G. Iddan, G. Meron, and A. Glukhovsky, Wireless capsule endoscopy, Nature, vol.405, p.417, 2000.

M. E. Mcalindon, H. Ching, and Y. D. , Capsule endoscopy of the small bowel, Ann Transl Med, vol.4, p.369, 2016.

P. Rajpurkar, J. Irvin, and K. Zhu, Radiologist-level pneumonia detection on chest x-rays with deep learning, 2017.

S. Chilamkurthy, R. Ghosh, and S. Tanamala, Deep learning algorithms for detection of critical findings in head CT scans: a retrospective study, The Lancet, vol.392, pp.2388-2396, 2018.

M. F. Byrne, N. Chapados, and F. Soudan, Real-time differentiation of adenomatous and hyperplastic diminutive colorectal polyps during analysis of unaltered videos of standard colonoscopy using a deep learning model, Gut, vol.68, pp.94-100, 2019.

A. Esteva, B. Kuprel, and R. A. Novoa, Dermatologist-level classification of skin cancer with deep neural networks, Nature, vol.542, pp.115-118, 2017.

V. Gulshan, L. Peng, and M. Coram, Development and Validation of a Deep Learning Algorithm for Detection of Diabetic Retinopathy in Retinal Fundus Photographs, JAMA, vol.316, pp.2402-2410, 2016.

. Commissioner-o-of-the, Press Announcements -FDA permits marketing of artificial intelligence-based device to detect certain diabetes-related eye problems, 2018.

M. F. Byrne, N. Shahidi, and D. K. Rex, Will Computer-Aided Detection and Diagnosis Revolutionize Colonoscopy?, Gastroenterology, vol.153, pp.1460-1464, 2017.

P. Chen, M. Lin, and M. Lai, Accurate Classification of Diminutive Colorectal Polyps Using Computer-Aided Analysis, Gastroenterology, vol.154, pp.568-575, 2018.

D. K. Iakovidis and A. Koulaouzidis, Automatic lesion detection in capsule endoscopy based on color saliency: closer to an essential adjunct for reviewing software, Gastrointest Endosc, vol.80, pp.877-883, 2014.

R. Leenhardt, P. Vasseur, and C. Li, A neural network algorithm for detection of GI angiectasia during small-bowel capsule endoscopy, Gastrointest Endosc, vol.89, pp.189-194, 2019.
URL : https://hal.archives-ouvertes.fr/hal-01835422

A. Koulaouzidis, D. K. Iakovidis, and Y. De, KID Project: an internetbased digital video atlas of capsule endoscopy for research purposes, Endosc Int Open, vol.5, pp.477-483, 2017.

D. K. Iakovidis and A. Koulaouzidis, Software for enhanced video capsule endoscopy: challenges for essential progress, Nat Rev Gastroenterol Hepatol, vol.12, pp.172-186, 2015.

J. Lee, S. Jun, and Y. Cho, Deep Learning in Medical Imaging: General Overview. Korean J Radiol, vol.18, pp.570-584, 2017.

T. Aoki, A. Yamada, and K. Aoyama, Automatic detection of erosions and ulcerations in wireless capsule endoscopy images based on a deep convolutional neural network, Gastrointest Endosc, vol.89, pp.357-363, 2019.

J. Saurin, M. Delvaux, and J. Gaudin, Diagnostic value of endoscopic capsule in patients with obscure digestive bleeding: blinded comparison with video push-enteroscopy, Endoscopy, vol.35, pp.576-584, 2003.

R. Leenhardt, C. Li, and A. Koulaouzidis, Nomenclature and Semantic Description of Vascular Lesions in Small Bowel Capsule Endoscopy: an International Delphi Consensus Statement, Endosc Int Open, vol.07, pp.372-379, 2019.

A. Buisson, J. Filippi, and A. Amiot, Su1229 Definitions of the Endoscopic Lesions in Crohn?s Disease: Reproductibility Study and GETAID Expert Consensus, Gastroenterology, vol.148, p.445, 2015.

E. Gal, A. Geller, and G. Fraser, Assessment and validation of the new capsule endoscopy Crohn's disease activity index (CECDAI), Dig Dis Sci, vol.53, pp.1933-1937, 2008.

D. E. Yung, E. Rondonotti, and C. Sykes, Systematic review and meta-analysis: is bowel preparation still necessary in small bowel capsule endoscopy?, Expert Rev Gastroenterol Hepatol, vol.11, pp.979-993, 2017.

Y. Mori, S. Kudo, and M. Misawa, Real-Time Use of Artificial Intelligence in Identification of Diminutive Polyps During Colonoscopy: A Prospective Study, Ann Intern Med, vol.169, pp.357-366, 2018.

D. D. Miller and E. W. Brown, Artificial Intelligence in Medical Practice: The Question to the Answer?, Am J Med, vol.131, pp.129-133, 2018.

A. Swager, F. Van-der-sommen, and S. R. Klomp, Computer-aided detection of early Barrett's neoplasia using volumetric laser endomicroscopy, Gastrointest Endosc, vol.86, pp.839-846, 2017.

S. Kashin, Artificial intelligence: the rise of the machines, 2018.

O. Pietri, G. Rezgui, and A. Histace, Development and validation of an automated algorithm to evaluate the abundance of bubbles in small bowel capsule endoscopy, Endosc Int Open, vol.6, pp.462-469, 2018.

S. Van-weyenberg, D. Leest, H. Mulder, and C. , Description of a novel grading system to assess the quality of bowel preparation in video capsule endoscopy, Endoscopy, vol.43, pp.406-411, 2011.

A. Alie, A. Histace, and M. Camus, Development and validation of a computed assessment of cleansing score for evaluation of quality of small-bowel visualization in capsule endoscopy, Endosc Int Open, vol.6, pp.646-651, 2018.

A. Becq, A. Histace, and M. Camus, Development of a computed cleansing score to assess quality of bowel preparation in colon capsule endoscopy, Endosc Int Open, vol.6, pp.844-850, 2018.
URL : https://hal.archives-ouvertes.fr/hal-01674481

S. Fan, L. Xu, and Y. Fan, Computer-aided detection of small intestinal ulcer and erosion in wireless capsule endoscopy images, Phys Med Biol, vol.63, p.165001, 2018.

J. Bernal, N. Tajkbaksh, and F. J. Sanchez, Comparative Validation of Polyp Detection Methods in Video Colonoscopy: Results From the MICCAI 2015 Endoscopic Vision Challenge, IEEE Trans Med Imaging, vol.36, pp.1231-1249, 2017.
URL : https://hal.archives-ouvertes.fr/hal-01488652