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Emerging AI approaches for cancer spatial omics

Javad Noorbakhsh, Ali Foroughi pour, Jeffrey H. Chuang

2025GigaScience9 citationsDOIOpen Access PDF

Abstract

Technological breakthroughs in spatial omics and artificial intelligence (AI) have the potential to transform the understanding of cancer cells and the tumor microenvironment. Here we review the role of AI in spatial omics, discussing the current state-of-the-art and further needs to decipher cancer biology from large-scale spatial tissue data. An overarching challenge is the development of interpretable spatial AI models, an activity which demands not only improved data integration, but also new conceptual frameworks. We discuss emerging paradigms, in particular data-driven spatial AI, constraint-based spatial AI, and mechanistic spatial modeling, as well as the importance of integrating AI with hypothesis-driven strategies and model systems to realize the value of cancer spatial information.

Topics & Concepts

DECIPHERSpatial analysisComputer scienceData scienceCancerArtificial intelligenceComputational biologySystems biologySpatial ecologySpatial intelligenceOmicsSpatial contextual awarenessSpatial relationValue (mathematics)Tumor heterogeneityBiological organismData integrationBig dataPrecision medicineBioinformaticsEmerging technologiesApplications of artificial intelligenceSingle-cell and spatial transcriptomicsBioinformatics and Genomic NetworksGene expression and cancer classification
Emerging AI approaches for cancer spatial omics | Litcius