Artificial Intelligence Applied to Colonoscopy: Is It Time to Take a Step Forward?
Antonio Z Gimeno-GarcíaAnjara Hernández-PérezDavid Nicolás-PérezManuel Hernández-GuerraPublished in: Cancers (2023)
Growing evidence indicates that artificial intelligence (AI) applied to medicine is here to stay. In gastroenterology, AI computer vision applications have been stated as a research priority. The two main AI system categories are computer-aided polyp detection (CADe) and computer-assisted diagnosis (CADx). However, other fields of expansion are those related to colonoscopy quality, such as methods to objectively assess colon cleansing during the colonoscopy, as well as devices to automatically predict and improve bowel cleansing before the examination, predict deep submucosal invasion, obtain a reliable measurement of colorectal polyps and accurately locate colorectal lesions in the colon. Although growing evidence indicates that AI systems could improve some of these quality metrics, there are concerns regarding cost-effectiveness, and large and multicentric randomized studies with strong outcomes, such as post-colonoscopy colorectal cancer incidence and mortality, are lacking. The integration of all these tasks into one quality-improvement device could facilitate the incorporation of AI systems in clinical practice. In this manuscript, the current status of the role of AI in colonoscopy is reviewed, as well as its current applications, drawbacks and areas for improvement.
Keyphrases
- artificial intelligence
- deep learning
- machine learning
- big data
- quality improvement
- colorectal cancer screening
- current status
- clinical practice
- physical activity
- risk factors
- double blind
- patient safety
- type diabetes
- clinical trial
- open label
- cardiovascular disease
- cell migration
- quantum dots
- insulin resistance
- loop mediated isothermal amplification
- adipose tissue
- metabolic syndrome