Assessing generalisability of deep learning-based polyp detection and segmentation methods through a computer vision challenge

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作者
Sharib Ali
Noha Ghatwary
Debesh Jha
Ece Isik-Polat
Gorkem Polat
Chen Yang
Wuyang Li
Adrian Galdran
Miguel-Ángel González Ballester
Vajira Thambawita
Steven Hicks
Sahadev Poudel
Sang-Woong Lee
Ziyi Jin
Tianyuan Gan
ChengHui Yu
JiangPeng Yan
Doyeob Yeo
Hyunseok Lee
Nikhil Kumar Tomar
Mahmood Haithami
Amr Ahmed
Michael A. Riegler
Christian Daul
Pål Halvorsen
Jens Rittscher
Osama E. Salem
Dominique Lamarque
Renato Cannizzaro
Stefano Realdon
Thomas de Lange
James E. East
机构
[1] University of Leeds,School of Computing, Faculty of Engineering and Physical Sciences
[2] University of Oxford,Department of Engineering Science, Institute of Biomedical Engineering
[3] Oxford National Institute for Health Research Biomedical Research Centre,Computer Engineering Department
[4] Arab Academy for Science and Technology,Department of Computer Science
[5] SimulaMet,Graduate School of Informatics
[6] UiT The Arctic University of Norway,BCN MedTech, Department of Information and Communication Technologies
[7] Middle East Technical University,Department of IT Convergence Engineering
[8] City University of Hong Kong,College of Biomedical Engineering and Instrument Science
[9] Universitat Pompeu Fabra,Tsinghua Shenzhen International Graduate School
[10] ICREA,Department of Automation
[11] Gachon University,Smart Sensing and Diagnosis Research Division
[12] Zhejiang University,Daegu
[13] Tsinghua University,Gyeongbuk Medical Innovation Foundation
[14] Tsinghua University,Computer Science Department
[15] Korea Atomic Energy Research Institute,Computer Science
[16] Medical Device Development Center,CRAN UMR 7039
[17] NepAL Applied Mathematics and Informatics Institute for Research (NAAMII),Faculty of Medicine
[18] University of Nottingham,Medical Department
[19] Malaysia Campus,Department of Molecular and Clinical Medicine, Sahlgrenska Academy
[20] Edge Hill University,Translational Gastroenterology Unit, Nuffield Department of Medicine, Experimental Medicine Division, John Radcliffe Hospital
[21] Université de Lorraine and CNRS,undefined
[22] Oslo Metropolitan University,undefined
[23] University of Alexandria,undefined
[24] Université de Versailles St-Quentin en Yvelines,undefined
[25] Hôpital Ambroise Paré,undefined
[26] CRO Centro Riferimento Oncologico IRCCS Aviano Italy,undefined
[27] Veneto Institute of Oncology IOV-IRCCS,undefined
[28] Sahlgrenska University Hospital-Mölndal,undefined
[29] University of Gothenburg,undefined
[30] Augere Medical,undefined
[31] University of Oxford,undefined
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摘要
Polyps are well-known cancer precursors identified by colonoscopy. However, variability in their size, appearance, and location makes the detection of polyps challenging. Moreover, colonoscopy surveillance and removal of polyps are highly operator-dependent procedures and occur in a highly complex organ topology. There exists a high missed detection rate and incomplete removal of colonic polyps. To assist in clinical procedures and reduce missed rates, automated methods for detecting and segmenting polyps using machine learning have been achieved in past years. However, the major drawback in most of these methods is their ability to generalise to out-of-sample unseen datasets from different centres, populations, modalities, and acquisition systems. To test this hypothesis rigorously, we, together with expert gastroenterologists, curated a multi-centre and multi-population dataset acquired from six different colonoscopy systems and challenged the computational expert teams to develop robust automated detection and segmentation methods in a crowd-sourcing Endoscopic computer vision challenge. This work put forward rigorous generalisability tests and assesses the usability of devised deep learning methods in dynamic and actual clinical colonoscopy procedures. We analyse the results of four top performing teams for the detection task and five top performing teams for the segmentation task. Our analyses demonstrate that the top-ranking teams concentrated mainly on accuracy over the real-time performance required for clinical applicability. We further dissect the devised methods and provide an experiment-based hypothesis that reveals the need for improved generalisability to tackle diversity present in multi-centre datasets and routine clinical procedures.
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