用非线性函数模拟低地羊的生长。

IF 1.3 Q3 AGRICULTURE, DAIRY & ANIMAL SCIENCE
Translational Animal Science Pub Date : 2025-03-22 eCollection Date: 2025-01-01 DOI:10.1093/tas/txaf036
Numan Sharif, Fiona M McGovern, Noirin McHugh, Thierry Pabiou, Donagh P Berry
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引用次数: 0

摘要

羊的生长曲线建模不仅提供了关于体重如何随年龄变化的信息,而且还将这些系列测量提取为生物学上重要的参数,可用于遗传评估程序。本研究的目的是评估应用于低地羊体重测量的一系列不同函数,并在此过程中探索函数内和函数间参数之间的关系。评估的函数有Brody、Gompertz、Logistic、负指数、Richards和von Bertalanffy。所使用的数据集包括来自13,090只母羊的158,463条体重记录(每只动物6至38条记录范围)。这些功能分别适用于每种动物。采用每只动物的决定系数(R2)和均方根误差(RMSE)以及模型收敛的难易程度来评估模型拟合。实现每个功能收敛的动物百分比从82.39% (Richards)到100.00%(负指数和Logistic)不等。Logistic函数的R2均值最低(0.94),Richards函数的R2均值最高(0.98)。除Richards外,所有函数的A(渐近权值)和B(与初始权值相关的积分常数)参数之间估计存在弱负相关(r = -0.23至-0.13)。所有函数的成熟度参数A和K呈负相关,范围为-0.55 (Brody) ~ -0.41 (Logistic)。A参数在所有函数中的值呈强正相关。Logistic和Richards函数的B参数估计值呈现出非常弱的相关性(r = -0.04)。观察到所有函数的K参数值之间有弱到强的相关性。结果表明,除Richards函数外,所评价的函数均可用于模拟低地羊的生长。考虑到Gompertz和von Bertalanffy函数与数据的拟合性、易于收敛性和估计函数参数的生物敏感性,认为它们是描述爱尔兰雌性低地羊体重分布的最佳拟合函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling growth in lowland sheep using nonlinear functions.

Modelling the growth profiles of sheep not only provides information about how body weight changes with age but also distills these serial measures into biologically important parameters which can be used in genetic evaluation programs. The objective of the present study was to evaluate a series of different functions applied to serial body weight measures of lowland sheep and, in doing so, also explore the relationship between the parameters within and across functions. The evaluated functions were Brody, Gompertz, Logistic, negative exponential, Richards and von Bertalanffy. The data set used consisted of 158,463 body weight records (range of 6 to 38 records per animal) from 13,090 female sheep. The functions were fitted to each animal separately. The coefficient of determination (R2) and root mean square error (RMSE) per animal, along with the ease of model convergence, were used to evaluate model fit. The percentage of animals that achieved convergence per function ranged from 82.39% (Richards) to 100.00% (negative exponential and Logistic). The mean R2 value for the Logistic function was the lowest (0.94), while that for the Richards function was the highest (0.98). A weak negative correlation (r = -0.23 to -0.13) was estimated between the A (asymptotic weight) and B (integrated constant related to initial weight) parameters for all the functions except for Richards. The A and K (maturity rate) parameters of all the functions were negatively correlated and ranged from -0.55 (Brody) to -0.41 (Logistic). The values of the A parameter across all the functions were strongly positively correlated. The estimates for the B parameter of Logistic and Richards functions exhibited a very weak correlation (r = -0.04). A weak to strong correlation between the K parameter values across all functions was observed. Results suggested that all the evaluated functions, except the Richards function, can be applied to model the growth of lowland sheep. The Gompertz and von Bertalanffy functions were considered as the best fitting functions to describe the body weight profiles of Irish female lowland sheep based on their fit to the data, the ease of convergence, and the biological sensibility of the estimated function parameters.

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来源期刊
Translational Animal Science
Translational Animal Science Veterinary-Veterinary (all)
CiteScore
2.80
自引率
15.40%
发文量
149
审稿时长
8 weeks
期刊介绍: Translational Animal Science (TAS) is the first open access-open review animal science journal, encompassing a broad scope of research topics in animal science. TAS focuses on translating basic science to innovation, and validation of these innovations by various segments of the allied animal industry. Readers of TAS will typically represent education, industry, and government, including research, teaching, administration, extension, management, quality assurance, product development, and technical services. Those interested in TAS typically include animal breeders, economists, embryologists, engineers, food scientists, geneticists, microbiologists, nutritionists, veterinarians, physiologists, processors, public health professionals, and others with an interest in animal production and applied aspects of animal sciences.
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