Principal Component Analysis of morphometric traits and body indices in South African Kalahari Red goats

IF 0.7 4区 农林科学 Q3 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Thobela Louis Tyasi, O. Tada
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引用次数: 0

Abstract

Principal component analysis (PCA) is a vital statistical technique for defining the morphological structure of livestock but has not been used in South African Kalahari Red goats. Thirteen morphometric traits and eleven body indices from two hundred and ninety-six (296) South African Kalahari Red goats (269 does and 27 bucks) aged 2–3 years were used to define morphological structure using PCA. The coefficient of determination (R2), root mean square error (RMSE), Akaike’s information criterion (AIC), Mallows' Cp-statistic (Cp), and coefficient of variation (CV) were used to select the best fit model. Body weight was correlated with all morphometric traits in both sexes. The first two principal components explained 87.31% of the variation in measurements from male goats and 62.32% of the trait variation in the females. The inclusion of head length, body length, canon circumference, rump length, rump width, body condition score, wither height, and rump height increased the accuracy to 98% with smaller RMSE (2.42), AIC (55.35), Cp (10.00), and CV (3.98), and the use of PC1 and PC2 included 94% of the variation (RMSE, 3.62; AIC, 72.26; Cp, 3.00; CV, 5.94 in males). In females, the inclusion of all morphometric traits included 87% of the variation (RMSE, 2.93; AIC, 590.63; Cp, 13.00; CV 5.87). The use of PC1 and PC2 included 82% of the variation (RMSE, 3.41; AIC, 663.60; Cp, 3.00; CV, 6.84). PCA can therefore be used in breeding programs to define the morphological structure of South African Kalahari Red goats with a severe reduction in the number of morphometric traits to be recorded.
南非喀拉哈里红山羊形态计量性状和身体指数的主成分分析
主成分分析(PCA)是确定牲畜形态结构的重要统计技术,但尚未在南非卡拉哈里红山羊中使用。选取296只2 ~ 3岁南非卡拉哈里红山羊(269公山羊和27公山羊)的13个形态特征和11个身体指数,采用主成分分析法对其形态结构进行了分析。采用决定系数(R2)、均方根误差(RMSE)、Akaike信息准则(AIC)、Mallows Cp统计量(Cp)和变异系数(CV)筛选最佳拟合模型。体重与两性的所有形态计量性状均相关。前两个主成分解释了公山羊测量变异的87.31%和母山羊性状变异的62.32%。纳入头长、体长、臀围、臀长、臀宽、体况评分、萎缩高度和臀高,准确率提高到98%,RMSE(2.42)、AIC(55.35)、Cp(10.00)和CV(3.98)较小,PC1和PC2的使用包括94%的变异(RMSE, 3.62;另类投资会议,72.26;Cp, 3.00;男性CV为5.94)。在雌性中,所有形态计量性状的包含占变异的87% (RMSE, 2.93;另类投资会议,590.63;Cp, 13.00;简历5.87)。PC1和PC2的使用包括82%的变异(RMSE, 3.41;另类投资会议,663.60;Cp, 3.00;简历,6.84)。因此,PCA可以用于育种计划,以确定南非喀拉哈里红山羊的形态结构,这大大减少了需要记录的形态特征的数量。
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来源期刊
South African Journal of Animal Science
South African Journal of Animal Science 农林科学-奶制品与动物科学
CiteScore
1.50
自引率
0.00%
发文量
39
审稿时长
>36 weeks
期刊介绍: The South African Journal of Animal Science is an open access, peer-reviewed journal for publication of original scientific articles and reviews in the field of animal science. The journal publishes reports of research dealing with production of farmed animal species (cattle, sheep, goats, pigs, horses, poultry and ostriches), as well as pertinent aspects of research on aquatic and wildlife species. Disciplines covered nutrition, genetics, physiology, and production systems. Systematic research on animal products, behaviour, and welfare are also invited. Rigorous testing of well-specified hypotheses is expected.
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