Robust genomic prediction and heritability estimation using density power divergence

IF 2 3区 农林科学 Q2 AGRONOMY
Crop Science Pub Date : 2024-12-23 DOI:10.1002/csc2.21430
Upama Paul Chowdhury, Ronit Bhattacharjee, Susmita Das, Abhik Ghosh
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引用次数: 0

Abstract

This manuscript delves into the intersection of genomics and phenotypic prediction, focusing on the statistical innovation required to navigate the complexities introduced by noisy covariates and confounders. The primary emphasis is on the development of advanced robust statistical models tailored for genomic prediction from single nucleotide polymorphism data in plant and animal breeding and multi-field trials. The manuscript highlights the significance of incorporating all estimated effects of marker loci into the statistical framework and aiming to reduce the high dimensionality of data while preserving critical information. This paper introduces a new robust statistical framework for genomic prediction, employing one-stage and two-stage linear mixed model analyses along with utilizing the popular robust minimum density power divergence estimator (MDPDE) to estimate genetic effects on phenotypic traits. The study illustrates the superior performance of the proposed MDPDE-based genomic prediction and associated heritability estimation procedures over existing competitors through extensive empirical experiments on artificial datasets and application to a real-life maize breeding dataset. The results showcase the robustness and accuracy of the proposed MDPDE-based approaches, especially in the presence of data contamination, emphasizing their potential applications in improving breeding programs and advancing genomic prediction of phenotyping traits.

基于密度功率散度的稳健基因组预测和遗传力估计
这份手稿深入研究了基因组学和表型预测的交集,重点是需要导航由噪声协变量和混杂引入的复杂性的统计创新。主要的重点是发展先进的健壮的统计模型,为植物和动物育种和多场试验中的单核苷酸多态性数据的基因组预测量身定制。该手稿强调了将所有标记位点的估计效应纳入统计框架的重要性,并旨在降低数据的高维数,同时保留关键信息。本文介绍了一种新的稳健的基因组预测统计框架,采用一阶段和两阶段线性混合模型分析,并利用流行的稳健最小密度功率发散估计器(MDPDE)来估计遗传对表型性状的影响。该研究通过在人工数据集上的广泛实证实验和在实际玉米育种数据集上的应用,证明了所提出的基于mdpde的基因组预测和相关遗传力估计程序优于现有竞争对手。结果显示了基于mdpde的方法的稳健性和准确性,特别是在存在数据污染的情况下,强调了它们在改进育种计划和推进表型性状基因组预测方面的潜在应用。
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来源期刊
Crop Science
Crop Science 农林科学-农艺学
CiteScore
4.50
自引率
8.70%
发文量
197
审稿时长
3 months
期刊介绍: Articles in Crop Science are of interest to researchers, policy makers, educators, and practitioners. The scope of articles in Crop Science includes crop breeding and genetics; crop physiology and metabolism; crop ecology, production, and management; seed physiology, production, and technology; turfgrass science; forage and grazing land ecology and management; genomics, molecular genetics, and biotechnology; germplasm collections and their use; and biomedical, health beneficial, and nutritionally enhanced plants. Crop Science publishes thematic collections of articles across its scope and includes topical Review and Interpretation, and Perspectives articles.
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