Artificial Neural Networks for Modeling and Optimizing Egg Cost in Second-Cycle Laying Hens Based on Dietary Intakes of Essential Amino Acids

Walter Morales-Suárez, Luis Daniel Daza, Henry A. Váquiro
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Abstract

Egg production is a significant source of animal protein for human consumption. Feed costs significantly impact the profitability of egg production, representing more than 70% of the variable costs. This study evaluated the effect of dietary intakes of three essential amino acids (EAAs) on the egg cost for H&N Brown second-cycle laying hens. The hens were fed for 20 weeks with 23 diets that varied in their lysine, methionine + cystine, and threonine contents. These amino acids were derived from both dietary and synthetic sources. Zootechnical results were used to calculate the feed cost per kilogram of egg (FCK), considering the cost of raw materials and the diet composition. Multivariate polynomial models and artificial neural networks (ANNs) were validated to predict FCK as a function of the EAAs and time. The EAA intakes that minimize FCK over time were optimized using the best model, a cascade-forward ANN with a softmax transfer function. The optimal scenario for FCK (0.873 USD/kg egg) at 20 weeks was achieved at 943.7 mg lysine/hen-day, 858.3 mg methionine + cystine/hen-day, and 876.8 mg threonine/hen-day. ANNs could be a valuable tool for predicting the egg cost of laying hens based on the nutritional requirements. This could help improve economic efficiency and reduce the feed costs in poultry companies.
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基于饲粮必需氨基酸摄入量的二周期蛋鸡产蛋成本人工神经网络建模与优化
鸡蛋生产是供人类食用的动物蛋白的重要来源。饲料成本显著影响蛋生产的盈利能力,占可变成本的70%以上。本试验旨在评价饲粮中添加三种必需氨基酸(EAAs)对布朗二循环蛋鸡产蛋成本的影响。试验饲喂赖氨酸、蛋氨酸+胱氨酸和苏氨酸含量不同的23种饲粮,为期20周。这些氨基酸来源于膳食和人工合成。结合原料成本和日粮组成,利用动物技术结果计算每千克蛋的饲料成本(FCK)。验证了多元多项式模型和人工神经网络(ann)预测FCK作为EAAs和时间的函数。使用最佳模型(具有softmax传递函数的级联前向神经网络)优化了使FCK随时间减小的EAA进食量。20周龄FCK(0.873美元/kg蛋)的最佳方案为赖氨酸943.7 mg /母鸡日,蛋氨酸+胱氨酸858.3 mg /母鸡日,苏氨酸876.8 mg /母鸡日。基于营养需求的人工神经网络可作为预测蛋鸡产蛋成本的一种有价值的工具。这有助于提高经济效益,降低家禽公司的饲料成本。
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