一种灵活的经验贝叶斯方法用于多元回归,并提高了从基因型预测多组织基因表达的准确性。

IF 4.5 2区 生物学 Q1 Agricultural and Biological Sciences
Fabio Morgante, Peter Carbonetto, Gao Wang, Yuxin Zou, Abhishek Sarkar, Matthew Stephens
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引用次数: 0

摘要

从基因型预测表型是数量遗传学的一项基本任务。随着技术的进步,现在可以在大样本中测量多种表型。多种表型可以共享它们的遗传成分;因此,联合建模这些表型可以通过利用在表型之间共享的效应来提高预测的准确性。然而,效应可以通过多种方式在表型之间共享,因此需要能够准确灵活地捕获效应共享模式的高效计算统计方法。在这里,我们描述了新的贝叶斯多元多元回归方法,通过使用灵活的先验,能够建模和适应不同表型的效应共享和特异性模式。仿真结果表明,与现有方法相比,这些新方法在广泛的效应共享设置下具有快速和提高预测精度的优点。此外,在效果不共享的情况下,我们的方法仍然与最先进的方法具有竞争力。在基因型组织表达(GTEx)项目中表达数据的实际数据分析中,我们的方法平均提高了所有组织的预测性能,在效果强烈共享的组织和样本量较小的组织中收益最大。虽然我们使用基因表达预测来说明我们的方法,但这些方法通常适用于任何多表型应用,包括多基因评分和育种价值的预测。因此,我们的方法有潜力提供跨领域和生物体的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A flexible empirical Bayes approach to multivariate multiple regression, and its improved accuracy in predicting multi-tissue gene expression from genotypes.

A flexible empirical Bayes approach to multivariate multiple regression, and its improved accuracy in predicting multi-tissue gene expression from genotypes.

A flexible empirical Bayes approach to multivariate multiple regression, and its improved accuracy in predicting multi-tissue gene expression from genotypes.

A flexible empirical Bayes approach to multivariate multiple regression, and its improved accuracy in predicting multi-tissue gene expression from genotypes.

Predicting phenotypes from genotypes is a fundamental task in quantitative genetics. With technological advances, it is now possible to measure multiple phenotypes in large samples. Multiple phenotypes can share their genetic component; therefore, modeling these phenotypes jointly may improve prediction accuracy by leveraging effects that are shared across phenotypes. However, effects can be shared across phenotypes in a variety of ways, so computationally efficient statistical methods are needed that can accurately and flexibly capture patterns of effect sharing. Here, we describe new Bayesian multivariate, multiple regression methods that, by using flexible priors, are able to model and adapt to different patterns of effect sharing and specificity across phenotypes. Simulation results show that these new methods are fast and improve prediction accuracy compared with existing methods in a wide range of settings where effects are shared. Further, in settings where effects are not shared, our methods still perform competitively with state-of-the-art methods. In real data analyses of expression data in the Genotype Tissue Expression (GTEx) project, our methods improve prediction performance on average for all tissues, with the greatest gains in tissues where effects are strongly shared, and in the tissues with smaller sample sizes. While we use gene expression prediction to illustrate our methods, the methods are generally applicable to any multi-phenotype applications, including prediction of polygenic scores and breeding values. Thus, our methods have the potential to provide improvements across fields and organisms.

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来源期刊
PLoS Genetics
PLoS Genetics 生物-遗传学
CiteScore
8.10
自引率
2.20%
发文量
438
审稿时长
1 months
期刊介绍: PLOS Genetics is run by an international Editorial Board, headed by the Editors-in-Chief, Greg Barsh (HudsonAlpha Institute of Biotechnology, and Stanford University School of Medicine) and Greg Copenhaver (The University of North Carolina at Chapel Hill). Articles published in PLOS Genetics are archived in PubMed Central and cited in PubMed.
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