LaCoGSEA: Unsupervised deep learning for pathway analysis via latent correlation
Zhiwei Zheng, Kevin Bryson

TL;DR
LaCoGSEA introduces an unsupervised deep learning framework that captures non-linear gene-pathway relationships for improved pathway enrichment analysis and cancer subtype clustering.
Contribution
It presents LaCoGSEA, a novel autoencoder-based method with a gene-latent correlation metric for unsupervised pathway analysis, outperforming existing linear and explainable AI approaches.
Findings
Enhanced clustering of cancer subtypes.
Broader detection of biologically meaningful pathways.
High robustness across datasets and protocols.
Abstract
Motivation: Pathway enrichment analysis is widely used to interpret gene expression data. Standard approaches, such as GSEA, rely on predefined phenotypic labels and pairwise comparisons, which limits their applicability in unsupervised settings. Existing unsupervised extensions, including single-sample methods, provide pathway-level summaries but primarily capture linear relationships and do not explicitly model gene-pathway associations. More recently, deep learning models have been explored to capture non-linear transcriptomic structure. However, their interpretation has typically relied on generic explainable AI (XAI) techniques designed for feature-level attribution. As these methods are not designed for pathway-level interpretation in unsupervised transcriptomic analyses, their effectiveness in this setting remains limited. Results: To bridge this gap, we introduce LaCoGSEA…
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Taxonomy
TopicsBioinformatics and Genomic Networks · Gene expression and cancer classification · Single-cell and spatial transcriptomics
