AI Article Synopsis

  • Single-cell technologies have advanced the understanding of immune responses to checkpoint inhibitors, but bulk RNA sequencing (RNA-seq) is more practical for clinical diagnostics.
  • The research developed a method using transcription factor-directed coexpression networks (regulons) from single-cell data to analyze immune cell states in bulk RNA-seq, revealing four key cell states linked to treatment response in melanoma patients.
  • The study showed that the interaction between exhausted T cells and monocyte lineage cells affects patient prognosis, with monocytes potentially driving T cells into a state of exhaustion, highlighting the importance of regulon-based analysis for identifying responders to immune therapy.

Article Abstract

Single-cell technologies have elucidated mechanisms responsible for immune checkpoint inhibitor (ICI) response, but are not amenable to a clinical diagnostic setting. In contrast, bulk RNA sequencing (RNA-seq) is now routine for research and clinical applications. Our workflow uses transcription factor (TF)-directed coexpression networks (regulons) inferred from single-cell RNA-seq data to deconvolute immune functional states from bulk RNA-seq data. Regulons preserve the phenotypic variation in CD45+ immune cells from metastatic melanoma samples (n = 19, discovery dataset) treated with ICIs, despite reducing dimensionality by >100-fold. Four cell states, termed exhausted T cells, monocyte lineage cells, memory T cells, and B cells were associated with therapy response, and were characterized by differentially active and cell state-specific regulons. Clustering of bulk RNA-seq melanoma samples from four independent studies (n = 209, validation dataset) according to regulon-inferred scores identified four groups with significantly different response outcomes (P < 0.001). An intercellular link was established between exhausted T cells and monocyte lineage cells, whereby their cell numbers were correlated, and exhausted T cells predicted prognosis as a function of monocyte lineage cell number. The ligand-receptor expression analysis suggested that monocyte lineage cells drive exhausted T cells into terminal exhaustion through programs that regulate antigen presentation, chronic inflammation, and negative costimulation. Together, our results demonstrate how regulon-based characterization of cell states provide robust and functionally informative markers that can deconvolve bulk RNA-seq data to identify ICI responders.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10398358PMC
http://dx.doi.org/10.1158/2326-6066.CIR-22-0563DOI Listing

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