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首页> 外文期刊>Journal of Animal Science >Bayesian recursive mixed linear model for gene expression analyses with continuous covariates.
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Bayesian recursive mixed linear model for gene expression analyses with continuous covariates.

机译:用于具有连续协变量的基因表达分析的贝叶斯递归混合线性模型。

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摘要

The analysis of microarray gene expression data has experienced a remarkable growth in scientific research over the last few years and is helping to decipher the genetic background of several productive traits. Nevertheless, most analytical approaches have relied on the comparison of 2 (or a few) well-defined groups of biological conditions where the continuous covariates have no sense (e.g., healthy vs. cancerous cells). Continuous effects could be of special interest when analyzing gene expression in animal production-oriented studies (e.g., birth weight), although very few studies address this peculiarity in the animal science framework. Within this context, we have developed a recursive linear mixed model where not only are linear covariates accounted for during gene expression analyses but also hierarchized and the effects of their genetic, environmental, and residual components on differential gene expression inferred independently. This parameterization allows a step forward in the inference of differential gene expression linked to a given quantitative trait such as birth weight. The statistical performance of this recursive model was exemplified under simulation by accounting for different sample sizes (n), heritabilities for the quantitative trait (h 2), and magnitudes of differential gene expression (lambda). It is important to highlight that statistical power increased with n, h 2, and lambda, and the recursive model exceeded the standard linear mixed model with linear (nonrecursive) covariates in the majority of scenarios. This new parameterization would provide new insights about gene expression in the animal science framework, opening a new research scenario where within-covariate sources of differential gene expression could be individualized and estimated. The source code of the program accommodating these analytical developments and additional information about practical aspects on running the program are freely available by request to the corresponding author of this article.
机译:在过去的几年中,对微阵列基因表达数据的分析在科学研究中经历了惊人的增长,并有助于破译几种生产性状的遗传背景。但是,大多数分析方法都依赖于比较2个(或几个)定义明确的生物学条件组,其中连续的协变量没有意义(例如,健康细胞与癌细胞)。在以动物生产为导向的研究中分析基因表达时(例如出生体重),连续效应可能特别令人感兴趣,尽管很少有研究解决动物科学框架中的这种特殊性。在此背景下,我们开发了一种递归线性混合模型,其中不仅在基因表达分析过程中考虑了线性协变量,而且还对其进行了分层,并独立推断了它们的遗传,环境和残留成分对差异基因表达的影响。此参数化允许在推断与给定数量性状(例如出生体重)相关的差异基因表达方面向前迈进。该递归模型的统计性能在模拟情况下通过考虑不同的样本量(n),定量性状的遗传力(h 2)和差异基因表达的大小(λ)来举例说明。重要的是要强调统计能力随n,h 2和lambda的增加而增加,并且在大多数情况下,递归模型超过了带有线性(非递归)协变量的标准线性混合模型。这一新的参数化将为动物科学框架中的基因表达提供新的见解,从而开启了一个新的研究场景,在该场景中可以对差异基因表达的协变量内部进行个体化和估计。可通过请求本文的相应作者免费获得容纳这些分析开发的程序源代码以及有关运行该程序的实践方面的其他信息。

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