Predictability of carcass traits in live Tan sheep by real-time ultrasound technology with least-squares support vector machines

被引:6
|
作者
Fan, Naiyun [1 ]
Liu, Guishan [1 ]
Zhang, Chong [1 ]
Zhang, Jingjing [1 ]
Yu, Jiangyong [1 ]
Sun, Yourui [1 ]
机构
[1] Ningxia Univ, Sch Food & Wine, Yinchuan 750021, Ningxia, Peoples R China
基金
中国国家自然科学基金;
关键词
carcass composition; multivariate analysis; Tan sheep; ultrasound technology; IN-VIVO ESTIMATION; FAT THICKNESS; BODY-COMPOSITION; MUSCLE DEPTH; LAMBS; PREDICTION; SLAUGHTER; WEIGHTS;
D O I
10.1111/asj.13733
中图分类号
S8 [畜牧、 动物医学、狩猎、蚕、蜂];
学科分类号
0905 ;
摘要
This study aimed to investigate the performance of least-squares support vector machines to predict carcass characteristics in Tan sheep using noninvasive in vivo measurements. A total of 80 six-month-old Tan sheep (37 rams and 43 ewes) were examined. Back fat thickness and eye muscle area between the 12th and 13th ribs were measured using real-time ultrasound in live Tan sheep. All carcasses were dissected to hind leg, longissimus dorsi muscle, lean meat, fat, and bone to determine carcass composition. Multiple linear regression (MLR), partial least squares regression (PLSR), and least-squares support vector machines (LSSVM) were applied to correlate the live Tan sheep characteristics with carcass composition. The results showed that the LSSVM model had a better efficacy for estimating carcass weight, longissimus dorsi muscle weight, lean meat weight, fat weight, lean meat, and fat percentage in live lambs (R = 0.94, RMSE = 0.62; R = 0.73, RMSE = 0.02; R = 0.86, RMSE = 0.47; R = 0.78, RMSE = 0.63; R = 0.73, RMSE = 0.02; R = 0.65, RMSE = 0.03, respectively). LSSVM algorithm was a potential alternative to the conventional MLR method. The results demonstrated that LSSVM model might have great potential to be applied to the evaluation of sheep with superior carcass traits by combining with real-time ultrasound technology.
引用
收藏
页数:10
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