Probabilistic classification of gene-by-treatment interactions on molecular count phenotypes

Yuriko Harigaya, Nana Matoba, Brandon D. Le, Jordan M. Valone, Jason L. Stein, Michael I. Love, William Valdar
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Abstract

Genetic variation can modulate response to treatment (G×T) or environmental stimuli (G×E), both of which may be highly consequential in biomedicine. An effective approach to identifying G×T signals and gaining insight into molecular mechanisms is mapping quantitative trait loci (QTL) of molecular count phenotypes, such as gene expression and chromatin accessibility, under multiple treatment conditions, which is termed response molecular QTL mapping. Although standard approaches evaluate the interaction between genetics and treatment conditions, they do not distinguish between meaningful interpretations such as whether a genetic effect is only observed in the treated condition or whether a genetic effect is observed but accentuated in the treated condition. To address this gap, we have developed a downstream method for classifying response molecular QTLs into subclasses with meaningful genetic interpretations. Our method uses Bayesian model selection and assigns posterior probabilities to different types of G×T interactions for a given feature-SNP pair. We compare linear and nonlinear regression of log-scale counts, noting that the latter accounts for an expected biological relationship between the genotype and the molecular count phenotype. Through simulation and application to existing datasets of molecular response QTLs, we show that our method provides an intuitive and well-powered framework to report and interpret G×T interactions. We provide a software package, ClassifyGxT, which is available at https://github.com/yharigaya/classifygxt.
分子计数表型上基因与治疗相互作用的概率分类
遗传变异可调节对治疗(G×T)或环境刺激(G×E)的反应,这两种反应在生物医学中都可能具有重大影响。确定 G×T 信号并深入了解分子机制的一种有效方法是绘制多种处理条件下分子计数表型(如基因表达和染色质可及性)的数量性状位点(QTL)图,即反应分子 QTL 图。虽然标准方法评估了遗传与处理条件之间的相互作用,但它们并没有区分有意义的解释,例如是否仅在处理条件下观察到遗传效应,或者是否观察到遗传效应,但在处理条件下更加突出。为了弥补这一缺陷,我们开发了一种下游方法,用于将反应分子 QTL 分类为具有有意义遗传解释的子类。我们的方法使用贝叶斯模型选择,并为给定特征-SNP 对的不同类型 G×T 相互作用分配后验概率。我们比较了对数规模计数的线性回归和非线性回归,注意到后者考虑了基因型和分子计数表型之间的预期生物学关系。通过模拟和应用于现有的分子反应 QTL 数据集,我们表明我们的方法为报告和解释 G×T 相互作用提供了一个直观且功能强大的框架。我们提供了一个软件包:ClassifyGxT,可在 https://github.com/yharigaya/classifygxt 上下载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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