D.A. Martinez, N. Suesuttajit, J.T. Weil, P. Maharjan , A. Beitia , K. Hilton , C. Umberson, A. Scott, C.N. Coon
{"title":"用双能x线吸收法测定鸡的加工重量:开发预测模型","authors":"D.A. Martinez, N. Suesuttajit, J.T. Weil, P. Maharjan , A. Beitia , K. Hilton , C. Umberson, A. Scott, C.N. Coon","doi":"10.1016/j.anopes.2022.100023","DOIUrl":null,"url":null,"abstract":"<div><p>A considerable opportunity exists in evaluating the dynamics of the carcass and the processing cut-up weights of broilers across the whole grow-out period as influenced by intervention factors. However, no fast and objective tool exists up to date to make such determinations. This study aimed to develop models to predict the unchilled and chilled weights of the carcass and cut-up pieces of broilers using Dual-Energy X-ray Absorptiometry (<strong>DEXA</strong>) and feathered non-fasted birds. Highly diverse (BW and body composition) broilers (n = 291) between 4 and 79 days of age were euthanized, DEXA-scanned, and manually processed to determine the weights of the carcass and cut-up pieces. Correction factors were applied to obtain the fasted BW and the corresponding bled and chilled weights. A database was built up, including all the weights recorded and the DEXA-reported indexes. A stratified random data-splitting with a refitting approach was applied. Multiple least-squares linear regressions were fitted for each unchilled and chilled variable on the training dataset using JMP Pro 16. Natural log and square root transformations were applied to predictor variables as convenient, and outliers were removed. Candidate models were screened for normal distribution and homoscedasticity of residuals and collinearity among predictors. The highest precision (adjusted <em>R<sup>2</sup></em>) and the lowest error (RMSE) were selection criteria. Once model overfitting and prediction performance was tested on the validation dataset, the models were refitted with all the data in the original dataset. Prediction models with high (unchilled and chilled carcass and cut-up weights, feet, and head; <em>R</em><sup>2</sup> > 0.99) and acceptable (abdominal fat; <em>R</em><sup>2</sup> > 0.69) precision were obtained. In conclusion, these results support the use of DEXA to determine the processing weights of broilers. Its application to the study of growth curves of cut-up pieces as influenced by nutrition, genetics, environment, and management opens a new spectrum of opportunities for the industry.</p></div>","PeriodicalId":100083,"journal":{"name":"Animal - Open Space","volume":null,"pages":null},"PeriodicalIF":0.0000,"publicationDate":"2022-12-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S2772694022000206/pdfft?md5=602a8ff731b40d5372dbb81c2d3002b8&pid=1-s2.0-S2772694022000206-main.pdf","citationCount":"7","resultStr":"{\"title\":\"Processing weights of chickens determined by dual-energy X-ray absorptiometry: 2. Developing prediction models\",\"authors\":\"D.A. Martinez, N. Suesuttajit, J.T. Weil, P. Maharjan , A. Beitia , K. Hilton , C. Umberson, A. Scott, C.N. Coon\",\"doi\":\"10.1016/j.anopes.2022.100023\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><p>A considerable opportunity exists in evaluating the dynamics of the carcass and the processing cut-up weights of broilers across the whole grow-out period as influenced by intervention factors. However, no fast and objective tool exists up to date to make such determinations. This study aimed to develop models to predict the unchilled and chilled weights of the carcass and cut-up pieces of broilers using Dual-Energy X-ray Absorptiometry (<strong>DEXA</strong>) and feathered non-fasted birds. Highly diverse (BW and body composition) broilers (n = 291) between 4 and 79 days of age were euthanized, DEXA-scanned, and manually processed to determine the weights of the carcass and cut-up pieces. Correction factors were applied to obtain the fasted BW and the corresponding bled and chilled weights. A database was built up, including all the weights recorded and the DEXA-reported indexes. A stratified random data-splitting with a refitting approach was applied. Multiple least-squares linear regressions were fitted for each unchilled and chilled variable on the training dataset using JMP Pro 16. Natural log and square root transformations were applied to predictor variables as convenient, and outliers were removed. Candidate models were screened for normal distribution and homoscedasticity of residuals and collinearity among predictors. The highest precision (adjusted <em>R<sup>2</sup></em>) and the lowest error (RMSE) were selection criteria. Once model overfitting and prediction performance was tested on the validation dataset, the models were refitted with all the data in the original dataset. Prediction models with high (unchilled and chilled carcass and cut-up weights, feet, and head; <em>R</em><sup>2</sup> > 0.99) and acceptable (abdominal fat; <em>R</em><sup>2</sup> > 0.69) precision were obtained. 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引用次数: 7
摘要
在评估受干预因素影响的肉鸡整个生长期胴体动态和加工切重方面存在相当大的机会。然而,到目前为止,还没有快速和客观的工具来做出这样的决定。本研究旨在利用双能x射线吸收仪(DEXA)建立模型,预测肉仔鸡胴体和切肉块的未冷冻和冷冻体重。对4 ~ 79日龄高度多样化(体重和体成分)的肉鸡(n = 291)实施安乐死,对其进行dexa扫描,并进行人工处理,以确定胴体和切肉块的重量。采用修正因子得到了空腹体重和相应的放血和冷冻体重。建立了一个数据库,包括所有记录的权重和dexa报告的索引。采用分层随机数据分割和修正方法。使用JMP Pro 16对训练数据集上的每个未冷冻和冷冻变量进行多元最小二乘线性回归。为了方便,对预测变量应用自然对数和平方根变换,并去除异常值。对候选模型进行正态分布、残差均方差和预测因子间共线性筛选。以最高精密度(调整R2)和最低误差(RMSE)为选择标准。一旦在验证数据集上测试了模型过拟合和预测性能,则使用原始数据集中的所有数据对模型进行修正。具有高(未冷藏和冷藏)胴体和切割重量、脚和头的预测模型;R2的在0.99)和可接受(腹部脂肪;R2的在0.69)精密度。综上所述,这些结果支持DEXA测定肉鸡加工体重。将其应用于研究受营养、遗传、环境和管理影响的切块生长曲线,为该行业开辟了新的机会。
Processing weights of chickens determined by dual-energy X-ray absorptiometry: 2. Developing prediction models
A considerable opportunity exists in evaluating the dynamics of the carcass and the processing cut-up weights of broilers across the whole grow-out period as influenced by intervention factors. However, no fast and objective tool exists up to date to make such determinations. This study aimed to develop models to predict the unchilled and chilled weights of the carcass and cut-up pieces of broilers using Dual-Energy X-ray Absorptiometry (DEXA) and feathered non-fasted birds. Highly diverse (BW and body composition) broilers (n = 291) between 4 and 79 days of age were euthanized, DEXA-scanned, and manually processed to determine the weights of the carcass and cut-up pieces. Correction factors were applied to obtain the fasted BW and the corresponding bled and chilled weights. A database was built up, including all the weights recorded and the DEXA-reported indexes. A stratified random data-splitting with a refitting approach was applied. Multiple least-squares linear regressions were fitted for each unchilled and chilled variable on the training dataset using JMP Pro 16. Natural log and square root transformations were applied to predictor variables as convenient, and outliers were removed. Candidate models were screened for normal distribution and homoscedasticity of residuals and collinearity among predictors. The highest precision (adjusted R2) and the lowest error (RMSE) were selection criteria. Once model overfitting and prediction performance was tested on the validation dataset, the models were refitted with all the data in the original dataset. Prediction models with high (unchilled and chilled carcass and cut-up weights, feet, and head; R2 > 0.99) and acceptable (abdominal fat; R2 > 0.69) precision were obtained. In conclusion, these results support the use of DEXA to determine the processing weights of broilers. Its application to the study of growth curves of cut-up pieces as influenced by nutrition, genetics, environment, and management opens a new spectrum of opportunities for the industry.