Deep learning-based endoscopic anatomy classification: an accelerated approach for data preparation and model validation

Volume: 36, Issue: 6, Pages: 3811 - 3821
Published: Sep 29, 2021
Abstract
Photodocumentation during endoscopy procedures is one of the indicators for endoscopy performance quality; however, this indicator is difficult to measure and audit in the endoscopy unit. Emerging artificial intelligence technology may solve this problem, which requires a large amount of material for model development. We developed a deep learning-based endoscopic anatomy classification system through convolutional neural networks with an...
Paper Details
Title
Deep learning-based endoscopic anatomy classification: an accelerated approach for data preparation and model validation
Published Date
Sep 29, 2021
Volume
36
Issue
6
Pages
3811 - 3821
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