RNA Sequencing-Based Immune Cell Deconvolution
Definition
RNA sequencing-based immune cell deconvolution is a computational method that estimates the proportion and types of immune cells present in bulk tissue RNA-seq data. It allows researchers to infer immune composition from gene expression profiles, without the need for single-cell or flow cytometry data.
Key Concepts
- Works on bulk RNA-seq data, which includes mixed cell populations
- Uses known immune cell gene signatures to deconvolute expression
- Output is typically a cell type proportion matrix (e.g. % CD8+ T cells, % macrophages)
Common Tools
- CIBERSORT / CIBERSORTx – Reference-based method using a leukocyte signature matrix (LM22)
- xCell – Uses gene set enrichment to score cell types
- EPIC – Designed for tumor environments
- MCP-counter – Estimates abundance of immune and stromal populations
- TIMER – Focused on tumor immune estimation across cancer types
Applications
- Characterize the tumor immune microenvironment (TIME)
- Predict response to immunotherapy
- Stratify patients based on immune infiltration patterns
- Complement histological or flow-based findings
Example Insight
In lung adenocarcinoma RNA-seq data, CIBERSORT may reveal elevated M2 macrophages and reduced CD8+ T cells in non-responders to PD-1 blockade therapy.
Limitations
- Accuracy depends on the quality of the reference signature
- Cannot capture spatial information
- Performance can vary with tumor heterogeneity or stromal contamination