| Literature DB >> 32969051 |
Masashi Misawa1, Shin-Ei Kudo1, Yuichi Mori1,2, Yasuharu Maeda1, Yushi Ogawa1, Katsuro Ichimasa1, Toyoki Kudo1, Kunihiko Wakamura1, Takemasa Hayashi1, Hideyuki Miyachi1, Toshiyuki Baba1, Fumio Ishida1, Hayato Itoh3, Masahiro Oda3, Kensaku Mori3.
Abstract
The global incidence and mortality rate of colorectal cancer remains high. Colonoscopy is regarded as the gold standard examination for detecting and eradicating neoplastic lesions. However, there are some uncertainties in colonoscopy practice that are related to limitations in human performance. First, approximately one-fourth of colorectal neoplasms are missed on a single colonoscopy. Second, it is still difficult for non-experts to perform adequately regarding optical biopsy. Third, recording of some quality indicators (e.g. cecal intubation, bowel preparation, and withdrawal speed) which are related to adenoma detection rate, is sometimes incomplete. With recent improvements in machine learning techniques and advances in computer performance, artificial intelligence-assisted computer-aided diagnosis is being increasingly utilized by endoscopists. In particular, the emergence of deep-learning, data-driven machine learning techniques have made the development of computer-aided systems easier than that of conventional machine learning techniques, the former currently being considered the standard artificial intelligence engine of computer-aided diagnosis by colonoscopy. To date, computer-aided detection systems seem to have improved the rate of detection of neoplasms. Additionally, computer-aided characterization systems may have the potential to improve diagnostic accuracy in real-time clinical practice. Furthermore, some artificial intelligence-assisted systems that aim to improve the quality of colonoscopy have been reported. The implementation of computer-aided system clinical practice may provide additional benefits such as helping in educational poorly performing endoscopists and supporting real-time clinical decision-making. In this review, we have focused on computer-aided diagnosis during colonoscopy reported by gastroenterologists and discussed its status, limitations, and future prospects.Entities:
Keywords: artificial intelligence; colonoscopy; colorectal cancer; computer-aided diagnosis
Mesh:
Year: 2020 PMID: 32969051 DOI: 10.1111/den.13847
Source DB: PubMed Journal: Dig Endosc ISSN: 0915-5635 Impact factor: 7.559