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GC-MS metabolite profiling of extreme southern Pinot Noir wines: The effect of vintage, barrel maturation and fermentation dominate over vineyard site and clone selection Claudia Schueuermann, Bekzod Khakimov, Soeren Balling Engelsen, Phil J Bremer, and Patrick Joseph Silcock J. Agric. Food Chem., Just Accepted Manuscript • DOI: 10.1021/acs.jafc.5b05861 • Publication Date (Web): 09 Feb 2016 Downloaded from http://pubs.acs.org on February 14, 2016
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Journal of Agricultural and Food Chemistry
GC-MS metabolite profiling of extreme southern Pinot Noir wines: The effect of vintage, barrel maturation and fermentation dominate over vineyard site and clone selection
Claudia Schueuermanna, Bekzod Khakimovb, Søren B. Engelsenb, Phil Bremera and Patrick Silcocka*
a
Department of Food Science, University of Otago, P.O. Box 56, Dunedin, New Zealand
b
Spectroscopy and Chemometrics Group, Department of Food Science, University of Copenhagen,
Rolighedsvej 26, DK-1958 Fredriksberg C, Denmark
* Corresponding author (phone: +64 3 479 7564; e-mail address:
[email protected]).
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Abstract
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Wine is an extremely complex beverage that contains a multitude of volatile and non-volatile
3
compounds. This study investiged the effect of vineyard site and grapevine clone on the volatile
4
profiles of commercially produced Pinot Noir wines from Central Otago, New Zealand. Volatile
5
metabolites in Pinot Noir wines produced from five grapevine clones grown on six vineyard sites in
6
close proximity, over two consecutive vintages were surveyed using gas-chromatography mass
7
spectrometry (GC-MS). The raw GC-MS data was processed using parallel factor analysis
8
(PARAFAC2) and final metabolite data was analysed by principal component analysis (PCA).
9
Winemaking conditions, vintage and barrel maturation were found to be the most dominant factors.
10
The effects of vineyard site and clone were mostly vintage dependent. Although four compounds
11
including β-citronellol, homovanillyl alcohol, N(3-methylbutyl)acetamide and N(2-phenylethyl)
12
acetamide discriminated the vineyard sites independant of vintage, Pinot Noir wines from different
13
clones were only partially discriminated by PCA and marker compound selection remained
14
challenging.
15 16
Key words
17
GC-MS, PARAFAC2, vineyard site, clone, vintage, Pinot Noir, wine, VOC, volatile
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Introduction
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Recent developments in metabolomics coupled with analytical platforms such as Gas
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Chromatography-Mass Spectrometry (GC-MS), Liquid Chromatography-Mass Spectrometry
21
(LC-MS) and Nuclear Magnetic Resonance (NMR) have improved food and beverage
22
analysis and enabled the simultaneous detection of hundreds of metabolites. Thereby
23
improving the molecular understanding of food and beverages and providing new
24
opportunities to study the factors that impact on flavor, texture, aroma, color and nutritional
25
value. In this context wine metabolomics is becoming increasingly important to detect fraud,
26
identify flavor defects, to determine authenticity / origin or to assess quality. Wine is an
27
immensely complex beverage and even grape variety authentication can be a serious
28
challenge. Wine authentication becomes complex when factors such as geolocation, winery,
29
vineyard site, grapevine clone and vintage are present
30
unlikely in the near future, detailed knowledge about the compounds contributing to the wine
31
sensory properties may allow manipulation of wine character and optimization of quality.
32
An important term in wine tasting is typicity, it is used to describe the extent to which a wine
33
is typical of its style, variety, origin or vintage 5, 6. In the current project the term site-typicity
34
is defined as the expression of unique and typical vineyard site characteristics in wine that the
35
winemaker describes based on their historical knowledge. The wines from high typicity sites
36
are usually described as possessing higher levels of complexity in aroma and flavor,
37
compared to wines from low typicity sites.
38
Volatile organic compounds (VOC’s) in wine originate either from the grape itself (primary
39
or varietal aroma), or are generated during the winemaking process (secondary and tertiary
40
aroma). The concentration of VOC’s in wine can range between ng L-1 to g L-1 levels 7, 8. The
41
wide concentration range of VOC’s, their properties (e.g. polarity and volatility) and the
1-4
. While wine reconstitution seems
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properties of the wine matrix (e.g. pH and ethanol content) make wine aroma very complex
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and difficult to analyze.
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A multitude of compounds have been shown to be important in Pinot Noir wine aroma
45
including ethyl- and acetate esters, higher alcohols, volatile organic acids and mono-terpenes
46
9-12
47
alcohols, ethyl-, and acetate esters were identified by GC-MS analysis of liquid extracts of
48
commercial Pinot Noir wines from the Mt. Difficulty winery in Central Otago, New Zealand
49
12
50
were present above their perception threshold. Rutan et al.
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Mt. Difficulty Pinot Noir wine contained higher concentrations of volatile phenols, lactones,
52
varietal thiols, ethyl lactate and C13-norisoprenoids compared to the winery’s Estate wine
53
which contained higher amounts of monoterpenes, hexenols, fatty acids and ethyl esters. This
54
finding suggests that these compounds could be driving the differences between the premium
55
quality and Estate wines at Mt Difficulty.
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To study VOCs present in wines at low concentrations (ng L-1), prior sample enrichment is
57
often required. Over the last 10 years there has been significant growth in the use of sorption
58
methods for the extraction of volatile compounds from wine
59
(SPE), headspace solid-phase micro-extraction (HS-SPME) and stir-bar sorptive extraction
60
(SBSE) methodologies have proven to be sensitive and quick, with the added advantage of
61
avoiding the high solvent quantities required for liquid-liquid extractions
62
extractions have been shown to be appropriate for volatile extraction from wine with
63
polypropylene-divinylbenzene resins showing best recovery rates
64
analysis of the concentrated wine extracts by GC-MS is the method of choice due to its high
65
sensitivity and this approach has been widely applied in wine aroma studies 12, 13, 22-25.
. Previously, 51 key compounds including C13-norisoprenoids, mono-terpenes, higher
. However, no genuine impact odorants were found and only 22 of the detected compounds 12
reported that premium quality
13-16
. Solid-phase extraction
17, 18
. SPE
17, 19-21
. The subsequent
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However, the analysis of complex GC-MS data obtained on the VOCs in wine samples can
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be challenging due to a range of non-sample related artefacts introduced to the data during
68
sample preparation and data acquisition, including co-eluting peaks, low intensity peaks,
69
retention time shifts over runs and varying baselines. In order to conduct multivariate analysis
70
and identify compounds related to the investigated factor(s), data must be correctly aligned
71
and freed from outliers and artefacts 26. In this study the raw GC-MS data was processed by
72
PARAllel FACtor Analysis 2 (PARAFAC2) which increased the information extracted from
73
the data as de-convolution of overlapped and co-eluted peaks enabled the identification of
74
underlying compounds from crowded chromatographic regions, including low signal to noise
75
(S/N) ratio peaks and baseline inconsistencies 27-29.
76
The purpose of the current study was to survey the commercial Pinot Noir winemaking
77
process at the Mt. Difficulty winery in Bannockburn, Central Otago, New Zealand, in order
78
to reveal possible trends or patterns in the VOC profiles of the wines that may be responsible
79
for the site-typicity (vineyard site) and clonal characteristics that the winemaker describes.
80
The wines were sampled during the commercial winemaking process, which did not allow for
81
a balanced experimental design, but rather gave a holistic overview of the real commercial
82
winemaking process. Comprehensive GC-MS data was obtained for metabolite profiling of
83
VOCs in wine samples. Samples were analyzed by SPE-GC-MS and after PARAFAC2 data
84
processing the de-convoluted data (detected VOCs) was analyzed by principal component
85
analysis (PCA).
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Materials and Methods
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Vineyard sites. The vineyard sites sampled were owned and managed by Mt. Difficulty
88
Wines, located within an area of 13 km2 (Central Otago, Bannockburn, NZ) and under similar
89
viticulture practice and climatic conditions. Based on the winery’s historical knowledge, 6
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vineyard sites were chosen (Figure 1). These included 3 vineyard sites that express high site-
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typicity (vineyard site character) in the resulting wines (TG, PT and LG) and 3 vineyard sites
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that express less of this character in the wines (IN, F and BR). While wines from the high
93
typicity sites were usually produced as single vineyard wines, wines from the remaining low
94
typicity sites were usually blended amongst each other and with wines from the high typicity
95
sites (as stated by the winemaker). The volatile compositions of the wines originating from
96
the six sites (including 5 grapevine clones) were examined for two consecutive vintages
97
(2012 and 2013). In order to include the winemaking process as an impact factor on the
98
aroma of these wines, the wines were analyzed after fermentation (immediately pre-
99
barreling: PB) and after 4 months of barrel ageing, pre- malolactic fermentation (barreled
100
wines: BW). The VOCs of the wine samples were extracted by SPE, analyzed by GC-MS,
101
and the data extracted and analyzed using PARAFAC2 and PCA.
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Commercial winemaking process. Grapes were hand-picked (at around 25 °Brix) and
103
delivered to the winery to be processed immediately. After 60 – 100% of the grapes for each
104
treatment were de-stemmed (Table 1) and conveyed into stainless steel tanks, approximately
105
50 mg L-1 of SO2 was added (as potassium metabisulfite). Maceration (cold-soak) for
106
approximately 9 days at 5-10 °C was followed by heating to 18-20 °C to allow the indigenous
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yeast (no inoculation) to start alcoholic fermentation spontaneously. After fermentation and a
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period of post-fermentation maceration the wines were racked off, pressed and filled into 12
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to 24 French oak barrels per tank (sample batch). The barrels were of different age (used for
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at least the two previous vintages), brand, forest and toast level.
111
Wine samples. The samples taken from the tanks (sample batches) during the winemaking
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process are presented in Table 1. At Mt. Difficulty Wines, the decision about the combination
113
of clone and whole bunch for a single fermentation tank (from one vineyard site) is made by
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the winemaker and therefore does not necessarily match the preceding year. Samples taken
115
from the tank (pre-barreling) or from the barrel (pre-malolactic fermentation) were put in 750
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mL green glass bottles (BVS Burgundy wine bottle AG056, VinPro, NZ) which were purged
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with oxygen free, instrument grade nitrogen (BOC, New Zealand) and sealed with press-on
118
screw caps (Novatwist, Kauri, NZ). The samples were kept at -18 °C until required for
119
analysis.
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Materials. Pure water (18 MΩ·cm) was obtained from the water purification system Milli-Q
121
(Millipore, USA). Helium (instrument grade) and nitrogen (oxygen free, instrument grade)
122
were purchased from BOC (New Zealand). Chemicals and cartridges used in the following
123
methods were analytical grade and purchased from the following providers: Ethyl cinnamate,
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ethyl butyrate, isoamyl acetate and whisky lactone were purchased from Sigma-Aldrich
125
(USA). β-citronellol, 3-methyl butanol, 1-hexanol and 2-phenylethanol were purchased from
126
Fluka (Sigma-Aldrich, USA). Dichlormethane, furfural and LiChrolut EN cartridges (0.5 g
127
polypropylene-divinylbenzene resin, 6 mL reservoir) were purchased from Merck
128
(Germany). 3-mercapto-1-hexanol, octanoic acid and linalool were purchased from Acros-
129
Organics (Belgium), ethanol from BDH (UK), methanol and benzaldehyde from Ajax
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Finechem (Australia) and guaiacol from J.T. Baker (USA). 2-octanol was purchased as a
131
general purpose reagent from BDH (UK), the purity was checked by GC-MS. Methyl
132
anthranilate was gifted from McCormick & Company (USA) and the purity checked by GC-
133
MS.
134
Solid Phase Extraction (SPE). Samples were analyzed in duplicate and in a randomized
135
order. LiChrolutR EN cartridges, containing 0.5 g resin were used for SPE extraction. The
136
extraction method was adapted from Culleré et al. 2003
137
manifold (VisiprepTM Supelco, Sigma Aldrich, USA) the cartridges were washed with 10 mL
138
dichlormethane, air dried for 30 s and conditioned successively with 5 mL methanol and
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10 mL 10% aqueous ethanol solution (v/v). Preceding the extraction the samples were thawed
140
over night at 4 °C, 75 mL of wine sample was subsequently mixed with 200 µL of the
13
. On a 12-port SPE vacuum
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internal standard 2-octanol (3 µg mL-1) in ethanol and the mixture added to a reservoir above
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the LiChrolut cartridge. Loading the sample onto the resin was conducted at a flow rate of
143
2 mL min-1 (applied vacuum). After loading was completed the resins were washed with
144
10 mL of water and dried for 10 min (applied vacuum). The samples were eluted into a
145
10 mL Micro Kuderna-Danish Sample Concentrator (Supelco, Bellefonte, USA) using 7 mL
146
dichlormethane. The eluate was carefully concentrated to 500 µL under a constant nitrogen
147
flow (50 mL min-1 ± 5 mL min-1) over the head-space of the sample. An aliquot of 100 µL
148
was taken for instrumental analysis by GC-MS.
149
Gas chromatography mass spectrometry (GC-MS). GC-MS analysis was carried out using
150
an automatic liquid sampler (Agilent 7683 B) connected to a gas chromatograph (Agilent
151
6890N) and an electron impact mass selective detector (Agilent 5975 VL). The column used
152
for separation was a ZB-Wax column (60 m x 0.32 mm inner diameter x 0.5 µm film
153
thickness; Phenomenex, Torrance, CA, USA). The injector temperature was 230 °C. A
154
sample volume of 1 µL was injected using a split ratio of 10:1 with helium as carrier gas at a
155
constant flow rate of 1 mL min-1. The initial temperature of the GC oven was 50 °C followed
156
by heating at 2 °C min-1 until 230 °C was reached and then held at 230 °C for 30 min to give
157
a total running time of 120 min. After solvent delay of 7.3 min the mass selective detector
158
recorded a mass range between m/z 35-300 at a frequency of 4.86 Hz. The data was acquired
159
using the Agilent Enhanced MSD Chemstation software (version D. 03.00.611, Agilent) and
160
exported as 3-way data (.CDF) for data analysis.
161
GC-MS data processing (PARAFAC2). The data in CDF format was imported into Matlab
162
(version R.2013b, The Mathworks, Inc., USA) and retention shifts that were due to the time
163
difference of batch measurements (approx. 1 year between vintage 2012 and 2013) were
164
corrected manually. The data, arranged as a three-way array (elution time x mass spectra x
165
samples), was then manually divided into 86 low-rank intervals in elution time dimension
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with 50 to 400 scans per interval leaving up to 5 peaks in a single interval. Two main criterias
167
for data division into intervals were followed, (1) peaks corresponding to one compound must
168
be within the same interval and (2) basline must be present in cutting region. Each of the
169
intervals was individually modelled by PARAFAC2 using non-negativity constraints on the
170
spectral (mode 2) and sample (mode 3) modes of the three way array. Models with one to five
171
components were fitted to each interval where the optimal number of components was
172
determined based on four criteria, (1) the explained variance and residuals of the models, (2)
173
the core consistency of the models, (3) visual inspection of raw- and PARAFAC2 de-
174
convoluted data including elution and mass spectral profiles (must visually reflect each
175
other), (4) knowledge about the data (how many compounds were expected in the individual
176
interval, mass spectra of the individual components etc.). From the three main PARAFAC2
177
outputs (1. elution time profiles, 2. relative abundance and 3. mass spectra of the purely
178
resolved peaks of each interval), the PARAFAC2 scores that corresponded to the relative
179
abundancy of the de-convoluted compounds were extracted for subsequent analysis by PCA.
180
Retention indices of detected VOCs were calculated based on an alkane series (C10-C30) that
181
was measured using the same GC-MS method, and calculated using the van den Dool and
182
Kratz equation 30. Metabolites were identified either at level 1, comparing RI and EI-MS with
183
authentic standards, or at level 2, by comparing their RI and EI-MS against the NIST2011
184
GC-MS metabolite database (NIST, USA). Prior to PCA the metabolite data was normalized
185
to the sum of the absolute value of all variables for each sample and auto-scaled. The first
186
PCA analysis was carried out using the PARAFAC2 scores from all of the pre-barreled and
187
barreled samples collected from the 2012 and 2013 vintages. Subsequent PCAs were carried
188
out on the following sample groups, a) pre-barreled wines from vintage 2012 (PB2012), b)
189
pre-barreled wines from vintage 2013 (PB2013), c) barreled wines from vintage 2012
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(BW2012) and d) barreled wines from vintage 2013 (BW2013). All sample codes can be
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obtained from Table 1.
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Results and Discussion
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PARAFAC2. Mass spectra of the resolved peaks from the PARAFAC2 models revealed 99
194
compounds in the pre-barreled and barreled samples collected from the 2012 and 2013
195
vintages, of which 65 were identified at level 1 and 2 using either authentic standards or
196
comparing EI-MS and RI with the metabolite database NIST11 31. In some cases the spectral
197
match of compounds against the NIST11 library increased due to the fact that PARAFAC2
198
resolved spectra were free of artificial m/z ions derived from baseline and / or co-eluting
199
peaks. However, for a few compounds, the spectral match decreased compared to the raw
200
spectral match. This might be due to the slight difference between original and de-convoluted
201
spectra when peaks have low S/N ratio. The PARAFAC2 scores (corresponding to the
202
relative abundance of each compound) were subsequently extracted for PCA. The selection
203
of compounds responsible for discriminating investigated effects was carried out using PCA
204
loadings (VOCs) plots whereby the 30 most discriminant compounds were selected by visual
205
inspection. The selected VOCs for a certain effect are encircled in the respective loadings
206
plot in the supplementary data.
207
PCA for vintage and barrel discrimination. A PCA on the extracted metabolites
208
(supplementary data, Table A1) from all samples revealed that PC1 and PC2 together
209
explained 41% of the systematic variance (Figure 2). The systematic variation observed along
210
PC1 (24.26%) was correlated with a sample maturation effect after barrel storage for 4
211
months whereby barrelled wine samples (BW, blue) were separated from the pre-barreled
212
samples (PB, pink), Figure 2-b. Samples from vintage 2012 (red) were discriminated from
213
2013 (green) along PC2 (17.18%), Figure 2-a (see supplementary data for loadings plot and
214
assigned VOCs, Figure A1). The 30 most discriminant VOCs for each effect were selected
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(15 describing vintage 2012, 15 describing vintage 2013, 15 describing the barreled wines
216
and 15 describing pre-barreled wines). The discriminant loadings (VOCs) corresponding to
217
the scores plots (Figure 2-a and 2-b) are displayed in Table 2. Samples of vintage 2012 were
218
proportionally higher in the esters: ethyl butanoate, ethyl 2-hydroxyisovalerate, ethyl
219
dodecanoate and ethyl hexadecanoate, isobutanoic acid, 2-methyl butanoic acid, phenylacetic
220
acid, the two acetamides N-(3-methylbutyl)acetamide and N-(2-phenylethyl) acetamide and
221
homovanillyl alcohol, compared to samples from vintage 2013. In contrast, vintage 2013
222
wines proportionally contained more ethyl hexanoate, 4-methyl pentanol, cis-3-hexen-1-ol, 1-
223
heptanol, 2-heptanol, 1-hexanol, 2-ethyl hexanol, 1-octanol, β-citronellol and linalool oxide
224
(pyranoid) than wines from vintage 2012. It is well known that vintage can have an effect on
225
the sensory perception and chemical composition of wine
226
between the 2012 and 2013 vintages were due to a variety of compounds, most of which were
227
formed during fermentation, which suggests that their precursor compound levels and / or
228
ratios were different between the two vintages. Minimal variation of weather conditions (e.g.
229
rain fall, wind, temperature and sunlight hours) at certain ripening stages of the grapes are
230
known to contribute to microbial and chemical composition changes in the grape
231
minor differences in climatic conditions may have led to changes in the chemical
232
composition of the grapes or in the microbial species associated with the grapes, which in
233
turn may have influenced the VOC profile of the wines. Furthermore, while winemaking
234
procedures between the vintages were similar, they were unlikely to be identical, possibly
235
also leading to changed VOC profiles in the wines.
236
Barreled wines (BW) showed increased amounts of oak and ageing related compounds
237
compared to the pre-barreled (PB) wines (Figure 2b and Table 2). BW samples had
238
proportionally higher concentrations of isoamyl acetate, ethyl 2-hydroxyisovalerate, ethyl
239
leucate, 5-methyl furfural, diethyl succinate, cis-whiskey lactone, ethyl 3-methylbutyl
4, 32-34
. In this study, differences
35, 36
. Such
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succinate, γ-carboethoxy-γ-butyrolactone, ethyl hydrogen succinate and vanillin compared to
241
the PB wines. The PB wines were higher in a range of higher alcohols and esters namely 1-
242
butanol, 1-penten-3-ol, isoamyl alcohol, 1-pentanol, trans-2-penten-1-ol, 2-heptanol, 1-
243
hexanol, methyl 4-hydroxybutanoate, methyl vanillate, ethyl vanillate and ethyl
244
hexadecanoate. These findings were not surprising as compounds extracted from oak barrels
245
include furanic compounds, phenolic aldehydes, phenolic ketones and oak lactones 37, 38.
246
In the present study, samples were only taken from barrels that had been used for wine
247
maturation in at least two preceeding vintages in order to reduce the influence of barrel
248
derived VOCs. However, a multitude of compounds were still extracted and they were in
249
agreement with the compounds previously reported as oak related and ageing compounds in
250
Nebbiolo-based wines by Bordiga et al. 2014
251
that were not reported by Bordiga et al. 37 were γ-carboethoxy-γ-butyrolactone, ethyl
252
hydrogen succinate and ethyl 3-methylbutyl succinate. These compounds occur either due to
253
ageing processes in the wines or are extracted from the oak wood. Isoamyl acetate
254
concentrations in the BW wines increased in the current study compared to pre-barreled
255
wines, while Bordiga et al. 2014
256
decreased in Nebbiolo-based wines after 6 months of maturation in barrels. In general,
257
decreased levels of isoamyl acetate during storage time are expected
258
increased level of isoamyl acetate in the current study could not be easily explained. It may
259
be due to its release from the residual lees in the barrels, as wines at this sampling stage had
260
not been filtered. Alternatively, isoamyl acetate may have been produced due to a high rate of
261
esterification reactions between isoamyl alcohol and acetic acid. Further trials will be
262
required to better understand the changes in isoamyl acetate overtime.
263
PCA for site-typicity discrimination. According to the winemaker some vineyard sites at Mt
264
Difficulty Wines Ltd, express more site-typicity in the wines they produce than others. In the
37
37
. Compounds detected in the current study
reported that concentrations of these compounds
39
. However, the
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present study, three sites, expressing high site-typicity (TG, PT and LG), were discriminated
266
from the three low typicity expressing sites (BR, IN and F). PCA models developed using PB
267
wines and including only vintage 2012 (PB2012) or 2013 (PB2013) depicted trends towards
268
discrimination based on site-typicity for both vintages (Figure 3-a and 3-b). A weak site-
269
typicity effect was also observed for the barreled wines of vintage 2012 (BW2012) and 2013
270
(BW2013) respectively (see supplementary data for scores and loadings plots, Figure A4-a
271
and 4-b). The PCA of PB2012 samples explained 40.5% of the total variance by PC1 and
272
PC2. No site effect was observed along PC1 (24.7%), instead PC1 discriminated samples
273
according to their fermentation conditions. Recorded data in this study, including
274
fermentation temperatures and time required for the completion of fermentation explained the
275
discrimination (data not shown). A separation between high and low site-typicity was
276
observed along PC4 (11.3%) and PC5 (8.2%) of the same PCA model, Figure 3-a. This
277
suggests that site-typicity does not represent the major proportions of the variance present in
278
the investigated data, but that it only represents a minor variation, underlying the main
279
factors, in this case fermentation conditions (PC1-3). Wine sample LG6, however, was not
280
discriminated from the low typicity sites in PB2012 wine samples. A total of the 30 most
281
discriminative metabolites for high- and low typicity of PB wines from vintage 2012 were
282
selected from the loadings plot (Figure A2-a and A2-b). The compounds describing high
283
typicity were isobutyl alcohol, isoamyl alcohol, ethyl octanoate, ethyl leucate, 1-octanol,
284
furfuryl alcohol, methionol, β-citronellol, methyl vanillate, acetovanillone and homovanillyl
285
alcohol (Table 2). It is noteworthy that the same compounds, isobutyl alcohol and isoamyl
286
alcohol were found as markers for terroir, in the 1H NMR spectroscopy based metabolomics
287
study on La Rioja wines 1. Low typicity was discriminated by relatively higher concentrations
288
of 3-methyl butanoic acid, 2-phenylethyl acetate, N-(3-methylbutyl)acetamide, N-(2-
289
phenylethyl) acetamide, ethyl hexadecanoate, phenyl acetic acid and ethyl vanillate (Table
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2), which suggests that these VOCs may suppress typicity related characteristics in wines.
291
However, this requires further studies on the sensory impact and interactions of these
292
compounds in those wines.
293
PCA on PB2013 wine samples explained 47.5% of the total variance by PC1 and PC2. While
294
the discrimination on PC1 (29.1%) was correlated with the Brix value of the grapes at harvest
295
(data not shown), PC2 (18.4%) was correlated with a site-typicity effect. The combination of
296
PC2 and PC3 (12.6%) of the same PCA model (PB2013) showed the best discrimination
297
between high and low site-typicity wines, Figure 3-b. The loadings (VOCs) responsible for
298
the discrimination between high and low site-typicity in PB2013 wines are displayed in Table
299
2 (see supplementary data for loadings plot and selected VOCs, Figure A2-b). Thirty VOCs
300
were selected for the site-typicity effect in PB2013 wine samples. The low typicity sites
301
(green) were separated to the right side of the plot and the high typicity sites (red) to the left
302
(Figure 3-b). The high typicity site wine samples contained proportionally higher
303
concentrations of isobutanoic acid, γ-butyrolactone (and its non-lactonized form), 2-
304
phenylethyl
305
dodecanoate, homovanillyl alcohol and phenylethyl alcohol. Low typicity site wines had
306
relatively higher concentrations of ethyl butanoate, ethyl lactate, 1-hexanol, 3-ethoxy-1-
307
propanol, ethyl 3-hydroxybutanoate, hexanoic acid as well as N-(3-methylbutyl)acetamide,
308
N-(2-phenylethyl) acetamide, γ-carboethoxy-γ-butyrolactone, and trans-whiskey lactone.
309
In both vintages a trend of discrimination between high and low site-typicity expressing
310
vineyard sites could be observed. In vintage 2013, PB samples of the high typicity sites were
311
more distinctly discriminated from the low typicity sites than in the PB samples of the
312
previous vintage (2012). Furthermore, in vintage 2013, BR wines that were not well
313
separated from the high typicity sites, suggested similarities between BR and the high typicity
314
wines. Subsequent interviews with the winemaker revealed that such similarities had been
acetate,
hexadecanoic
acid,
ethyl
hexadecanoate,
β-citronellol,
ethyl
14 ACS Paragon Plus Environment
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Journal of Agricultural and Food Chemistry
315
demonstrated in the winery before and that BR was a site believed to have the potential to
316
express high typicity in its wines. Although BR was not geographically located close to the
317
high typicity sites it had similar soil properties to the three high typicity sites, which suggests
318
that the character being measured may be influenced by the soil type.
319
In general, the VOCs that were responsible for the discrimination of typicity and the pattern
320
of discrimination varied between the PB wines of the two vintages with only a small number
321
of marker metabolites describing the same typicity in both vintages: high site-typicity was
322
consistently described by β-citronellol and homovanillyl alcohol, whereas low site-typicity
323
was consistently described by the two acetamides N-(3-methylbutyl)acetamide and N-(2-
324
phenylethyl)acetamide.. Homovanillyl alcohol and β-citronellol appear to be consistently
325
present in higher concentrations in the wines from high compared to low typicity sites. These
326
two compounds are mainly grape derived and can be formed through hydrolysis from their
327
precursors
328
nerol and geraniol
329
suggest that their precursor compounds were present in relatively higher concentrations in the
330
high typicity grapes. Alternatively, the concentration of β-citronellol may have been affected
331
by the yeast strains present 42. Interestingly, some monoterpenes, including β-citronellol, have
332
previously been reported to be significantly different in Muscat of Bornova wines from
333
different terroirs in Turkey
334
homovanillyl alcohol are possible markers for site-typicity differences in Mt. Difficulty
335
wines. However, it was beyond the scope of the current study to investigate the yeast species
336
and strains involved in the winemaking. Hence, identification of yeast strain and species at
337
commencement of fermentation and the analysis of VOC precursor compounds (in particular
338
terpene precursors) in the grapes may help to unravel the reasons for their elevated
339
concentrations in high typicity wines from Mt. Difficulty.
40-42
or by transformation reactions during fermentation, i.e. β-citronellol from 41
. The increased levels of homovanillyl alcohol and β-citronellol may
43
. The results from our study suggest that β-citronellol and
15 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
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340
The mechanism for the formation of the two acetamides is still unknown, although it is
341
assumed that they are formed during fermentation
342
reported with respect to reduced wine quality or increased grape skin contact
343
generally found at higher concentrations in wines that have mousy or vinegary characteristics
344
45, 49
345
is assumed that this did not have an effect on the acetamide concentrations. Nevertheless,
346
further studies are required in order to explore the formation of these acetamides and to
347
possibly link their presence to respective precursor compounds. Additionally, studies that
348
investigate the impact of these compounds on the wine’s sensory characteristics are required.
349
PCA for clone discrimination. For identification of clone effects the PB samples were color
350
coded by clone group. Clone group 5 consisted of all sample batches (winery tank) that
351
contained clone 5, 6 or a combination of the two. Clone group 13 consisted of all sample
352
batches that contained clone 13 or blends containing clone 13, likewise with sample batches
353
of clone group 115 and 777. Discriminations based on clone groups could be observed for all
354
sample groups. PB2012 and PB2013 wine samples are displayed in Figure 4-a and 4-b. The
355
PCA scores and loadings plots depicting the clone discriminations for the barreled wines
356
(BW2012 and BW2013) can be obtained from the supplementary data (Figure A5-a and A5-
357
b).
358
For the PB2012 wine samples, the investigated clone groups were separated along PC2
359
(15.8%) and slightly along PC6 (7.4%), Figure 4-a. Among all clone groups, group 777 was
360
the most discriminant, being separated to the right side of the plot. Groups 5, 13 and 115
361
were located in the center of the plot. Some overlap of clone group 115 with 5 and 13
362
occurred. The 15 most discriminant VOCs selected for clone group 777 along PC2 are
363
displayed in Table 2 (see supplementary data for corresponding loadings, Figure A3). The
364
main discrimination between group 777 and the remaining clone groups was due to ethyl
44, 45
. Acetamides have mainly been 46-48
and are
. As the grape skin contact time in the current study was similar between all ferments, it
16 ACS Paragon Plus Environment
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Journal of Agricultural and Food Chemistry
365
lactate, -octanoate, -decanoate, -dodecanoate and acetic-, hexanoic-, octanoic- and decanoic
366
acid, methionol, vanillin and ethyl-5-oxoprolinate. In contrast, clone groups 5, 13 and 115
367
were similar along PC2 due to the compounds isobutyl alcohol, isoamyl acetate, 4-methyl-1-
368
pentanol, 2-heptanol, ethyl leucate, 5-methyl furfural, γ-butyrolactone (and its non-lactonized
369
form), 3-methyl butanoic acid, 2-phenylethyl acetate, 2-phenylethanol, N-acetylglycine ethyl
370
ester and N-(2-phenylethyl) acetamide.
371
For the PB2013 wines, the discriminative pattern appeared similar to the pattern of the prior
372
vintage (PB2012). However, the discrimination of PB2013 wines was more ambiguous and
373
overlaps occurred between most of the clone groups (Figure 4-b). Hence, no marker
374
metabolites could be assigned for PB2013 wines (see supplementary data for loadings plot,
375
Figure A3-b). BR115 was very similar to the 777 group and so were LG6 and BR5. In this
376
vintage (2013), clone group 777 was less well discriminated.
377
The pattern of discrimination for the clone groups was slightly different between vintages. In
378
vintage 2012, clone group 777 was well discriminated from the remaining groups. In contrast
379
in vintage 2013 clone group 777 overlapped with BR115, BR5 and LG6. The discrimination
380
between clone groups was shown to be minimal and strongly related to vintage. The results
381
are in agreement with results found by Botelho et al. (4) who found that the discrimination
382
between cloneal Aragonez wines is extremely complex and does not solely depend on single
383
marker compounds. Furthermore it has been reported that the performance of each clone
384
differs between vintages and that wines from different clones can be similar in one vintage
385
but different in another
386
777 was well discriminated from the other clone groups in vintage 2012 but was less
387
discriminated from the other groups in vintage 2013. The differences could be due to soil and
388
climatic differences between the vineyard sites and vintages respectively, as has been
389
reported before for Nebbiolo wines in Italy (50).
4, 50
. This finding was confirmed in the current study as clone group
17 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
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390
The current study has shown that in a commercial winemaking process, vintage and barrel
391
maturation (pre-barreled vs. barreled wines) are the most dominant factors for discrimination
392
between Mt. Difficulty Pinot Noir wines. The results confirm previously reported effects of
393
vintage and winemaking process and hence help validate the current experimental approach.
394
The site-typicity effects investigated in this study were revealed as being subtle underlying
395
effects with the degree of expression being dependent on vintage. A multitude of marker
396
VOCs were identified in both vintages, of which only two compounds consistently described
397
high site-typicity in both vintages, namely β-citronellol and homovanillyl alcohol. Low site-
398
typicity was consistently described by the two acetamides N(3-methylbutyl)acetamide and
399
N(2-phenylethyl)acetamide). However, to confirm the importance of these compounds in
400
defining high and low typicity characteristics in wines, further vintages will need to be
401
investigated and the overall contribution of these compounds to the sensory profiles of the
402
wines should be explored.
403
Interestingly, an underlying clonal effect could be observed discriminating clone group 777
404
from the remaining clone groups in PB wines of vintage 2012. Patterns of clone
405
discriminations were indicated in the PCA scores plots. However, selection of VOCs
406
responsible for these descriminations was challenging. Further vintages are required for
407
marker metabolite confirmation as well as further detailed discriminative analysis. In this
408
study, for the first time, Pinot Noir clonal wines from New Zealand have been discriminated
409
based on their volatile profiles.
410
The work underlines the complexity of wine aroma, its strong influence on vintage and the
411
winemaking process and the difficulty in obtaining unambiguous volatile profiles that
412
describe the character differences between Pinot Noir wines (site-typicities and clones) even
413
within a small geographical region. It is remarkable however, that despite cofounding effects
414
of the commercial winemaking process such as yeast strain, vigor and other process related
18 ACS Paragon Plus Environment
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Journal of Agricultural and Food Chemistry
415
effects, it was possible to uncover hidden site-typicity and clonal differences. We believe that
416
this study shows the importance of applying research to commercial scale productions
417
(additionally to controlled laboratory approaches) to aid in the understanding of factors that
418
are inconsistent in the winery, but are very important to the wine’s character. To further
419
disentangle the complex clone and site discriminant factors, laboratory controlled
420
fermentations could be carried out, alongside with this commercial approach. Non-volatile
421
analysis should also be included for a better understanding of the complete range of flavor
422
compounds contributing to these differences. Currently, our group is investigating profiles of
423
the non-volatile compounds present in the samples analyzed in this study using 1H-NMR and
424
front-face fluorescence spectroscopy.
425
Abbreviations Used
426
SPE, solid-phase extraction; HS-SPME, head-space solid-phase micro extraction; SBSE, stir-
427
bar sorptive extraction; GC-MS, gas chromatography-mass spectrometry; PARAFAC,
428
parallel factor analysis; S/N, signal to noise ratio; VOC, volatile organic compound; PCA,
429
principal component analysis; PB, pre-barreling; BW, barreled wines; HST, high site-typicity;
430
LST, low site-typicity.
431
Acknowledgements
432
The authors thank Mt. Difficulty Wines Ltd. for sample provision. Further gratitude is
433
expressed to Michelle Leus for technical assistance in the GC-MS analysis at University of
434
Otago. The Faculty of Science (University of Copenhagen, Denmark) is acknowledged for
435
support to the elite-research area “Metabolomics and bioactive compounds”.
436
Supporting information
437
PCA scores and loadings plots referred to in this paper are displayed in the supporting
438
information allowing an overview of the selection of loadings (VOCs) used for the
439
interpretations in the paper. The complete metabolite (VOC) table including all VOCs
19 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
Page 20 of 36
440
detected (identified and unidentified) with their retention indices (RI) and EI-MS matches can
441
be obtained from the supporting information. This material is available free of charge via the
442
internet at http://pubs.acs.org
443
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444
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Journal of Agricultural and Food Chemistry
Tables Table 1: Sample Batches and Their According Vineyard Site and Clone Origin. Vintage 2012 Vineyard site
PT
BR LG
Batch
F 1
Whole bunch (ratio %)
Batch
Clone (ratio %)
1
Whole bunch (ratio %)1
PT115
115 (100)
0
PT115
115 (100)
0
PT5_6_13
5+6+13 (33:33:33)
0
PT115_30%
115 (100)
30
-
-
-
PT5
5 (100)
0
-
-
-
PT6_13_30%
6+13 (50:50)
30
BR5
5 (100)
0
BR5
5 (100)
0
BR115
115 (100)
0
BR115_25%
115 (100)
25
LG6
6 (100)
0
LG6
6 (100)
0
-
-
-
LG6_30%
6 (100)
30
TG5_6_35%
5+6 (50:50)
35
TG5_6
5+6 (50:50)
0
TG777
777 (100)
0
TG777_5_6_30%
777+5+6 (70:15:15)
30
IN6_40%
6 (100)
40
IN777a
777 (100)a
0
IN777_6
777+6 (56:44)
0
IN777b
777 (100)b
0
TG
IN
Clone (ratio %)
Vintage 2013
-
-
-
IN777_23%
777 (100)
23
F6
6 (100)
0
F115
115 (100)
0
F115_5
115+5 (54:46)
0
F115_20%
115 00)
20
Whole bunch ratio: addition of complete grape clusters (not de-stemmed) to the ferment tank.
27 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
Page 28 of 36
Table 2: Metabolites (VOCs) Responsible for Vintage, Barrel Maturation, Site-typicity and Clone Effects. Metabolite Numbers Correspond to the Loadings Numbers in the Associated Loadings Plot of the PCA Models. Metabolite Number
Name [IUPAC name]
RI
EI-MS match (%)
Main m/z, relative abundance 100%
Vintage 1 effect
Barrel 2 Effect
Sitetypicity effect3
Clone effect4 2012
1
[ethyl butanoate]
1040
93.0
71
-b
-
LST
-
2
isobutyl alcohol [2-methylpropan-1-ol]
1095
93.6
43
-
-
HST
5,13,115
3
isoamyl acetate [3-methylbutyl acetate]
1124
86.0
43
-
+b
-
5,13,115
4
1-butanol [butan-1-ol]
1148
90.0
56
-
o
-
-
5
1-penten-3-ol [pent-1-en-3-ol]
1163
53.0
57
-
o
-
-
6
isoamyl alcohol [3-methyl butan-1-ol]
1216
78.0
55
-
+a
HST
-
7
[ethyl hexanoate]
1240
95.0
88
+b
-
-
-
8
1-pentanol [pentan-1-ol]
1256
60.0
42
-
+a
-
-
10
4-methyl-1-pentanol [4-methylpentan-1-ol]
1321
83.0
56
+b
-
-
5,13,115
11
trans-2-penten-1-ol [(E)-pent-2-en-1-ol]
1329
64.0
57
-
-a
-
-
12
2-heptanol [heptan-2-ol]
1334
72.0
45
+a
+a
-
5,13,115
17
ethyl 2-hydroxyisovalerate [ethyl 2-hydroxy-3-methyl butanoate]
1345
82.8
73
-a
+c
-
-
13
ethyl lactate [ethyl 2-hydroxypropanoate]
1352
78.0
45
-
-
LST
777
14
1-hexanol [hexan-1-ol]
1360
90.0
56
+a
o
LST
-
15
cis-3-hexen-1-ol [(Z)-hex-3-en-1-ol]
1371
90.0
41
+a
-
-
-
16
3-ethoxy-1-propanol [3-ethoxypropan-1-ol]
1375
95.5
59
-
-
LST
-
18
[ethyl octanoate]
1441
92.3
88
-
-
HST
777
21
[acetic acid]
1457
72.2
43
-
-
-
777
20
1-heptanol [heptan-1-ol]
1462
80.0
70
+b
-
-
-
24
2-ethyl hexanol [2-ethylhexan-1-ol]
1497
83.0
57
+c
-
-
-
25
[ethyl 3-hydroxybutanoate]
1529
97.4
43
-
-
LST
-
26
ethyl leucate [ethyl 2-hydroxy-4-methylpentanoate]
1551
86.5
69
-
+b
HST
5,13,115
27
1-octanol [octan-1-ol]
1565
83.0
56
+a
-
HST
-
31
5-methyl furfural [5-methylfuran-2-carbaldehyde]
1570
93.8
110
-
+c
-
5,13,115
28
isobutanoic acid [2-methylpropanoic acid]
1576
91.0
43
-a
-
HST
-
36
[ethyl decanoate]
1644
98.0
88
-
-
-
777
35
γ-butyrolactone [dihydrofuran-2(3H)-one] (and non-lactonised form [4-hydroxybutanoic
1646
74.0
42
-
-
HST
5,13,115
28 ACS Paragon Plus Environment
Page 29 of 36
Journal of Agricultural and Food Chemistry
Metabolite Number
Name [IUPAC name]
RI
EI-MS match (%)
Main m/z, relative abundance 100%
Vintage effect1
Barrel Effect2
Sitetypicity 3 effect
Clone effect4 2012
38
[2-methyl butanoic acid]
1676
71.8
74
-a
-
-
-
39
furfuryl alcohol [2-furanmethanol]
1677
71.4
98
-
-
HST
-
37
isovaleric acid [3-methyl butanoic acid]
1678
77.4
60
-
-
LST
5,13,115
40
diethyl succinate [diethyl butanedioate]
1685
98.1
101
-
+b
-
-
41
methionol [3-methylsulfanylpropan-1-ol]
1721
97.8
106
-
-
HST
777
44
β-citronellol [3,7-Dimethyloct-6-en-1-ol]
1772
90.0
69
+a
-
HST
-
45
linalool oxide (pyranoid) [2,2,6-Trimethyl-6-vinyltetrahydro-2H-pyran-3ol]
1756
62.8
68
+a
-
-
-
46
[methyl 4-hydroxybutanoate]
1775
85.2
74
-
-a
-
-
49
[2-phenylethyl acetate]
1826
90.0
104
-
-
LST/ HST
5,13,115
53
[ethyl dodecanoate]
1848
95.0
88
-a
-
HST
777
51
[hexanoic acid]
1852
90.0
60
-
-
LST
777
54
[N-(3-methylbutyl)acetamide]
1878
95.8
73
-b
-
LST
-
57
[ethyl 3-methylbutyl succinate]
1886
75.6
101
-
+b
-
-
56
cis-whiskey lactone [(4R,5R)-5-butyl-4-methyloxolan-2-one]
1899
50.6
99
-
+c
-
-
58
[2-phenylethanol]
1921
94.0
91
-
-
HST
5,13,115
60
trans-whiskey lactone [(4S,5R)-5-butyl-4-methyloxolan-2-one]
1970
55.1
99
-
-
LST
-
65
[octanoic acid]
2064
91.0
60
-
-
-
777
2170
97.1
72
-
-
-
5,13,115
2247
72.0
85
-
+b
LST
-
68 70
N-acetylglycine ethyl ester [ethyl 2-acetamidoacetate] γ-carboethoxy-γ-butyrolactone [ethyl 5-oxooxolane-2-carboxylate ]
71
[ethyl hexadecanoate]
2258
98.0
88
-a
-a
LST/ HST
-
72
[decanoic acid]
2276
98.0
73
-
-
-
777
76
ethyl hydrogen succinate [4-ethoxy-4-oxobutanoic acid]
2385
97
101
-
+c
-
-
81
vanillin [4-hydroxy-3-methoxybenzaldehyde]
2559
45.8
151
80
[phenylacetic acid]
2563
80
91
-a
-
LST
-
82
[N-(2-phenylethyl)acetamide]
2599
91.0
104
-a
-
LST
5,13,115
2615
94.0
151
-
o
HST
-
2620
80.0
84
-
-
-
777
2637
94.0
151
-
-
HST
-
2641
91.0
151
-
+a
LST
-
2849
93
137
-a
-
HST
-
84 83 87 86 92
methyl vanillate [methyl 4-hydroxy-3-methoxybenzoate] 2-pyrrolidinecarboxylic acid-5-oxo-, ethyl ester [ethyl-5-oxoprolinate] acetovanillone [1-(4-hydroxy-3-methoxyphenyl)ethanone] ethyl vanillate [ethyl 4-hydroxy-3-methoxybenzoate] homovanillyl alcohol [4-(2-hydroxyethyl)-2-methoxyphenol]
+c
777
29 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
Metabolite Number
94 1
Name [IUPAC name]
[hexadecanoic acid]
Page 30 of 36
RI
EI-MS match (%)
Main m/z, relative abundance 100%
Vintage effect1
Barrel Effect2
Sitetypicity 3 effect
Clone effect4 2012
2906
89
73
-
-
HST
-
Average relative change from vintage 2012 to vintage 2013 (-100 to -51%=-b; -50 to -
10%=-a; 10 to 50%=+a; 51-100%=+b; 101 to 210%=+c). Calculated by the equation: ∆%=((mean(metabolite1 2013) - mean(metabolite1 2012))/mean(metabolite1 2012)) × 100. 2
Average relative change from PB to BW samples (-55 to -1.4%=-a; -1.3 to +0.9%=o; 1 to
60%=+a; 61 to 200%=+b; 201 to 3300%=+c). calculated by the equation: ∆%=((mean(metabolite1 BW) - mean(metabolite1 PB))/mean(metabolite1 PB)) × 100. 3
Metabolites positively correlated with high site-typicity=HST and with low site-
typicity=LST (vintage 2012=black, vintage 2013=red, coinciding in both vintages=black bold. 4
Metabolites positively correlated with clone group 777=777 or correlated with clone
groups 5, 13 and 115=5,13,115 in vintage 2012.
30 ACS Paragon Plus Environment
Page 31 of 36
Journal of Agricultural and Food Chemistry
Figure captions Figure 1. Map of Mt. Difficulty Wines vineyard sites; red: high site-typicity expressing vineyard sites, blue: other vineyard sites; reprinted from website with permission of Mt. Difficulty Wines.
Figure 2. PCA scores plots of all samples showing A) vintage effect: vintage 2012= diamond, red; vintage 2013 = squares, green; and B) barrel maturation effect: pre-barreled= diamonds, pink; barreled= squares, blue.
Figure 3. PCA scores plots of PB wines showing the site-typicity effect A) vintage 2012; B) vintage 2013. High typicity=diamonds, red; and low typicity= squares, green.
Figure 4. PCA scores plots of PB wines showing the effect of clone groups A) vintage 2012; B) vintage 2013. Clone group 5= diamonds, red; clone group 13= squares, green; clone group 115= triangles, blue; and clone group 777= upsidedown triangles, turquoise.
31 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
Page 32 of 36
Figure graphics Figure 1.
32 ACS Paragon Plus Environment
Page 33 of 36
Journal of Agricultural and Food Chemistry
Figure 2. top: A; bottom: B Samples/Scores Plot 10
Scores on PC 2 (17.18%)
8 6 4 2 0 -2 -4 -6 -8 -10 -10
-5
0
5
10
Scores on PC 1 (24.26%) Samples/Scores Plot 10
Scores on PC 2 (17.18%)
8 6 4 2 0 -2 -4 -6 -8 -10 -10
-5
0
5
10
Scores on PC 1 (24.26%)
33 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
Page 34 of 36
Figure 3. top: A; bottom: B Samples/Scores Plot 8
Scores on PC 5 (8.21%)
6
F6
F115_5 F6
4
F115_5 LG6 LG6 IN777_6 IN777_6
2 0 -2
BR115
IN6_40% TG5_6_35% TG5_6_35%
BR5 BR5
-4
BR115
IN6_40%
PT5_6_13
PT115 PT115
TG777 TG777
PT5_6_13
-6 -8 -8
-6
-4
-2
0
2
4
6
8
Scores on PC 4 (11.29%) Samples/Scores Plot 10
Scores on PC 3 (12.63%)
8 6 4 2 0 -2 -4 -6
PT6_13_30%
TG777_5_6_30% TG5_6 PT115 PT115 TG5_6
TG777_5_6_30% BR115_25% BR5 PT5 LG6 BR115_25% PT5 BR5 PT6_13_30% LG6 IN777_23% F115_20% F115_20% PT6_13_30% LG6_30% IN777a IN777_23% IN777b LG6_30% IN777a IN777b F115 F115 PT6_13_30%
-8 -10 -10
-5
0
5
10
Scores on PC 2 (18.41%)
34 ACS Paragon Plus Environment
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Journal of Agricultural and Food Chemistry
Figure 4. top: A; bottom: B Samples/Scores Plot
8
TG5_6_35%
Scores on PC 6 (7.40%)
6
TG5_6_35% 4
IN6_40% BR5
BR5
2
F6 F6 BR115 TG777 TG777 PT115 IN777_6 BR115 LG6 IN6_40% F115_5 PT115 IN777_6 F115_5 PT5_6_13 LG6
0
-2
-4
PT5_6_13 -6
-10
-8
-6
-4
-2
0
2
4
6
8
10
Scores on PC 2 (15.82%) Samples/Scores Plot F115_20% F115_20%
Scores on PC 5 (6.61%)
6
LG6 4
F115
F115
0
-2
-4
LG6
PT5 PT5
TG5_6
PT115 PT115
TG5_6
2
PT6_13_30% LG6_30% IN777_23% BR5 IN777_23% PT6_13_30% LG6_30% BR5 PT6_13_30% TG777_5_6_30% IN777b PT6_13_30% TG777_5_6_30% IN777b BR115_25% BR115_25% IN777a IN777a
-6
-8
-6
-4
-2
0
2
4
6
8
Scores on PC 4 (8.20%)
35 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
Page 36 of 36
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36 ACS Paragon Plus Environment