Litcius/Paper detail

Cell type and gene expression deconvolution with BayesPrism enables Bayesian integrative analysis across bulk and single-cell RNA sequencing in oncology

Tinyi Chu, Zhong Wang, Dana Pe’er, Charles G. Danko

2022Nature Cancer625 citationsDOIOpen Access PDF

Abstract

Inferring single-cell compositions and their contributions to global gene expression changes from bulk RNA sequencing (RNA-seq) datasets is a major challenge in oncology. Here we develop Bayesian cell proportion reconstruction inferred using statistical marginalization (BayesPrism), a Bayesian method to predict cellular composition and gene expression in individual cell types from bulk RNA-seq, using patient-derived, scRNA-seq as prior information. We conduct integrative analyses in primary glioblastoma, head and neck squamous cell carcinoma and skin cutaneous melanoma to correlate cell type composition with clinical outcomes across tumor types, and explore spatial heterogeneity in malignant and nonmalignant cell states. We refine current cancer subtypes using gene expression annotation after exclusion of confounding nonmalignant cells. Finally, we identify genes whose expression in malignant cells correlates with macrophage infiltration, T cells, fibroblasts and endothelial cells across multiple tumor types. Our work introduces a new lens to accurately infer cellular composition and expression in large cohorts of bulk RNA-seq data.

Topics & Concepts

DeconvolutionComputational biologyBayesian probabilityGene expressionRNARNA-SeqGeneSingle-cell analysisCellBiologyTranscriptomeOncologyComputer scienceGeneticsMedicineArtificial intelligenceAlgorithmSingle-cell and spatial transcriptomicsCancer Genomics and DiagnosticsMolecular Biology Techniques and Applications