Body Composition Estimation in Breeding Ewes Using Live Weight and Body Parameters Utilizing Image Analysis

被引:2
|
作者
Shalaldeh, Ahmad [1 ]
Page, Shannon [1 ]
Anthony, Patricia [1 ]
Charters, Stuart [1 ]
Safa, Majeed [2 ]
Logan, Chris [3 ]
机构
[1] Lincoln Univ, Fac Environm Soc & Design, Lincoln 7647, New Zealand
[2] Lincoln Univ, Fac Agribusiness & Commerce, Lincoln 7647, New Zealand
[3] Lincoln Univ, Fac Agr & Life Sci, Lincoln 7647, New Zealand
来源
ANIMALS | 2023年 / 13卷 / 14期
关键词
body composition; body condition score; body parameters; fat; live weight; ewes' conditions; image analysis; CARCASS COMPOSITION; CONDITION SCORE; SHEEP; ULTRASOUND; PREDICTION; NUTRITION; SIZE;
D O I
10.3390/ani13142391
中图分类号
S8 [畜牧、 动物医学、狩猎、蚕、蜂];
学科分类号
0905 ;
摘要
Simple Summary Monitoring animal condition is integral for maintaining a healthy flock, increasing ewe productivity, refining animal nutrition, and identifying suitable animals for slaughter. Accurate determination of the body compositions (the amount of fat, muscle, and bone) of ewes can be used to evaluate their conditions, which provides key information to make management decisions. Farmers currently rely on live weight (LW) and body condition score (BCS) to evaluate the health statuses of ewes. This research proposed the use of visual imaging to determine body dimensions, which are then used in combination with LW to predict the body compositions of ewes. The results showed a correlation between fat, muscle, and bone weight determined by computerized tomography (CT) and the fat, muscle, and bone weight estimated by the live weight and body parameters calculated using the image processing application. The results showed an optimal fat of 9% of LW for ewes during the production cycle. If the percentage of fat is less than or more than 9%, farmers have to take action to improve the conditions of the animals to ensure the best performance during weaning and ewe and lamb survival during the next lambing. Farmers are continually looking for new, reliable, objective, and non-invasive methods for evaluating the conditions of ewes. Live weight (LW) and body condition score (BCS) are used by farmers as a basis to determine the condition of the animal. Body composition is an important aspect of monitoring animal condition. The body composition is the amount of fat, muscle, and bone; knowing the amount of each is important because the information can be used for better strategic management interventions. Experiments were conducted to establish the relationship between body composition and body parameters at key life stages (weaning and pre-mating), using measurements automatically determined by an image processing application for 88 Coopworth ewes. Computerized tomography technology was used to determine the body composition. Multivariate linear regression (MLR), artificial neural network (ANN), and regression tree (RT) statistical analysis methods were used to develop a relationship between the body parameters and the body composition. A subset of data was used to validate the predicted model. The results showed a correlation between fat, muscle, and bone determined by CT and the fat, muscle, and bone weight estimated by the live weight and body parameters calculated using the image processing application, with r(2) values of 0.90 for fat, 0.72 for muscle, and 0.50 for bone using ANN. From these results, farmers can utilize these measurements to enhance nutritional and management practices.
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页数:14
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