Using Bayesian threshold model and machine learning method to improve the accuracy of genomic prediction for ordered categorical traits in fish

Hailiang Song, Tian Dong, Xiaoyu Yan, Wei Wang, Zhaohui Tian, Hongxia Hu
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引用次数: 1

Abstract

Ordered categorical traits are commonly used in fish breeding programs as they are easier to obtain than continuous observations. However, most studies treat ordered categorical traits as linear traits and analyze them using linear models, which can lead to a serious reduction in prediction accuracy by violating the basic assumptions of linear models. The aim of this study was to evaluate the advantages of Bayesian threshold model and machine learning method in genomic prediction of ordered categorical traits in fish. The study was based on the analyses of simulated data and real data of Atlantic salmon. Ordinal categorical traits were simulated with varying numbers of categories (2, 3 and 4) and levels of heritabilities (0.1, 0.3 and 0.5). Linear and threshold models with BayesA and BayesCπ methods, as well as a machine learning method, support vector regression with default (SVRdef) and tuning (SVRtuning) hyperparameters were used to investigate their prediction abilities. The results showed that Bayesian threshold models yielded 2.1%, 2.6% and 2.9% higher prediction accuracies on average for 2-, 3- and 4-category traits, respectively, than Bayesian linear models. Furthermore, SVRtuning produced higher prediction accuracy compared with SVRdef and Bayesian threshold models in all scenarios. For real data, Bayesian threshold models yielded 1.2% higher prediction accuracy than Bayesian linear models, and SVRdef and SVRtuning yielded 3.3% and 6.6% higher prediction accuracies than Bayesian methods, respectively. In conclusion, the use of Bayesian threshold model and machine learning method was beneficial for genomic prediction of ordered categorical traits in fish.

利用贝叶斯阈值模型和机器学习方法提高鱼类有序分类性状基因组预测的准确性
有序分类特征通常用于鱼类养殖计划,因为它们比连续观察更容易获得。然而,大多数研究将有序分类特征视为线性特征,并使用线性模型对其进行分析,这可能会违反线性模型的基本假设,导致预测精度严重降低。本研究的目的是评估贝叶斯阈值模型和机器学习方法在鱼类有序分类性状基因组预测中的优势。该研究基于对大西洋鲑鱼模拟数据和真实数据的分析。用不同数量的类别(2、3和4)和遗传水平(0.1、0.3和0.5)模拟有序分类特征。使用贝叶斯a和贝叶斯Cπ方法的线性和阈值模型,以及机器学习方法、默认支持向量回归(SVRdef)和调整(SVRtuning)超参数来研究它们的预测能力。结果表明,贝叶斯阈值模型对2类、3类和4类性状的预测准确率分别比贝叶斯线性模型平均高2.1%、2.6%和2.9%。此外,在所有场景中,与SVRdef和贝叶斯阈值模型相比,SVRtuning产生了更高的预测精度。对于真实数据,贝叶斯阈值模型的预测精度比贝叶斯线性模型高1.2%,SVRdef和SVRtuning的预测精度分别比贝叶斯方法高3.3%和6.6%。总之,贝叶斯阈值模型和机器学习方法的使用有利于鱼类有序分类性状的基因组预测。
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