Benefits and challenges in implementation of artificial intelligence in colonoscopy: World Endoscopy Organization position statement.
Yuichi MoriJames E EastCesare HassanNatalie HalvorsenTyler M BerzinMichael ByrneDaniel von RentelnDavid G HewettAlessandro RepiciMohan RamchandaniMaryam Al KhatryShin-Ei KudoPu WangHonggang YuYutaka SaitoMasashi MisawaSravanthi ParasaCarolina Ogawa MatsubayashiHaruhiko OgataHisao TajiriNonthalee PausawasdiEvelien DekkerOmer F AhmadPrateek SharmaDouglas K RexPublished in: Digestive endoscopy : official journal of the Japan Gastroenterological Endoscopy Society (2023)
The number of artificial intelligence (AI) tools for colonoscopy on the market is increasing with supporting clinical evidence. Nevertheless, their implementation is not going smoothly for a variety of reasons, including lack of data on clinical benefits and cost-effectiveness, lack of trustworthy guidelines, uncertain indications, and cost for implementation. To address this issue and better guide practitioners, the World Endoscopy Organization (WEO) has provided its perspective about the status of AI in colonoscopy as the position statement. WEO Position Statement: Statement 1.1: Computer-aided detection (CADe) for colorectal polyps is likely to improve colonoscopy effectiveness by reducing adenoma miss rates and thus increase adenoma detection; Statement 1.2: In the short term, use of CADe is likely to increase health-care costs by detecting more adenomas; Statement 1.3: In the long term, the increased cost by CADe could be balanced by savings in costs related to cancer treatment (surgery, chemotherapy, palliative care) due to CADe-related cancer prevention; Statement 1.4: Health-care delivery systems and authorities should evaluate the cost-effectiveness of CADe to support its use in clinical practice; Statement 2.1: Computer-aided diagnosis (CADx) for diminutive polyps (≤5 mm), when it has sufficient accuracy, is expected to reduce health-care costs by reducing polypectomies, pathological examinations, or both; Statement 2.2: Health-care delivery systems and authorities should evaluate the cost-effectiveness of CADx to support its use in clinical practice; Statement 3: We recommend that a broad range of high-quality cost-effectiveness research should be undertaken to understand whether AI implementation benefits populations and societies in different health-care systems.
Keyphrases
- artificial intelligence
- healthcare
- big data
- machine learning
- clinical practice
- deep learning
- primary care
- palliative care
- quality improvement
- squamous cell carcinoma
- systematic review
- minimally invasive
- acute coronary syndrome
- loop mediated isothermal amplification
- colorectal cancer screening
- locally advanced
- coronary artery disease
- atrial fibrillation
- chronic rhinosinusitis
- rectal cancer
- papillary thyroid
- label free
- affordable care act