Dicky Tri Utama1,2, Aera Jang1, Gur Yoo Kim1, Sun-Moon Kang3, Sung Ki Lee1. 1. Department of Applied Animal Science, College of Animal Life Sciences, Kangwon National University, Chuncheon 24341, Korea. 2. Department of Animal Product Technology, Faculty of Animal Husbandry, Universitas Padjadjaran, Sumedang 45363, Indonesia. 3. Department of Animal Products Development and Utilization, National Institute of Animal Science, Rural Development Administration, Wanju 55365, Korea.
Studies on the effect of fat content on the volatile composition of meat have focused
on processed meat products, such as meat batter, frankfurter, and ham (Domínguez et al., 2017; Jo et al., 1999; Sirtori et al., 2021). Meanwhile, studies on the effect of
carcass quality grade (QG) or the intramuscular fat (IMF) level on the volatile
profile of beef are still limited. Fat content in beef is positively associated with
taste preference (Frank et al., 2016).
Further study is necessary in order to provide more scientific evidence to clarify
whether the abundance of aroma volatiles is positively correlated with the fat
content in highly marbled beef.In Korea, Hanwoo steers are finished on a high-energy diet and slaughtered at the age
of 30–32 months, so that the marbling score and fat content of the highest QG
loin can reach above 7% and 20%, respectively (Koh et al., 2019). The QG, which is determined by the marbling
score, influences the generation of beef volatile compounds. Piao et al. (2017) reported that the release of some volatile
compounds is affected by the QG of Hanwoo beef. The deposition of fat to muscle is
affected by genetic factors; even though the fat amount is similar, beef from
different breeds have different aroma profiles (Utama et al., 2018). Moreover, IMF content could influence the
generation of volatile compounds and the release of such compounds from the matrix
of the meat (Echegaray et al., 2021).Multivariate analysis can help interpret the data for classification. Principal
component analysis (PCA) and cluster analysis (CA) are often used to simplify large
amounts of data for a better understanding. However, as these tools are unsupervised
statistical methods, it is inappropriate to correlate the content of bioactive
compounds with in vitro functional properties (Granato et al., 2018; Nunes et al., 2015). PCA has been widely applied as an adaptive
descriptive data analysis tool to investigate the authenticity of food and to
determine some intrinsic and extrinsic effects on food quality based on their
chemical traits, including the aroma volatile compounds (Kebede et al., 2018; Procida et
al., 2005; Suslick et al., 2010;
Wang et al., 2014). In addition,
hierarchical clustering, a part of CA, helps to identify the origin of the food, the
diversity of microorganisms in the food, and ensures the authenticity and quality of
the food (Danezis et al., 2016; Granato et al., 2018). Therefore, the objective
of this study was to investigate, using sensor data from an electronic nose and a
chemometrics approach, whether the differences in the fat to lean muscle ratio
(carcass QG) of highly marbled beef contribute to the distinct aroma profile.
Materials and Methods
Sample preparation
The M. longissimus lumborum (striploin) of grade
1++, 1+, 1, and 2 Hanwoo steers (n=6), finished
under identical feeding systems on a similar farm, were removed from the left
side of the carcasses after 24 h of chilling. The striploin was chosen because
this cut is usually used for roasts and grills. Samples were vacuum-packed and
distributed to the laboratory in an icebox. Proximate composition, pH, color,
and fatty acid analyses were performed on day 4 after postmortem. The remaining
sample was lyophilized using a benchtop freeze dryer (Eyela FDU-1200, Tokyo
Rikakikai, Tokyo, Japan) and stored at −24°C for analysis of
volatile compounds and aroma patterns. The dry sample was used to avoid the
effect of different moisture contents among QGs.
Proximate composition analysis
Samples were ground using a food blender at minimum speed for 10 s (HMF-1600PB,
Hanil Electric, Wonju, Korea). The proximate composition was determined using
the AOAC official methods (AOAC, 2002).
Moisture content was determined by dry-heating the samples at 105°C for
24 h and calculating the proportion of weight loss during heating per fresh
weight. Crude fat content was determined by ether extraction using a Soxhlet
system. Nitrogen content was determined using the Kjeltec system (2200 Kjeltec
Auto Distillation Unit, Foss, Huddinge, Sweden), and crude protein was
calculated by multiplying the nitrogen content by 6.25. The ash content was
determined by burning the samples in a muffle furnace at 550°C for 16
h.
Fatty acid composition analysis
Meat fat was extracted from the samples using a chloroform-methanol (2:1 v/v)
solution and prepared in triplicate (Folch et
al., 1957). Fatty acid methyl esters (FAMEs) were prepared in hexane
by mixing saponified fat (added with 1 N KOH) with boron trifluoride at
80°C. The fatty acid composition of beef fat was determined using an
Agilent gas chromatography system (6890N, Agilent Technologies, Santa Clara, CA,
USA). The sample (1 μL) was injected into the GC port using an
autosampler (7683, Agilent Technologies). A split ratio of 100:1 was programmed
for the inlet and the temperature was set to 250°C. FAMEs were separated
using a WCOT-fused silica capillary column (100 m×0.25 mm i.d., 0.20
μm film thickness; Varian Medical Systems, Palo Alto, CA, USA) with a 1.0
mL/min helium flow. The oven temperature and holding-time were programmed as
follows: 150°C/1 min, 150°C–200°C at 7°C/min,
200°C/5 min, 200°C–250°C at 5°C/min, and
250°C/10 min. The temperature of the detector was set to 280°C.
The peaks were identified as fatty acids using the retention time of the fatty
acid standards (47015-U, Sigma-Aldrich, Saint Louis, MO, USA). The peak area of
each identified fatty acid was used to calculate the proportion (%) of
the total identified peak area.
Volatile compound identification and aroma profiling
The volatile compounds from heated samples were separated and identified by gas
chromatography-mass spectrometry using a modified version of the method
described by Ba et al. (2010).
Approximately 1 g of dry sample (prepared in duplicate) was immediately placed
in a 50 mL headspace vial and heated at 105°C in a drying oven for 10 min
to release the volatile compounds. Prior to extraction, the sample was
calibrated to 60°C in a drying oven for 10 min. The
carboxen®/ polydimethylsiloxane fiber (Supelco,
Sigma-Aldrich) with a diameter of 75 μm was injected into the vial for
extraction for 30 min. Following extraction, the fiber was injected into the
inlet, which was set to 250°C. The split ration of 1:5 was used for
desorbing the volatile compounds for 5 min. Helium was used as the carrier gas
at a flow rate of 1 mL/min. Separation of the individual compound was performed
using a DB5 fused silica column (30 m×0.25 mm inner diameter, 0.25
μm film thickness; J&W Scientific, Folsom, CA, USA) in a gas
chromatograph (7890A, Agilent Technologies). The GC oven was set to operate at
an initial temperature of 40°C for 2 min, increased to 160°C (at
rate of 5°C/min), then to 180°C (at rate of 6°C/min,
holding time of 5 min), and finally to 200°C (at rate of 10°C/min,
holding time of 5 min). The interface and quadruple temperatures were set at
280°C and 150°C, respectively. Volatile compounds were detected
using a mass spectrometer (5975C, Agilent Technologies). The ion source
temperature of the MS was set to 280°C with an electron impact of 70 eV.
A scanning mass range of 50–450 m/z with a scan rate of 1 scan/s was
used. Identification was performed by comparing the experimental spectra with
the National Institute of Standards and Technology (NIST) mass spectral library.
Data are presented as area units (AU)×106 /g.An electronic nose (FOX3000, Alpha MOS, Toulouse, France) was used for analyzing
the aroma pattern. Dry and heated samples (0.5 g) were placed in a 10 mL
headspace vial and prepared in duplicate. The vial was sealed with a rubber
septa cap (Supelco 29176-U, Sigma-Aldrich). The samples were heated at
60°C for 600 s at an agitation speed of 500 rpm. The 2.5 mL of headspace
gas was extracted with an automatic sampler syringe (HS 100, Alpha MOS) at
65°C, flow-injected into the port of the electronic nose with synthetic
air as the carrier gas (pressure was set to 0.5 bar with 150 mL/min flow rate)
and detected by a metal oxide sensor array system with an acquisition time of
150 s. The following sensors were chosen (T30/1, P10/1, P10/2, P40/1, T70/2,
PA2) as the sensitivity against fat-derived volatile compounds are high. The
sensor resistance ratio (r−r0)/r0 was calculated (r
is the real-time resistance and r0 is the
sensor’s resistance baseline). The time taken to return
to baseline after acquisition was 1,080 s. The maximum resistance ratio was
considered as the data value of a single measurement.
Statistical analysis
The statistically significant difference between the mean values from different
QGs was determined using a one-way analysis of variance (ANOVA). The mean values
were then separated by Duncan’s multiple range test at a 5%
significance level. Correlation coefficients between the resistance ratio of the
six metal sensors of the electronic nose and the peak area of the volatile
groups were determined using Pearson’s method. Multiple regression
analysis was also performed to determine the multiple correlations between the
resistance ratio of the six metal sensors of the electronic nose and the peak
area of the volatile groups. Two-dimensional PCA and cluster dendrograms were
used to discriminate the aroma profile according to the sensor resistance ratio.
Analyses were performed using R-version 3.3.3 (R
Core Team, 2018) with the “agricolae” package for
Duncan’s multiple range test (De
Mandiburu, 2017) and with the “dendextend”,
“ggfortify”, and “ggplot2” packages for plotting the
PCA and cluster dendrogram (Galili, 2015;
Tang et al., 2016; Wickham, 2016).
Results and Discussion
The proximate composition of beef striploins of different QGs is presented in Table 1. Among the QGs, moisture and protein
content decreased as the QG increased. In contrast, the crude fat content increased
as the QG increased. Different carcass QGs showed different fat-to-lean muscle
ratios, and the ratio increased linearly as the QG increased. No differences were
found in ash content among the QGs. These findings are in accordance with those of
previous reports by Piao et al. (2017) and
Koh et al. (2019).
Table 1.
Proximate composition of beef striploin as affected by carcass quality
grade
Variable
Quality grade
SEM
p-value
1++
1+
1
2
Moisture (%)
61.4[c]
64.2[b]
66.8[a]
68.0[a]
1.11
<0.001
Crude fat (%)
24.5[a]
19.7[b]
14.4[c]
12.2[c]
1.53
<0.001
Crude protein (%)
12.9[c]
15.0[bc]
17.6[ab]
18.7[a]
0.75
0.01
Ash (%)
1.17
1.08
1.12
1.14
0.02
0.39
Sample size; each quality grade (n=6).
Carcass quality grade (1++, 1+, 1, and 2) was
assessed according to Korea Institute for Animal Products Quality
Evaluation (KAPE, 2017).
Different superscripts in the same row indicate differences among quality
grades (p<0.05).
The fatty acid composition of Hanwoo beef, categorized by different QGs, is shown in
Table 2. No differences were found in the
proportions of saturated fatty acids. However, QG 1++ had the lowest
proportion of palmitic acid (C16:0; p=0.04). The highest proportion of
monounsaturated fatty acids (MUFAs) was found in beef with the highest QG
(1++). A higher oleic acid (C18:1n9) proportion was observed in grade
1++ striploin than in lower QGs, contributing to the increased
proportion of MUFAs. In contrast with MUFA, the polyunsaturated fatty acid (PUFA)
proportion was found to be lower in higher QGs. This is mainly attributed to the
higher proportion of linoleic acid (C18:2n6) and arachidonic acid (C20:4n6) in
lower-grade striploin. The ratio of omega-6 to omega-3 was found to be higher in
beef with higher QG as the α-linolenic acid (C18:3n3) content decreased.
Wood et al. (2008) mentioned that neutral
lipids are predominantly deposited into intramuscular adipose tissue to build
marbling, whereas PUFAs are mostly deposited into the membrane of muscle cells as
cell membranes are built by phospholipids. Cho et al.
(2020) reported that coarsely marbled Hanwoo beef loins contain higher
proportions of PUFAs than the finer ones, which corresponds to linoleic acid
(C18:2n6) and eicosapentaenoic acid (C20:5n3). In other words, the proportion of
PUFA increases as the meat cut has more muscle area or tends to be coarse in
appearance. PUFAs have a lower melting point and are stable in liquid form at
ambient temperature, thus establishing the elasticity of muscle cells to contract
and relax (Abbott et al., 2012). Previous
studies have reported that oleic acid is the major fatty acid in highly marbled
Hanwoo beef, and this fatty acid may contribute to a more acceptable flavor (Jo et al., 2013). Furthermore, this study
confirms that the proportion of oleic acid in Hanwoo striploin increases with an
increase in IMF content or carcass QG, as previously reported (Joo et al., 2017; Lim et al.,
2014; Piao et al., 2017).
Table 2.
Fatty acid composition (%) of beef striploin as affected by
carcass quality grade
Fatty acid
Quality grade
SEM
p-value
1++
1+
1
2
C14:0
3.34
3.11
2.88
2.81
0.07
0.35
C16:0
27.9[b]
29.3[a]
29.6[a]
29.2[a]
0.21
0.04
C16:1n7
4.80
4.32
4.73
4.15
0.09
0.74
C18:0
11.08
12.24
12.2
13.6
0.30
0.42
C18:1n9
50.4[a]
49.4[ab]
48.9[ab]
47.8[b]
0.39
0.01
C18:2n6
1.16[b]
1.21[b]
1.22[b]
1.78[a]
0.08
0.02
C18:3n6
0.07
0.08
0.09
0.09
0.00
0.33
C18:3n3
0.10[c]
0.11[c]
0.15[b]
0.25[a]
0.02
<0.001
C20:4n6
0.09[b]
0.09[b]
0.10[b]
0.13[a]
0.01
0.03
C22:4n6
0.04
0.04
0.05
0.05
0.00
0.14
SFA
42.4
44.7
44.7
45.6
0.40
0.21
MUFA
56.2[a]
53.8[ab]
53.6[ab]
52.0[b]
0.49
0.02
PUFA
1.45[b]
1.54[b]
1.62[b]
2.30[a]
0.11
0.02
n6
1.36[b]
1.43[b]
1.46[b]
2.05[a]
0.09
0.03
n3
0.10[c]
0.11[c]
0.15[b]
0.25[a]
0.02
<0.001
n6/n3
14.3[a]
13.3[a]
9.60[ab]
8.25[b]
0.83
0.01
Sample size; each quality grade (n=6).
Carcass quality grade (1++, 1+, 1, and 2) was
assessed according to Korea Institute for Animal Products Quality
Evaluation (KAPE, 2017).
Different superscripts in the same row indicate differences among quality
grades (p<0.05).
Sample size; each quality grade (n=6).Carcass quality grade (1++, 1+, 1, and 2) was
assessed according to Korea Institute for Animal Products Quality
Evaluation (KAPE, 2017).Different superscripts in the same row indicate differences among quality
grades (p<0.05).Sample size; each quality grade (n=6).Carcass quality grade (1++, 1+, 1, and 2) was
assessed according to Korea Institute for Animal Products Quality
Evaluation (KAPE, 2017).Different superscripts in the same row indicate differences among quality
grades (p<0.05).SFA, saturated fatty acids; MUFA, monounsaturated fatty acids; PUFA,
polyunsaturated fatty acids.Three major groups of volatile compounds were identified from different QGs of Hanwoo
beef striploin (Table 3). Pyrazine and
aldehyde were the two predominant volatile compounds, as the peak areas of these
volatile groups were higher than those of hydrocarbons. Lyophilized samples (dry,
with low water activity) were used in this study, and the occurrence of the Maillard
reaction, which produces pyrazines, was high. Water activity is one of the many
factors affecting the rate of the Maillard reaction. The maximum reaction can occur
under low water activity conditions (Labuza and
Saltmarch, 1981). The proportions of pyrazine and aldehyde ranged from
41%–58% and 32%–48%, respectively. The
hydrocarbon content was the third most abundant, ranging from
10%–11%.
Table 3.
Aroma volatile compounds (area unit x 106) released from beef
striploin as affected by carcass quality grade
Compound name
Quality grade
SEM
p-value
1++
1+
1
2
Aldehydes
2-Methyl butanal
11.0[ab]
15.5[a]
8.06[b]
16.9[a]
1.26
0.03
3-Methyl butanal
14.4
19.3
14.5
21.9
1.54
0.23
Hexanal
18.7
25.6
27.0
28.5
1.68
0.18
Heptanal
3.55
3.19
3.19
4.26
0.19
0.17
Benzaldehyde
3.69[c]
5.95[b]
6.63[b]
14.1[a]
1.17
<0.01
Nonanal
3.32
3.34
3.30
3.44
0.16
0.99
Hydrocarbons
Toluene
4.84[c]
7.90[bc]
9.50[b]
13.9[a]
0.91
<0.001
Styrene
5.02[b]
5.75[b]
8.40[ab]
11.3[a]
0.70
0.02
Dodecane
1.38
1.48
1.05
1.26
0.10
0.21
Pentadecane
0.87[a]
0.82[a]
0.43[b]
0.50[b]
0.05
0.03
Pyrazines
Pyrazine
1.29[bc]
1.88[a]
1.01[c]
1.80[ab]
0.11
0.01
2-Methyl pyrazine
23.0[b]
30.9[b]
32.9[b]
56.0[a]
4.07
0.01
2,5-Dimethyl pyrazine
18.3[b]
26.0[b]
72.6[a]
62.9[a]
6.72
<0.01
2-Ethyl-6-methyl pyrazine
0.77[b]
0.68[b]
1.56[a]
1.59[a]
0.13
<0.01
2,3,5-Trimethyl pyrazine
2.14[b]
2.89[b]
2.93[b]
6.80[a]
0.54
0.03
3-Ethyl-2,5-dimethyl pyrazine
0.62[c]
0.87[c]
2.26[b]
6.10[a]
0.63
<0.01
Total
112.9
152.1
195.3
251.3
16.1
<0.01
Sample size; each quality grade (n=6).
Carcass quality grade (1++, 1+, 1, and 2) was
assessed according to Korea Institute for Animal Products Quality
Evaluation (KAPE, 2017).
Different superscripts in the same row indicate differences among quality
grades (p<0.05).
Sample size; each quality grade (n=6).Carcass quality grade (1++, 1+, 1, and 2) was
assessed according to Korea Institute for Animal Products Quality
Evaluation (KAPE, 2017).Different superscripts in the same row indicate differences among quality
grades (p<0.05).Lower grade (QG1 and QG2) striploin released more fatty and meaty flavor aldehydes
and hydrocarbons (in AUs), such as 2- and 3-methyl butanal, hexanal, heptanal,
nonanal, dodecane, and pentadecane, although the proportion of aldehyde groups was
higher in higher quality grades (QG1++ and QG1+). The
proportion of aldehydes increased as the QG (IMF content) increased. The fat content
in emulsion systems and meat products slows down the release of polar volatile
compounds, such as aldehydes, ketones, and alcohols (Jo and Ahn, 1999; Jo et al.,
1999). Thus, the present results confirm previous findings (Jo and Ahn, 1999; Jo et al., 1999). Aldehyde is also one of the products of the
Maillard reaction at high temperatures and is derived from the thermal degradation
of unsaturated fatty acids, such as linoleic and linolenic acids (Elmore et al., 2004). Some aldehydes possess
pleasant flavors, such as fatty, roasted meat, and an almond-like aroma based on
olfactory analysis (Xie et al., 2008). Ba et al. (2012) found that the
longissimus tissue of Hanwoo released high amounts of
aldehydes. Furthermore, Frank et al. (2016)
reported that the proportion of most aliphatic aldehydes increases as the polar
lipid content increases. These results indicate that the major aldehydes from leaner
striploins were mainly derived from lipid oxidation of muscle cell membrane
phospholipids.Among pyrazines, 2,5-dimethylpyrazine was the most abundant volatile in leaner
striploin, comprising more than 30% of the total volatile compounds, followed
by styrene, a hydrocarbon, which was remarkably higher than that of higher QGs.
Pyrazines are generally the products of the Maillard reaction between free amino
acids and reducing sugars (Yu et al., 2021).
The flavor characteristics of pyrazines are roasted and nutty, and are mostly found
in roasted beef, coffee beans and nuts (Mortzfeld et
al., 2020). This suggests that the roasted aroma from aldehydes in
lower-QG Hanwoo striploin was obtained from pyrazines. Mottram and Edwards (1983) reported that the amount of
pyrazines is negatively associated with the presence of the lipid fraction in beef.
Therefore, the present results are in line with those of previous reports.
Hydrocarbons, which are the main products of the oxidation of polyunsaturated fatty
acids through thermal degradation, were higher in leaner striploins. This can also
be associated with the higher proportion of PUFAs in lower QG striploin than in
higher QGs. Legako et al. (2015) and Hunt et al. (2016) reported that higher QG beef
is associated with more neutral lipids (MUFA) than polar lipids (PUFA).From electronic nose sensor data, the findings from gas chromatography can be
associated with the highest intensity of beef volatile compounds released from the
lowest QG group, wherein a significant proportion of pyrazines was observed. The
sensor resistance ratios of the volatile compounds in the headspace derived from the
heated samples are shown in Fig. 1. The
resistance ratios of T30/1, P10/1, P10/2, P40/1, T70/2, and PA2 were significantly
higher in the lower QG, indicating significant differences in the intensity of
volatile compounds. The clustering is clear, indicating statistical discrimination
(Utama et al., 2017). Among the volatile
groups, aldehydes were positively correlated with the resistance ratio of the T30/1,
P10/2, T70/2, and PA2 sensors, while hydrocarbons and pyrazines were positively
correlated with the resistance ratio of all sensors (Table 4). Multiple regression models revealed that the combination of
all volatile groups showed significant regression with the resistance ratio of each
sensor (Table 5). However, each volatile
group independently affected the resistance ratio of all sensors. Although the
regression model is significant, the linearity or accuracy
(0.57
Fig. 1.
Differences in aroma intensity among quality grades.
Data are shown as mean of each sensor’s resistance ratio. Metal oxide
sensors; T30/1, P10/1, P10/2, P40/1, T70/2, PA2. Sample size for each
quality grade (n=6). Carcass quality grade (1++,
1+, 1, and 2) was assessed according to Korea Institute for Animal
Products Quality Evaluation (KAPE,
2017).
Table 4.
Correlation coefficients between the volatile groups and resistance ratio
of six metal sensors of electronic nose
Major volatile group
Sensor
T30/1
P10/1
P10/2
P40/1
T70/2
PA2
Aldehydes
0.34[*]
0.32
0.33[*]
0.33
0.34[*]
0.36[*]
Hydrocarbons
0.56[***]
0.55[***]
0.56[***]
0.56[***]
0.56[***]
0.58[***]
Pyrazines
0.61[***]
0.58[***]
0.59[***]
0.59[***]
0.61[***]
0.63[***]
Sample size for each quality grade (n=6).
p<0.05
p<0.001.
Table 5.
Multiple regression models for resistance ratio of six metal sensors of
electronic nose using the measured peak area of volatile groups as
covariate
Sensor
Intercept
Covariate
r2
p-value
Aldehydes
Hydrocarbons
Pyrazines
T30/1
<0.001
<0.001[*]
<0.001[***]
<0.001[***]
0.60
<0.001
P10/1
<0.001
<0.001[*]
<0.001[***]
<0.001[***]
0.57
<0.001
P10/2
<0.001
<0.001[*]
<0.001[***]
<0.001[***]
0.59
<0.001
P40/1
<0.001
<0.001[*]
<0.001[***]
<0.001[***]
0.58
<0.001
T70/2
<0.001
<0.001[*]
<0.001[***]
<0.001[***]
0.60
<0.001
PA2
<0.001
<0.001[*]
<0.001[***]
<0.001[***]
0.62
<0.001
Sample size for each quality grade (n=6).
p<0.05
p<0.001.
Differences in aroma intensity among quality grades.
Data are shown as mean of each sensor’s resistance ratio. Metal oxide
sensors; T30/1, P10/1, P10/2, P40/1, T70/2, PA2. Sample size for each
quality grade (n=6). Carcass quality grade (1++,
1+, 1, and 2) was assessed according to Korea Institute for Animal
Products Quality Evaluation (KAPE,
2017).Sample size for each quality grade (n=6).p<0.05p<0.001.Sample size for each quality grade (n=6).p<0.05p<0.001.The PCA plot (Fig. 2) and cluster dendrogram
(Fig. 3) revealed that the aroma profile
differed according to QG. The loading plots and the resistance ratio of the sensors
led to a group with a high intensity of volatile release. The aroma profile of
striploin with different QGs was well-discriminated, indicating that marbling or the
fat to lean muscle ratio affects the release of volatile compounds. However, the
cluster dendrogram shows that the aroma profile between the higher quality grades
(QG1++ and QG1+) and the lower quality grades (QG1 and QG2) is
close to each other with a smaller distance than that between the higher QG group
and lower QG groups.
Fig. 2.
Principal component analysis plot of the aroma profile of different
quality grades (QG).
Total contribution of principal component 1 and 2 (PC1 and PC2) is
100%, which means that 100% of data variance is explained.
Loading plots; T30/1, P10/1, P10/2, P40/1, T70/2, PA2, are the intensity of
the response of the sensor. Sample size for each quality grade (n=6).
Carcass quality grade (1++, 1+, 1, and 2) was assessed
according to Korea Institute for Animal Products Quality Evaluation (KAPE, 2017).
Fig. 3.
Cluster dendrogram of the aroma profile of different quality
grades.
Sample size for each quality grade (n=6). Carcass quality grade
(1++, 1+, 1, and 2) was assessed according to Korea
Institute for Animal Products Quality Evaluation (KAPE, 2017).
Principal component analysis plot of the aroma profile of different
quality grades (QG).
Total contribution of principal component 1 and 2 (PC1 and PC2) is
100%, which means that 100% of data variance is explained.
Loading plots; T30/1, P10/1, P10/2, P40/1, T70/2, PA2, are the intensity of
the response of the sensor. Sample size for each quality grade (n=6).
Carcass quality grade (1++, 1+, 1, and 2) was assessed
according to Korea Institute for Animal Products Quality Evaluation (KAPE, 2017).
Cluster dendrogram of the aroma profile of different quality
grades.
Sample size for each quality grade (n=6). Carcass quality grade
(1++, 1+, 1, and 2) was assessed according to Korea
Institute for Animal Products Quality Evaluation (KAPE, 2017).
Conclusion
The aroma profile of beef according to carcass QG can be discriminated using
chemometrics approach. The higher the QG, the less abundant volatile compounds
released from the beef. The chemometrics approach helps to confirm the effect of fat
deposition on the differences in the aroma profiles of beef. The correlation between
the sensor resistance ratio or the response of the electronic nose and the abundance
of volatile compounds is strongly dependent on the intensity of the volatile
compounds. Therefore, to predict the abundance of individual volatile compounds
using the response of each sensor, pre-treatments, such as temperature adjustment
prior to the extraction of volatile compounds, should be considered.
Authors: Cleiton Antônio Nunes; Verônica Ortiz Alvarenga; Anderson de Souza Sant'Ana; Jânio Sousa Santos; Daniel Granato Journal: Food Res Int Date: 2015-06-11 Impact factor: 6.475