Differential analysis of bulk RNA-seq data often suffers from lack of good controls. Here, we present a generative model that replaces controls, trained solely on healthy tissues. The unsupervised model learns a low-dimensional representation and can identify the closest normal representation for a given disease sample. This enables control-free, single-sample differential expression analysis. In breast cancer, we demonstrate how our approach selects marker genes and outperforms a state-of-the-art method. Furthermore, significant genes identified by the model are enriched in driver genes across cancers. Our results show that the in silico closest normal provides a more favorable comparison than control samples.
CITATION STYLE
Prada-Luengo, I., Schuster, V., Liang, Y., Terkelsen, T., Sora, V., & Krogh, A. (2023). N-of-one differential gene expression without control samples using a deep generative model. Genome Biology, 24(1). https://doi.org/10.1186/s13059-023-03104-7
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