| Literature DB >> 33362384 |
Gulshan Parasher1, Morgan Wong1, Manmeet Rawat2.
Abstract
Artificial intelligence (AI) is a combination of different technologies that enable machines to sense, comprehend, and learn with human-like levels of intelligence. AI technology will eventually enhance human capability, provide machines genuine autonomy, and reduce errors, and increase productivity and efficiency. AI seems promising, and the field is full of invention, novel applications; however, the limitation of machine learning suggests a cautious optimism as the right strategy. AI is also becoming incorporated into medicine to improve patient care by speeding up processes and achieving greater accuracy for optimal patient care. AI using deep learning technology has been used to identify, differentiate catalog images in several medical fields including gastrointestinal endoscopy. The gastrointestinal endoscopy field involves endoscopic diagnoses and prognostication of various digestive diseases using image analysis with the help of various gastrointestinal endoscopic device systems. AI-based endoscopic systems can reliably detect and provide crucial information on gastrointestinal pathology based on their training and validation. These systems can make gastroenterology practice easier, faster, more reliable, and reduce inter-observer variability in the coming years. However, the thought that these systems will replace human decision making replace gastrointestinal endoscopists does not seem plausible in the near future. In this review, we discuss AI and associated various technological terminologies, evolving role in gastrointestinal endoscopy, and future possibilities. ©The Author(s) 2020. Published by Baishideng Publishing Group Inc. All rights reserved.Entities:
Keywords: Artificial intelligence; Endoscopic diagnosis; Gastric cancer; Gastrointestinal diseases; Gastrointestinal endoscopy; Machine learning
Mesh:
Year: 2020 PMID: 33362384 PMCID: PMC7739161 DOI: 10.3748/wjg.v26.i46.7287
Source DB: PubMed Journal: World J Gastroenterol ISSN: 1007-9327 Impact factor: 5.742
Figure 1Schematic representation of different aspects of machine learning approach. AI: Artificial intelligence; ML: Machine learning.
Recent clinical studies in artificial intelligence using central neural network and capsule endoscopy for small intestinal imaging
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| Aoki | Retrospective | Detection of mucosal breaks/erosion | 20 capsule endoscopy videos | Detection rate, expert 87%; trainee, 55% |
| Klang | Retrospective | Detection of small intestinal ulcers in Crohn’s disease | 17640 images from 49 patients | Accuracy, 96.7%; sensitivity, 96.8%; specificity, 96.6% (5-fold) |
| Tsuboi | Retrospective | Detection of small intestinal angiodysplasia | 2237 images from 141 patients | Sensitivity, 98.8%; specificity, 98.4% |
| Ding | Retrospective | Detection of small intestinal abnormal images | 158235 images from 1970 patients | Sensitivity, 99.9%; reading time, 5.9 min |
| Saito | Retrospective | Detection and classification of protruding lesions | 30584 images from 292 patients | Sensitivity, 90.7%; specificity, 79.8%; reading time, 530.462 s |