Artificial intelligence and polyp detection in colonoscopy: Use of a single neural network to achieve rapid polyp localization for clinical use

Volume: 36, Issue: 12, Pages: 3298 - 3307
Published: Aug 16, 2021
Abstract
Artificial intelligence has been extensively studied to assist clinicians in polyp detection, but such systems usually require expansive processing power, making them prohibitively expensive and hindering wide adaption. The current study used a fast object detection algorithm, known as the YOLOv3 algorithm, to achieve real-time polyp detection on a laptop. In addition, we evaluated and classified the causes of false detections to further improve...
Paper Details
Title
Artificial intelligence and polyp detection in colonoscopy: Use of a single neural network to achieve rapid polyp localization for clinical use
Published Date
Aug 16, 2021
Volume
36
Issue
12
Pages
3298 - 3307
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