Application of deep learning with bivariate models for genomic prediction of sow lifetime productivity-related traits.

IF 2.4 2区 农林科学 Q1 AGRICULTURE, DAIRY & ANIMAL SCIENCE Animal Bioscience Pub Date : 2024-04-01 Epub Date: 2024-01-14 DOI:10.5713/ab.23.0264
Joon-Ki Hong, Yong-Min Kim, Eun-Seok Cho, Jae-Bong Lee, Young-Sin Kim, Hee-Bok Park
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Abstract

Objective: Pig breeders cannot obtain phenotypic information at the time of selection for sow lifetime productivity (SLP). They would benefit from obtaining genetic information of candidate sows. Genomic data interpreted using deep learning (DL) techniques could contribute to the genetic improvement of SLP to maximize farm profitability because DL models capture nonlinear genetic effects such as dominance and epistasis more efficiently than conventional genomic prediction methods based on linear models. This study aimed to investigate the usefulness of DL for the genomic prediction of two SLP-related traits; lifetime number of litters (LNL) and lifetime pig production (LPP).

Methods: Two bivariate DL models, convolutional neural network (CNN) and local convolutional neural network (LCNN), were compared with conventional bivariate linear models (i.e., genomic best linear unbiased prediction, Bayesian ridge regression, Bayes A, and Bayes B). Phenotype and pedigree data were collected from 40,011 sows that had husbandry records. Among these, 3,652 pigs were genotyped using the PorcineSNP60K BeadChip.

Results: The best predictive correlation for LNL was obtained with CNN (0.28), followed by LCNN (0.26) and conventional linear models (approximately 0.21). For LPP, the best predictive correlation was also obtained with CNN (0.29), followed by LCNN (0.27) and conventional linear models (approximately 0.25). A similar trend was observed with the mean squared error of prediction for the SLP traits.

Conclusion: This study provides an example of a CNN that can outperform against the linear model-based genomic prediction approaches when the nonlinear interaction components are important because LNL and LPP exhibited strong epistatic interaction components. Additionally, our results suggest that applying bivariate DL models could also contribute to the prediction accuracy by utilizing the genetic correlation between LNL and LPP.

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深度学习与双变量模型在母猪终生生产力相关性状基因组预测中的应用。
目的:猪育种人员在选择母猪终生生产力(SLP)时无法获得表型信息。获得候选母猪的遗传信息将使他们受益匪浅。使用深度学习(DL)技术解释基因组数据有助于提高母猪终生生产性能的遗传改良,从而最大限度地提高猪场的盈利能力,因为与基于线性模型的传统基因组预测方法相比,DL 模型能更有效地捕捉到非线性遗传效应,如显性和外显性。本研究旨在调查 DL 对两个 SLP 相关性状(终生产仔数(LNL)和终生产猪量(LPP))基因组预测的有用性:将卷积神经网络(CNN)和局部卷积神经网络(LCNN)这两种双变量 DL 模型与传统的双变量线性模型(即基因组最佳线性无偏预测、贝叶斯脊回归、贝叶斯 A 和贝叶斯 B)进行了比较。表型和血统数据来自 40,011 头有饲养记录的母猪。使用 PorcineSNP60K BeadChip 对其中的 3,652 头猪进行了基因分型:CNN 对 LNL 的预测相关性最好(0.28),其次是 LCNN(0.26)和传统线性模型(约 0.21)。对于 LPP,CNN 也获得了最佳预测相关性(0.29),其次是 LCNN(0.27)和传统线性模型(约 0.25)。在 SLP 特征的预测均方误差方面也观察到了类似的趋势:本研究提供了一个 CNN 的实例,当非线性相互作用成分很重要时,CNN 的表现优于基于线性模型的基因组预测方法,因为 LNL 和 LPP 表现出很强的表观相互作用成分。此外,我们的研究结果表明,通过利用 LNL 和 LPP 之间的遗传相关性,应用双变量 DL 模型也有助于提高预测的准确性。
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来源期刊
Animal Bioscience
Animal Bioscience AGRICULTURE, DAIRY & ANIMAL SCIENCE-
CiteScore
5.00
自引率
0.00%
发文量
223
审稿时长
3 months
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