Journal Pre-proof Integrative metabolomics-flavoromics to monitor dynamic changes of ‘Nam Dok Mai’ mango (Mangifera indica Linn) wine during fermentation and storage Nutthapol Wattanakul, Sumallika Morakul, Yaowapa Lorjaroenphon, Kriskamol Na Jom PII:
S2212-4292(19)30381-5
DOI:
https://doi.org/10.1016/j.fbio.2020.100549
Reference:
FBIO 100549
To appear in:
Food Bioscience
Received Date: 24 April 2019 Revised Date:
25 February 2020
Accepted Date: 25 February 2020
Please cite this article as: Wattanakul N., Morakul S., Lorjaroenphon Y. & Jom K.N., Integrative metabolomics-flavoromics to monitor dynamic changes of ‘Nam Dok Mai’ mango (Mangifera indica Linn) wine during fermentation and storage, Food Bioscience (2020), doi: https://doi.org/10.1016/ j.fbio.2020.100549. This is a PDF file of an article that has undergone enhancements after acceptance, such as the addition of a cover page and metadata, and formatting for readability, but it is not yet the definitive version of record. This version will undergo additional copyediting, typesetting and review before it is published in its final form, but we are providing this version to give early visibility of the article. Please note that, during the production process, errors may be discovered which could affect the content, and all legal disclaimers that apply to the journal pertain. © 2020 Published by Elsevier Ltd.
CRediT author statement Nutthapol Wattanakul: Formal analysis, Methodology, Writing- Original draft preparation. Sumallika Morakul: Resources, Visualization. Yaowapa Lorjaroenphon: Software, Validation. Kriskamol Na Jom: Conceptualization, Writing- Reviewing, Editing and Supervision.
1
Integrative metabolomics-flavoromics to monitor dynamic changes of ‘Nam Dok Mai’
2
mango (Mangifera indica Linn) wine during fermentation and storage
3 4
Nutthapol Wattanakula, Sumallika Morakulb, Yaowapa Lorjaroenphona, and Kriskamol
5
Na Joma*
6 7 8 9 10
a
Department of Food Science and Technology, Faculty of Agro-Industry, Kasetsart University, Bangkok, Thailand
11 12 13
b
Department of Biotechnology, Faculty of Agro-Industry, Kasetsart University, Bangkok, Thailand
14 15 16 17 18 19 20 21
* Correspondance to: Dr. Kriskamol Na Jom, Department of Food Science and Technology,
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Faculty of Agro-Industry, Kasetsart University, Bangkok, 10900 Thailand, Telephone: +66 (0)
23
2562 5020, Fax: +66 (0) 2562 5021, email:
[email protected]
1
24
Abstract
25
The ‘Nam Dok Mai’ variety is an important mango variety with a short shelf-life. Wine
26
production is one of the new opportunities to process such low-quality mangoes. ‘Nam Dok Mai’
27
mango juice with 22 °Brix and pH 4 was prepared. Laboratory scale fermentation was done at
28
20±2°C for 18 d. After fermentation was completed, the mango wine was bottled and stored at
29
10 to 12°C for 3 months. The pH of the mango wine decreased from 0 to 4 d and then remained
30
stable at ~pH 3 to the end of fermentation. The Brix sucrose of the product decreased from 22 to
31
3.6 °Brix at 12 d of fermentation and was stable thereafter. The alcohol percentage of the
32
samples increased to 13% by the last fermentation day and then dropped to 11% during storage.
33
Fifty-six compounds could be identified using metabolomic analysis accounting for ~40% of all
34
metabolites during fermentation and storage. Principal component analysis was used to
35
differentiate all samples based on the metabolites and flavor compounds observed. The finished
36
mango wine was separated from other samples along a PC biplot by acid compounds. Relative
37
targeted quantification using heat plots of the metabolite and flavor components showed
38
decreases in fatty acid methyl esters (FAME), free fatty acids, fatty alcohols, sugars, and
39
terpenes during fermentation. On the other hand, acids, glycerol, ethyl esters, and higher alcohols
40
increased during fermentation. Correlation analysis resulted in a strong positive relationship
41
between FAME with sterols, sugars, higher alcohols, ketones, aldehydes, terpenes, and volatile
42
acids.
43 44 45
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Keywords: mango wine, metabolite profiles, flavor profiles, Nam Dok Mai, fruit wine analysis,
47
Mangifera indica Linn
48
1. Introduction
49
Mango (Mangifera indica Linn) is an important fruit worldwide. Mango production was
50
the seventh-highest in world fruit production behind bananas, grapes, oranges, apples, coconuts,
51
and plantains, with Thailand being third-ranked in 2014 behind India and China (Food and
52
Agriculture Organization of the United Nations, 2014). In Thailand, there are many mango
53
cultivars such as Maha Chanok, Thong Dam, Okrong Thong, Khiaw Sawoei, and Nam Dok Mai,
54
which are eaten as ripened fruit. The variety ‘Nam Dok Mai’ is popular not only with Thai
55
people, but also with international consumers because of its unique aroma and taste. It also
56
contains higher amounts of vitamin A, vitamin C, and α-carotene, which provide health benefits
57
(Reddy and Reddy, 2005). However, mangoes are climacteric fruits with a short shelf-life and
58
rapid deterioration (Tharanathan et al., 2006). The excess amounts are preserved in various
59
manners, including stirred mango sheets, dried mango slices, canned mango, and mango pickles.
60
Wine production is one opportunity to improve the value of low-quality mangoes (Reddy et al.,
61
2014). However, there are many factors affecting mango wine characteristics. The effects of
62
fermentation temperature and SO2 addition have been reported by Reddy and Reddy (2011), with
63
the fermentation temperature affecting not only the duration and rate of yeast fermentation, but
64
also the yeast metabolism, which combine to define the chemical composition and the quality of
65
the wine. Furthermore, the addition of SO2 can affect volatile compound synthesis during
66
fermentation such as acetaldehyde formation (Liu and Pilone, 2000). Not only the conditions for
67
wine-making, but also the yeast strains can influence the character of mango wine. Changes in
3
68
mango wine characteristics following fermentation using three different Saccharomyces
69
cerevisiae yeast stains have been reported (Li et al., 2012).
70
Metabolomics is one of the omic family that focuses on small molecule metabolites from
71
cells, tissues, organs, and organisms. Metabolites can be divided into primary metabolites, that
72
are essential to sustain the life of every organism, while secondary metabolites are not essential
73
but are necessary for survival in any stressed environment (Limwiwattana et al., 2016). Changes
74
in metabolites are relative to changes in the proteome, transcriptome, and genome.
75
Not only metabolic changes, but also the flavor changes could be observed during the
76
mango wine process. Flavoromics, which is also called flavor omics or flavor metabolomics, is
77
used to study targeted and non-targeted flavor compounds in food. Consequently, the
78
flavoromics approach provides an overview of the chemical components involved in flavor
79
formation (Charve, 2011). Therefore, metabolomics and flavoromics might be applied to wines
80
to study changes in chemical components during fermentation and storage.
81
The purposes of this study were to investigate changes in metabolites together with flavor
82
components during ‘Nam Dok Mai’ mango wine fermentation using a combination of
83
metabolomics and flavoromics techniques.
84 85
2. Materials and Methods
86
2.1. Chemicals
87
Chemicals for the extraction and derivatization, including hydroxy ammonium chloride,
88
methyl tertiary-butyl ether, pyridine, and sodium-methylate were HPLC grade purchased from
89
Sigma Aldrich Co. (St. Louis, MO, USA). N-Methyl-N-(trimethylsilyl) trifluoroacetamide
90
(MSTFA) and N-trimethylsilylimidazole (TMSIM) were GC derivatization grade purchased
4
91
from Sigma Aldrich. Acetonitrile, dichloromethane, hexane, and methanol were analytical grade
92
purchased from RCI Labscan Ltd. (Pathumwan, Bangkok, Thailand). All internal standards for
93
metabolomics, including tetracosane, 5α-cholestane-3β-ol, phenyl-β-D-glucopyranoside, and ρ-
94
chloro-L-phenylalanine were standard grade purchased from Sigma Aldrich. Reference standards
95
for metabolomics, including lauric acid methyl ester (12:0 FAME), myristic acid methyl ester
96
(14:0 FAME), pentadecanoic acid methyl ester (15:0 FAME), pentadecenoic acid methyl ester
97
15:1 FAME, palmitic acid methyl ester (16:0 FAME), palmitoleic acid methyl ester (16:1
98
FAME), steric acid methyl ester (18:0 FAME), oleic acid methyl ester (18:1 FAME), linoleic
99
acid methyl ester (18:2 FAME), linolenic acid methyl ester (18:3 FAME), erucic acid methyl
100
ester (22:1 FAME), tricosanoic acid methyl ester (23:0 FAME), nonanoic acid (9:0 FFA), lauric
101
acid (12:0 FFA), methyl-p-hydroxy cinnamate, methyl ferulate, hexadecanol (16:0-OH), steric
102
acid (18:0 FFA), oleic acid (18:1 FFA), linoleic acid (18:2 FFA), linolenic acid (18:3 FFA),
103
arachidyl alcohol (20:0-OH), linoleyl alcohol (9,12-OH 18:0), behenyl alcohol (22:0-OH), 1-
104
octacosanol (28:0-OH), campesterol, β-sitosterol, sitostanol, stigmasterol, gramisterol, ∆7-
105
avenasterol, citrostradienol, glycerol, fructose, glucose, mannitol, sorbitol, myo-inositol, sucrose,
106
trehalose, glycine, 4-hydroxybutyric acid, leucine, isoleucine, proline, succinic acid, fumaric
107
acid, threonine, β-aminoisobutyric acid, malic acid, pyroglutamic acid, γ-aminobutyric acid,
108
threonic acid, glutamine, citric acid, histidine, and tyrosine were purchased from Sigma Aldrich.
109
A C6-C30 n-alkane mixture used for determination of linear retention indices was purchased
110
from Sigma-Aldrich. Reference standards for flavoromics, including isobutyl acetate, butanoic
111
acid ethyl ester, 1-propanol, 2-methyl-1-propanol (isobutanol), 1-butanol-3-methyl acetate
112
(isoamyl acetate), 3-methyl-1-butanol (isoamyl alcohol), hexanoic acid ethyl ester, acetic acid
113
hexyl ester, acetoin, 3-hexen-1-ol acetate, 6-methyl-5-hepten-2-one, 3-hexen-1-ol, octanoic acid
5
114
methyl ester, isopentyl hexanoate, 2-ethyl-1-hexanol, benzaldehyde, nonanoic acid ethyl ester,
115
linalool, 1-octanol, 2-methyl propanoic acid (isobutyric acid), caryophyllene, butanoic acid,
116
acetophenone, decanoic acid ethyl ester, octanoic acid 3-methylbutyl ester, humulene, ethyl 9-
117
decenoate, acetic acid 2-phenylethyl ester, dodecanoic acid ethyl ester, phenylethyl alcohol,
118
trans-β-ionone, octanoic acid, and hexadecanoic acid ethyl ester were standard grade purchased
119
from Sigma Aldrich. Citronellol and geraniol analytical standards were purchased from
120
Bedoukian (Danbury, CT, USA). Benzyl alcohol was purchased from J.T. Baker (Phillipsburg,
121
NJ, USA).
122
2.2. Selection of ‘Nam Dok Mai’ mango
123
Ten kg of ‘Nam Dok Mai’ mangoes (Mangifera indica L.) were sourced from a
124
commercial mango orchard (certified by the Department of Agriculture, Ministry of Agriculture
125
and Cooperatives of Thailand) in Kaeng Khoi district, Saraburi province in central Thailand.
126
They were all harvested in May 2017 after 90 to 100 d of the fruit-set stage and immediately
127
transported to Kasetsart University, Bangkok, Thailand with controlled temperature (4°C) in a
128
refrigerated truck. The transportation time was ~1 h. Mangoes were selected with weights of 400
129
to 420 g, lengths of 14 to 16 cm and widths of 7 to 9 cm. Their densities were determined using
130
floatation in a 3% NaCl solution and sinking in 1% NaCl for their homogeneity maturity index in
131
term of a specific gravity value (Sriwimon and Boonsupthip, 2011). The selected samples were
132
kept at 30±2°C and a relative humidity of 75±2% for ripening. Samples were taken after 8 d of
133
ripening. Mangoes were washed with tap water, peeled by hand with a knife, and cut into small
134
pieces (~2 cm3) before being stored at -20°C for a maximum of 3 wk.
135
2.3. Mango wine-making
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136
The mango wine-making process was modified from Li et al. (2012a). Frozen mango was
137
thawed at room temperature (25±2°C) for 1 h. After puréeing the mango using a spatula without
138
filtration, tap water was added to make 30% w/w mango juice called must. A sample of 5 L was
139
adjusted to 22 °Brix by adding sucrose and adjusted to pH 4 using 50% w/w citric acid solution.
140
Then, 200 mg/mL potassium metabisulfite (KMS) and 500 mg/mL diammonium phosphate
141
(DAP) were added and the mixture was left in a 7 L fermentation tank for 1 d at room
142
temperature. Five g of dry commercial wine yeast, Saccharomyces bayanus Lalvin EC 1118
143
(Lallemand Inc., Montreal, Quebec, Canada) were activated in 20 mL of tap water at 35°C for 15
144
min and then 4 mL of yeast solution was inoculated into the must. Fermentation was done in
145
quadruplicates at 20±2°C for 18 d with 100 mL sampling every 2 d. After fermentation, the
146
mango wine tanks were stabilized in a chilled controlled temperature room (0-4°C) for 2 wk.
147
Stabilized wine was filtered using a cellulose membrane (Whatman filter paper No. 4, pore size
148
20-25 µm, Whatman International Ltd., Maidstone, UK) and filled into 200 mL green bottles
149
then closed with sterilized screw caps. All wine bottles were stored in a controlled temperature
150
room at 10-12°C (the recommended storage temperature for commercial dry white wine) for 3
151
months. Samples were taken every month.
152
2.4. Physico-chemical analysis of mango juice and wine
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Total soluble solids as °Brix were measured using a refractometer (DR6000, Krüss,
154
Hamburg, Germany) (Sadineni et al., 2012). The pH was measured using a pH meter (Model
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3510, Jenway, West Thurrock, UK) (Garde-Cerdán and Ancín-Azpilicueta, 2008). The
156
%titratable acidity was measured using 0.1 M NaOH solution and phenolphthalein was used as
157
an indicator. The results were shown as g citric acid/100 mL mango wine according to AOAC
158
(1990) method number 942.15. The total sugar content was measured using the phenol-sulfuric
7
159
method (Dubois et al., 1956). Sample or glucose standard solution (2 mL) was mixed with 1 mL
160
5% phenol solution and 5 mL 96% sulphuric acid. The mixture was mixed using a Vortex mixer
161
(VX100, Labnet International Inc., Edison, NJ, USA) and allowed to stand at room temperature
162
for 30 min. The absorbance was measured at 490 nm using a spectrophotometer (Genesys 10S
163
UV-Vis, Thermo Fisher Scientific Inc., Waltham, MA, USA). The reducing sugar content,
164
including glucose and fructose, was measured using the dinitro salicylic acid (DNS) method
165
modified from Miller (1959) and Zeng et al. (2018). Sample or glucose standard solution (1 mL)
166
was mixed with 1 mL DNS reagent. The mixture was incubated in a boiling water bath for 5 min.
167
After cooling in an ice bath for 5 min, the absorbance was measured at 540 nm. The alcohol
168
percentage was measured using the dichromate method modified from Zoecklein et al. (1995).
169
The wine (1 mL) was distilled into 25 mL acidified dichromate at 60±2°C for 25 min. The
170
solution was titrated with ferrous ammonium sulphate until the color changes from emerald
171
green to brown.
172
2.5. Metabolomics
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2.5.1. Sample extraction and fractionation
174
The extraction was modified from Limwiwattana et al. (2016). Both non-polar (lipid) and
175
polar low molecular weight (MW) compounds could be determined. A sample of 10 mL of the
176
wine was obtained using liquid-liquid extraction by adding 10 mL of methanol:water solution
177
(80:20 v/v) and 4 mL of dichloromethane. Then, 100 µL 1 mg/mL tetracosane and 100 µL 1
178
mg/mL 5α-cholestane-3β-ol were added as the internal standard for the lipid fraction. For the
179
polar fraction, 250 µL 1 mg/mL phenyl-β-D-glucopyranoside and 250 µL 1 mg/mL ρ-chloro-L-
180
phenylalanine were added. The solution was mixed and sonicated in an ultrasonic bath (Model
8
181
575T, 400 W, Crest Ultrasonics Corp., Ewing Township, NJ, USA) for 15 min at room
182
temperature (25±2°C) before separation of the two phases.
183
2.5.2. Lipid fractionation
184
Before fractionation, 1.5 mL of lipid extract was taken from the dichloromethane phase
185
and evaporated until dry using a parallel evaporator (Syncore Polyvap, Buchi, Flawil,
186
Switzerland). Then re-dissolved with 500 µL methyl tertiary-butyl ether, 300 µL methanol, and
187
50 µL 5.4 M sodium-methylate in methanol for transesterification. After reaction for 90 min in
188
the dark at room temperature, selective hydrolysis was done by adding 1 mL dichloromethane
189
and 2 mL 0.35 M HCl solution. The HCl phase was removed and the lower phase containing the
190
transmethylated lipid was evaporated until dry using the parallel evaporator at 50°C and then re-
191
dissolved with dichloromethane. Transmethylated lipids, i.e., FAME and polar lipids were
192
fractionated using elution with different concentrations of hexane:methyl tertiary-butyl ether
193
(hexane:MTBE) solution in a solid-phase microextraction C18-LP cartridge (Vertical
194
Chromatography Co., Ltd., Nonthaburi, Thailand). The FAME fraction (fraction 1) was eluted
195
with 6 mL 100:2 v/v hexane:MTBE solution and then evaporated until dry. The residue was re-
196
dissolved using 300 µL hexane and 1 µL was used for GC. The polar lipids fraction (fraction 2),
197
which still remained in the cartridge, was eluted with 6 mL 70:30 v/v hexane:MTBE solution
198
and then evaporated until dry. The residue of fraction 2 was re-dissolved using 250 µL pyridine
199
and 50 µL MSTFA. After argon flushing, silylation was done in a water bath at 70°C for 30 min
200
and 1 µL was measured using GC. All lipid fractions were immediately stored at -20°C until GC
201
analysis. The GC analysis was done within 2 wk.
202
2.5.3. Polar fractionation
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The polar extract was fractionated into two fractions of sugars and acids. A sample of 200
204
µL polar extract was taken from the 80:20 v/v methanol:water solution and silylated using 100
205
µL TMSIM as a silylating agent and 300 µL pyridine. Silylation was done in a water bath at
206
70°C for 15 min. Then, the solution was diluted with 300 µL hexane and selective hydrolysis of
207
amino acids and fatty acids was done adding 300 µL deionized water (generated from Purelab
208
Option, ELGA LabWater Co., High Wycombe, UK). The upper phase of hexane was collected,
209
which contained silylated sugars and sugar alcohols (fraction 3) and made ready for GC analysis.
210
For the acid fractionation (fraction 4), 200 µL polar extract was oximated by adding 300 µL 2
211
mg/mL hydroxy ammonium chloride in pyridine. After oximation at 70°C for 30 min, 100 µL N-
212
methyl-N-(trimethylsilyl) fluoroacetamide was added for silylation. The sample was silylated in
213
a water bath at 70°C for 15 min. Selective hydrolysis was done by adding 500 µL hexane and
214
300 µL deionized water. The upper phase of hexane containing silylated sugars was removed and
215
the lower phase containing amino and organic acids was re-silylated adding 50 µL MSTFA in
216
200 µL acetonitrile. Silylation was done in a water bath at 70°C for 60 min. The sample was
217
ready for GC analysis.
218
2.5.4. GC-FID analysis
219
All samples were measured using GC coupled with a flame ionization detector (Hewlett
220
Packard, Palo Alto, CA, USA). The separation was done using a DB-1 capillary column (60 m ×
221
0.32 mm × 0.25 µm film thickness) with a 100% dimethylpolysiloxane stationary phase (Agilent
222
Technologies, Santa Clara, CA, USA). Each sample of 1 µL was injected into the GC-FID in
223
splitless mode and helium was used as the carrier gas at a constant flow rate of 1.8 mL/min. The
224
inlet temperature was 280°C. The oven temperature program started at 100°C, then ramped to
225
320°C at 4°C/min and was held at 320°C for 25 min. The detector temperature was 320°C.
10
226
2.6. Flavoromics
227
2.6.1. Sample extraction
228
The extraction was modified from Torrens et al. (2004). The extraction was done using
229
the autosampler headspace solid-phase microextraction (HS-SPME) method. A sample of 5 mL
230
was spiked with 10 µL 0.1 mg/mL methyl nonanoate in the methanol as an internal standard.
231
Then, 1 g NaCl was added to increase volatility in the headspace. The sample was automatically
232
equilibrated at 50°C for 20 min. A 50/30 µm divinylbenzene/carboxen/polydimethylbenzene
233
(DVB/CAR/PDMS) fiber (Supelco, Bellefonte, PA, USA) was inserted and exposed to the
234
headspace with a penetration length of 10 mm at 50°C for 40 min. After the absorption step, the
235
fiber was desorbed in the GC injection port at 250°C for 5 min.
236
2.6.2. GC-ToF-MS analysis
237
All volatile compounds were measured and identified using a GC 7890A coupled with a
238
time of flight mass spectrometer (Agilent Technologies). The separation was done using a
239
Stabilwax fused silica column (30 m × 0.25 mm × 0.25 µm film thickness) with a cross-bond
240
polyethylene glycol stationary phase (Restek, Bellefonte, PA, USA). The temperature program
241
started at 40°C for 5 min and was ramped at 4°C/min to 225°C and then held for 15 min. For
242
mass spectrometry, the ion source temperature was 200°C and the transfer line temperature was
243
225°C. Mass spectra were scanned at -70 eV in the m/z range of 35 to 500 atomic mass units
244
(amu). Identification and quantification of flavor compounds were processed using the
245
ChromaTOF-GC Software v4.50.8.0 (Leco, St. Joseph, MI, USA).
246
2.7. Statistical data analysis
247
Data of all physicochemical measurements were obtained from 4 replications and
248
reported as means±standard deviation (SD). One-way analysis of variance (ANOVA) was done
11
249
using the International Business Machines’ Statistical Package for the Social Sciences (SPSS)
250
software version 21 (SPSS Inc., Chicago, IL, USA). Significant differences between treatments
251
were calculated at the 95% confidence level (p≤0.05) using Duncan’s multiple range test.
252
The peak areas of metabolites were integrated using the HP-ChemStation A.06.03
253
program (Hewlett Packard). Metabolites were identified using the reference standards
254
comparison technique. The concentration of each identified metabolites as mg/mL related to the
255
internal standard of each fractions was reported.
256
The tentative identification of targeted compounds related to the mango wine was done
257
using their mass spectra, linear retention indices (RI), and authentic standards. Mass spectra were
258
compared with the NIST mass spectral database version 2.0 (National Institute of Standards and
259
Technology, Gaithersburg, MD, USA). RI were computed using the retention time of the n-
260
alkanes series (C6-C30) and compared with RI data found in literatures that used the same GC
261
column polarity (Li et al., 2012b; Li et al., 2013b; Pino et al., 2005). Some tentatively identified
262
flavor compounds were confirmed using the authentic standards. Relative concentration
263
(mg/mL) of all flavor compounds was quantified using the internal standard technique. The
264
calibration curve of each standard compounds and internal standard showed good linearity (R2
265
>0.98).
266
Relative concentration of all metabolites and flavor compounds were subjected to
267
principal component analysis (PCA) and agglomerative hierarchical clustering analysis (AHC)
268
using the XLSTAT-base version 2018.3 software (Addinsoft, New York, NY, USA). Correlation
269
network analysis using non-parametric Spearman’s rank correlation of all metabolites and flavor
270
compounds was done at a significance level of p≤0.05 with the correlation/association tests mode
271
in the XLSTAT-base software.
12
272 273 274
3. Results and Discussion 3.1. Physicochemical attributes of mango juice and wine
275
The physicochemical results are shown in Table 1. During the ‘Nam Dok Mai’ mango
276
wine fermentation, the Brix value decreased significantly. The Brix changes were confirmed by
277
measurement of sugar concentrations. The total sugar content of the wine decreased
278
continuously, whereas the reducing sugar content increased until 25% fermentation and then
279
decreased to 0.86 mg/mL at the end of fermentation. A similar result was reported in other
280
varieties of Indian mango wine, made from Banginapalli, Alphonso, Totapuri, and Raspuri
281
varieties (Reddy and Reddy, 2009). This may have been due to yeast metabolism, with the yeast
282
hydrolyzing sucrose to become glucose and fructose in the initial stage. In the following stage,
283
the yeast used glucose and fructose as substrates to produce alcohol (Ribéreau-Gayon et al.,
284
2006a).
285
There was a rapid decrease in the pH during 0-25% fermentation of the wine (from
286
21.7 down to 16.6 °Brix) and then a drop to ~pH 3.50 at the end of fermentation. On the other
287
hand, there was an increase in the %titratable acidity of mango wine. This increase in the
288
%titratable acidity might have resulted from the products of the yeast’s metabolism (succinic and
289
α-ketoglutaric acid) during alcoholic fermentation (Berenguer et al., 2016). The increasing
290
%titratable acidity was continued through the initiation step of fermentation (0-25%) then
291
slightly increased until the end of fermentation. This might have been due to the buffer effect
292
when the organic acids interacted with amino acids. Therefore, after 25% fermentation, the
293
change in the %titratable acidity and the pH would be stable (Ribéreau-Gayon et al., 2006a).
13
294
An acceptable mango vinification process was indicated using the alcohol percentage
295
during fermentation. The alcohol percentage rose until the end of fermentation to a value of 13%.
296
This final alcohol content was similar to pomegranate wine (Berenguer et al., 2016) and
297
Banginapalli mango wine, which was produced by co-fermentation with S. cerevisiae and M.
298
pulcherrima (Sadineni et al., 2012). The final alcohol content of 13% v/v in the wine from the
299
initial total sugar content of 216 mg/mL could indicate the end of fermentation. A theoretical
300
conversion of 106 mg CO2 and 110 mg ethanol from 216 mg sugar would be expected during
301
wine fermentation (Boulton et al., 1999). Therefore, 216 mg/mL total sugar content should be
302
converted to ~14% v/v alcohol in the mango wine. However, 13% v/v alcohol in the wine from
303
these results were equal to 93% of expected yield because some sugars were used to produce cell
304
mass, glycerol, and other products. Similar results have been reported with Pasteur’s original
305
experiment, and Bioletti’s studies, in which, 92-95% yield of alcohol were obtained from the
306
fermentation (Boulton et al., 1999).
307
During the storage period, the Brix increased after 2 wk. There was no significant
308
difference until 3 months of storage. The pH of the wine remained stable during storage. The
309
%titratable acidity decreased from 0.41 to 0.37%, which might have been due to the decrease in
310
tartaric acid, which was one of the main acids in mango during the cold stabilization and
311
filtrating steps. Tartrate salt was precipitated at chilling temperature and separated at the
312
filtration step before wine bottling (Gao and Fleet, 1995).
313
The alcohol content dropped during the cold stabilization and filtration. The final alcohol
314
content of the wine during storage was ~11% v/v. These results were different from those
315
reported for Indian mango wine made from Banginapalli, Alphonso and Neelum varieties, which
316
were 8.5, 7.5, and 6.5% v/v alcohol, respectively (Reddy and Reddy, 2005), and 6.2-7.7% v/v
14
317
alcohol for durian wine (Lu et al., 2015). The lower alcohol percentage in the fruit wines might
318
have resulted from a lower initial sugar content.
319
3.2. Metabolomics and flavoromics of mango wine
320
For the metabolomics results, there were more than 150 chromatography peaks, including
321
unidentified and identified peaks. There were 56 peaks that could be identified; these accounted
322
for ~40% of all metabolites in the mango wine. All 56 metabolite compounds could be divided
323
into 4 main groups: 1) 13 FAME compounds; 2) 20 polar lipid compounds (FFA, fatty alcohols,
324
and phytosterols); 3) 8 sugar compounds (organic sugars and sugar alcohols); and 4) 15 acid
325
compounds (organic acids and amino acids). The flavoromics study gave more than 300 peaks
326
from the total chromatograms. Among these peaks, 73 compounds could be identified,
327
accounting for ~25% of all flavor components in the mango wine. All 73 flavor compounds
328
could be arranged into 8 groups: 31 esters, 20 alcohols, 7 ketones and aldehydes, 7 terpenes, 4
329
volatile acids, 2 furans, 1 volatile phenol, and 1 lactone. There were ~230 unknown volatile
330
compounds. All metabolic and flavor compounds were subjected to PCA. A PCA biplot (Figure
331
1) showed the metabolites and flavor compounds responsible for sample differentiation using the
332
mango wine processing period shifted along the PC1 and PC2 axes representing ~60% of total
333
variables. The PCA biplot was used to determine the grouping of samples based on all
334
compounds observed in the ‘Nam Dok Mai’ mango wine. The first group was pre-fermentation,
335
consisting of 0% fermentation samples, which was separated from the other groups and
336
contained 15 metabolites and 8 flavor compounds. The second was the in-process group,
337
representing 25-75% fermentation samples. There were 16 compounds in this group, consisting
338
of 4 metabolites and 12 flavor compounds. The third group was post-fermentation, which
15
339
consisted of 100% fermentation final products and 3 months storage products. There were 22
340
compounds in this group, consisting of 9 metabolites and 12 flavor compounds.
341
Agglomerative hierarchical clustering analysis (AHC) in similarity mode was done as
342
shown in Figure 2 and resulted in the wine being divided into three groups by processing period
343
as previously shown in the PC biplot. The dendrogram differentiated three groups as: the group
344
of pre-fermentation samples, the group of in-process and the group of post-fermentation or final
345
products.
346
Heat plots based on relative quantification were used to investigate more specific trends
347
of compounds during mango wine processing. Heat plots of all metabolites (Figure 3) showed a
348
decrease in the FAME content during fermentation and storage. However, the FFA concentration
349
increased due to FA synthesis from acetyl-CoA during the yeast fermentation. The main FA
350
observed in the ‘Nam Dok Mai’ mango pulp were palmitic acid (16:0), palmitoleic acid (16:1),
351
steric acid (18:0), oleic acid (18:1), linoleic acid (18:2), and linolenic acid (18:3), which were
352
also reported in Alphonso and Pairi mango pulp (Deshpande et al., 2016). Unsaturated long-
353
chain FA are anaerobic fermentation activators. The most important of these are oleic and
354
linoleic acid (Ribéreau-Gayon et al., 2006a). Moreover, they react with alcohol by esterification,
355
resulting in the formation of ester compounds. The formation of esters continues throughout the
356
aging process due to the presence of various acids in wine, along with large quantities of ethanol
357
(Ribéreau-Gayon et al., 2006a).
358
Most sugars, including sucrose, glucose, and fructose were depleted by wine yeast during
359
their alcoholic metabolism. Sugars can be a potential substrate for the formation of phenols and
360
aromatic amino acids. Moreover, mannitol could be used as a wine quality indicator. Mannitol
361
results from the metabolism of fructose by lactic acid bacteria (LAB) (Pilone et al., 1991).
16
362
Therefore, high amounts of mannitol could indicate LAB contamination. However, the mannitol
363
concentration in the current study decreased during the wine-making period, indicating no LAB
364
contamination. On the other hand, organic acids, such as citric acid, which was one of the main
365
acids observed in mangoes and mango wine, increased during the fermentation process due to
366
the aerobic glycolysis channel. The malic acid concentration remained unchanged and lactic acid
367
was not observed during the wine processing. This could indicate that malolactic fermentation
368
did not occur (Li et al., 2011). An increase in glycerol was observed during fermentation, which
369
was perhaps due to it being the end product of glycerol pyruvic fermentation (Ribéreau-Gayon et
370
al., 2006b).
371
Volatile esters are one of the major aroma groups in the wine, including acetate and ethyl
372
esters. The most abundant acetate esters observed were 1-butanol-3-methyl acetate (isoamyl
373
acetate), isobutyl acetate, acetic acid 2-phenylethyl ester (2-phenylethyl acetate), and octyl
374
acetate. Acetate esters resulted from the reaction of alcohols and acetyl-CoA. Alcohols are
375
produced with amino acid metabolism and acetyl-CoA is derived from pyruvate by yeast
376
metabolism (Lee et al., 2004; Sofie et al., 2010). However, ethyl esters are produced from
377
medium- and long-chain FA, which originated from the degradation of acyl-CoA interacting
378
with the hydroxyl group of alcohols (Alves et al., 2010; Saerens et al., 2008). Various ethyl
379
esters were observed. The dominant ethyl esters in the product were ethyl butanoate, ethyl
380
hexanoate, ethyl octanoate, ethyl nonanoate, ethyl decanoate, ethyl dodecanoate, and ethyl
381
hexadecanoate. The increasing amounts of ethyl esters are shown in Figure 3. This might have
382
been due to the decrease in medium- and long-chain FA, which are precursors of ethyl ester
383
formation. The formation of esters is also dependent on yeast strains, fermentation conditions,
384
and the variety of mango (Quilter et al., 2003).
17
385
The second largest group of volatile compounds observed was alcohols. The results
386
showed that alcohols in the must included 3-hexen-1-ol and 1-penten-3-ol, which decreased
387
during fermentation. On the other hand, levels of ethanol and other higher alcohols (1-propanol,
388
isoamyl alcohol, and phenylethyl alcohol) increased due to their formation using the Ehrlich
389
pathway with the amino acids during fermentation. In the Ehrlich pathway, amino acids, such as
390
leucine and valine, were trans-aminated to α-keto acids, then decarboxylated to aldehydes and
391
finally passed through the reduction reaction to become higher alcohols through NADH-
392
dependent chemical reactions (Vuralhan et al., 2003). However, isoamyl acetate, 2-phenylethyl
393
acetate, and other branched-chain esters in the wine could be produced from higher alcohols
394
Most terpene levels decreased during fermentation. Monoterpenes (trans-β-ocimene)
395
occurred in a simple hydrocarbon form, which decreased a few days after the fermentation had
396
commenced. Sesquiterpenes, such as caryophyllene and humulene, decreased more slowly than
397
the monoterpenes. A similar result has been reported by Li et al. (2012a). However, isoprenoid
398
monoterpene (citronellol), as well as C13-norisoprenoid (i.e., trans-β-ionone) increased during
399
the fermentation process. These increases indicated that the compounds had formed from a
400
mevalonate precursor, which was derived from acetyl-CoA in the wine yeast (Iriti and Faoro,
401
2006). Geraniol is also a dominant volatile compound in the mango juice. However, it decreased
402
during fermentation of the wine. This might have been due to the geraniol being converted to
403
citronellol and other terpenols by S. cerevisiae (Li et al., 2013a).
404
The volatile acids observed were acetic, butanoic, and octanoic acid. Butanoic and
405
octanoic acid decreased throughout the mango wine processing period as substrates for
406
esterification. Li et al. (2012a) also reported that the ‘Nam Dok Mai’ mango wine contained
407
higher octanoic acid content than mango wines made from the R2E2 variety from Australia and
18
408
the Harum Manis variety from Indonesia. On the other hand, the level of acetic acid increased
409
during wine processing. This might have been due to the wine being exposed to air during
410
fermentation (Joyeux, 1984).
411
Of the other miscellaneous volatile compounds, dihydro-2-methyl-3(2H)-thiophenone
412
(sulfur ketone) increased in the fermentation and tended to drop during storage. However, the
413
compound was not observed in the mango juice. The appearance of sulfur-containing compounds
414
might be due to KMS, which was added into the wine must before fermentation as an antioxidant
415
and antimicrobial agent. Moreover, it could be formed by metabolism of sulfur-containing amino
416
acids by wine yeast during fermentation. However, the level of dihydro-2-methyl-3(2H)-
417
thiophenone decreased during aging (Masuda and Nishimura, 1982).
418
Pairwise Spearman’s rank correlation analysis was done to investigate the relationship
419
between metabolites and flavor compounds during the wine fermentation and storage (Figure 4).
420
Rank order correlation was selected for the analysis, because the data were not bivariate and
421
normally distributed. These results showed that there were 8,385 correlative pairs, with 2,328
422
pairs having significant (p≤0.05) correlation, of which 1,242 pairs had a strong positive
423
correlation (r >0.7) and 1,086 pairs had a strong negative correlation (r <-0.7), while 138 pairs
424
had no correlation (-0.3< r <0.3). Four groups of metabolic constituents in relation to flavor
425
compounds have been observed. FAME (e.g., 16:0, 16:1, 18:0, 18:1, 18:2, 18:3, and 22:1) were
426
significantly and strongly positively correlated with sterols, sugars, and flavor groups (higher
427
alcohols, ketones, aldehydes, terpenes, and volatile acids). However, they were significantly and
428
strongly negatively correlated with acids, esters and some flavor compounds, such as ethanol,
429
phenylethyl alcohol, and acetic acid. On the other hand, there was no significant correlation
430
between the FAME and polar lipids. The polar lipids and phytosterols were significantly and
19
431
strongly negatively correlated with esters and other minor flavor groups (ketones, aldehydes, and
432
terpenes). On the other hand, glycerol had a significantly and strongly positive correlation with
433
acids and esters. This might be due to those compounds being products from yeast fermentation.
434
Sugars, including sucrose, glucose, and fructose, were significantly and strongly negatively
435
correlated with esters and ethanol. This could be the reason that ethanol formation from sugars
436
related to ester fabrication. On the other hand, they were significantly and strongly positively
437
correlated with higher alcohols, terpenes, and volatile acids. Acid compounds, including amino
438
and organic acids, were correlated positively with FFA, esters, and ethanol, but negatively
439
correlated with higher alcohols, volatile acids and other groups of flavor compounds. This might
440
be due to amino acids being substrates for the production of higher alcohols and volatile acids
441
using the Ehrlich pathway. These results might reflect the relationship between metabolites and
442
flavor compounds during the fermentation of the wine. In addition, important metabolites would
443
suggest that they were responsible for the formation of fragrant flavor compounds during the
444
production of the wine. The results might suggest information for the control of these factors and
445
the conditions of mango wine-making, to produce ‘Nam Dok Mai’ mango wine with a special
446
aroma and high levels of bioactive compounds.
447 448
4. Conclusions
449
Mango wine production from the ‘Nam Dok Mai’ variety of mango was successfully
450
prepared at the laboratory scale with the same characteristics as a dry white wine. Changes in the
451
physicochemical properties, metabolomics, and flavoromics were investigated to determine the
452
overall characteristics of the ‘Nam Dok Mai’ mango wine during processing and storage.
453
Multivariate and correlation analysis contributed to a better understanding of the interactions
20
454
between the metabolites and flavor constituents in the wine. The technique could be used to mark
455
important bioactive compounds, flavors, and characters of the wine, which might be used to
456
improve the quality of Asian mango wine processing in the future. Oleic (18:1) and linoleic
457
(18:2) acid could be used as biomarkers for monitoring anaerobic fermentation, whereas, malic
458
and lactic acid as biomarkers for malolactic fermentation. Mannitol could be used as a biomarker
459
for LAB contamination. Acetic acid and ethyl acetate could be used as biomarkers for improper
460
fermentation. The integration of metabolomics and flavoromics techniques provided an effective
461
alternative tool for comprehensive monitoring of the dynamic changes during mango wine
462
fermentation and storage.
463 464 465 466
Acknowledgements
467
Financial support for this study was provided by the Graduate School of Kasetsart
468
University, Bangkok, Thailand and by the Center for Advanced Studies for Agriculture and Food
469
(CASAF). English proof-reading by a native expert was supported by Kasetsart University
470
Research and Development Institute (KURDI).
471 472 473
Conflict of interest The authors declare that there are no conflicts of interest with respect to the publication.
474 475
References
476
Alves, J.A., Lima, L.C.O., Dias, D.R., Nunes, C.A., & Schwan, R.F. (2010). Effects of
21
477
spontaneous and inoculated fermentation on the volatile profile of lychee (Litchi chinensis
478
Sonn) fermented beverages. International Journal of Food Science and Technology, 45(11),
479
2358-2365.
480 481
AOAC. (1990). Official Methods of Analysis of AOAC International (15th edition, Vol. 2). Arlington, VA, USA: Association of Official Analytical Chemists, Inc.
482
Berenguer, M., Vegara, S., Barrajón, E., Saura, D., Valero, M., & Martí, N. (2016).
483
Physicochemical characterization of pomegranate wines fermented with three different
484
Saccharomyces cerevisiae yeast strains. Food Chemistry, 190, 848-855.
485 486 487 488
Boulton, R.B., Singleton, V.L., Bisson, L.F., & Kunkee, R.E. (1999). Principles and Practices of Winemaking (pp. 137). New York, NY, USA: Springer. Charve, J.I.M. (2011). Prediction of Mandarin Juice Flavor: A Flavoromic Approach (pp. 1-13). Ph.D. Thesis, Saint Paul, MN, USA: University of Minnesota.
489
Deshpande, A.B., Chidley, H.G., Oak, P.S., Pujari, K.H., Giri, A.P., & Gupta, V.S. (2016). Data
490
on changes in the fatty acid composition during fruit development and ripening of three
491
mango cultivars (Alphonso, Pairi and Kent) varying in lactone content. Data in Brief, 9,
492
480-491.
493 494
Dubois, M., Gilles, K.A., Hamilton, J.K., Rebers, P.A., & Smith, F. (1956). Colorimetric method for determination of sugars and related substances. Analytical Chemistry, 28(3), 350-356.
495
Food and Agriculture Organization of the United Nations. (2014). Statistical Yearbook 2014:
496
Europe and Central Asia Food and Agriculture (pp. 65-99). Bangkok, Thailand: FAO
497
Regional Office for Asia and the Pacific.
498 499
Gao, C., & Fleet, G.H.H. (1995). Degradation of malic and tartaric-acids by high-density cellsuspensions of wine yeasts. Food Microbiology, 12(1), 65-71.
22
500
Garde-Cerdán, T., & Ancín-Azpilicueta, C. (2008). Effect of the addition of different quantities
501
of amino acids to nitrogen-deficient must on the formation of esters, alcohols, and acids
502
during wine alcoholic fermentation. LWT - Food Science and Technology, 41(3), 501-510.
503 504
Iriti, M., & Faoro, F. (2006). Grape phytochemicals: A bouquet of old and new nutraceuticals for human health. Medical Hypotheses, 67(4), 833-838.
505
Joyeux, A. (1984). Evolution of acetic acid bacteria during fermentation and storage of wine
506
evolution of acetic acid bacteria during fermentation and storage of wine. Applied and
507
Environmental Microbiology, 48(1), 1034-1038.
508
Kumar, V., Jnawali, P., Goud, P.V., Bhasin, J.K., & Yildiz, F. (2016). Effect of maturation on
509
physico-chemical and sensory quality characteristics of custard apple wine. Cogent Food &
510
Agriculture, 2(1), 1180660.
511
Lee, S.J., Rathbone, D., Asimont, S., Adden, R., & Ebeler, S.E. (2004). Dynamic changes in
512
ester formation during Chardonnay juice fermentations with different yeast inoculation and
513
initial brix conditions. American Journal of Enology and Viticulture, 55(4), 346-354.
514
Li, X., Chan, L.J., Yu, B., Curran, P., & Liu, S.Q. (2012a). Fermentation of three varieties of
515
mango juices with a mixture of Saccharomyces cerevisiae and Williopsis saturnus var.
516
mrakii. International Journal of Food Microbiology, 158(1), 28-35.
517 518
Li, X., Lim, S.L., Yu, B., Curran, P., & Liu, S.Q. (2013a). Impact of pulp on the chemical profile of mango wine. South African Journal of Enology and Viticulture, 34(1), 119-128.
519
Li, X., Lim, S.L., Yu, B., Curran, P., & Liu, S.Q. (2013b). Mango wine aroma enhancement by
520
pulp contact and β-glucosidase. International Journal of Food Science & Technology, 48,
521
2258-2266
522
Li, X., Yu, B., Curran, P., & Liu, S.Q. (2011). Chemical and volatile composition of mango
23
523
wines fermented with different Saccharomyces cerevisiae yeast strains. South African
524
Journal of Enology and Viticulture, 32(1), 117-128.
525
Li, X., Yu, B., Curran, P., & Liu, S.Q. (2012b). Impact of two Williopsis yeast strains on the
526
volatile composition of mango wine. International Journal of Food Science & Technology,
527
47(4), 808-815.
528
Limwiwattana, D., Tongkhao, K., & Na Jom, K. (2016). Effect of sprouting temperature and air
529
relative humidity on metabolic profiles of sprouting black gram (Vigna mungo L.). Journal
530
of Food Processing and Preservation, 40(2), 306-315.
531
Liu, S.Q., & Pilone, G.J. (2000). An overview of formation and roles of acetaldehyde in
532
winemaking with emphasis on microbiological implications. International Journal of Food
533
Science & Technology, 35(1), 49-61.
534
Lu, Y., Huang, D., Lee, P.R., & Liu, S.Q. (2015). Effects of cofermentation and sequential
535
inoculation of Saccharomyces bayanus and Torulaspora delbruckii on durian wine
536
composition. International Journal of Food Science & Technology, 50(12), 2653-2663.
537
Masuda, M., & Nishimura, K.I.C. (1982). Changes in volatile sulfur compounds of whisky
538 539 540
during aging. Journal of Food Science, 47(1), 101-105. Miller, G.L. (1959). Use of dinitrosalicylic acid reagent for determination of reducing sugar. Analytical Chemistry, 31(3), 426-428.
541
Pilone, G. J., Clayton, M. G., & Duivenboden, R. J. (1991). Characterization of wine lactic acid
542
bacteria: Single broth culture for tests of heterofermentation, mannitol from fructose, and
543
ammonia from arginine. American Journal of Enology and Viticulture, 42(2), 153-157.
544
Pino, J.A., Mesa, J., Muñoz, Y., Martí, M.P., & Marbot, R. (2005). Volatile components from
545
mango (Mangifera indica L.) cultivars. Journal of Agricultural and Food Chemistry, 53(6),
24
546
2213-2223.
547
Quilter, M.G., Hurley, J.C., Lynch, F.J., & Murphy, M.G. (2003). The production of isoamyl
548
acetate from amyl alcohol by Saccharomyces cerevisiae. Journal of the Institute of Brewing,
549
109(1), 34-40.
550
Reddy, L.V.A., & Reddy, O.V.S. (2005). Production and characterization of wine from mango
551
fruit (Mangifera indica L). World Journal of Microbiology and Biotechnology, 21(8-9),
552
1345-1350.
553 554
Reddy, L.V.A., & Reddy, O.V.S. (2009). Production, optimization and characterization of wine from mango (Mangifera indica Linn.). Natural Product Radiance, 8(4), 426-435.
555
Reddy, L.V.A., & Reddy, O.V.S. (2011). Effect of fermentation conditions on yeast growth and
556
volatile composition of wine produced from mango (Mangifera indica L.) fruit juice. Food
557
and Bioproducts Processing, 89(4), 487-491.
558 559
Reddy, L.V.A., Reddy, O.V.S., & Joshi, V.K. (2014). Production of wine from mango fruit: A review. International Journal of Food and Fermentation Technology, 4(1), 13-25.
560
Ribéreau-Gayon, P., Glories, Y., Maujean, A., & Dubourdieu, D. (2006a). Handbook of Enology,
561
The Chemistry of Wine: Stabilization and Treatments (2nd edition) (pp. 3-60). Hoboken,
562
NJ, USA: Willey.
563
Ribéreau-Gayon, P., Glories, Y., Maujean, A., & Dubourdieu, D. (2006b). Handbook of
564
Enology: The Microbiology of Wine and Vinifications (2nd edition) (pp. 58). Hoboken, NJ,
565
USA: Willey.
566
Sadineni, V., Kondapalli, N., & Reddy, O.V.S. (2012). Effect of co-fermentation with
567
Saccharomyces cerevisiae and Torulaspora delbrueckii or Metschnikowia pulcherrima on
568
the aroma and sensory properties of mango wine. Annals of Microbiology, 62(4), 1353-
25
569
1360.
570
Saerens, S.M.G., Delvaux, F., Verstrepen, K.J., Van Dijck, P., Thevelein, J.M., & Delvaux, F.R.
571
(2008). Parameters affecting ethyl ester production by Saccharomyces cerevisiae during
572
fermentation. Applied and Environmental Microbiology, 74(2), 454-461.
573
Saerens, S.M.G., Delvaux, F.R., Verstrepen, K.J., & Thevelein, J.M. (2010). Production and
574
biological
function
of
volatile
575
Biotechnology, 3(2), 165-177.
esters
in
Saccharomyces
cerevisiae.
Microbial
576
Sriwimon, W., & Boonsupthip, W. (2011). Utilization of partially ripe mangoes for freezing
577
preservation by impregnation of mango juice and sugars. LWT - Food Science and
578
Technology, 44(2), 375-383.
579 580
Tharanathan, R.N., Yashoda, H.M., & Prabha, T.N. (2006). Mango (Mangifera indica L.), “the king of fruits” - An overview. Food Reviews International. 22, 95-123.
581
Torrens, J., Riu-Aumatell, M., López-Tamames, E., & Buxaderas, S. (2004). Volatile
582
compounds of red and white wines by headspace-solid-phase microextraction using
583
different fibers. Journal of Chromatographic Science, 42(6), 310-316.
584
Vuralhan, Z., Morais, M., Tai, S., Piper, M.D.W., & Pronk, J.T. (2003). Identification and
585
characterization of phenylpyruvate decarboxylase genes in Saccharomyces cerevisiae
586
identification
587
Saccharomyces cerevisiae. Applied and Environmental Microbiology, 69(8), 4534-4541.
588
Zeng, Z., Luo, S., Liu, C., Hu, X., Gong, E., & Miao, J. (2018). Phenolic retention of brown rice
589 590 591
and
characterization
of
phenylpyruvate
decarboxylase
genes
in
after extrusion with mesophilic α-amylase. Food Bioscience, 21, 8-13. Zoecklein, B.W., Fugelsang, K.C., Gump, B.H., & Nury, F.S. (1995). Wine Analysis and Production (pp. 411). New York, NY, USA: Chapman & Hall.
26
592 593 594 595 596
27
597 598
Table 1. Physicochemical properties, total sugar contents, reducing sugar contents, %titratable acidity and alcohol contents of ‘Nam Dok Mai’ mango wine during fermentation and storage.
599
Treatment
°Brix
pH
Total sugar
Reducing sugar
%Titratable
Alcohol content
content (mg/mL)
content (mg/mL)
acidity
(% v/v)
0% ferment
21.7±0.2a
4.29±0.03a
220±10a
10±1d
0.31±0.03d
1.2±0.4f
25% ferment
16.6±0.5b
3.39±0.04d
131±10b
85±5a
0.35±0.01c
4.3±0.3e
50% ferment
11±1c
3.34±0.02e
79±15c
61±4b
0.38±0.03abc
7.7±0.6d
75% ferment
7.4±0.5d
3.36±0.01de
37±9d
30±6c
0.39±0.02ab
8.7±1.5c
100% ferment
3.6±0.3f
3.54±0.02c
2.6±0.2e
0.86±0.04e
0.41±0.03a
13±1a
Day 0 storage
5.3±0.3e
3.59±0.01b
2.6±0.2e
0.85±0.01e
0.38±0.01abc
10.8±0.2b
Month 1 storage
5.4±0.4e
3.62±0.01b
2.5±0.1e
0.83±0.01e
0.38±0.01abc
10.8±0.2b
Month 2 storage
5.4±0.5e
3.61±0.01b
2.6±0.3e
0.87±0.01e
0.38±0.01abc
10.9±0.1b
Month 3 storage
5.3±0.3e
3.62±0.01b
2.6±0.2e
0.84±0.01e
0.37±0.01bc
11.1±0.1b
600
* Value are means±standard deviation (SD). Means in the same column indicated by different letters are significantly different at 95%
601
confidence level (p≤0.05).
28
602
Figure captions
603
Figure 1. Biplot of principal component analysis from all identified metabolites (●) and flavor
604
compounds ( ) in ‘Nam Dok Mai’ mango wine during wine processing periods: pre-
605
fermentation group (♦), in-process group (■), and post-fermentation or final product group (▲).
606
Figure 2. Dendrogram (similarity mode of agglomerative hierarchical clustering analysis) of
607
mango wine; red line: pre-fermentation group; green line: in-process group; blue line: post-
608
fermentation or final product group.
609
Figure 3. Heat plots of metabolite and flavor compounds (fatty acid methyl esters, polar lipids,
610
sugars, acids, esters, alcohols, ketone, aldehydes, terpenes, volatile acids, furans, phenol, and
611
lactone) during ‘Nam Dok Mai’ mango wine processing and storage; FAME=fatty acid methyl
612
ester, FFA=free fatty acid.
613
Figure 4. Lower triangular heat map represents pairwise correlation analysis between metabolite
614
and flavor compounds during mango wine processing and storage. Each square represents the
615
Spearman’s rank correlation coefficient at a significance level of p≤0.05. Positive correlations (r
616
>0.3) are shown with an orange-red scale (r >0.7 indicates a strong positive correlation).
617
Negative correlations (r <-0.3) are shown with a green scale (r <-0.7 indicates a strong negative
618
correlation).
619 620 621 622 623 624
29
625 626
Figure 1.
627 628 629 630 631 632 633 634 635 636 637 638 639 640 641 642 643 644 645 646 647 648
30
649 650
Figure 2.
651 652 653 654 655 656 657 658 659 660 661 662 663 664 665 666 667 668 669 670 671 672 673 674
31
675 676
Figure 3.
677 678 679 680 681 682 683 684 685 686 687 688 689 690 691 692 693 694 695 696 697 698
32
699 700
Figure 4.
701 702 703 704 705 706 707 708 709 710 711 712 713 714 715 716 717 718
33