Litcius/Paper detail

The role of artificial intelligence-based foundation models and “copilots” in cancer pathology: potential and challenges

Hao Cheng, Chi Chun Wong

2025Journal of Experimental & Clinical Cancer Research6 citationsDOIOpen Access PDF

Abstract

The integration of Artificial Intelligence (AI) into cancer pathology offers an imperative solution to global pathologist shortages and increasingly complex diagnostic demands. This review summarized the rapid evolution of AI in the field, highlighting the paradigm shift from task-specific (TS) algorithms towards powerful, versatile foundation models (FMs), such as UNI, CONCH, GigaPath, mSTAR, and Atlas. These models, trained on massive and diverse datasets using self-supervised and multimodal learning, demonstrate remarkable capabilities in cancer classification, subtyping, outcome prediction, and biomarker discovery. The emergence of AI "copilots", such as PathChat, SmartPath, further promises to streamline workflows through conversational interfaces and autonomous task planning. However, significant challenges impede clinical translation, including a validation crisis underscored by poor generalizability in zero-shot testing, critical concerns regarding model explainability ("black-box" nature), risks of hallucinations in generative tools, and ensuring generalizability and fairness across diverse populations. Robust external validation, standardized benchmarking, development of explainable AI approaches, and novel regulatory frameworks are essential to responsibly harness the transformative potential of foundation models and realize their promise in improving diagnostic accuracy, efficiency, and patient outcomes in cancer pathology.

Topics & Concepts

Generalizability theoryFoundation (evidence)Transformative learningWorkflowComputer scienceArtificial intelligenceCancerEngineering ethicsManagement scienceRisk analysis (engineering)Economic shortageTask (project management)Paradigm shiftGenerative grammarData scienceBenchmarkingAccountabilityCancer biomarkersPsychologyBest practiceProcess managementAnticipation (artificial intelligence)MedicineMEDLINEBiomarkerSituation awarenessAI in cancer detectionArtificial Intelligence in Healthcare and EducationRadiomics and Machine Learning in Medical Imaging