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AI-driven multi-omics integration in precision oncology: bridging the data deluge to clinical decisions

Chou‐Yi HsuDepartment of Pharmacy, Chia Nan University of Pharmacy and Science, Tainan, 71710, TaiwanShavan AskarDepartment of Computer Engineering, College of Engineering, Knowledge University, Erbil, 44001, IraqSamer Saleem AlshkarchyDepartment of Pathology, Al-Qasim Green University, Hilla, IraqPriya Priyadarshini NayakDepartment of Medical Oncology, IMS and SUM Hospital, Siksha 'O' Anusandhan (Deemed to Be University), Bhubaneswar, Odisha, 751003, IndiaKassem Al AttabiDepartment of Computers Techniques Engineering, College of Technical Engineering, The Islamic University, Najaf, IraqMohammad Ahmar KhanDepartment of MIS, College of Commerce and Business Administration, University - Dhofar University, Salalah, OmanJ. Albert MayanDepartment of Computer Science and Engineering, Sathyabama Institute of Science and Technology, Tamil Nadu, Chennai, IndiaM. K. SharmaDepartment Mathematics, University Chaudhary Charan Singh University, Uttar Pradesh, Meerut, 250004, IndiaSarvar IslomovScientific Researcher in Department of "Oncology and Hematology", National Children's Medical Center, 294 Parkent Street, Tashkent, UzbekistanHamed Soleimani SamarkhazanStudent Research Committee, Department of Hematology and Blood Banking, School of Allied Medical Sciences, Shahid Beheshti University of Medical Sciences, Tehran, Iran. [email protected]
ABI

Аннотация

Cancer's staggering molecular heterogeneity demands innovative approaches beyond traditional single-omics methods. The integration of multi-omics data, spanning genomics, transcriptomics, proteomics, metabolomics and radiomics, can improve diagnostic and prognostic accuracy when accompanied by rigorous preprocessing and external validation; for example, recent integrated classifiers report AUCs around 0.81-0.87 for difficult early-detection tasks. This review synthesizes how artificial intelligence (AI), particularly deep learning and machine learning, bridges this gap by enabling scalable, non-linear integration of disparate omics layers into clinically actionable insights. We explore cutting-edge AI methodologies, including graph neural networks for biological network modeling, transformers for cross-modal fusion, and explainable AI (XAI) for transparent clinical decision support. Critical applications are highlighted, such as AI-driven therapy selection (e.g., predicting targeted therapy resistance), proteogenomic early detection, and radiogenomic non-invasive diagnostics. We further address translational challenges: data harmonization, batch correction, missing data imputation, and computational scalability. Emerging trends, federated learning for privacy-preserving collaboration, spatial/single-cell omics for microenvironment decoding, quantum computing, and patient-centric "N-of-1" models, signal a paradigm shift toward dynamic, personalized cancer management. Despite persistent hurdles in model generalizability, ethical equity, and regulatory alignment, AI-powered multi-omics integration promises to transform precision oncology from reactive population-based approaches to proactive, individualized care.

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