Litcius/Paper detail

Artificial Intelligence in Oncology: Current Landscape, Challenges, and Future Directions

William Lotter, Michael J. Hassett, Nikolaus Schultz, Kenneth L. Kehl, Eliezer M. Van Allen, Ethan Cerami

2024Cancer Discovery159 citationsDOIOpen Access PDF

Abstract

Artificial intelligence (AI) in oncology is advancing beyond algorithm development to integration into clinical practice. This review describes the current state of the field, with a specific focus on clinical integration. AI applications are structured according to cancer type and clinical domain, focusing on the four most common cancers and tasks of detection, diagnosis, and treatment. These applications encompass various data modalities, including imaging, genomics, and medical records. We conclude with a summary of existing challenges, evolving solutions, and potential future directions for the field. SIGNIFICANCE: AI is increasingly being applied to all aspects of oncology, where several applications are maturing beyond research and development to direct clinical integration. This review summarizes the current state of the field through the lens of clinical translation along the clinical care continuum. Emerging areas are also highlighted, along with common challenges, evolving solutions, and potential future directions for the field.

Topics & Concepts

ModalitiesField (mathematics)Data scienceData integrationComputer scienceRadiation oncologyArtificial intelligenceMedical physicsMedicineInternal medicineData miningMathematicsSociologySocial sciencePure mathematicsRadiation therapyRadiomics and Machine Learning in Medical ImagingArtificial Intelligence in Healthcare and EducationAI in cancer detection