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The Advent of Domain Adaptation into Artificial Intelligence for Gastrointestinal Endoscopy and Medical Imaging

Min Ji Kim, Sang Hoon Kim, Suk Min Kim, Ji Hyung Nam, Youngbae Hwang, Yun Jeong Lim

2023Diagnostics11 citationsDOIOpen Access PDF

Abstract

Artificial intelligence (AI) is a subfield of computer science that aims to implement computer systems that perform tasks that generally require human learning, reasoning, and perceptual abilities. AI is widely used in the medical field. The interpretation of medical images requires considerable effort, time, and skill. AI-aided interpretations, such as automated abnormal lesion detection and image classification, are promising areas of AI. However, when images with different characteristics are extracted, depending on the manufacturer and imaging environment, a so-called domain shift problem occurs in which the developed AI has a poor versatility. Domain adaptation is used to address this problem. Domain adaptation is a tool that generates a newly converted image which is suitable for other domains. It has also shown promise in reducing the differences in appearance among the images collected from different devices. Domain adaptation is expected to improve the reading accuracy of AI for heterogeneous image distributions in gastrointestinal (GI) endoscopy and medical image analyses. In this paper, we review the history and basic characteristics of domain shift and domain adaptation. We also address their use in gastrointestinal endoscopy and the medical field more generally through published examples, perspectives, and future directions.

Topics & Concepts

Adaptation (eye)Computer scienceDomain (mathematical analysis)Artificial intelligenceField (mathematics)Domain adaptationMedical imagingImage processingImage (mathematics)Machine learningComputer visionPsychologyMathematicsNeuroscienceMathematical analysisPure mathematicsClassifier (UML)Colorectal Cancer Screening and DetectionGastrointestinal Bleeding Diagnosis and TreatmentRadiomics and Machine Learning in Medical Imaging