An objective comparison of detection and segmentation algorithms for artefacts in clinical endoscopy

Author:

Ali SharibORCID,Zhou Felix,Braden BarbaraORCID,Bailey Adam,Yang SuhuiORCID,Cheng Guanju,Zhang Pengyi,Li Xiaoqiong,Kayser Maxime,Soberanis-Mukul Roger D.ORCID,Albarqouni ShadiORCID,Wang Xiaokang,Wang Chunqing,Watanabe Seiryo,Oksuz IlkayORCID,Ning Qingtian,Yang ShufanORCID,Khan Mohammad Azam,Gao Xiaohong W.,Realdon Stefano,Loshchenov Maxim,Schnabel Julia A.,East James E.ORCID,Wagnieres Georges,Loschenov Victor B.,Grisan EnricoORCID,Daul Christian,Blondel Walter,Rittscher Jens

Abstract

AbstractWe present a comprehensive analysis of the submissions to the first edition of the Endoscopy Artefact Detection challenge (EAD). Using crowd-sourcing, this initiative is a step towards understanding the limitations of existing state-of-the-art computer vision methods applied to endoscopy and promoting the development of new approaches suitable for clinical translation. Endoscopy is a routine imaging technique for the detection, diagnosis and treatment of diseases in hollow-organs; the esophagus, stomach, colon, uterus and the bladder. However the nature of these organs prevent imaged tissues to be free of imaging artefacts such as bubbles, pixel saturation, organ specularity and debris, all of which pose substantial challenges for any quantitative analysis. Consequently, the potential for improved clinical outcomes through quantitative assessment of abnormal mucosal surface observed in endoscopy videos is presently not realized accurately. The EAD challenge promotes awareness of and addresses this key bottleneck problem by investigating methods that can accurately classify, localize and segment artefacts in endoscopy frames as critical prerequisite tasks. Using a diverse curated multi-institutional, multi-modality, multi-organ dataset of video frames, the accuracy and performance of 23 algorithms were objectively ranked for artefact detection and segmentation. The ability of methods to generalize to unseen datasets was also evaluated. The best performing methods (top 15%) propose deep learning strategies to reconcile variabilities in artefact appearance with respect to size, modality, occurrence and organ type. However, no single method outperformed across all tasks. Detailed analyses reveal the shortcomings of current training strategies and highlight the need for developing new optimal metrics to accurately quantify the clinical applicability of methods.

Funder

NIHR Oxford Biomedical Research Centre

Ludwig Institute for Cancer Research

RCUK | Engineering and Physical Sciences Research Council

Publisher

Springer Science and Business Media LLC

Subject

Multidisciplinary

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