Transcriptome analysis method based on differential distribution evaluation

BRIEFINGS IN BIOINFORMATICS(2022)

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摘要
Identifying differential genes over conditions provides insights into the mechanisms of biological processes and disease progression. Here we present an approach, the Kullback-Leibler divergence-based differential distribution (klDD), which provides a flexible framework for quantifying changes in higher-order statistical information of genes including mean and variance/covariation. The method can well detect subtle differences in gene expression distributions in contrast to mean or variance shifts of the existing methods. In addition to effectively identifying informational genes in terms of differential distribution, klDD can be directly applied to cancer subtyping, single-cell clustering and disease early-warning detection, which were all validated by various benchmark datasets.
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关键词
gene expression, differential distribution genes, cancer subtyping, single-cell clustering, disease early-warning signals, potential disease modules
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