From Classical Machine Learning to Emerging Foundation Models: Review on Multimodal Data Integration for Cancer Research
Amgad Muneer, Muhammad Waqas, Maliazurina B Saad, Eman Showkatian, Rukhmini Bandyopadhyay, Hui Xu, Wentao Li, Joe Y Chang, Zhongxing Liao, Cara Haymaker, Luisa Solis Soto, Carol C Wu, Natalie I Vokes, Xiuning Le, Lauren A Byers, Don L Gibbons, John V Heymach, Jianjun Zhang

TL;DR
This review discusses the transition from traditional machine learning to foundation models for integrating multimodal data in cancer research, highlighting recent advancements, challenges, and future prospects.
Contribution
It is the first comprehensive review mapping the shift from conventional ML to foundation models in multimodal cancer data integration.
Findings
Identifies key foundation models and open-source resources for cancer data integration.
Highlights emerging trends and challenges in applying foundation models to oncology.
Provides a holistic view of recent advancements in multimodal data integration techniques.
Abstract
Cancer research is increasingly driven by the integration of diverse data modalities, spanning from genomics and proteomics to imaging and clinical factors. However, extracting actionable insights from these vast and heterogeneous datasets remains a key challenge. The rise of foundation models (FMs) -- large deep-learning models pretrained on extensive amounts of data serving as a backbone for a wide range of downstream tasks -- offers new avenues for discovering biomarkers, improving diagnosis, and personalizing treatment. This paper presents a comprehensive review of widely adopted integration strategies of multimodal data to assist advance the computational approaches for data-driven discoveries in oncology. We examine emerging trends in machine learning (ML) and deep learning (DL), including methodological frameworks, validation protocols, and open-source resources targeting cancer…
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