贝叶斯回归树集合的logit正态先验遗传注释稀疏预测

IF 1.7 4区 医学 Q3 GENETICS & HEREDITY Genetic Epidemiology Pub Date : 2022-11-09 DOI:10.1002/gepi.22505
Charles Spanbauer, Wei Pan, ADNI, The Alzheimer's Disease Neuroimaging Initiative
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引用次数: 0

摘要

利用高维遗传变异如单核苷酸多态性(SNP)来预测复杂疾病和性状在基础研究和其他临床环境中具有重要应用。例如,在全转录组关联研究中,预测基因表达是确定(假定的)因果基因的必要的第一步。由于信号弱、高维和snp之间的连锁不平衡(相关性),建立这样的预测模型是具有挑战性的。然而,SNP水平上的功能注释(例如,作为跨多种细胞或组织类型的表观基因组数据)是可用的,可用于告知预测因子的重要性并帮助预测结果。现有的合并注释的方法主要基于(广义的)线性模型。相比之下,贝叶斯加性回归树(BART)是一种可靠的方法,可以在没有过拟合的情况下获得高质量的非线性样本外预测。不幸的是,BART的默认先验可能过于不灵活,无法处理预测器数量接近或超过观测值数量的稀疏情况。受实际数据应用程序的启发,本文提出了一种基于logit正态分布的替代先验,因为它提供了一个适应稀疏性的框架,可以对信息功能注释进行建模。它还提供了一个框架,以纳入有关SNP相关性之间的先验信息。执行推理的计算细节与模拟研究和阿尔茨海默病神经成像倡议数据的全基因组预测分析的结果一起提出。
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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Sparse prediction informed by genetic annotations using the logit normal prior for Bayesian regression tree ensembles

Using high-dimensional genetic variants such as single nucleotide polymorphisms (SNP) to predict complex diseases and traits has important applications in basic research and other clinical settings. For example, predicting gene expression is a necessary first step to identify (putative) causal genes in transcriptome-wide association studies. Due to weak signals, high-dimensionality, and linkage disequilibrium (correlation) among SNPs, building such a prediction model is challenging. However, functional annotations at the SNP level (e.g., as epigenomic data across multiple cell- or tissue-types) are available and could be used to inform predictor importance and aid in outcome prediction. Existing approaches to incorporate annotations have been based mainly on (generalized) linear models. Bayesian additive regression trees (BART), in contrast, is a reliable method to obtain high-quality nonlinear out of sample predictions without overfitting. Unfortunately, the default prior from BART may be too inflexible to handle sparse situations where the number of predictors approaches or surpasses the number of observations. Motivated by our real data application, this article proposes an alternative prior based on the logit normal distribution because it provides a framework that is adaptive to sparsity and can model informative functional annotations. It also provides a framework to incorporate prior information about the between SNP correlations. Computational details for carrying out inference are presented along with the results from a simulation study and a genome-wide prediction analysis of the Alzheimer's Disease Neuroimaging Initiative data.

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来源期刊
Genetic Epidemiology
Genetic Epidemiology 医学-公共卫生、环境卫生与职业卫生
CiteScore
4.40
自引率
9.50%
发文量
49
审稿时长
6-12 weeks
期刊介绍: Genetic Epidemiology is a peer-reviewed journal for discussion of research on the genetic causes of the distribution of human traits in families and populations. Emphasis is placed on the relative contribution of genetic and environmental factors to human disease as revealed by genetic, epidemiological, and biologic investigations. Genetic Epidemiology primarily publishes papers in statistical genetics, a research field that is primarily concerned with development of statistical, bioinformatical, and computational models for analyzing genetic data. Incorporation of underlying biology and population genetics into conceptual models is favored. The Journal seeks original articles comprising either applied research or innovative statistical, mathematical, computational, or genomic methodologies that advance studies in genetic epidemiology. Other types of reports are encouraged, such as letters to the editor, topic reviews, and perspectives from other fields of research that will likely enrich the field of genetic epidemiology.
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