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Computer-aided quality control in colonoscopy: clinical applications and limitations
Elizabeth Lee Yoong Chen, James Weiquan Li
Received August 30, 2025  Accepted October 23, 2025  Published online December 17, 2025  
DOI: https://doi.org/10.5946/ce.2025.309    [Epub ahead of print]
AbstractAbstract PDFPubReaderePub
Computer-aided quality control (CAQ) systems are redefining colonoscopy by enabling the objective evaluation of procedural metrics and providing real-time feedback. This review explores the clinical utility, implementation barriers, and future prospects of CAQ, with an emphasis on its role in standardizing quality assessment and enhancing patient outcomes. A systematic search of PubMed (inception to January 2025) identified 66 relevant publications, including eight systematic reviews or meta-analyses, seven randomized controlled trials, and five cohort studies, in addition to validation and observational reports. CAQ systems improve traditional quality indicators such as withdrawal time, bowel preparation scores, and cecal intubation rates (CIRs). Emerging metrics—including effective withdrawal time, fold examination quality, and withdrawal speed—offer novel, quantifiable insights. Artificial intelligence-assisted colonoscopy consistently increases adenoma detection rates (from 38.5% to 47.9%) and extends withdrawal time (from 5.68 to 7.03 minutes). Automated systems achieve high accuracy in bowel preparation scoring (93.3%), cecal intubation recognition (95.5%), and surveillance interval assignment (92.0%), thereby addressing persistent gaps in documentation and follow-up care. CAQ systems hold transformative promise for improving colonoscopy quality. Addressing implementation challenges—including false positives, clinician adoption, cost, and regulatory issues—is essential. Future research should emphasize comparative effectiveness, standardized metrics, and large-scale clinical integration to help reduce the burden of colorectal cancer.

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  • Artificial Intelligence in Colonoscopy Surveillance for Lynch Syndrome: Emerging Evidence, Lessons Learned From Average‐Risk Populations, and Future Directions
    Robert Hüneburg, Querijn N. E. van Bokhorst, Evelien Dekker, Jacob Nattermann
    International Journal of Cancer.2026;[Epub]     CrossRef
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