Pan-Cancer Mapping of the Tumor Immune Landscape through Metagene Clustering and Predictive Modeling
Soham Chatterjee

TL;DR
This study identified and validated immune-related gene clusters across multiple cancer types, revealing their prognostic significance and potential to guide immunotherapy decisions using a comprehensive computational approach.
Contribution
It introduces a novel pipeline for identifying robust immune gene metagenes with broad prognostic and functional relevance across pan-cancer types.
Findings
48 immune-related metagenes identified with 87% prediction accuracy
Metagenes have significant prognostic value for overall survival
Functional analysis links metagenes to immune pathways and tumor microenvironment dynamics
Abstract
As immunotherapies become standard cancer treatments, it is increasingly important to identify a patient's immune profile, which encompasses the activity of immune cells within the tumor microenvironment and the presence of specific biomarkers. However, we lack mechanistic explanations drivers of immune phenotypes. Despite advances in immune profiling with high-throughput sequencing, the mechanisms driving them remain unclear. This study aimed to identify novel, robust immune-related gene clusters (metagenes) and evaluate their prognostic significance and functional relevance across various pan-cancer types using a comprehensive computational pipeline. We acquired pan-cancer bulk RNA-seq and established immune subtypes from The Cancer Genome Atlas (TCGA). Using expression-based filtering and clustering of genes with ANOVA and Gaussian Mixture Model (GMM), we identified 48 unique…
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