A Bayesian model averaging approach for observational gene expression studies
Xi Kathy Zhou, Fei Liu, Andrew J. Dannenberg

TL;DR
This paper introduces a Bayesian model averaging method to improve the identification of differentially expressed genes in observational microarray studies, effectively addressing sample heterogeneity and model misspecification issues.
Contribution
The paper proposes a novel Bayesian model averaging framework that accounts for model uncertainty and heterogeneity in observational gene expression data, enhancing DE gene detection accuracy.
Findings
Improved DE gene detection performance over single model methods.
Effective control of sample heterogeneity impacts.
Validated approach on real observational microarray data.
Abstract
Identifying differentially expressed (DE) genes associated with a sample characteristic is the primary objective of many microarray studies. As more and more studies are carried out with observational rather than well controlled experimental samples, it becomes important to evaluate and properly control the impact of sample heterogeneity on DE gene finding. Typical methods for identifying DE genes require ranking all the genes according to a preselected statistic based on a single model for two or more group comparisons, with or without adjustment for other covariates. Such single model approaches unavoidably result in model misspecification, which can lead to increased error due to bias for some genes and reduced efficiency for the others. We evaluated the impact of model misspecification from such approaches on detecting DE genes and identified parameters that affect the magnitude of…
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