figure 5. Principal Component Analysis (PCA) scores (a) and loadings (b) plots of the phenolic
621
composition for Sangiovese wines from California and Italy. See Table 1 for wine codes and Table
622
4 for phenolic compounds codes. a) score plot showing the phenols space of the wines. Italian
623
wines in bold; b) correlation loadings plot (ellipses represent the interval 50-100% of explained
624
variance).
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Journal of Agricultural and Food Chemistry
625 626
Figure 6. Principal Component Analysis (PCA) scores (a) and loadings (b) plots of the elemental
627
profile for Sangiovese wines from California and Italy. See Table 1 for wine codes. a) score plot
628
showing the elemental space of the wines. Italian wines in bold; b) correlation loadings plot (ellipse
629
represent the interval 50-100% of explained variance).
630
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Page 28 of 43
Tables Table 1. Details of the wines in the study from California (USA) and Italy, including the regions of origin and standard chemical parameters.
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Journal of Agricultural and Food Chemistry
Wine code
State/Country
Region
pH
Titratable acidity (g/L tartaric acid)
Alcohol content (v/v%)
01CAM
California
Amador County (Sierra Foothills)
3.50
6.50
13.30
02CAM
California
Amador County (Sierra Foothills)
3.59
7.62
14.70
03CAM
California
Amador County (Sierra Foothills)
3.48
8.80
12.52
04CAM
California
Amador County (Sierra Foothills)
3.53
6.10
14.10
05CAM
California
Amador County (Sierra Foothills)
3.39
6.51
14.30
06CAM
California
Amador County (Sierra Foothills)
3.38
6.50
14.54
07CAM
California
Amador County (Sierra Foothills)
3.49
5.24
14.50
08CAM
California
Amador County (Sierra Foothills)
3.32
6.40
13.30
09CAM
California
Amador County (Sierra Foothills)
3.29
6.50
13.31
10CAM
California
Amador County (Sierra Foothills)
3.63
7.90
13.50
11CNV
California
Napa Valley (North Coast)
4.00
4.68
14.50
12CVN
California
Napa Valley (North Coast)
3.92
4.85
14.60
13CNV
California
Napa Valley (North Coast)
3.79
5.08
14.10
14CNV
California
Napa Valley (North Coast)
3.86
5.12
13.90
15CNV
California
Napa Valley (North Coast)
3.46
5.24
14.57
16CNV
California
Napa Valley (North Coast)
3.64
6.27
14.46
17CNV
California
Napa Valley (North Coast)
3.54
6.03
14.78
18CNV
California
Napa Valley (North Coast)
3.65
5.11
15.10
19CME
California
Mendocino (North Coast)
3.75
4.78
15.24
20CRV
California
Redwood Valley (North Coast)
3.48
4.94
14.70
21CSY
California
Santa Ynez Valley (Central Coast)
3.33
6.10
15.73
22CSY
California
Santa Ynez Valley (Central Coast)
3.50
5.27
14.77
23CMC
California
Monterey County (Central Coast)
3.61
4.32
13.44
24CSL
California
San Louis Obispo County, Paso Robles (Central Coast)
3.62
6.40
14.20
25CAC
California
Alameda County (Central Coast)
3.62
5.21
14.98
26CSJ
California
San Joaquin Valley (Inland Valleys)
4.04
3.94
14.48
27IER
Italy
Emilia Romagna
3.96
6.20
14.29
28IER
Italy
Emilia Romagna
4.08
4.7
14.30
29IMA
Italy
Maremma (Tuscany)
3.15
8.40
14.68
30IMO
Italy
Montalcino (Tuscany)
3.44
7.29
13.83
31IMO
Italy
Montalcino (Tuscany)
3.55
6.15
13.94
32ICH
Italy
Chianti (Tuscany)
3.58
7.00
12.57
33ICH
Italy
Chianti (Tuscany)
3.32
6.37
14.05
34ICH
Italy
Chianti (Tuscany)
3.39
5.73
14.04
35ICH
Italy
Chianti (Tuscany)
3.52
6.05
13.70
36ICC
Italy
Chianti Classico (Tuscany)
3.36
5.73
13.30
37ICC
Italy
Chianti Classico (Tuscany)
3.27
6.08
14.33
38ICC
Italy
Chianti Classico (Tuscany)
3.18
6.45
14.24
39ICC
Italy
Chianti Classico (Tuscany)
2.98
7.66
12.90
40ICC
Italy
Chianti Classico (Tuscany)
3.29
5.77
14.30
41ICC
Italy
Chianti Classico (Tuscany)
3.17
6.74
13.71
42ICC
Italy
Chianti Classico (Tuscany)
3.32
6.63
15.13
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43ICC
Italy
Chianti Classico (Tuscany)
3.05
8.00
13.32
44ICC
Italy
Chianti Classico (Tuscany)
3.22
7.03
14.11
45ICC
Italy
Chianti Classico (Tuscany)
3.37
6.21
13.81
46ICC
Italy
Chianti Classico (Tuscany)
3.06
7.97
14.00
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Journal of Agricultural and Food Chemistry
Table 2. A list of the compound measured in the HS-SPME-GC-MS, retention time, linear retention index (literature and calculated) and significance levels of main effects (95% significance level). Main effects
Compound #
1 2 3 4 5 6 7 8 9 10 11 12 13 14
15
16 17
18 19 20
Linear Retention Index (calculate d)
State/C ountry Califor nia vs Italy (pvalue)
Region within Califor nia (pvalue)
Region within Italy (pvalue)
Califor nia (averag e) g/L
Italy (aver age) g/L
8.00c 266.6 6c 280.7 8
Volatile compounds
Retention time (min)
Linear Retention Index (literature )
Ethyl acetate
3.189
890d
890
< 0.05
< 0.05
< 0.05
11.72c
5.904
1007e
1015
< 0.05
< 0.05
< 0.05
317.86c
6.656
1028f
1036
< 0.05
1040g
1042
< 0.05
< 0.05 0.3290 ns
464.03
6.860
< 0.05 0.8613 ns
7.190
1050f
1051
< 0.05
< 0.05
< 0.05
1852.11
7.740
1069d
1066
< 0.05
< 0.05
4.43
9.008
1085g
1101
< 0.05 0.2468 ns
< 0.05
< 0.05
353.45c
10.027
1132f
1123
< 0.05
< 0.05
< 0.05
2702.63
14.521
1230g
1217
< 0.05
< 0.05
318.74c
15.611
1220f
1238
< 0.05
< 0.05
17.611 Ethyl 2-hydroxypropanoate (ethyl lactate) 21.248
1270f
1276
< 0.05
< 0.05
< 0.05 0.1764 ns 0.5458 ns
1341d
1350
< 0.05
< 0.05
< 0.05
229.81c
21.977
1360f
1365
< 0.05
< 0.05
< 0.05
2717.51
134.5 3c 1544. 84
Methyl octanoate
23.381
1392
1395
< 0.05
< 0.05
< 0.05
23.02
22.93
Octan-2-olIS
24.786
< 0.05
< 0.05
< 0.05
885.26
548.6 5
0.9309 ns 0.4023 ns
0.8900 ns
1.60
2.26
< 0.05
0.5372 ns 0.8052 ns
7.88
7.47
< 0.05 0.2334 ns
< 0.05
< 0.05
12.50
18.84
< 0.05
1.79
2.11
< 0.05
< 0.05 0.8365 ns
19.64
8.95
< 0.05
< 0.05
54.82
54.63
2-Methylpropyl acetate Ethyl butanoate Propan-1-ol Ethyl 2-methylbutanoatea,b Ethyl 3-methylbutanoate 2-Methylpropan-1-ol 3-Methylbutyl acetate 3-Methylbutan-1-ol Ethyl hexanoate Hexyl acetate
Hexan-1-ol
Ethyl octanoate (2R,5R)-2,6,6-trimethyl10-methylidene-1oxaspiro[4.5]dec-8-ene (Vitispirane I)a,b Benzaldehyde 1,1,4a-trimethyl3,4,4a,5,6,7-hexahydro2(1H)-naphthalenonea,b Ethyl nonanoate Octan-1-ol
d
68.92c
442.11 457.39
25.01c 3422. 67 6.94 435.9 8c 1664. 83 357.6 0c 259.6 4 139.1 5
1433
25.318
1436f
1448
27.570
1515g
1517
27.670
1516d
1521
28.050
1537g
1537
28.250
1528e
1546
28.839
1565d
1571
30.438
1636f
1650
< 0.05 0.7831 ns
22
Diethyl butanedioate (Diethyl succinate)
31.057
1690e
1685
< 0.05
< 0.05
< 0.05
7310.92
5743. 65
23
Ethyl dec-9-enoatea,b
31.288
1675g
1697
< 0.05
< 0.05
< 0.05
29.37
34.44
1674e
1736
0.0579 ns
0.6796 ns
< 0.05
0.83
2.29
1748g
1758
0.6335 ns
< 0.05
< 0.05
1.34
1.31
1778f
1775
< 0.05
< 0.05
< 0.05
13.00
14.91
21
24 25 26
Ethyl decanoate
(6E)-7,11-dimethyl-3methylidenedodeca-1,6,10triene -Farnesene)a,b 31.870 1,1,6-Trimethyl-1,2dihydronaphthalene (TDN)a,b 32.209 3,7-dimethyloct-6-en-1-ol -Citronellol) 32.459
31 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
27
28 29 30 31 32 33 ISinternal
2-Phenylethyl acetate Phenethyl acetate) (E)-1-(2,6,6Trimethylcyclohexa-1,3dien-1-yl)but-2-en-1one -Damascenone) Ethyl dodecanoate Hexanoic acid 2-Phenylethanol Phenylethanol) Octanoic acid Decanoic acida,b
Page 32 of 43
< 0.05
< 0.05
0.0906 ns
178.19
135.9 4
0.9844 ns
0.0586 ns
0.61
0.54
1852
0.2371 ns 0.5880 ns
< 0.05
41.40
42.92
1855d
1874
< 0.05
< 0.05
28.61c
28.55c
34.487
1925f
1928
< 0.05
52.27c
36.250
2075d
2076
< 0.05
< 0.05 0.0650 ns
< 0.05 0.4791 ns 0.0743 ns 0.1178 ns
69.10c 3903. 17
38.835
2300d
2292
< 0.05
< 0.05
33.213
1814f
1829
33.332
1841d
1838
33.520
1851g
33.808
standard; ns indicates no statistical significant (p-values >
4100.84
< 0.05 25.06 a 0.05); expressed
16.26
as octan-2-ol
equivalents; bcompounds tentatively identified by matching to the NIST MS library spectra and comparison of Kovats’ retention indices (I) to literature values; cexpressed as mg/L; dhttp://www.odour.org.uk/; ehttp://www.pherobase.com; fwww.flavornet.org; gLinear
Retention
Index on a DB-WAX column were obtained from refs 54−60.
32 ACS Paragon Plus Environment
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Journal of Agricultural and Food Chemistry
Table 3. Color Intensity, Hue, and Total Phenols Index for Sangiovese wines from California and Italy: average and standard deviation. Color Intensity
Hue
Total Phenols Index
California
Italy
California
Italy
California
Italy
average
10.20
17.52
0.89
0.64
41.33
56.79
standard deviation
2.29
5.09
0.16
0.15
7.07
9.23
33 ACS Paragon Plus Environment
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Page 34 of 43
Table 4. A list of the phenol compounds measured in the Q-TOF-MS method with the corresponding main effect significance levels (95% significance level) and the average concentrations.
Main effect
Phenolic compounds
State/Country California - California vs (average) Italy (p-value) area
Italy (average) area
1
DecylglucosideIS
0.064 ns
479358
423823
2
Petunidin-glucoside-ethyl-epicatechin
< 0.05
155987
1102997
3
Petunidin-glucoside-ethyl-catechin
< 0.05
171833
444874
4
Malvidin-glucoside-ethyl-epicatechin
< 0.05
686417
3494086
5
Malvidin-glucoside-ethyl-catechin
< 0.05
1379386
9109046
6
Delphinidin-glucoside-acetaldehyde
< 0.05
336393
1297841
7
Peonidin-glucoside-acetaldehyde
0.912 ns
81591
92924
8
Petunidin-glucoside-acetaldehyde
0.5665 ns
3560671
46832
9
Malvidin-glucoside-acetaldehyde (Vitisin B)
< 0.05
5361196
16803270
10
Peonidin-glucoside-pyruvic acid
0.7681 ns
120291
138414
11
Petunidin-glucoside-pyruvic acid
< 0.05
677137
419515
12
Malvidin-glucoside-pyruvic acid (Vitisin A)
< 0.05
4169507
11376389
13
Malvidin-3-glucoside-acetone
0.9100 ns
225784
240425
14
Peonidin-3-glucoside-acetone
0.1144 ns
1120166
250024
15
Petunidin-3-glucoside-acetone
< 0.05
6969614
17752130
16
Cyanidin 3-O-glucoside
< 0.05
20020943
26861105
17
Peonidin-3-glucoside
0.0898 ns
44829061
58802091
18
Delphinidin-3-glucoside
0.9436 ns
18173279
17426104
19
Petunidin-3-glucoside
0.1271 ns
49600677
43952082
20
Malvidin-3-glucoside
0.0802 ns
91287104
88477312
21
Petunidin-glucoside-vinylcatechol
< 0.05
1252138
918384
22
Malvidin-glucoside-vinylcatechol (pinotin A)
0.1062 ns
1732527
1715150
23
Malvidin-glucoside-vinyl-catechin
< 0.05
407249
1294880
24
Malvidin-glucoside-vinyl-epicatechin
< 0.05
469974
518322
25
Peonidin-glucoside-vinylguaicol
< 0.05
6669776
4729136
26
Delphinidin-glucoside-vinylguaicol
0.6976 ns
720766
221724
27
Petunidin-glucoside-vinylguaicol
< 0.05
3294401
2112256
28
Malvidin-glucoside-vinylguaicol
< 0.05
2524034
1707442
29
Peo-glucoside-vineylphenol
< 0.05
711194
1529313
30
Petunidin-glucoside-vinylphenol
0.4896 ns
1588670
1268311
31
Malvidin-glucoside-vinylphenol (pigment A)
0.2275 ns
6579046
8976040
32
Malvidin-glucoside-vinylsyringol
0.1993 ns
268143
26719
33
Catechin-malvidin-glucoside (F-A type)
< 0.05
576701
1148212
34
Epicatechin-malvidin-glucoside (F-A type)
< 0.05
194981
498078
35
Malvidin-glucoside-catechin (A-F type)
< 0.05
119767
176353
36
Malvidin-glucoside-epicatechin (A-F type) Malvidin-glucoside-(epi)gallocatechin (F-A type)
< 0.05
128790
140035
0.1533 ns
292413
457423
Compound #
37
34 ACS Paragon Plus Environment
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Journal of Agricultural and Food Chemistry
38
Malvidin-glucoside-(epi)gallocatechin (A-F type)
0.2673 ns
55998
65464
39
Malvidin-glucoside-di(epi)catechin (F-A type)
0.0587 ns
57802
85576
40
Malvidin-glucoside-di(epi)catechin (A-F type)
< 0.05
146945
20061
41
(+)-Catechin
< 0.05
1436111
3374955
42
(-)-Epicatechin
< 0.05
2009848
3041230
43
(+)-(Epi)Gallocatechin
< 0.05
790536
1249277
44
(-)-Epicatechin 3-O-gallate
< 0.05
369169
15415
45
Kaempferol
< 0.05
3233349
2307194
46
Quercetin
< 0.05
7375499
11294235
47
Myricetin
< 0.05
983349
2448175
48
Kaempferol 3-O-galactoside
< 0.05
1029646
175791
49
Kaempferol 3-O-glucoside
< 0.05
2119228
143320
50
Kaempferol 3-O-glucuronide
< 0.05
559271
180572
51
Quercetin 3-O-galactoside
< 0.05
2262031
841163
52
Quercetin 3-O-glucoside
< 0.05
7765399
673766
53
Quercetin 3-O-glucuronide
< 0.05
6825996
4869161
54
Myricetin 3-O-glucoside
< 0.05
1520276
502442
55
Quercetin 3-O-rutinoside
< 0.05
200463
-
56
Ellagic acid
< 0.05
119084
88247
57
Gentisic acid
< 0.05
213441
358835
58
Gallic acid
0.9567 ns
432900
461043
59
p-Coumaric acid
0.2408 ns
193942
229460
60
Caffeic acid
0.1491 ns
142423
196426
61
Caffeoyl tartaric acid
0.1082 ns
3015650
105545
62
2-S-Glutathionyl caftaric acid
< 0.05
20254126
14396929
63
Vanillic acid
< 0.05
324432
237082
64
Syringic acid
< 0.05
474188
868926
65
Ferulic acid
0.6387 ns
38373
49536
66
pyranone-malvidin-glucoside
0.7717 ns
975363
70375
67
Dimer
< 0.05
7153257
5630402
68
Dimer
< 0.05
2711013
4544455
69
Dimer
0.2649 ns
1089776
1327254
70
Dimer
0.2758 ns
641146
646240
71
Dimer
< 0.05
2085092
3603043
72
Dimer
< 0.05
244361
345926
73
Resveratrol -glucoside
< 0.05
105308
693667
74
Piceatannol 3-O-glucoside
0.1984 ns
13828
24579
ISinternal
standard; ns indicates not statistically significant (p-values > 0.05)
35 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
Page 36 of 43
Table 5. Elements analyzed by ICP-MS, corresponding significance levels of main effects (95% significance level) and average concentrations for California and Italian wines. Main effects State/Country California vs Italy (p-value)
Italy (average) g/La
California (average) g/La
Li
0.9217 ns
0.0153a
0.0186a
Be
Element 7 9
< 0.05
0.0520
0.0934
B
0.0510 ns
5.6631
a
6.8537a
Al
0.7818 ns
0.1632a
0.1571a
Ti
0.3787 ns
0.0170
0.0184a
V
< 0.05
0.2215
0.5997
Cr
< 0.05
9.9840
7.6642
Fe
0.6046 ns
1.3932a
1.2847a
Co
< 0.05
2.6118
3.0725
Ni
< 0.05
0.0153a
0.0283a
Cu
< 0.05
0.0746
a
0.0432a
Zn
< 0.05
0.7099a
0.9303a
Ga
11 27 47 51 52 56 59 60 63 66 71
a
< 0.05
0.0291
0.0679
75->75
< 0.05
0.0078
3.2821
Rb
< 0.05
1.5166
a
1.9347a
Sr
< 0.05
0.6185a
0.9657a
Zr
0.1693 ns
0.9982
1.2777
Nb
< 0.05
0.0053
0.0103
Mo
< 0.05
0.8412
1.3358
< 0.05
0.9868
2.1057
Ru
0.9856 ns
0.0005
0.0005
Rh
0.9727 ns
0.0003
0.0002
Cd
< 0.05
0.1200
0.4012
Sb
0.0580 ns
0.0433
0.1807
Te
0.3824 ns
0.0019
0.0026
Cs
0.9142 ns
2.6638
13.5277
Ba
< 0.05
111.88
277.81
La
< 0.05
0.0087
0.0364
Ce
< 0.05
0.0225
0.0556
Pr
< 0.05
0.0019
0.0070
Nd
< 0.05
0.0110
0.0320
Sm
< 0.05
0.0013
0.0059
Eu
< 0.05
0.0041
0.0111
Gd
< 0.05
0.0030
0.0122
Dy
< 0.05
0.0040
0.0126
Ho
< 0.05
0.0009
0.0035
Er
< 0.05
0.0053
0.0163
Tm
< 0.05
0.0008
0.0032
Yb
< 0.05
0.0059
0.0227
As
85 88 90 93 95
Se
80->96 101 103 111 121 125 133 137 139 140 141 146 147 153 157 163 165 166 169 172
36 ACS Paragon Plus Environment
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Journal of Agricultural and Food Chemistry
Lu
< 0.05
0.1568
0.0526
Hf
< 0.05
0.0957
0.2046
Ta
< 0.05
0.0020
0.0209
W
0.1061 ns
0.0598
0.1346
Re
< 0.05
0.0091
0.0436
Tl
< 0.05
0.4680
0.5708
Pb
< 0.05
6.2458
1.7148
Th
0.6632 ns
0.0011
0.0016
U
< 0.05
0.0048
0.0135
Na
< 0.05
6.100
1.4057a
Mg
175 178 181 182 185 205 207 232 238 23 26
a
< 0.05
113.22a
135.99a
P
< 0.05
246.74
297.96a
32->48
S
0.2128 ns
124.88a
K
0.3687 ns
1007.82
1024.69a
0.2779 ns
78.288a
76.681a
31->47
39
Ca
44
aexpressed
a
134.02a a
as mg/L; ns indicates not statistically significant (p-values > 0.05)
37 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
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Table 6. Classification of the Sangiovese Italian wines using SIMCA as a function of the Sangiovese Californian wines (5% significance limit) and the different group of variables for model development (all variables, volatiles, phenols, color indices, and elements). The wines indicated with the symbol (●) fit the model, while (-) indicates Italian wines not fitting the model. Wine code
All variables
Phenols
Volatiles
Color indices
Elements
27IER
-
-
●
●
●
28IER
-
-
●
-
29IMA
●
-
30IMO
●
● ●
31IMO
●
-
●
●
●
32ICH
●
-
●
●
33ICH
-
-
●
●
34ICH
-
●
35ICH
-
●
●
●
36ICC
-
-
●
-
●
37ICC
-
-
●
-
-
38ICC
-
-
39ICC
●
-
●
40ICC
-
-
●
●
●
41ICC
-
●
-
●
42ICC
-
●
●
-
-
43ICC
-
-
●
-
44ICC
-
-
●
-
●
45ICC
-
-
●
-
●
46ICC
-
-
●
-
●
● ●
●
38 ACS Paragon Plus Environment
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Journal of Agricultural and Food Chemistry
Figure 1 a and b
Figure 2 a and b
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Journal of Agricultural and Food Chemistry
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Figure 3 a and b
40 ACS Paragon Plus Environment
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Journal of Agricultural and Food Chemistry
Figure 4 a, b and c
41 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
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Figure 5 a and b
Figure 6 a and b
42 ACS Paragon Plus Environment
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Journal of Agricultural and Food Chemistry
TOC graphic
43 ACS Paragon Plus Environment