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Enhancing artificial intelligence-doctor collaboration for computer-aided diagnosis in colonoscopy through improved digital literacy

Yuichi Mori, Eun Hyo Jin, Dongheon Lee

2023Digestive and Liver Disease17 citationsDOIOpen Access PDF

Abstract

Establishing appropriate trust and maintaining a balanced reliance on digital resources are vital for accurate optical diagnoses and effective integration of computer-aided diagnosis (CADx) in colonoscopy. Active learning using diverse polyp image datasets can help in developing precise CADx systems. Enhancing doctors' digital literacy and interpreting their results is crucial. Explainable artificial intelligence (AI) addresses opacity, and textual descriptions, along with AI-generated content, deepen the interpretability of AI-based findings by doctors. AI conveying uncertainties and decision confidence aids doctors' acceptance of results. Optimal AI-doctor collaboration requires improving algorithm performance, transparency, addressing uncertainties, and enhancing doctors' optical diagnostic skills.

Topics & Concepts

InterpretabilityMedicineMedical diagnosisTransparency (behavior)Artificial intelligenceColonoscopyComputer-aided diagnosisLiteracyMedical physicsMachine learningMedical educationComputer scienceRadiologyInternal medicinePsychologyColorectal cancerPedagogyCancerComputer securityAI in cancer detectionColorectal Cancer Screening and DetectionCOVID-19 diagnosis using AI
Enhancing artificial intelligence-doctor collaboration for computer-aided diagnosis in colonoscopy through improved digital literacy | Litcius