CeDAR: incorporating cell type hierarchy improves cell type-specific differential analyses in bulk omics data

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Abstract

Bulk high-throughput omics data contain signals from a mixture of cell types. Recent developments of deconvolution methods facilitate cell type-specific inferences from bulk data. Our real data exploration suggests that differential expression or methylation status is often correlated among cell types. Based on this observation, we develop a novel statistical method named CeDAR to incorporate the cell type hierarchy in cell type-specific differential analyses of bulk data. Extensive simulation and real data analyses demonstrate that this approach significantly improves the accuracy and power in detecting cell type-specific differential signals compared with existing methods, especially in low-abundance cell types.

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Chen, L., Li, Z., & Wu, H. (2023). CeDAR: incorporating cell type hierarchy improves cell type-specific differential analyses in bulk omics data. Genome Biology, 24(1). https://doi.org/10.1186/s13059-023-02857-5

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