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Diagnostic accuracy of a novel artificial intelligence system for adenoma detection in daily practice: a prospective nonrandomized comparative study

Carolin Zippelius, Saleh A. Alqahtani, Jörg Schedel, D. Brookman-Amissah, Klaus Muehlenberg, Christoph Federle, Andrea Salzberger, W. Schorr, Oliver Pech

2021Endoscopy26 citationsDOI

Abstract

Abstract Background Adenoma detection rate (ADR) varies significantly between endoscopists, with adenoma miss rates (AMRs) up to 26 %. Artificial intelligence (AI) systems may improve endoscopy quality and reduce the rate of interval cancer. We evaluated the efficacy of an AI system in real-time colonoscopy and its influence on AMR and ADR. Methods This prospective, nonrandomized, comparative study analyzed patients undergoing diagnostic colonoscopy at a single endoscopy center in Germany from June to October 2020. Every patient was examined concurrently by an endoscopist and AI using two opposing screens. The AI system, overseen by a second observer, was not visible to the endoscopist. AMR was the primary outcome. Both methods were compared using McNemar test. Results 150 patients were included (mean age 65 years [standard deviation 14]; 69 women). There was no significant or clinically relevant difference (P = 0.75) in AMR between the AI system (6/197, 3.0 %; 95 % confidence interval [CI] 1.1–6.5) and routine colonoscopy (4/197, 2.0 %; 95 %CI 0.6–5.1). The polyp miss rate of the AI system (14/311, 4.5 %; 95 %CI 2.5–7.4) was not significantly different (P = 0.72) from routine colonoscopy (17/311, 5.5 %; 95 %CI 3.2–8.6). There was no significant difference (P = 0.50) in ADR between routine colonoscopy (78/150, 52.0 %; 95 %CI 43.7–60.2) and the AI system (76/150, 50.7 %; 95 %CI 42.4–58.9). Routine colonoscopy detected adenomas in two patients that were missed by the AI system. Conclusion The AI system performance was comparable to that of experienced endoscopists during real-time colonoscopy with similar high ADR (> 50 %).

Topics & Concepts

MedicineColonoscopyAdenomaEndoscopyProspective cohort studyMcNemar's testConfidence intervalColorectal cancerInternal medicineGastroenterologySurgeryCancerMathematicsStatisticsColorectal Cancer Screening and DetectionAI in cancer detectionGastric Cancer Management and Outcomes
Diagnostic accuracy of a novel artificial intelligence system for adenoma detection in daily practice: a prospective nonrandomized comparative study | Litcius