Abstract

Background and Aim:The Thalli sheep are the main breed of sheep in Pakistan, and an effective method to predict their body weight (BW) using linear body measurements has not yet been determined. Therefore, this study aims to establish an algorithm with the best predictive capability, among the Chi-square automatic interaction detector (CHAID), exhaustive CHAID, artificial neural network, and classification and regression tree (CART) algorithms, in live BW prediction using selected body measurements in female Pakistani Thalli sheep.Materials and Methods:A total of 152 BW records, including nine continuous predictors (wither height, body length [BL], head length, rump length, tail length, head width, rump width, heart girth [HG], and barrel depth), were utilized. The coefficient of determination (R2), standard deviation ratio, root-mean-square error (RMSE), etc., were calculated for each algorithm.Results:The R2 (%) values ranged from 49.28 (CART) to 64.48 (CHAID). The lowest RMSE was found for CHAID (2.61), and the highest one for CART (3.12). The most significant predictors were the HG of live BW for all algorithms. The heaviest average BW (41.12 kg) was observed in the subgroup of those having a BL of >73.91 cm (Adjusted p=0.045).Conclusion:Among the algorithms, CHAID provided the most appropriate predictive capability in the prediction of live BW for female Thalli sheep. In general, the applied algorithms accurately predicted the BW of Thalli sheep, which can be very helpful in deciding on the standards, available drug doses, and required feed amount for animals.

Highlights

  • The live body weight (BW) of sheep at different ages of their lifecycle is a significant trait for judging their adaptive performance

  • The applied algorithms accurately predicted the BW of Thalli sheep, which can be very helpful in deciding on the standards, available drug doses, and required feed amount for animals

  • The BW prediction equation was BM=−32.5+0.19 wither height (WH)+0.19 body length (BL)+0.21 head length (HL)+0.13 rump length (RL)+0.05 TL−0.37 head width (HW)+0.07 rump width (RW)+0.26 heart girth (HG)+0.19 barrel depth (BD) along with R2=0.519, indicating that the 51.9% variation in the BW was explained by the predictors

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Summary

Introduction

The live body weight (BW) of sheep at different ages of their lifecycle is a significant trait for judging their adaptive performance. The BW is supplemented with measurements that describe an individual or population more absolutely than the conventional methods of weighing or grading. It gives sufficient information on the ­morphological structure of the animal as well as its physiological condition [1]. Various reports found a great figure for the estimation of live BW using the main predictors, such as morphological and testicular measurements in different sheep and goat breeds. This study aims to establish an algorithm with the best predictive capability, among the Chi-square automatic interaction detector (CHAID), exhaustive CHAID, artificial neural network, and classification and regression tree (CART) algorithms, in live BW prediction using selected body measurements in female Pakistani Thalli sheep

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