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Artificial Intelligence in the Analysis of Upper Gastrointestinal Disorders

Authors :
Chang Seok Bang
Source :
The Korean Journal of Helicobacter and Upper Gastrointestinal Research, Vol 21, Iss 4, Pp 300-310 (2021)
Publication Year :
2021
Publisher :
Yong Chan Lee, 2021.

Abstract

In the past, conventional machine learning was applied to analyze tabulated medical data while deep learning was applied to study afflictions such as gastrointestinal disorders. Neural networks were used to detect, classify, and delineate various images of lesions because the local feature selection and optimization of the deep learning model enabled accurate image analysis. With the accumulation of medical records, the evolution of computational power and graphics processing units, and the widespread use of open-source libraries in large-scale machine learning processes, medical artificial intelligence (AI) is overcoming its limitations. While early studies prioritized the automatic diagnosis of cancer or pre-cancerous lesions, the current expanded scope of AI includes benign lesions, quality control, and machine learning analysis of big data. However, the limited commercialization of medical AI and the need to justify its application in each field of research are restricting factors. Modeling assumes that observations follow certain statistical rules, and external validation checks whether assumption is correct or generalizable. Therefore, unused data are essential in the training or internal testing process to validate the performance of the established AI models. This article summarizes the studies on the application of AI models in upper gastrointestinal disorders. The current limitations and the perspectives on future development have also been discussed.

Details

Language :
English, Korean
ISSN :
17383331
Volume :
21
Issue :
4
Database :
Directory of Open Access Journals
Journal :
The Korean Journal of Helicobacter and Upper Gastrointestinal Research
Publication Type :
Academic Journal
Accession number :
edsdoj.07109cc8ff1f4bdd9b27a1c588b1ddee
Document Type :
article
Full Text :
https://doi.org/10.7704/kjhugr.2021.0030