Reprint

Artificial Intelligence in Gastrointestinal Disease: Diagnosis and Management

Edited by
April 2024
322 pages
  • ISBN978-3-7258-0653-9 (Hardback)
  • ISBN978-3-7258-0654-6 (PDF)

This book is a reprint of the Special Issue Artificial Intelligence in Gastrointestinal Disease: Diagnosis and Management that was published in

Medicine & Pharmacology
Public Health & Healthcare
Summary

Gastrointestinal disease (GID), the disease of the gastrointestinal tract, is one of the main contributors to disease burden around the world. GID causes 8 million deaths around the world per year and cost 120 billion dollars in the United States in 2018 alone. Simultaneously, the notion of artificial intelligence (AI) has gained great attention on a global level. Machine learning, a branch of AI extracting knowledge from large amounts of data, includes several common approaches, and a popular machine learning approach is the use of an artificial neural network (ANN), a group of neurons (information units) that are networked based on weights. An ANN normally has one input layer, one, two or three intermediate layers, and one output layer. A deep neural network (or deep learning) is an artificial neural network with a large number of intermediate layers, e.g., 5, 10 or even 1000. This Special Issue demonstrates the effectiveness and popularity of deep learning as a cutting-edge approach to the diagnosis and management of GID. This Special Issue covers a wide range of important topics including the classification, detection and segmentation of acute diverticulitis, colorectal cancer, gastric cancer, fatty liver, fecal material, inflammatory bowel disease, living-donor liver transplantation, neuroendocrine tumor and pancreatic cystic lesions. The Special Issue addresses the utility of explainable AI and large language models as well. In conclusion, this reprint will serve as an indispensable collection of original studies on the AI-based diagnosis and management of GID.

Format
  • Hardback
License and Copyright
© 2022 by the authors; CC BY-NC-ND license
Keywords
deep learning; transfer learning; poorly differentiated adenocarcinoma; colon; machine learning; artificial intelligence; acute diverticulitis; outcome prediction; emergency; complications; deep learning; CT volumetry; segmentation; living right liver donors; artificial intelligence; automated segmentation; U-NET; colonoscopy; colonoscopy preparation quality; neuroendocrine tumors; neuroendocrine neoplasms; carcinoid; gastroenteropancreatic; GEP-NETs; Pan-NENs; SI-NETS; artificial intelligence; machine learning; deep learning; colorectal cancer; deep learning; convolutional neural network (CNN); polyp detection; polyp localization; colonoscopy; narrow-band image; colon polyp; Retinex; gamma and sigmoid conversion; YOLO; colon capsule endoscopy; artificial intelligence; convolutional neural network; colorectal neoplasia; colon capsule endoscopy; artificial intelligence; polyp detection; bowel cleansing; deep transfer learning; multi-scale encoding; weighted feature maps fusion; image augmentation; polyp; inception module; single-shot multibox detector (SSD); wireless capsule endoscopy images (WCE); pancreatic cystic lesions; mucinous cystic neoplasm; intraductal papillary mucinous neoplasm; endoscopic ultrasound; artificial intelligence; gut microbiome; machine learning; classification; inflammatory bowel disease; colorectal cancer; stacked generalization; ensemble learning; gastrointestinal disease; early diagnosis; artificial intelligence; medical image analysis; polyp segmentation; colonoscopy; deep learning; attention mechanism; semantic segmentation; healthcare informatics; polyp; wireless capsule endoscopy images (WCE); single-shot multibox detector (SSD); image augmentation; multiscale DenseNet; colorectal cancer; deep learning; convolutional neural network (CNN); polyp detection; polyp localization; lean fatty liver; machine learning model; fatty liver index; OpenAI’s ChatGPT; chatbot; natural language processing (NLP); medical information; gastroenterology; patients’ questions; breathomics; colorectal cancer; volatile organic compounds; machine learning; artificial intelligence; automated diagnosis; validation; manifold learning; ONCOSCREEN; gastroscopy; transfer learning; deep learning; Gastro-BaseNet; ImageNet; endoscopy; polypoid lesion identification; polypoid lesion segmentation; YOLO-V8; WCE images; gastrointestinal disorders; colorectal cancer; artificial intelligence