Seok-Won Lim1, Doyon Hwang2, Sangwook Kim1, Jun-Mo Kim1. 1. Functional Genomics & Bioinformatics Laboratory, Department of Animal Science and Technology, Chung-Ang University, Anseong 17546, Korea. 2. Korea Institute for Animal Products Quality Evaluation, Sejong 30100, Korea.
Pork is the most consumed meat in the world, and has long established its position as
a staple food on the market [1]. Consumption
of pork is growing rapidly and steadily in the Asian market [2]. To accommodate this growth, the Animal Products Grading
Service (APGS) has been established in South Korea, resulting in changes in the
livestock product industry. The introduction of the APGS has led to reliable meat
distribution and reasonable prices between consumers and suppliers, providing
various options of meat cuts and quality [3].
Pork grade information allows consumers to purchase pork at a desired price and
increases the production of high-grade pork due to the preference of higher grades
[4]. Thus, for the production and
consumption of high-quality pork, the accuracy of pig carcass grading service has
become important.As pork consumption increases, the number of abattoirs slaughtering more than 300
pigs per hour rises owing to modernisation and scale-up of slaughter facilities
[5]. The increased rate of slaughter in
abattoirs has raised the need for rapid and accurate judgement of pig carcasses.
Efforts to improve pig carcass judgement have been conducted worldwide through the
use of devices that can estimate the lean meat percentage (LMP) of pig carcasses,
such as Fat-O-Meat’er (FOM), UltraFOM (UFOM), AutoFOM, and Vision-Based Video
Image Analyzer (VCS2000) [6-9]. Accordingly, in Korea, non-destructive
automated inspection methods, such as the AutoFOM and VCS2000 systems, have been
implemented to improve slaughter efficiency in abattoirs. AutoFOM uses the
reflectance of ultrasound to automatically measure LMP and fat thickness [10]. VCS2000 system is an image
processing-based method that automatically detects the LMP of half carcasses,
capable of measuring pig carcass at an average speed of more than 600 heads per hour
[11]. Both non-destructive automated
inspection methods for predicting the LMP of a pig carcass passed European
standards, but the AutoFOM method showed a lower error rate [12]. Nevertheless, the VCS2000 image processing-based system
can automatically detect the LMP of half pig carcasses at high speed [13]. For the efficient calculation of LMP using
the VCS2000 system, a calibration equation must be developed from the carcass image
parameters. However, because the calibration equation is influenced by the breed and
genetic difference of pigs, the existing European equation is not effective for use
in Korea [8]. For the effective calculation of
LMP utilising the VCS2000 system, a calibration equation for Korean pig breeds is
required. Therefore, a calibration equation was developed to the estimation of LMP
in Korean whole pig carcasses and lean meat yield of their primal cuts, which is
expected to improve the speed, accuracy, and objectiveness of pig carcass judgement
[14].An automated, LMP-based system for pig carcass has been applied in some abattoirs to
improve the efficiency of pig slaughter and to obtain objective grading parameters
[5]. Domestic pig carcass grading is
determined by carcass quality and meat quality, including 21 parameters: backfat
thickness (BFT), hot carcass weight (CWT), sex, appearance, meat quality, and
defects [15]. Non-destructive method
estimated lean meat yield of pig carcass including BFT and CWT, as well as allow for
more objective pork grading than conventional manual judgement. Therefore, in order
to increase the efficiency of pig slaughter through the non-destructive method, the
correct estimation of the automated method that can accommodate the existing pig
carcass judgement should be made.In the present study, we aimed to identify whether the estimated traits accord with
the actual measured traits through verifying the previously developed calibration
equation. The accuracy of the developed calibration equation based on the
relationship between the measured traits (BFT and CWT) and the estimated traits was
evaluated considering the effects of sex, abattoir, and season that affect actual
slaughter. Furthermore, the optimal estimated regression equation for the measured
BFT and CWT traits was formulated. Through this, it is possible to reconsider the
efficiency in actual abattoirs, and it is expected that can be used as a parameters
for more objective grading judgement.
MATERIALS AND METHODS
Animals
A total of 1,069,019 Landrace × Yorkshire × Duroc (LYD) pigs
(524,001 females, 6,444 males, and 538,574 castrated males) slaughtered between
January and December 2019 were assessed in this study. All the pigs were
slaughtered at three abattoirs following standard procedures under the
supervision of the Korean Grading Service for Animal Products. BFT and CWT were
measured immediately after slaughter. BFT was measured with ruler at the
11th/12th thoracic vertebrae and the 14th thoracic vertebra/1st lumbar vertebra
on the left half of each carcass, and the average of two measurements was used
for analysis.
Traits estimated using non-destructive method
The traits of pig carcasses were estimated to non-destructive automated
inspection method using the VCS2000 system (E+V Tehchnology GmbH & Co.KG,
Oranienburg, Germany). VCS2000 non-destructive method calculates the LMP in half
carcass through video image systems [7].
However, because the variables measured by VCS2000 is influenced by the breed
and genetic difference of pigs, efficient LMP prediction requires a calibrated
equation [8]. Therefore, the traits of pig
carcasses were estimated by applying the calibration equation developed for
estimating the LMP and lean meat yield of Korean pig carcasses [14]. A total of 46 traits of main cuts were
estimated using the non-destructive inspection method, and the estimated traits
were then divided into five categories: 5 BFT-related traits (BFT, BFT in the
11th/12th thoracic vertebrae [BFT11/12], BFT in the 14th thoracic vertebra/1st
lumbar vertebra [BFT14/1], BFT in the 7th multifidus muscle, and BFT in the
1st/2th thoracic vertebrae), 21 major cut-related traits (rib weight, rib trim
weight, rib meat weight, neck weight, neck trim weight, neck meat weight,
shoulder weight [SWT], shoulder trim weight, shoulder meat weight, tenderloin
weight, tenderloin trim weight, tenderloin meat weight, belly weight, belly trim
weight, belly meat weight, loin weight [LWT], loin trim weight, loin meat
weight, ham weight, ham trim weight, and ham meat weight), 5 pork belly-related
traits (belly fat weight, belly rate, belly trim rate, 10-cm neck fat thickness,
and intra-fat thickness), 10 traits related to other parts (CWT, front weight
[FWT], middle weight [MWT], rear weight, foreshank weight, front meat weight,
diaphragm weight, middle meat weight, hindshank weight, and rear meat weight),
and 5 total traits (total skin weight, total fat weight, total bone weight
[TBWT], total meat weight, and LMP).
Statistical analysis
The SAS 9.4 statistical software package (SAS Institute, Cary, NC, USA) was used
to calculate the mean, standard deviation, and range of the measured (BFT and
CWT) and estimated traits of pig carcasses. Pearson correlation coefficients
[16] were used to assess the
relationship between two measured traits (BFT and CWT) and 46 estimated
traits.Analysis of variance [17] was performed
using the general linear model in SAS to simultaneously consider three fixed
effects (abattoir, sex, and season) in the optimal estimated regression
equation. The fixed effects comprised 3 abattoirs (abattoir A, B, and C), 3
sexes (females, males, and castrated males), and 2 seasons (summer and
non-summer). Seasons were divided into summer (June, July, and August) and
non-summer to consider the relationship between the high temperature in summer
and productivity [18]. Differences in the
measured traits (BFT and CWT) according to each fixed effect were analysed using
t-tests [19], which
was used to compare means between groups and to determine whether the
differences in means were statistically significant [20].The 46 estimated traits for the two measured traits (BFT and CWT) were further
subjected to stepwise regression analysis [21] using the REG procedure in SAS. The inclusion or exclusion of
significant traits was set to a common level (p <
0.001). The model was y = β0 + Xb +
βnXb + є, where y is the measured trait;
β0 is the general intercept; in Xb, X is the
design matrix of a fixed effect and b is the fixed effect (abattoir, sex, and
season); in βnXb, βn is the
estimated regression coefficient for each estimated trait and Xb is
the estimated trait; and є is the model error. For each dependent
variable, the top three estimated traits that could sufficiently describe the
model by considering the coefficient of determination
(R2) were used in the final estimated regression
model. Each of the top three estimated traits, which could better explain the
relationship between the estimated traits for measured BFT and CWT, was used in
the simple linear regression model. The accuracy of the estimated regression
model was represented by R2 and residual standard
deviation. The scatter plots with four pork grades were added to the simple
regression model for measured BFT and CWT traits, which are parameters used for
pork grading judgement.
RESULTS
Measured and estimated traits of porcine carcasses
Basic statistical analysis results for the two measured traits (BFT and CWT) and
46 estimated traits are presented in Table
1. The mean, standard deviation, minimum values, and maximum values
of the measured and estimated traits were calculated for each abattoir. Analysis
of variance demonstrated a significant difference (p <
0.001) in the two measured traits between the three fixed effects (Supplementary
Table S1). The quartile range of each fixed effect on the measured trait was
visualised in a boxplot (Fig. 1). All three
fixed effects showed a significant difference (p <
0.001) in both measured traits. The mean values of measured BFT according to
each fixed effect was calculated (abattoir A = 23.282, abattoir B = 22.844,
abattoir C = 22.602; female = 21.534, male = 18.238, castrated male = 24.386;
summer = 23.342, and non-summer = 22.822). Likewise, the mean values of measured
CWT were calculated according to each fixed effect (abattoir A = 90.195,
abattoir B = 86.777, abattoir C = 88.419; female = 88.374, male = 86.621,
castrated male = 88.536; summer = 87.374, and non-summer = 88.797).
Table 1.
The mean, SD, minimum (Min), and maximum (Max) values of measured and
estimated traits of pig carcasses in all abattoirs
Abattoir A (N =
400,280)
Abattoir B (N =
416,092)
Abattoir C (N
=252,647)
Mean
SD
Min
Max
Mean
SD
Min
Max
Mean
SD
Min
Max
Measured traits
Backfat thickness (mm)
23.282
4.894
0.000
56.000
22.844
4.971
3.000
55.000
22.602
4.790
0.000
77.000
Carcass weight (kg)
90.195
6.568
37.000
154.000
86.777
7.268
35.000
140.000
88.419
6.151
38.000
130.000
Estimated traits
Backfat thickness (mm)
23.398
4.878
5.000
45.000
23.181
4.910
5.000
45.000
22.672
4.645
5.000
43.000
Backfat thickness in the 11th/
12th thoracic vertebra (mm)
24.775
5.018
5.000
48.000
23.343
5.085
5.000
48.000
23.234
4.946
5.000
48.000
Backfat thickness in the 14th
thoracic vertebra/1st lumbar vertebra (mm)
23.051
4.759
5.000
45.000
23.014
4.516
5.000
45.000
22.119
4.646
5.000
45.000
Backfat thickness in the 7th
multifidus muscle (mm)
17.814
4.951
3.000
44.000
18.011
4.686
3.000
45.000
16.283
4.621
3.000
41.000
Backfat thickness in the 1st/
2th thoracic vertebra (mm)
39.030
4.759
20.000
64.000
38.283
4.962
19.000
64.000
38.461
4.760
19.000
64.000
Carcass weight (kg)
92.628
7.874
54.000
115.200
88.157
7.601
54.000
115.200
89.290
6.811
54.000
115.200
Front weight (kg)
27.648
1.984
18.162
34.838
26.381
2.198
18.162
34.838
27.618
1.866
18.162
34.838
Middle weight (kg)
33.836
3.117
21.206
47.104
32.502
3.308
21.206
47.104
32.650
2.805
21.206
47.104
Rear weight (kg)
26.086
1.914
16.792
32.728
25.604
2.074
16.792
32.728
25.574
1.764
16.792
32.728
Rib weight (kg)
3.969
0.350
2.090
5.476
3.845
0.382
2.090
5.476
4.034
0.314
2.090
5.476
Rib trim weight (kg)
3.053
0.264
1.306
4.028
2.857
0.269
1.306
4.028
2.971
0.248
1.306
4.028
Rib meat weight (kg)
2.270
0.208
0.993
3.155
2.164
0.210
0.993
3.155
2.243
0.207
0.993
3.155
Neck weight (kg)
5.927
0.437
3.470
7.662
5.525
0.482
3.470
7.662
5.855
0.424
3.470
7.662
Neck trim weight (kg)
4.669
0.365
2.823
5.975
4.423
0.400
2.823
5.975
4.605
0.336
2.823
5.975
Neck meat weight (kg)
3.495
0.259
1.836
4.800
3.385
0.291
1.836
4.800
3.469
0.251
1.836
4.800
Shoulder weight (kg)
11.897
0.954
6.959
15.557
11.421
1.094
6.959
15.557
11.651
0.890
6.959
15.557
Shoulder trim weight (kg)
8.673
0.667
5.170
11.356
8.252
0.730
5.170
11.356
8.434
0.635
5.170
11.356
Shoulder meat weight (kg)
6.357
0.545
3.566
9.082
6.186
0.582
3.566
9.082
6.373
0.510
3.566
9.082
Foreshank weight (kg)
1.846
0.175
0.848
2.618
1.801
0.215
0.848
2.618
1.907
0.156
0.848
2.618
Front meat weight (kg)
14.561
1.294
8.635
19.657
14.013
1.340
8.635
19.657
14.352
1.197
8.635
19.657
Tenderloin weight (kg)
1.692
0.134
0.871
2.269
1.636
0.143
0.871
2.269
1.635
0.125
0.871
2.269
Tenderloin trim weight
(kg)
1.095
0.093
0.513
1.595
1.064
0.099
0.513
1.595
1.083
0.089
0.513
1.595
Tenderloin meat weight
(kg)
1.085
0.113
0.482
1.650
1.070
0.117
0.482
1.650
1.049
0.103
0.482
1.650
Belly weight (kg)
16.893
1.728
9.566
23.688
15.927
1.798
9.566
23.688
15.926
1.558
9.566
23.688
Belly trim weight (kg)
11.864
1.140
6.692
16.584
11.446
1.254
6.692
16.584
11.403
1.022
6.692
16.584
Belly meat weight (kg)
7.879
0.654
4.104
10.564
7.546
0.712
4.104
10.564
7.627
0.602
4.104
10.564
Belly fat weight (kg)
4.074
0.925
0.488
8.552
3.879
0.833
0.488
8.552
3.942
0.804
0.488
8.552
Belly rate (%)
47.616
4.333
25.980
67.360
47.396
3.844
25.980
67.360
46.922
3.856
25.980
67.360
Belly trim rate (%)
66.362
5.185
40.450
89.840
67.939
4.888
40.450
89.840
67.669
4.801
40.590
89.840
10-cm neck fat thickness
(mm)
19.944
4.436
4.000
43.000
20.233
4.212
4.000
43.000
20.166
4.019
4.000
43.000
Intra-fat thickness (mm)
5.384
1.514
1.000
21.000
5.387
1.475
1.000
22.000
5.959
1.399
1.000
22.000
Diaphragm weight (kg)
0.299
0.026
0.168
0.418
0.296
0.028
0.168
0.418
0.296
0.023
0.168
0.418
Loin weight (kg)
10.086
0.961
5.649
14.479
9.663
1.002
5.649
14.479
9.750
0.877
5.649
14.479
Loin trim weight (kg)
7.926
0.683
4.228
11.208
7.699
0.717
4.228
11.208
7.897
0.652
4.228
11.208
Loin meat weight (kg)
7.085
0.719
3.070
10.274
6.719
0.715
3.070
10.274
6.741
0.620
3.070
10.274
Middle meat weight (kg)
17.591
1.367
9.872
23.380
17.022
1.532
9.872
23.380
17.228
1.279
9.872
23.380
Ham weight (kg)
19.728
1.514
11.561
25.419
19.427
1.686
11.561
25.419
19.178
1.391
11.561
25.419
Ham trim weight (kg)
16.603
1.458
9.554
22.436
16.141
1.449
9.554
22.436
15.967
1.275
9.554
22.436
Ham meat weight (kg)
14.477
1.374
8.032
20.596
14.144
1.297
8.032
20.596
13.872
1.212
8.032
20.596
Hindshank weight (kg)
2.381
0.193
1.376
3.032
2.260
0.194
1.376
3.032
2.317
0.179
1.376
3.032
Rear meat weight (kg)
16.634
1.383
9.285
23.311
16.063
1.414
9.285
23.311
16.138
1.262
9.285
23.311
Total skin weight (kg)
6.308
0.352
4.321
8.115
6.127
0.402
4.321
8.115
6.113
0.343
4.321
8.115
Total fat weight (kg)
24.105
4.153
6.742
45.354
22.713
4.085
6.742
45.354
22.937
3.887
6.742
45.354
Total bone weight (kg)
5.854
0.445
3.689
8.003
5.667
0.436
3.689
8.003
5.783
0.422
3.689
8.003
Total meat weight (kg)
48.299
3.865
29.298
64.838
47.492
4.604
29.298
64.838
47.812
3.806
29.298
64.838
Lean meat percentage (%)
55.983
3.811
38.060
71.850
56.984
3.674
38.060
71.850
55.468
3.439
38.060
71.850
Fig. 1.
Boxplots showing that differences in measured two traits (backfat
thickness and carcass weight) according to each fixed effect.
T-test, ***p < 0.001. A, B, and
C represent the effects of abattoir, sex, and season on backfat
thickness, respectively. D, E, and F represent the effects of abattoir,
sex, and season effects for carcass weight, respectively. The horizontal
line in the box represents the median, and the red rhombus indicates the
mean.
Boxplots showing that differences in measured two traits (backfat
thickness and carcass weight) according to each fixed effect.
T-test, ***p < 0.001. A, B, and
C represent the effects of abattoir, sex, and season on backfat
thickness, respectively. D, E, and F represent the effects of abattoir,
sex, and season effects for carcass weight, respectively. The horizontal
line in the box represents the median, and the red rhombus indicates the
mean.
Correlations between measured and estimated traits
The correlations between the two measured traits (BFT and CWT) and 46 estimated
traits were visualised as a heat map (Fig.
2). The results of correlation analysis established a close
relationship between the estimated traits and measured BFT trait in all three
abattoirs: estimated BFT (abattoir A, R = 0.906; abattoir B,
R = 0.900; and abattoir C, R = 0.941),
estimated BFT14/1 (abattoir A, R = 0.873; abattoir B,
R = 0.855; and abattoir C, R = 0.901), and
estimated BFT11/12 (abattoir A, R = 0.852; abattoir B,
R = 0.805; and abattoir C, R = 0.878).
Moreover, correlation analysis verified a close relationship between the
estimated traits and measured CWT trait in all three abattoirs: estimated SWT
(abattoir A, R = 0.944; abattoir B, R = 0.949;
and abattoir C, R= 0.938), estimated FWT (abattoir A,
R = 0.936; abattoir B, R = 0.942; and
abattoir C, R = 0.943), and estimated MWT (abattoir A,
R = 0.936; abattoir B, R = 0.941; and
abattoir C, R = 0.933). The measured traits and estimated
traits showed significant correlation in all three abattoirs (p
< 0.001), except for correlation between measured BFT trait and estimated
diaphragm weight trait at abattoir C (p = 0.737, Supplementary
Table S2).
Fig. 2.
Heatmap showing the correlations between the two measured trait
(backfat thickness and carcass weight) and the 46 estimated
traits.
Colour scale bar from red to blue represents the degree of correlation
coefficients. Yellow border indicates estimated traits that exhibiting
the highest correlation coefficients with measured backfat thickness
trait in all abattoirs. Green border indicates estimated traits that
showing the highest correlation coefficients with measured carcass
weight trait in all abattoirs. Data source for the plots can be found in
Supplementary Table S2.
Heatmap showing the correlations between the two measured trait
(backfat thickness and carcass weight) and the 46 estimated
traits.
Colour scale bar from red to blue represents the degree of correlation
coefficients. Yellow border indicates estimated traits that exhibiting
the highest correlation coefficients with measured backfat thickness
trait in all abattoirs. Green border indicates estimated traits that
showing the highest correlation coefficients with measured carcass
weight trait in all abattoirs. Data source for the plots can be found in
Supplementary Table S2.
Estimated regression models
Stepwise regression analysis was performed using measured traits (BFT and CWT) as
dependent variables (Supplementary Table S3 and S4). Through partial and model
R2 in the entire estimated regression models
(R2 = 0.840), the top three estimated traits
(BFT, LWT, and TBWT) could sufficiently predict the measured BFT trait.
Likewise, it was demonstrated that the top three estimated traits (SWT, LWT, and
FWT) could predict measured CWT traits in the overall estimated regression
models (R2 = 0.980). The estimated regression models
for measured BFT (1) and CWT
(2) traits with three fixed
effects were as follows (Table 2):
Table 2.
The top three estimated traits that can predict measured traits
according to the stepwise regression analysis
Step
Traits (Y =)
Abattoir
Sex
Season
Backfat thickness (X1[1)])
Loin weight (X2[1)])
Total bone weight (X3[1)])
Shoulder weight (X1[2)])
Loin weight (X2[2)])
Front weight (X3[2)])
Intercept
Standard error
R2
1
Backfat thickness
−0.034
0.250
0.289
0.911
–
–
–
–
–
0.923
0.014
0.833
2
0.028
0.283
0.218
0.859
0.408
–
–
–
–
−1.953
0.022
0.837
3
0.033
0.276
0.223
0.781
0.829
−0.970
–
–
–
1.298
0.033
0.840
1
Carcass weight
−0.111
−0.025
−0.350
–
–
–
6.447
–
–
14.185
0.027
0.899
2
0.105
−0.236
0.102
–
–
–
4.166
3.029
–
10.181
0.016
0.967
3
−0.088
−0.156
0.090
–
–
–
2.419
2.759
1.003
6.185
0.013
0.980
Partial regression coefficients for backfat thisckness.
Partial regression coefficients for carcass weight.
Partial regression coefficients for backfat thisckness.Partial regression coefficients for carcass weight.To better elucidate the relationship between the measured and estimated traits, a
simple linear regression model describing each of the top three estimated traits
was generated and visualised as a dot plot, as shown in Fig. 3. The accuracy of the model for measured BFT trait was
determined using simple linear regression analysis (BFT,
R2 = 0.8301; LWT, R2
= 0.3597; TBWT, R2 = 0.0686). The model was also
evaluated for accuracy in measured CWT trait using simple linear regression
analysis (SWT, R2 = 0.8978; LWT,
R2 = 0.8178; and FWT,
R2 = 0.8741). As shown in Fig. 3, the four pork grades were marked with different
colours, and it was confirmed that the higher grades were distributed in the
centre.
Fig. 3.
Linear regression plots of measured traits (backfat thickness and
carcass weight) versus estimated top three traits.
The x-axis represents the estimated traits, whereas the y-axis represents
the measured traits (A–C, backfat thickness; D–F, carcass
weight). The colours in the linear regression plots represent scatter
plots corresponding to four pork grades (1+, yellow; 1, red;
2, green; extra, blue).
Linear regression plots of measured traits (backfat thickness and
carcass weight) versus estimated top three traits.
The x-axis represents the estimated traits, whereas the y-axis represents
the measured traits (A–C, backfat thickness; D–F, carcass
weight). The colours in the linear regression plots represent scatter
plots corresponding to four pork grades (1+, yellow; 1, red;
2, green; extra, blue).
DISCUSSION
The introduction of an automated-system increase the efficiency of pig slaughter and
allow for more objective pork grading rather than conventional manual judgement. In
order to increase the efficiency of the pig carcass automated-system, an accurate
estimation of the automated-method that can accommodate the existing pig carcass
judgement is required. Therefore, the current study verified previously developed
calibration equation [14]. The models were
based on the relationship between the 46 estimated traits using a non-destructive
method and the actual two measured traits (BFT and CWT). We established, using
correlation analysis, that measured BFT trait had a high correlation with estimated
BFT-related traits (BFT, BFT11/12, and BFT14/1). Actually measured BFT trait was
calculated as the average of measured BFT11/12 and BFT14/1 [15], and these two BFT-related traits have been shown as high
estimated traits for measured BFT trait. This showed that a model to which a
developed calibration equation was applied could high predict the measured BFT trait
[14]. Measured CWT trait showed a higher
correlation with weight-related estimated traits including SWT, FWT, and MWT traits
than CWT trait (Supplementary Table S2). The calibration equation for the
application of non-destructive inspection method was calculated using a relatively
low number of animals (175 pigs) [14]. It
seems that the CWT trait was not sufficiently estimated owing to the small sample
size used in the previously developed equation. The measured BFT trait showed a high
correlation with BFT-related estimated traits and our findings indicated that
estimated traits are sufficiently predict of measured CWT trait, even though
estimated traits are non-CWT-related traits.Stepwise regression analysis was conducted to establish an optimal estimated
regression model that could predict measured traits from estimated traits [22]. Unlike in the correlation analysis, fixed
effects (abattoir, sex, and season) that may affect measurement during the actual
slaughtering process were applied in the regression analysis [23]. It was established that the estimated regression models,
which used measured BFT and CWT traits as dependent variables, could be sufficiently
explained by 3 out of 46 estimated traits. The accuracy of measured BFT and CWT
traits by the estimated regression model was 0.840 (R2)
and 0.980 (R2), respectively. Through a simple linear
regression model, the accuracy of each estimated trait for the measured traits (BFT
and CWT) was confirmed. All of the estimated traits (SWT, LWT, and FWT) for the
measured CWT trait showed relatively high accuracy, but in the measured BFT trait,
except for the estimated BFT trait, estimated traits (LWT and TBWT) showed low
accuracy. In the estimated regression model for measured BFT trait, estimated LWT
and TBWT traits had lower partial R2 and did not present
a significant difference in accuracy compared to the model with one estimated BFT
trait. Whereas, for measured CWT trait, the model accuracy increased when estimated
traits were included in the estimated regression model. Among the top three
estimated traits used for measured CWT trait, estimated SWT and FWT traits had high
R, even in correlation analysis. The estimated LWT trait, which
was one of the top three estimated traits, was a common trait between the two
measured traits. According to a previous report, loin content showed a close inverse
relationship with BFT and lean meat content [24]. This finding on the effect of BFT and meat content on loin content
ratio in carcasses showed that estimated LWT trait was closely related to both
measured traits.In order to increase the efficiency of pig slaughter and to obtain objective pig
carcasses, an automated pork grading system based on LMP has been applied in some
abattoirs. As accurate estimation of an automated-method that can accommodate the
existing pig carcass judgement is required, the developed calibration equation that
applied to the non-destructive automated inspection method was verified. The
accuracy of the developed calibration equation was evaluated based on the
relationship between the two measured traits (BFT and CWT) and the 46 estimated
trait, and an optimal estimated regression equation for the two measured traits was
formulated. Taken together, our findings suggest that estimated BFT-related traits
can be used to predict actual BFT trait, and even use estimated traits that are
non-CWT-related can sufficiently predict actual CWT trait.In conclusion, the proposed optimal estimated regression equation is expected to
improve the accuracy of pork grading in abattoirs through objective judgment. The
developed estimated regression models can be widely implemented in other domestic
abattoirs to improve pig carcass grading judgement system. We expect that this
accurate prediction method using our estimated regression models will be a
cornerstone for the Korean pig carcass grading system. Through this, it is possible
to reconsider the efficiency in actual abattoirs, and it is expected that can be
used as a parameters for more objective grading judgement. Furthermore, additional
study is needed to increase the utilization of the other primal cuts.Supplementary Tables
Authors: Lloyd J Edwards; Keith E Muller; Russell D Wolfinger; Bahjat F Qaqish; Oliver Schabenberger Journal: Stat Med Date: 2008-12-20 Impact factor: 2.373
Authors: R K Johnson; E P Berg; R Goodwin; J W Mabry; R K Miller; O W Robison; H Sellers; M D Tokach Journal: J Anim Sci Date: 2004-08 Impact factor: 3.159
Authors: Jung Seok Choi; Ki Mun Kwon; Young Kyu Lee; Jang Uk Joeng; Kyung Ok Lee; Sang Keun Jin; Yang Il Choi; Jae Joon Lee Journal: Asian-Australas J Anim Sci Date: 2018-07-26 Impact factor: 2.509
Authors: Santosh Lohumi; Collins Wakholi; Jong Ho Baek; Byeoung Do Kim; Se Joo Kang; Hak Sung Kim; Yeong Kwon Yun; Wang Yeol Lee; Sung Ho Yoon; Byoung-Kwan Cho Journal: Korean J Food Sci Anim Resour Date: 2018-10-31 Impact factor: 2.622