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Chemistry and Biology of Aroma and Taste
Sensoproteomics: A New Approach for the Identification of Taste-Active Peptides in Fermented Foods Karin Sebald, Andreas Dunkel, Johannes Schäfer, Jorg Hinrichs, and Thomas Hofmann J. Agric. Food Chem., Just Accepted Manuscript • DOI: 10.1021/acs.jafc.8b04479 • Publication Date (Web): 05 Oct 2018 Downloaded from http://pubs.acs.org on October 6, 2018
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Journal of Agricultural and Food Chemistry
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Sensoproteomics: A New Approach for the Identification
2
of Taste-Active Peptides in Fermented Foods
3 4
Karin Sebald†, Andreas Dunkel†,‡, Johannes Schäfer§, Jörg Hinrichs§,
5
and Thomas Hofmann†,‡,$,*
6 7 8 †
9
Chair for Food Chemistry and Molecular Sensory Science, Technical University of
10
Munich, Lise-Meitner-Straße 34, D-85354 Freising, Germany, ‡
11
Leibniz-Institute for Food Systems Biology at the Technical University of Munich,
12
Lise-Meitner Str. 34, D-85354 Freising, Germany, §
13
Institute of Food Science and Biotechnology, Department of Soft Matter Science
14
and Dairy Technology, University of Hohenheim, Garbenstr. 21, D-70599 Stuttgart,
15
Germany, $
16
Bavarian Center for Biomolecular Mass Spectrometry, Technical University of
17
Munich, Gregor-Mendel-Straße 4, D-85354 Freising, Germany.
18 19 20 21 22
*
23
PHONE
+49-8161-712902
24
FAX
+49-8161-712949
25
E-MAIL
To whom correspondence should be addressed
[email protected] 26
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ABSTRACT
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Aiming at the identification of the key bitter peptides in fermented foods, a new
30
approach, coined “sensoproteomics” was developed and applied to fresh cheese
31
samples differing in bitter taste intensity. By means of MPLC-fractionation of the
32
water-soluble cheese extracts in combination with taste dilution analysis, complex
33
fractions with intense bitter taste were located and, then, screened by UPLC-
34
MS/MS for the entire repertoire of ~1600 candidate peptides, extracted from a
35
literature meta-analysis on dairy products, by using a total of 120 selected reaction
36
monitoring (SRM) methods computed in silico. A total of 340 out of the 1,600
37
peptides were found in the cheese samples, amongst which 17 peptides were
38
identified as candidate bitter peptides by considering only peptides that were
39
located in the bitter tasting MPLC fractions (signal to noise ratio: ≥ 10) with a fold-
40
change of ≥ 3 when comparing the less bitter to the more bitter cheese sample, and
41
that were validated by comparison with the synthetic reference peptides. While
42
EIVPNS[phos]VEQK (αs1-CN70-78) and INTIASGEPT (κ–CN122-131) did not exhibit
43
any bitter taste up to 2,000 µmol/L, 15 of the 17 target peptides showed bitter taste
44
thresholds
45
(IQKEDVPS, αs1-CN81-88). Finally, quantitative peptide analysis, followed by
46
calculation of dose-over-threshold factors revealed a primary contribution of
47
MAPKHKEMPFPKYPVEPF (β–CN102-119) and ARHPHPHLSFM (κ-CN96-106) to the
48
perceived bitter taste of the fresh cheese samples. Finally, the evolution of the bitter
49
peptides throughout two different fresh cheese manufacturing processes were
50
quantitatively recorded.
ranging
from
30
(ARHPHPHLSFM,
κ-CN96-106)
51
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to
690 µmol/L
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Keywords: sensoproteomics, fresh cheese, bitter peptides, taste dilution analysis
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INTRODUCTION
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Due to their alluring flavor, fermented protein-rich foods, such as, e.g. cheese,
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yoghurt, cocoa, cured ham, soy sauce, fish sauce, and soy paste, as well as
58
enzymatic protein hydrolysates are highly appreciated by consumers all over the
59
world. Whereas multiple studies published in the past 40 years have been
60
performed to decipher the combinatorial codes of volatile food odorants,1 the
61
knowledge on the non-volatile key peptides which, upon enzymatic protein
62
digestion, contribute to the typical taste profile of fermented foods, is still rather
63
fragmentary.
64
Activity-guided fractionation combined with analytical sensory tools like the
65
taste dilution analysis (TDA),2 revealed the identification of some bitter-tasting
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peptides in Gouda cheese,3 Emmentaler cheese,4 Cheddar,5 Camembert,6
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Ragusano cheese,7 and whey protein hydrolysate,8 as well as umami-enhancing
68
peptides in cured fish,9 cured ham,10 and wheat gluten hydrolysate, respectively.11
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Furthermore, mouthfullness (kokumi) enhancing γ-glutamyl peptides in Gouda
70
cheese,12 Parmesan cheese13 and other blue-mold cheeses,14 as well as salt-
71
enhancing arginyl-peptides have been recently reported as natural taste modulators
72
in fish sauce15 and enzymatically hydrolysed proteins.16 Since fermented, protein-
73
rich foods comprise an enormous complexity and multiplicity of peptides released
74
upon protein digestion, the iterative fractionation and purification approach, followed
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by sequencing of the taste-active target peptides is rather challenging and
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laborious, and hampers the straightforward characterization of the taste-active
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peptidome of fermented foods in due time.
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As an alternative to the sensory-directed identification approach, purely
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analytical approaches based on high-end mass spectrometric sequencing have
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been developed and revealed a vast number of peptides in fermented foods, e.g. a
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total number of ~1600 unique peptide sequences, comprising between three and 63
82
amino acid moieties, have been reported in dairy products like milk,17 kefir18 and
83
yoghurt, respectively.19 (Figure 1). However, which of these peptides are taste-
84
active? To answer this question, combining targeted proteomics tools with sensory
85
analytics may be a promising strategy to identify those key molecules among the
86
bulk of literature reported peptides that give the highest taste contribution to
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fermented foods. Taste-active crude fractions isolated from fermented food samples
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varying in their overall taste intensity may be comparatively analysed by means of
89
targeted proteomics techniques to map the differences in their peptide composition.
90
To predict MS/MS parameters of pre-defined peptides, new software tools are able
91
to provide the transitions and corresponding MS/MS parameters for each target
92
peptide in silico.20,
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selected reaction monitoring (SRM) methods, the most reliable and intense
94
transitions may be used to uniquely identify the target peptides using the
95
corresponding synthesized peptides as references. The SRM assays developed by
96
following this strategy then hold promise to enable the sensitive and robust
97
quantitative mapping of target peptides in corresponding taste-active crude fractions
98
comparatively isolated from fermented food samples varying in the taste intensity.
21
After screening the taste-active, crude food fractions with
99
This new approach, coined “sensoproteomics”, should be applied on the
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bitter-tasting key peptides in fermented fresh cheese as an example. The state of
101
the art to produce the so-called fermented-concentrated fresh cheese involves the
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gelation of milk via starter cluture mediated acidificatiton and renneting, followed by
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the separation of the acid, e.g. by stirring the gel and ultrafiltration, in order to obtain
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the fresh cheese (FC) as a highly concentrated microgel suspension.22 In order to
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avoid the production of acid whey, which is mostly discarded today, and obtain the
106
re-usable sweet whey22, in an alternative process the standardized milk is
107
concentrated up to a desired protein content by means of ultrafiltration, followed by
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fermentation. This process, however, results in an alternative fresh cheese (aFC)
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exhibiting an increased bitterness which, in addition to the increased concentration
110
of soluble calcium ions, is assumed to be caused by bitter peptides.24,25
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The objective of the present study was, therefore, to apply the new
112
“sensoproteomics” approach to the identification of taste-active key peptides in two
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fresh cheese samples differing in bitter taste intensity. The peptides should then be
114
quantitated by LC-MS/MS in process samples to monitor the evolution of the key
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bitter peptides during fresh cheese processing.
116 117 118
MATERIALS AND METHODS
119 120
Chemicals. HPLC-grade solvents and formic acid were obtained from Merck
121
(Darmstadt, Germany), acetonitrile used for MS analysis was purchased from
122
Honeywell Burdick & Jackson (Seelze, Germany), and synthetic reference peptides
123
were purchased from Peptides and Elephants (Potsdam, Germany). Deionized
124
water used for chromatography was prepared by means of a Milli-Q water A5
125
system (Millipore, Molsheim, France). A fat-free fresh cheese with 9% protein
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content (FC9) was prepared by fermentation followed by ultrafiltration, and two
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bitter-tasting fat-free fresh cheeses with 9 (aFC9) and 12% protein (aFC12),
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respectively, were prepared by means of an alternative process involving
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ultrafiltration of the standardized milk, followed by fermentation as reported
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recently.23
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Sequential Solvent Extraction. Samples (80 g each) of the fresh cheese
132
sample aFC12 was extracted with an aliquot (200 mL) of aqueous formic acid (0.1%
133
in water), homogenized for 5 min by means of an Ultra-Turrax T 25 basic (IKA
134
Labortechnik, Germany), and centrifuged at 10,000 rpm for 30 min at 4 °C (Avanti J-
135
E, Beckman-Coulter, Krefeld, Germany). The upper liquid layer (pH 4.6) was
136
separated from the protein pellet, which was re-extracted with aqueous formic acid
137
(0.1% in water) as detailed above. The aqueous layers were pooled, filtered (113 A
138
filter, 110 mm, Carl Roth, Karlsruhe, Germany), and lyophilized to afford the water-
139
soluble extract (WSE; yield: 6.4%), which was kept at -20 °C until further analysis.
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The protein pellet was re-extracted twice with methanol (200 mL) and, after
141
filtration, the solvent was separated in vacuum at 35 °C, followed by freeze-drying.
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The methanolic extract (ME; yield: 0.5%) was stored at -20 °C until further use.
143
Ultrafiltration. An aliquot (5 g each) of WSE obtained from samples aFC12
144
was dissolved in water (300 mL) and separated by means of ultrafiltration using a
145
400 mL filtration unit (Amicon, Merck Millipore, Darmstadt, Germany), equipped with
146
a 1 kDa MW cutoff membrane (Ultracell Ultrafiltration Discs, Amicon Bioseparations,
147
EMD Millipore Corporations, Billerica, USA) and operated with nitrogen (0.3 MPa).
148
The high-molecular weight fraction (HMW; > 1 kDa) obtained was taken up in water
149
(50 mL) and the ultrafiltration procedure was repeated twice to remove low
150
molecular weight compounds (LMW; ≤ 1 kDa). The HMW fraction (yield: 12%) and
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the pooled LMW fraction (yield: 88%) were lyophilized and stored at -20 °C until
152
further use.
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Medium-Performance Liquid Chromatography (MPLC). For preparative
154
separation, a MPLC system (Büchi Labortechnik AG, Flawil, Switzerland) was
155
equipped with two C-605 type pumps, a C-620 type communication module, an
156
injection unit (Büchi), a Sedex 90 type evaporative light scattering detector (LT-
157
ELSD, SEDERE, Alfortville Cedex, France) with nebulizer, a split (39/1, v/v) and a
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fraction collector (C-660, Büchi, Flawil, Switzerland). Data acquisition was
159
performed with the software Sepacore Control (Version 1.2, Büchi, Flawil,
160
Switzerland). For analysis of the HMW-fraction, an aliquot was dissolved in water
161
(15 mL); the solution was adjusted to pH 4.6 with aqueous formic acid (1% in water)
162
and after filtration (0.45 µm) injected manually into the MPLC system (Büchi
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Labortechnik AG, Flawil, Swiss) using a 250 x 40 mm i.d. polypropylene cartridge
164
filled with 25-40 µm LiChroprep RP-18 material (Merck, Darmstadt, Germany) for
165
separation. Chromatography was performed with a gradient of water and methanol,
166
both containing 1% formic acid, at a flow rate of 40 mL/min using the following
167
gradient: 0 min, 20% B; 1 min, 20% B; 3 min, 45% B; 22 min, 80% B; 23 min, 100%
168
B; 28 min, 100% B; 29 min, 20% B; 37 min, 20% B. Fractions were collected in
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1 min steps and recombined to six fractions, namely M1-M6, freed from solvent
170
under vacuum, followed by lyophilization and obtained in yields of 29, 18, 8, 30, 8
171
and 7%, respectively. Collected fractions were stored at -20 °C until further use.
172
Analytical Sensory Experiments. General Conditions, Panel Training. A total
173
of 15 panelists, who had no history of known taste disorders and who had given the
174
informed consent to participate in the present sensory tests, were trained in weekly
175
training sessions for at least two years using solutions of purified reference
176
compounds
177
methodologies.3,15 The sensory sessions were performed at 22-25 °C in an air-
in
order
to
become
familiar
with
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the
taste
language
and
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conditioned room with separated booth while the panelists wore nose clips to
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prevent cross-modal interactions with odorants. To minimize the uptake of any toxic
180
compound, test samples were lyophilized twice prior to use and sensory analyses
181
were performed by using the sip-and spit method, which means the test solutions
182
were not swallowed but expectorated.
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Taste Profile Analysis. The cheese samples FC9, aFC9, and aFC12 were
184
presented to 15 trained panelists to evaluate the taste qualities “bitter” and “sour” on
185
an intensity scale from 0 (not detectable) to 5 (strongly detectable). The lyophilized
186
fractions WSE, HMW, and LMW, respectively, were dissolved in bottled water in
187
their “natural” cheese concentrations, that means in amounts as they were isolated
188
from aCC12 and the natural pH-value of the cheese samples (pH 4.6) with trace
189
amounts of 1% aqueous formic acid. The solutions were then presented to 15
190
trained panelists to evaluate the taste qualities “bitter” and “sour” on an intensity
191
scale from 0 (not detectable) to 5 (strongly detectable).
192
Taste Dilution Analysis (TDA). The lyophilized MPLC-fractions were taken up
193
in bottled water (20 mL), adjusted to pH 4.6 with a 1% aqueous solution of formic
194
acid and diluted stepwise 1:1 with water (pH 4.6). The series of dilutions were
195
randomly presented to the panelists in a two-alternative forced choice (2-AFC) test
196
in order of ascending concentrations. The panelists were asked to determine the
197
dilution step at which a difference between sample and blank water could be
198
detected. The so-called taste dilution (TD) factor3,24,25 was determined for each
199
fraction by the sensory panel in two separate independent sessions and were
200
averaged. The TD-factors between individuals and separate sessions did not differ
201
by more than plus/minus one dilution step.
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Determination of Human Taste Recognition Thresholds. The trained panelists
203
determined the taste threshold concentrations of purified synthetic peptides (>98%,
204
LC-MS) in bottled water adjusted to pH 4.6 with trace amounts of aqueous formic
205
acid (1% in water) using a three-alternative forced choice (3-AFC) test with
206
ascending stimulus concentrations as reported earlier.3
207
Ultra-Performance
Liquid
Chromatography
-
Time-Of-Flight
Mass
208
Spectrometry (UPLC-ToF-MS). UPLC-ToF-MS measurements were acquired on a
209
Sciex TripleTOF 6600 mass spectrometer (Sciex, Darmstadt, Germany) connected
210
to a Shimadzu Nexera X2 system (Shimadzu, Kyoto, Japan) operating in the
211
positive electrospray ionization mode. Instrumentation control and data acquisition
212
were performed with AnalystTF software (v 1.7.1; Sciex, Darmstadt, Germany). Ion
213
spay voltage was set at 5500 eV, source temperature was 550 °C, nebulizing gas
214
(0.38 MPa), heating gas (0.45 MPa) and nitrogen served as curtain gas (0.24 MPa),
215
to effectively desolvate ions. Chromatography was performed on a 150 x 2 mm, 1.7
216
µm, Kinetex C18 column (Phenomenex, Aschaffenburg, Germany) equipped with a
217
guard column of the same type with a gradient of 1% aqueous formic acid and
218
acetonitrile containing 1% formic acid at a flow rate of 0.3 ml/min with the following
219
gradient: 0 min, 5% B; 0.5 min, 5% B; 14 min; 40% B, 15 min, 100% B; 16 min,
220
100% B; 17 min, 5% B; 20 min, 5% B. Column oven was tempered at 40 °C and the
221
injection volume was 10 µL. The TOF MS scan was performed from m/z 100 to
222
2000 with an accumulation time of 250 ms.
223
Targeted Proteomics. Liquid Chromatography-Mass Spectrometry (LC-
224
MS/MS). All targeted proteomics LC-MS/MS measurements were acquired on a
225
5500 QTrap LC-MS/MS system (Sciex, Darmstadt, Germany) connected to a
226
Shimadzu Nexera X2 system (Shimadzu, Kyoto, Japan) operating in the positive
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electrospray ionization mode. Ion spay voltage was set at 5,500 eV, source
228
temperature was 400 °C, nebulizing gas (0.38 MPa), heating gas (0.45 MPa) and
229
nitrogen served as curtain gas (0.24 MPa), to effectively desolvate the ions.
230
Chromatography was performed on a 150 x 2 mm, 1.7 µm, Kinetex C8 column
231
(Phenomenex, Aschaffenburg, Germany) equipped with a guard column of the
232
same type with a gradient of 0.1% aqueous formic acid and acetonitrile containing
233
0.1% formic acid at a flow rate of 0.1 ml/min with the following gradient: 0 min, 1%
234
B; 10 min; 40% B, 13 min, 100% B; 15 min, 100% B; 17 min, 1% B; 20 min, 1% B.
235
Column oven was tempered at 40 °C and the injection volume was 1 µL of each
236
sample. Using nitrogen in the collision cell, peptide fragmentation was performed by
237
using calculated peptide specific collision energies as described previously.26
238
Instrumentation control and data acquisition were performed with Sciex Analyst
239
software (v 1.6.2).
240
In Silico Development of Selected Reaction Monitoring (SRM) Methods. The
241
targeted proteomics software Skyline (64-bit 3.5.0.9319) was used to create and
242
optimize selected reaction monitoring (SRM) methods21 of approximately 1600
243
unique peptides ranging from five to 25 amino acids in length resulting from a
244
literature meta-analysis on dairy peptides from bovine caseins (Figure 1).3, 5, 17-19, 27-
245
52
246
precursor ions, with b- and y-product ions with m/z higher than precursor m/z. A
247
total of 120 multiple SRM methods were created with a maximum of 300 transitions
248
per method and a dwell time of 10 ms and exported by Skyline. Q1 and Q3
249
resolution was set to unit (0.7). The used SRM methods are given in the Supporting
250
Information. The predicted SRM methods were used for a screening in the WSE-
251
fraction isolated from cheese samples tCC9 and aCC9. To achieve this, the
About 34.300 mass transitions were calculated for doubly and triply charged
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lyophilized WSE was re-dissolved in water in “natural” concentrations and
253
membrane filtered (0.45 µm). After mass spectrometry analysis, the raw files were
254
imported into Skyline and chromatographic data from each peptide were manually
255
analyzed to assess the signal quality. Peptides with ambiguous or nonexistent
256
peaks were excluded. After refinement of the transition list, the five best transitions
257
for each peptide were selected based on the intensity and the collision energy (CE)
258
was optimized26, followed by the export of optimized SRM methods.
259
Identification of Candidate Bitter Peptides in Fresh Cheese Samples. Using
260
the optimized SRM methods, the WSE of cheese FC9 and aFC9, respectively, and
261
the bitter-tasting MPLC fractions M2 to M4 were screened in both cheeses in order
262
to locate and identify candidate bitter peptides. To achieve this, the lyophilized
263
extracts and fractions (M2 – M4) were re-dissolved in water in “natural”
264
concentrations, membrane filtered (0.45 µm) and, then, used for LC-MS/MS
265
analysis.
266
Quantification of Candidate Bitter Peptides in Fresh Cheese Samples. A
267
portion (1 g) of fresh cheese or intermediates of cheese manufacturing was placed
268
in a centrifuge tube (CK68_15ml, Precellys, France) and an aliquot (5 mL) of 0.1%
269
aqueous formic acid was added. After homogenization (Precellys, Bertin
270
Instruments, Montigny-le-Bretonneux, France) at 6,000 rpm (3 x 20 s), the slurry
271
was centrifuged (4,000 rpm, 5 min) and the supernatant transferred into a
272
volumetric flask (10 mL). An aliquot (5 mL) of 0.1 % aqueous formic acid was added
273
to the protein pellet (residue) and extracted as detailed above. The supernatant was
274
transferred into the volumetric flask (10 mL) and made up to 10 mL with 0.1%
275
aqueous formic acid, followed by membrane-filtration (0.45 µm) and LC-MS/MS
276
analysis.
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LC-MS/MS analysis was done on a 5500 QTrap LC-MS/MS system (Sciex,
278
Darmstadt, Germany) connected to a Shimadzu Nexera X2 system (Shimadzu,
279
Kyoto, Japan) operating in the positive electrospray ionization mode. Ion spay
280
voltage was set at 5500 eV, source temperature was 400 °C, nebulizing gas (0.38
281
MPa), heating gas (0.45 MPa) and nitrogen served as curtain gas (0.24 MPa), to
282
effectively desolvate ions. The MS/MS parameters are given as Supporting
283
Information. An aliquot (1 µL) of the prepared sample was injected into the LC-
284
MS/MS system connected to a 150 x 2.0 mm i.d., 1.7 µm, Kinetex C8 column
285
(Phenomenex, Aschaffenburg, Germany) equipped with a guard column of the
286
same type. Eluent A consisted of 1% formic acid in water and eluent B was 1%
287
formic acid in acetonitrile. Using a flow rate of 0.25 ml/min, chromatography was
288
performed starting with 5% B, 7 min 40% B, 8 min 100% B, 11 min 100% B, 12 min
289
5% B, 15 min 5% B. Peptides were analyzed in the ESI positive ionization mode
290
using specific mass transitions and MS/MS parameter. Quantitation was performed
291
using an external standard calibration with standard solutions ranging from 0.001 to
292
10 mg/L (eight-point calibration). System control and data acquisition were
293
performed using Analyst 1.6.2 (Sciex, Darmstadt, Germany).
294
Quantitative 1H NMR Spectroscopy. Synthesized reference peptides were
295
dissolved in D2O (5.0 mmol/L). An aliquot (600 µL) was transferred into 178×5 mm
296
inner diameter NMR tubes (USC tubes, Bruker, Rheinstetten) and analysed by
297
means of a 400 MHz Avance III NMR spectrometer (Bruker, Rheinstetten,
298
Germany). Instrument calibration and data processing were performed as detailed
299
earlier.53 The specific proton resonance signal at 7.10 ppm (d, 2H) of the external
300
standard L-tyrosine (6.68 mmol/L) was used for external calibration.
301
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302 303 304
RESULTS AND DISCUSSION
305 306
Aiming at the identification of candidate bitter peptides in fresh cheese,
307
samples of a state-of-the-art, fat-free fresh cheese (FC9) and a fresh cheese
308
produced by an alternative process (aFC9),23 both with a protein content of 9%,
309
were sensorially evaluated by a trained panellists, who were asked to rate the
310
individual intensities of the taste qualities sour and bitter on a linear scale between
311
0 (not detectable) and 5 (strongly detectable). The alternatively produced cheese
312
aFC9 showed an increased bitter taste rated with an intensity of 2.0, while sample
313
FC9 was judged with a score of 1.6 (Table 1). In order to answer the question as to
314
whether an increased protein content in alternatively produced cheese would lead
315
to increased levels of candidate bitter peptides, an additional cheese (aFC12) was
316
prepared with a protein content of 12%. Sensory evaluation of aFC12 demonstrated
317
an increased bitterness score of 2.6 when compared to the cheese sample aFC9
318
(2.0). Regarding the perceived sourness, no significant difference could be
319
observed, as all three evaluated fresh cheeses showed comparable intensities
320
ranging between 2.3 and 2.7.
321
As previous studies on dairy products revealed the bitter peptides to be water-
322
soluble,3, 6, 54 the most bitter-tasting sample aFC12 was sequentially extracted with
323
water containing 0.1% formic acid, followed by methanol to afford the water-soluble
324
extract (WSE) and the methanolic extract (ME) after freeze-drying. Both extracts
325
were taken up in “natural” concentrations and adjusted to the pH value of the fresh
326
cheese (pH 4.6) with trace amounts of formic acid prior to taste profile analysis 14 ACS Paragon Plus Environment
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(Table 1). Bitterness of the WSE fraction was rated with an intensity of 2.1, whereas
328
the ME isolate showed only a low bitter taste intensity judged with a score of 0.6. As
329
the remaining protein pellet did not show any taste activity (data not shown), it was
330
concluded that the key bitter compounds are present in the WSE fraction.
331
Ultrafiltration of the Bitter-Tasting Water-Soluble Extract (WSE). To sort
332
out the bitter peptides from the less bitter or tasteless compounds, the WSE was
333
separated into a low-molecular weight fraction (LMW) and a high-molecular weight
334
fraction (HMW) by means of ultrafiltration with a 1 kDa cutoff and the LMW and
335
HMW fraction, respectively, each in “natural concentration” in aqueous solutions
336
(pH 4.6), were sensorially evaluated (Table 1). The panelists reported the HMW
337
fraction to show by far the high bitter taste intensity, judged with a score of 3.1,
338
while the LMW fraction showed only marginal bitter taste (0.6). To locate potential
339
bitter peptides candidates imparting the bitter taste of fresh cheese, the HMW
340
fraction was further subfractionated by means of MPLC, followed by taste dilution
341
analysis (TDA).
342
MPLC-TDA of the Bitter-Tasting HMW-Fraction. MPLC fractionation of the
343
HMW fraction on RP-18 material revealed six subfractions, namely M1-M6, which
344
were freed from solvent under vacuum, lyophilized twice, dissolved in bottled water
345
in their “natural” concentrations and, then, used for TDA. The bitter tasting MPLC-
346
fractions M2, M3 and M4, obtained in yields of 18, 8 and 30%, respectively, were
347
evaluated with the highest taste dilution (TD)-factors of 8, 2 and 16 (Figure 2A). To
348
gain a first impression of the complexity of these bitter MPLC fractions, a C8-UPLC-
349
ToF-MS screening was performed. As the analysis of all three fractions showed
350
several hundreds of peptide signals (Figure 2B-2D), it was concluded that a further
351
activity-guided fractionation to resolve the subfractions M2 to M4 into the individual
15 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
352
taste-active peptides is too time and laboratory intensive, if at all possible.
353
Therefore, a new approach, coined “sensoproteomics”, was developed to identify
354
the candidate bitter peptides by integrating the activity-based sensomics approach
355
with a targeted quantitative proteomics approach (Figure 3).
356
Identification of Candidate Bitter Peptides. To capture all candidate
357
peptides already identified in literature by high-end mass spectrometric sequencing
358
and subsequent database research, a literature meta-analysis on dairy peptides
359
from bovine caseins was performed.3, 5,
360
peptide sequences were reported in dairy products like milk17, kefir18 and yoghurt19
361
(Figure 1A). These candidate peptides comprise between three and 63 amino acid
362
moieties, with most peptides showing five to 14 amino acids residues (Figure 1B).
363
Using the proteomics software Skyline21, suitable MS/MS parameters were
364
generated in silico for the UPLC-MS/MS analysis of these 1,600 candidate peptides,
365
followed by the creation of 120 selected reaction monitoring (SRM) methods with a
366
maximum of 300 transitions per sample injection (see supporting information).
367
Aimed at identifying those candidate peptides, which are located in the bitter-tasting
368
fresh cheese, the WSE was screened by using the SRM methods generated in
369
silico. Target peptides that could not be unequivocally detected by LC-MS/MS in
370
WSE were sort out (Figure 4A), whereas peptides showing unambiguous mass
371
transition chromatograms with perfectly aligned retention times for doubly and triply
372
charged precursor ions were included into the list of candidate peptides (Figure
373
4B). To ensure high confidence for specific detection of the targeted analytes, the
374
five best mass transitions for each of the 340 peptides were selected based on
375
SRM signal intensity and the collision energies (CE) for each mass transition was
376
optimized by means of the Skyline software.26
17-19, 27-52
A total number of ~1,600 unique
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Journal of Agricultural and Food Chemistry
377
In order to identify the key bitter peptides, the optimized SRM methods were
378
then used for comparative UPLC-MS/MS analysis of the cheese samples FC9 and
379
aFC9. To achieve this, the water-soluble extracts (WSE) isolated from FC9 and
380
aFC9 were injected in quintuplicates for each method resulting in 1,200 runs: 120
381
SRM methods x 2 samples x 5 injections. In order to reduce complexity and focus
382
on the most important among the 340 candidate bitter peptides, the peptide data
383
were filtered using the following three selection criteria (Figure 3): first, only
384
peptides showing a fold-change of ≥ 3 when comparing the less bitter sample tCC9
385
to the more intense bitter tasting sample aCC9 were further considered; this
386
reduced the target peptides from 340 to 33. Second, only peptides with a signal to
387
noise ratio of ≥ 10 were considered in order to enable reliable quantitation; this
388
reduced the number of target peptides from 33 to 26. Finally, only those peptides
389
were considered that eluted in the MPLC-fractions M2 to M4, as those fractions
390
have been demonstrated to exhibit the highest bitter taste activities; following this
391
filtering approach, a total of 23 peptides were selected as candidate bitter peptides
392
(Figure 5).
393
To verify these peptides, the 23 candidate peptides were synthesized, purified,
394
and their retention times (UPLC) and SRM mass transitions (MS/MS) compared to
395
the data obtained by the UPLC-MS/MS screening of the cheese samples FC9 and
396
aFC9, respectively. Following this approach led to the unequivocal identification of
397
17 candidate peptides in fresh cheese (Table 2). The bitter-tasting fraction M2
398
contained 12 peptides, namely FFSDKIAK, YQQKPVAL, ARHPHPHLSFM,
399
AIPPKKNQDKTEIPTINTIASGEPT,
400
EIVPNS[phos]VEQK,
401
KVLPVPQKAVPYPQ,
INTIASGEPT,
IQKEDVPS, and
VLPVPQ,
VFGKEKVNEL,
DIKQM,
MAPKHKEMPFPKYPVEPF, respectively.
17 ACS Paragon Plus Environment
The
peptides
Journal of Agricultural and Food Chemistry
Page 18 of 46
402
TQTPVVVPPFLQPE and LHLPLP were identified in fraction M3, whereas the three
403
peptides LHLPLPLL, HLPLPLLQ, and VAPFPEVFGKE are found in fraction M4.
404
Upon comparing FC9 and aFC9, the highest fold-changes were found for the
405
κ-casein-derived peptides ARHPHPHLSFM and AIPPKKNQDKTEIPTINTIASGEPT,
406
which were 20.5 and 11.9 times present in higher concentrations in the more
407
intensely bitter tasting cheese aFC9 (Table 2). This cheese sample also contained
408
the other peptides at three- to six-fold increased levels.
409
Grouping of the 1,600 peptides screened by in the cheese samples in
410
alignment with the structures of αs1-, αs2-, β- and κ-casein revealed the seven
411
peptides MAPKHKEMPFPKYPVEPF (β–CN102-119), KVLPVPQKAVPYPQ (β-CN169-
412
182),
413
CN133-138), LHLPLPLL (β–CN133-140), and HLPLPLLQ (β–CN134-141) to be released
414
from β-casein, while κ-casein functioned as precursor for the five peptides
415
FFSDKIAK (κ–CN17-24), YQQKPVAL (κ–CN43-50), ARHPHPHLSFM (κ-CN96-106),
416
AIPPKKNQDKTEIPTINTIASGEPT (κ–CN107-131), and INTIASGEPT (κ–CN122-131),
417
respectively
418
VFGKEKVNEL (αs1-CN31-40), DIKQM (αs1-CN56-60), EIVPNS[phos]VEQK (αs1-CN70-
419
78),
420
whereas, interestingly, no candidate peptides were found to be released from αs2-
421
casein (Figure 6).
and VLPVPQ (β–CN170-175), TQTPVVVPPFLQPE (β–CN78-91), LHLPLP (β–
(Figure
6).
The
five
peptides
VAPFPEVFGKE
(αs1-CN25-35),
and IQKEDVPS (αs1-CN81-88) originate from the sequence of αs1-casein
422
Sequence alignment of the peptides with the structures of αs1-, β- and κ-casein
423
and the potential cleavage sites of the endogenous milk enzymes plasmin,
424
cathepsins B, D, and G, as well as the coagulant enzymes chymosin and
425
lactococcal proteinase are depicted in Figure 7. The sequence of the identified
426
peptide VAPFPEVFGKE (αs1-CN25-35) indicates the action of chymosine55 or
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Journal of Agricultural and Food Chemistry
427
cathepsin D,56 reported to cleave αs1-casein after aa25 (Figure 7A). The C-terminus
428
of VFGKEKVNEL (αs1-CN31-40), EIVPNS[phos]VEQK (αs1-CN70-78), and IQKEDVPS
429
(αs1-CN81-88), respectively, is in alignment with the cleavage of αs1-casein after aa40
430
by chymosin,55 after aa78 by or plasmin,57 and after aa88 by lactococcal
431
proteinase.55 The N-terminus of the peptides ARHPHPHLSFM (κ-CN96-106),
432
AIPPKKNQDKTEIPTINTIASGEPT (κ-CN107-131), MAPKHKEMPFPKYPVEPF (β-
433
CN102-119), LHLPLP (β-CN133-138), LHLPLPLL (β-CN133-140) and KVLPVQKAVPYPQ
434
(β-CN169-182), could be formed during the action of lactococcal proteinase.55, 58
435
It is interesting to notice that most of identified peptides were released from the
436
same sequence domains of ß-casein. The fact that the central part of β-casein is a
437
sensitive substrate for proteases during ripening of several cow cheeses is well
438
documented in the literature.59 For example, three peptides, namely LHLPLP (β–
439
CN133-138), LHLPLPLL (β–CN133-140), and (HLPLPLLQ (β–CN134-141) originate from
440
the region aa(133-141) differing in deletion of one or more amino acid residues at
441
both termini of the peptide sequence (Figure 7B). This indicates the activity of
442
bacterial amino peptidases and carboxy peptidases cleaving amino acids from the
443
individual N- or C-terminus of peptides. Although it is known from literature that
444
bitter peptides are generated mainly from breakdown of αs1- and ß-casein, to the
445
best of our knowledge κ-casein has been identified in the present study for the first
446
time as a source for the generation of bitter peptides (Figure 7C). In order to
447
elucidate the taste contribution of the peptides identified, the human bitter
448
recognition thresholds were determined in the following.
449
Sensory Analysis of Bitter Peptides. Prior to sensory analysis, the purity of
450
the synthesized reference peptides were checked by RP-HPLC, UPLC-ToF-MS and
451
quantitative 1H-NMR53 to be above 98%. In order to determine their bitter taste
19 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
452
threshold concentration, the target peptides were evaluated in aqueous solutions
453
(pH 4.6) by means of the three-alternative forced-choice test in ascending stimulus
454
concentrations up to a maximum concentration of 2000 µmol/L. The bitter taste
455
thresholds determined ranged from 30 (ARHPHPHLSFM) to 690 µmol/L found for
456
IQKEDVPS (Table 2). Among all peptides, the κ-casein-derived ARHPHPHLSFM
457
(κ-CN96-106; 30 µmol/L), the αs1-casein-derived peptides VFGKEKVNEL (αs1-CN31-40;
458
110 µmol/L) and DIKQM (αs1-CN56-60; 60 µmol/L) and the β-casein-derived peptides
459
MAPKHKEMPFPKYPVEPF (β–CN102-119; 90 µmol/L) and LHLPLPLL (β–CN133-140;
460
110 µmol/L) were found with rather low bitter taste thresholds. In contrast, the
461
peptides EIVPNS[phos]VEQK (αs1-CN70-78) and INTIASGEPT (κ–CN122-131) did not
462
exhibit any bitter taste up to the tested concentration of 2000 µmol/L.
463
Quantitation and Dose/Activity Considerations of Bitter Peptides in Fresh
464
Cheese. To investigate the sensory contribution of the identified peptides to the
465
bitter taste of fresh cheese, first, the peptides were quantitated by means of
466
UHPLC-MS/MS-MRM using external calibration with the purified reference peptides.
467
The concentration of the target peptides ranged from 0.2 (IQKEDVPS in tCC9) up to
468
86.8 µmol/kg determined for MAPKHKEMPFPKYPVEPF in aCC12 with the
469
peptides MAPKHKEMPFPKYPVEPF, TQTPVVVPPFLQPE, ARHPHPHLSFM, and
470
VFGKEKVNEL found at high levels (6.6 to 86.8 µmol/kg) in all three cheese
471
samples (Table 3). Comparison of FC9 with the alternatively produced cheese
472
aFC9 revealed increased concentrations of all candidate bitter peptides in the latter
473
sample, e.g. AIPPKKNQDKTEIPTINTIASGEPT, VLPVPQ, INTIASGEPT were 6.7,
474
4.9, and 4.3 times increased in sample aFC9. Next to the manufacturing process,
475
also the protein content of the cheese affected the concentrations of the bitter
476
peptides. The generation of some peptides was favoured with increased protein
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Page 21 of 46
Journal of Agricultural and Food Chemistry
477
content
of
the
cheese,
e.g.
MAPKHKEMPFPKYPVEPF
(β–CN102-119),
478
AIPPKKNQDKTEIPTINTIASGEPT (κ–CN107-131), INTIASGEPT (κ–CN122-131), and
479
KVLPVPQKAVPYPQ (β-CN169-182) increased ~3 times and DIKQM (αs1-CN56-60),
480
ARHPHPHLSFM (κ–CN96-106), IQKEDVPS (αs1-CN81-88) and YQQKPVAL (κ–CN43-
481
50)
482
some other peptides were only marginally affected or even decreased slightly with
483
increasing protein content, such as, LHLPLP (β–CN133-138), VFGKEKVNEL (αs1-
484
CN31-40), EIVPNS[phos]VEQK (αs1-CN70-78), VLPVPQ (β–CN170-175) and HLPLPLLQ
485
(β–CN134-141), respectively.
~2 times when raising the protein content from 9 to 12% (Table 3). In contrary,
486
The dose-over-threshold (DoT) factor was then calculated for each peptide as
487
the ratio of the concentration of a target peptide in fresh cheese and its bitter taste
488
threshold concentration54, 60 (Table 3). A primary bitter taste contribution was found
489
for MAPKHKEMPFPKYPVEPF and ARHPHPHLSFM with DoT-factors of 0.1 and
490
0.2 in FC9, 0.3 and 0.5 in aFC9, and 1.0 and 1.0 on aFC12, respectively. These
491
data are well in line with the perceived increase in bitter taste from samples FC9
492
over aFC9 to aFC12 (Table 1). In comparison, the peptides VFGKEKVNEL, DIKQM
493
and TQTPVVVPPFLQPE were found in samples aFC9 and aFC12 with DoT-factors
494
of 0.1. As bitter compounds of the same chemical class were reported to co-activate
495
the same bitter taste receptors and mixtures of such agonists found to additively
496
increase the perceived bitterness61, such sub-threshold peptides (0.1≤ DoT≤1.0)
497
may contribute to the overall bitter taste perception of the cheese samples aFC9
498
and aFC12, respectively.
499
Sensomics
Mapping
of
Bitter
Peptides
during
Fresh
Cheese
500
Manufacturing. In order to gain a first insight into which manufacturing step is
501
responsible for the formation of the identified peptides, samples were drawn from
21 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
Page 22 of 46
502
standardized fat-free milk and each intermediary product throughout processing of
503
FC9 and aFC9. For the process currently used in industry (FC9), the standardized
504
milk is thermally treated, the caseins are precipitated by adding rennet and starter
505
cultures, followed by separation of the acidic whey by microfiltration (Figure 8A).
506
The alternative process (aFC9) uses the standardized milk which is first
507
concentrated up to a desired protein content by means of microfiltration to afford the
508
sweet whey and the retentate which is then fermented.23 The target peptides were
509
then quantitatively analyzed by LC-MS/MS-MRM and the data summarized in a
510
heatmap, in which the quantitative data in the respective column are scaled to
511
visualized differences within the manufacturing steps (Figure 8B). In the milk
512
samples, only two peptides, namely IQKEDVPS and HLPLPLLQ, were found in very
513
low concentrations of 0.02 µmol/kg. Independent on the manufacturing process,
514
one hour after the addition of rennet the bitter peptide generation seem not to be
515
affected. In comparison, the addition of Lactococcus lactis ssp. as starter culture
516
initiated the spontaneous generation of bitter peptides, e.g. KVLPVPQKAVPYPQ (in
517
FC9) and VLPVPQ (in aFC9) were released in concentrations of 5.5 and 21.1
518
µmol/kg, respectively. While KVLPVPQKAVPYPQ in the FC9 process then
519
decreased to 2.9 µmol/kg with increasing fermentation time to 11 h, the peptides
520
MAPKHKEMPFPKYPVEPF,
521
EIVPNS[phos]VEQK increased from 3.5, 0.3, 0.1, and 0.01 after adding the starter
522
cultures to 6.9, 0.9, 0.6, and 0.1 µmol/kg, respectively, after 11 h of fermentation. In
523
the aFC9 process, fermentation induced a drastic increase of all target peptides,
524
some of which decreased again after running through a maximum after 2 h
525
(KVLPVPQKAVPYPQ), 11 h (VLPVPQ), 13 h (LHLPLP, YQQKPVAL). Taking all
526
these data into account, the different manufacturing processes as well as the
LHLPLPLL,
VAPFPEVFGKE,
22 ACS Paragon Plus Environment
and
Page 23 of 46
Journal of Agricultural and Food Chemistry
527
addition of the starter culture were concluded to have the highest impact on bitter
528
peptide generation.
529
The new “sensoproteomics” approach presented here enabled the
530
successful identification of bitter-tasting key peptides in fresh cheese without the
531
laboratory intensive activity-guided fractionation aimed at resolving extracts into the
532
individual taste-active peptides prior to identification. The combination of crude
533
MPLC-fractionation combined with the taste dilution analysis, followed by UPLC-
534
MS/MS-based screening of the most taste active subfractions for the entire
535
repertoire of literature-known candidate peptides using in silico computed SRM
536
methods, the verification of the target peptides by synthetic references, and, finally,
537
taste threshold analysis, accurate quantitation and dose/activity considerations
538
open a new avenue towards an accelerated identification of taste-active peptides in
539
fermented foods and to follow the evolution of these peptides throughout food
540
manufacturing processes.
541 542
ACKNOWLEDGMENT
543
This IGF Project of the FEI is supported via AiF within the program for
544
promoting the Industrial Collective Research (IGF) of the German Ministry of
545
Economic Affairs and Energy (BMWi), based on a resolution of the German
546
Parliament. Furthermore, we thank R. Hammerl for the acquisition of the
547
quantitative NMR data.
548 549 550
SUPPORTING INFORMATION AVAILABLE
23 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
551
MS parameter, peptide data and concentrations of peptides in intermediates
552
throughout the fresh cheese manufacturing process are available free of charge via
553
the Internet at http://pubs.acs.org.
554 555 556
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Journal of Agricultural and Food Chemistry
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angiotensin-I-converting enzyme. British Journal of Nutrition 2000, 84, 33-37.
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(33) Farvin, K. S.; Baron, C. P.; Nielsen, N. S.; Otte, J.; Jacobsen, C., Antioxidant
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activity of yoghurt peptides: Part 2–Characterisation of peptide fractions. Food
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Chem. 2010, 123, 1090-1097.
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(34) Pihlanto-Leppälä, A.; Rokka, T.; Korhonen, H., Angiotensin I converting
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enzyme inhibitory peptides derived from bovine milk proteins. Int. Dairy J. 1998, 8,
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325-331.
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(35) Capriotti, A. L.; Cavaliere, C.; Piovesana, S.; Samperi, R.; Laganà, A., Recent
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trends in the analysis of bioactive peptides in milk and dairy products. Anal. Bioanal.
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Chem. 2016, 408, 2677-2685.
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(36) Saito, T., Antihypertensive peptides derived from bovine casein and whey
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proteins. In Bioactive components of milk, Springer: 2008; pp 295-317.
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(37) Alli, I.; Okoniewska, M.; Gibbs, B.; Konishi, Y., Identification of peptides in
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Cheddar cheese by electrospray ionization mass spectrometry. Int. Dairy J. 1998, 8,
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643-649.
664
(38) Abubakar, A.; Saito, T.; Kitazawa, H.; Kawai, Y.; Itoh, T., Structural analysis of
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new antihypertensive peptides derived from cheese whey protein by proteinase K
666
digestion. J. Dairy Sci. 1998, 81, 3131-3138.
667
(39) Saito, T.; Nakamura, T.; Kitazawa, H.; Kawai, Y.; Itoh, T., Isolation and
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structural analysis of antihypertensive peptides that exist naturally in Gouda cheese.
669
J. Dairy Sci. 2000, 83, 1434-1440.
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(40) Haileselassie, S.; Lee, B.; Gibbs, B., Purification and identification of potentially
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bioactive peptides from enzyme-modified cheese. J. Dairy Sci. 1999, 82, 1612-
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1617.
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(41) Lee, K.; Warthesen, J., Mobile Phases in Reverse‐Phase HPLC for the
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Determination of Bitter Peptides in Cheese. J. Food Sci. 1996, 61, 291-294.
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(42) Meisel, H.; Bockelmann, W., Bioactive peptides encrypted in milk proteins:
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proteolytic activation and thropho-functional properties. A. Van Leeuw. J. Microb.
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1999, 76, 207-215.
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(43) Michaelidou, A.; Alichanidis, E.; Urlaub, H.; Polychroniadou, A.; Zerfiridis, G.
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K., Isolation and identification of some major water-soluble peptides in Feta cheese.
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J. Dairy Sci. 1998, 81, 3109-3116.
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(44) Pihlanto-Leppälä, A., Bioactive peptides derived from bovine whey proteins:
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opioid and ace-inhibitory peptides. Trends Food Sci. Technol. 2000, 11, 347-356.
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(45) Fitzgerald, R. J.; Murray, B. A., Bioactive peptides and lactic fermentations. Int.
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J. Dairy Technol. 2006, 59, 118-125.
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(46) Rizzello, C.; Losito, I.; Gobbetti, M.; Carbonara, T.; De Bari, M.; Zambonin, P.,
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Antibacterial activities of peptides from the water-soluble extracts of Italian cheese
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varieties. J. Dairy Sci. 2005, 88, 2348-2360.
688
(47) Gómez-Ruiz, J. Á.; Ramos, M.; Recio, I., Identification and formation of
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angiotensin-converting enzyme-inhibitory peptides in Manchego cheese by high-
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performance liquid chromatography–tandem mass spectrometry. J. Chromatogr., A
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2004, 1054, 269-277.
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(48) Gouldsworthy, A. M.; Leaver, J.; Banks, J. M., Application of a mass
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spectrometry sequencing technique for identifying peptides present in Cheddar
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cheese. Int. Dairy J. 1996, 6, 781-790.
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(49) Silva, R. A.; Bezerra, V. S.; Pimentel, M. d. C. B.; Porto, A. L. F.; Cavalcanti, M.
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T. H.; José Luiz Filho, L., Proteomic and peptidomic profiling of Brazilian artisanal
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‘Coalho’cheese. J. Sci. Food Agric. 2016.
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(50) Gagnaire, V.; Mollé, D.; Herrouin, M.; Léonil, J., Peptides identified during
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Emmental cheese ripening: origin and proteolytic systems involved. J. Agric. Food
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Chem. 2001, 49, 4402-4413.
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(51) Hernández-Ledesma, B.; Amigo, L.; Ramos, M.; Recio, I., Application of high-
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performance liquid chromatography–tandem mass spectrometry to the identification
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of biologically active peptides produced by milk fermentation and simulated
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gastrointestinal digestion. J. Chromatogr., A 2004, 1049, 107-114.
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(52) Hernández‐Ledesma, B.; Miralles, B.; Amigo, L.; Ramos, M.; Recio, I.,
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Identification of antioxidant and ACE‐inhibitory peptides in fermented milk. J. Sci.
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Food Agric. 2005, 85, 1041-1048.
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(53) Frank, O.; Kreissl, J. K.; Daschner, A.; Hofmann, T., Accurate Determination of
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Reference Materials and Natural Isolates by Means of Quantitative 1H NMR
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Spectroscopy. J. Agric. Food Chem. 2014, 62, 2506-2515.
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(54) Hillmann, H.; Hofmann, T., Quantitation of key tastants and re-engineering the
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taste of Parmesan cheese. J. Agric. Food Chem. 2016, 64, 1794-1805.
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(55) Sousa, M.; Ardö, Y.; McSweeney, P., Advances in the study of proteolysis
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during cheese ripening. Int. Dairy J. 2001, 11, 327-345.
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(56) Hurley, M.; Larsen, L.; Kelly, A.; McSweeney, P., The milk acid proteinase
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cathepsin D: a review. Int. Dairy J. 2000, 10, 673-681.
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(57) Le Bars, D.; Gripon, J., Hydrolysis of αs1-casein by bovine plasmin. Le Lait
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1993, 73, 337-344.
719
(58) Kunji, E. R.; Mierau, I.; Hagting, A.; Poolman, B.; Konings, W. N., The
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proteotytic systems of lactic acid bacteria. A. Van Leeuw. J. Microb. 1996, 70, 187-
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221.
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722
(59) Ferranti, P.; Itolli, E.; Barone, F.; Malorni, A.; Garro, G.; Laezza, P.; Chianese,
723
L.; Migliaccio, F.; Stingo, V.; Addeo, F., Combined high resolution chromatographic
724
techniques (FPLC and HPLC) and mass spectrometry-based identification of
725
peptides and proteins in Grana Padano cheese. Le lait 1997, 77, 683-697.
726
(60) Toelstede, S.; Hofmann, T., Quantitative studies and taste re-engineering
727
experiments toward the decoding of the nonvolatile sensometabolome of Gouda
728
cheese. J. Agric. Food Chem. 2008, 56, 5299-5307.
729
(61) Intelmann, D.; Batram, C.; Kuhn, C.; Haseleu, G.; Meyerhof, W.; Hofmann, T.,
730
Three TAS2R bitter taste receptors mediate the psychophysical responses to bitter
731
compounds of hops (Humulus lupulus L.) and beer. Chemosens. Percept. 2009, 2,
732
118-132.
733
(62) Considine, T.; Geary, S.; Kelly, A.; McSweeney, P., Proteolytic specificity of
734
cathepsin G on bovine α s1-and β-caseins. Food Chem. 2002, 76, 59-67.
735
(63) Considine, T.; Healy, A.; Kelly, A.; McSweeney, P., Hydrolysis of bovine
736
caseins by cathepsin B, a cysteine proteinase indigenous to milk. Int. Dairy J. 2004,
737
14, 117-124.
738 739
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Journal of Agricultural and Food Chemistry
Figure Captions
741 742
Figure 1. Literature meta-analysis on cleavage peptides from bovine caseins with
743
(A) number of peptides previously identified (taken from literature
744
references) and (B) the distribution of amino acid residues of unique
745
peptides.
746 747
Figure 2. (A) RP 18-MPLC-ELSD chromatogram of the high-molecular weight
748
(HMW)-fraction isolated from fresh cheese sample FC12 and UPLC-
749
TOF-MS analysis of the bitter-tasting MPLC fractions M2 (B), M3 (C),
750
and M4 (D).
751 752 753
Figure 3. Experimental workflow of the “sensoproteomics” approach used for the identification of bitter peptides in fresh cheese.
754 755
Figure 4. Mass transition chromatograms of doubly and triply charged ions for (A)
756
FALPQYLKTVYQHQ as an example for a candidate peptide not existing
757
in fresh cheese and (B) for ARHPHPHLSFM as an example for a
758
candidate peptide detected in fresh cheese.
759 760
Figure 5. Molecular weight to fold-change diagram showing the 340 candidate
761
peptides detected in the water-soluble extract (WSE) of the fresh cheese
762
sample aFC9 (black points). For further analysis, 23 peptides (red points)
763
were considered that were located in the bitter tasting MPLC fractions 33 ACS Paragon Plus Environment
Journal of Agricultural and Food Chemistry
764
with a signal to noise ratio of ≥ 10 and with a fold-change of ≥ 3 between
765
samples FC9 and aFC9.
766 767
Figure 6. Phylogenetic tree of peptide sequences identified in literature with
768
highlighted bitter peptides generated from bovine proteins αs1- (red), β-
769
(green) and κ-casein (purple) in fresh cheese. No bitter peptides were
770
found to originate from αs2-casein (blue).
771 772
Figure 7. Amino acid sequence of bovine αs1- (A), β- (B) and κ-(C)-casein and
773
assignment of the identified bitter peptides (black arrows) as well as
774
candidate cleavage sites of the endogenous milk enzymes plasmin
775
(pentagon), cathepsin B, G and D (triangles), and the rennet enzyme
776
chymosin (square) and the lactococcus lactis ssp. protease (cycle)
777
(adapted from ref 17, 55-58, 62, 63).
778 779
Figure 8. (A) Process flow for the processing of fresh cheese using the currently
780
used fermentation-concentration (left) and the alternative concentration-
781
fermentation process (right), and (B) scaled quantitative mapping of the
782
evolution of bitter peptides throughout the processes. The dendrogram is
783
based on an agglomerative linkage algorithm.
784
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Journal of Agricultural and Food Chemistry
785
Table 1. Taste Profile of Fresh cheese, Water-Soluble Extract (WSE), Methanolic
786
Extract (ME), and the Low-Molecular Weight (LMW) and High-Molecular Weight
787
Fraction (HMW) Prepared from WSE
intensity2 of the taste qualities sample
1
bitter
sour
FC9
1.6 ± 0.4
2.4 ± 0.4
aFC9
2.0 ± 0.5
2.7 ± 0.4
aFC12
2.6 ± 0.4
2.3 ± 0.3
WSE
2.1 ± 0.5
3.6 ± 0.5
ME
0.6 ± 0.3
0.4 ± 0.2
LMW
0.6 ± 0.1
3.4 ± 0.3
HMW
3.1 ± 0.4
1.0 ± 0.2
fresh cheese
extracts made from aFC12
788
1
789
content prepared by the fermentation-concentration process (FC9), two fat-free
790
fresh cheeses with 9 (aFC9) and 12% protein (aFC12), both made by the alternative
791
concentration-fermentation process, and the water soluble extract (WSE), methanol
792
extract (ME), the low-molecular weight fraction (LMW; ≤ 1 kDa), and the high-
Samples used for sensory analysis were a fat-free fresh cheese with 9% protein
793
molecular weight fraction (HMW; > 1 kDa) isolated from the cheese sample aFC12.
794
2
795
is given as the mean of triplicates.
Intensity was rated on a scale from 0 (not detectable) to 5 (strongly detectable) and
796 797 798 799
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Page 36 of 46
800
Table 2. Molecular Weight, Casein Sequence Alignment, and Bitter Taste
801
Thresholds (BTC) of Peptides Identified in Fresh Cheese sequence
MW
alignment2
[Da]
VAPFPEVFGKE
αs1-CN (25-35)
1218.64
4.7
570
VFGKEKVNEL
αs1-CN (31-40)
1161.65
2.9
110
DIKQM
αs1-CN (56-60)
633.32
5
60
EIVPNS[phos]VEQK
αs1-CN (70-78)
1221.57
4
< 1200
IQKEDVPS
αs1-CN (81-88)
914.48
3.1
690
MAPKHKEMPFPKYPVEPF
β–CN (102-119)
2172.10
3.4
90
LHLPLP
β–CN (133-138)
688.43
3.5
340
LHLPLPLL
β–CN (133-140)
914.60
3
110
HLPLPLLQ
β–CN (134-141)
929.58
3.7
440
VLPVPQ
β–CN (170-175)
651.40
4
310
TQTPVVVPPFLQPE
β–CN (78-91)
1550.84
3
280
KVLPVPQKAVPYPQ
β-CN (169-182)
1562.93
3.1
140
AIPPKKNQDKTEIPTINTIASGEPT
κ–CN (107-131)
2663.43
11.9
290
INTIASGEPT
κ–CN (122-131)
1001.51
3
< 1500
FFSDKIAK
κ–CN (17-24)
954.52
5.8
570
YQQKPVAL
κ–CN (43-50)
945.54
5.3
500
ARHPHPHLSFM
κ-CN (96-106)
1328.67
20.5
30
peptides sequence1
BTC
FC3
[µmol/L]4
802
1
Sequences given in one-letter code. 2αs1-CN variant B; β-CN variant A2, κ-CN
803
variant A. 3Fold-change of a peptide is calculated by the quotient of the area in the
804
bitter-tasting (aFC9) and less bitter-tasting fresh cheese (FC9). 4Taste threshold
805
concentrations were determined by means of a 3-AFC-test in bottled water (pH 4.6).
806 36 ACS Paragon Plus Environment
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Journal of Agricultural and Food Chemistry
807
Table 3. Bitter Taste Thresholds, Concentrations and Dose-over-Threshold (DoT)
808
Factors of Candidate Marker Peptides in the Investigated Fresh Cheese Samples conc. [µmol/kg]2 (DoT-factor3) in
1
peptides sequence
FC9
aFC9
aFC12
AIPPKKNQDKTEIPTINTIASGEPT
1.3 (