Author:
Römmele Christoph,Mendel Robert,Barrett Caroline,Kiesl Hans,Rauber David,Rückert Tobias,Kraus Lisa,Heinkele Jakob,Dhillon Christine,Grosser Bianca,Prinz Friederike,Wanzl Julia,Fleischmann Carola,Nagl Sandra,Schnoy Elisabeth,Schlottmann Jakob,Dellon Evan S.,Messmann Helmut,Palm Christoph,Ebigbo Alanna
Abstract
AbstractThe endoscopic features associated with eosinophilic esophagitis (EoE) may be missed during routine endoscopy. We aimed to develop and evaluate an Artificial Intelligence (AI) algorithm for detecting and quantifying the endoscopic features of EoE in white light images, supplemented by the EoE Endoscopic Reference Score (EREFS). An AI algorithm (AI-EoE) was constructed and trained to differentiate between EoE and normal esophagus using endoscopic white light images extracted from the database of the University Hospital Augsburg. In addition to binary classification, a second algorithm was trained with specific auxiliary branches for each EREFS feature (AI-EoE-EREFS). The AI algorithms were evaluated on an external data set from the University of North Carolina, Chapel Hill (UNC), and compared with the performance of human endoscopists with varying levels of experience. The overall sensitivity, specificity, and accuracy of AI-EoE were 0.93 for all measures, while the AUC was 0.986. With additional auxiliary branches for the EREFS categories, the AI algorithm (AI-EoE-EREFS) performance improved to 0.96, 0.94, 0.95, and 0.992 for sensitivity, specificity, accuracy, and AUC, respectively. AI-EoE and AI-EoE-EREFS performed significantly better than endoscopy beginners and senior fellows on the same set of images. An AI algorithm can be trained to detect and quantify endoscopic features of EoE with excellent performance scores. The addition of the EREFS criteria improved the performance of the AI algorithm, which performed significantly better than endoscopists with a lower or medium experience level.
Funder
Bayerisches Staatsministerium für Wissenschaft, Forschung und Kunst
Bavarian Academic Forum
Universitätsklinikum Augsburg
Publisher
Springer Science and Business Media LLC
Cited by
10 articles.
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