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Digital pathology, deep learning, and cancer: a narrative review.

Darnell K Adrian WilliamsGillian GraifmanNowair HussainMaytal AmielPriscilla TranArjun ReddyAli HaiderBali Kumar KaviteshAustin LiLeael AlishahianNichelle PereraCorey EfrosMyoungmee BabuMathew TharakanMill EtienneBenson A Babu
Published in: Translational cancer research (2024)
Deep learning technology can enhance cancer detection, clinical workflows, and patient care. Challenges may arise during model development. The deep learning lifecycle involves data preprocessing, model development, and clinical implementation. Achieving health equity requires including diverse patient groups and eliminating bias during implementation. While model development is integral, most articles focus on the pre-deployment phase. Future longitudinal studies are crucial for validating models in real-world settings post-deployment. A collaborative approach among computational pathologists, technologists, industry, and healthcare providers is essential for driving adoption in clinical settings.
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