AI and Big Data in Oncology: A Physician‐Centered Perspective on Emerging Clinical and Research Applications
Binliang Liu, Qingyao Shang, Jun Li, Shuna Yao, Meishuo Ouyang, Yu Wang, Sheng Luo, Quchang Ouyang

TL;DR
AI and big data are transforming cancer care by improving diagnosis, treatment, and research through better data integration and analysis.
Contribution
This review introduces a physician-centered framework for integrating AI tools with real-world data to enhance precision cancer care.
Findings
AI technologies can improve diagnostic precision and individualized treatment planning in oncology.
Integration of AI with multimodal data platforms supports translational research and longitudinal patient management.
Challenges include data heterogeneity, model generalizability, and privacy protection in real-world implementation.
Abstract
The convergence of artificial intelligence (AI) and big data is reshaping contemporary oncology by enabling the integration of multimodal information across imaging, pathology, genomics, and clinical records. From a physician‐centered perspective, these technologies can potentially be used to improve diagnostic precision, support individualized treatment planning, enhance longitudinal patient management, and accelerate both clinical and translational research. In this review, we synthesize the core AI methodologies most relevant to oncology—machine learning, deep learning, and large language models—and examine how they interact with established and emerging oncology data platforms. We further highlight practical use cases in clinical workflows and research pipelines, emphasizing opportunities for advancing precision cancer care while also addressing challenges associated with data…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Radiomics and Machine Learning in Medical Imaging · AI in cancer detection
