ArXiv TLDR

Transcriptomic Models for Immunotherapy Response Prediction Show Limited Cross-cohort Generalisability

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2604.05478

Yuheng Liang, Lucy Chuo, Ahmadreza Argha, Nona Farbehi, Lu Chen + 6 more

q-bio.GNcs.LG

TLDR

This paper finds that current transcriptomic models for predicting immunotherapy response show limited cross-cohort generalisability and inconsistent biomarker signals.

Key contributions

  • Systematically benchmarked 9 state-of-the-art transcriptomic ICI response predictors.
  • Bulk RNA-seq models performed near chance, while scRNA-seq models showed only marginal improvements.
  • Revealed sparse, inconsistent biomarker signals and biological themes across different prediction models.
  • Underscores the need for improved domain adaptation, standardized preprocessing, and biologically grounded model design.

Why it matters

Current transcriptomic models for predicting immunotherapy response lack robustness across different patient cohorts. This limits their clinical utility and highlights a critical gap in personalized cancer treatment. The study emphasizes the need for more reliable, biologically consistent models to advance precision oncology.

Original Abstract

Immune checkpoint inhibitors (ICIs) have transformed cancer therapy; yet substantial proportion of patients exhibit intrinsic or acquired resistance, making accurate pre-treatment response prediction a critical unmet need. Transcriptomics-based biomarkers derived from bulk and single-cell RNA sequencing (scRNA-seq) offer a promising avenue for capturing tumour-immune interactions, yet the cross-cohort generalisability of existing prediction models remains unclear.We systematically benchmark nine state-of-the-art transcriptomic ICI response predictors, five bulk RNA-seq-based models (COMPASS, IRNet, NetBio, IKCScore, and TNBC-ICI) and four scRNA-seq-based models (PRECISE, DeepGeneX, Tres and scCURE), using publicly available independent datasets unseen during model development. Overall, predictive performance was modest: bulk RNA-seq models performed at or near chance level across most cohorts, while scRNA-seq models showed only marginal improvements. Pathway-level analyses revealed sparse and inconsistent biomarker signals across models. Although scRNA-seq-based predictors converged on immune-related programs such as allograft rejection, bulk RNA-seq-based models exhibited little reproducible overlap. PRECISE and NetBio identified the most coherent immune-related themes, whereas IRNet predominantly captured metabolic pathways weakly aligned with ICI biology. Together, these findings demonstrate the limited cross-cohort robustness and biological consistency of current transcriptomic ICI prediction models, underscoring the need for improved domain adaptation, standardised preprocessing, and biologically grounded model design.

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