Litcius/Paper detail

Uncovering gene and cellular signatures of immune checkpoint response via machine learning and single-cell RNA-seq

Asaf Pinhasi, Keren Yizhak

2025npj Precision Oncology8 citationsDOIOpen Access PDF

Abstract

Immune checkpoint inhibitors have transformed cancer therapy. However, only a fraction of patients benefit from these treatments. The variability in patient responses remains a significant challenge due to the intricate nature of the tumor microenvironment. Here, we harness single-cell RNA-sequencing data and employ machine learning to predict patient responses while preserving interpretability and single-cell resolution. Using a dataset of melanoma-infiltrated immune cells, we applied XGBoost, achieving an initial AUC score of 0.84, which improved to 0.89 following Boruta feature selection. This analysis revealed an 11-gene signature predictive across various cancer types. SHAP value analysis of these genes uncovered diverse gene-pair interactions with non-linear and context-dependent effects. Finally, we developed a reinforcement learning model to identify the most informative single cells for predictivity. This approach highlights the power of advanced computational methods to deepen our understanding of cancer immunity and enhance the prediction of treatment outcomes.

Topics & Concepts

InterpretabilityContext (archaeology)Computational biologyImmune systemComputer scienceFeature selectionImmune checkpointMachine learningArtificial intelligenceGeneBiologyImmunotherapyImmunologyGeneticsPaleontologyCancer Immunotherapy and BiomarkersCancer Genomics and DiagnosticsSingle-cell and spatial transcriptomics