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CAD-CAP: a 25,000-image database serving the development of artificial intelligence for capsule endoscopy

Background and study aims  Capsule endoscopy (CE) is the preferred method for small bowel (SB) exploration. With a mean number of 50,000 SB frames per video, SBCE reading is time-consuming and tedious (30 to 60 minutes per video). We describe a large, multicenter database named CAD-CAP (Computer-Ass...

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Detalles Bibliográficos
Autores principales: Leenhardt, Romain, Li, Cynthia, Le Mouel, Jean-Philippe, Rahmi, Gabriel, Saurin, Jean Christophe, Cholet, Franck, Boureille, Arnaud, Amiot, Xavier, Delvaux, Michel, Duburque, Clotilde, Leandri, Chloé, Gérard, Romain, Lecleire, Stéphane, Mesli, Farida, Nion-Larmurier, Isabelle, Romain, Olivier, Sacher-Huvelin, Sylvie, Simon-Shane, Camille, Vanbiervliet, Geoffroy, Marteau, Philippe, Histace, Aymeric, Dray, Xavier
Formato: Online Artículo Texto
Lenguaje:English
Publicado: © Georg Thieme Verlag KG 2020
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7035135/
https://www.ncbi.nlm.nih.gov/pubmed/32118115
http://dx.doi.org/10.1055/a-1035-9088
Descripción
Sumario:Background and study aims  Capsule endoscopy (CE) is the preferred method for small bowel (SB) exploration. With a mean number of 50,000 SB frames per video, SBCE reading is time-consuming and tedious (30 to 60 minutes per video). We describe a large, multicenter database named CAD-CAP (Computer-Assisted Diagnosis for CAPsule Endoscopy, CAD-CAP). This database aims to serve the development of CAD tools for CE reading. Materials and methods  Twelve French endoscopy centers were involved. All available third-generation SB-CE videos (Pillcam, Medtronic) were retrospectively selected from these centers and deidentified. Any pathological frame was extracted and included in the database. Manual segmentation of findings within these frames was performed by two pre-med students trained and supervised by an expert reader. All frames were then classified by type and clinical relevance by a panel of three expert readers. An automated extraction process was also developed to create a dataset of normal, proofread, control images from normal, complete, SB-CE videos. Results  Four-thousand-one-hundred-and-seventy-four SB-CE were included. Of them, 1,480 videos (35 %) containing at least one pathological finding were selected. Findings from 5,184 frames (with their short video sequences) were extracted and delimited: 718 frames with fresh blood, 3,097 frames with vascular lesions, and 1,369 frames with inflammatory and ulcerative lesions. Twenty-thousand normal frames were extracted from 206 SB-CE normal videos. CAD-CAP has already been used for development of automated tools for angiectasia detection and also for two international challenges on medical computerized analysis.