ResearchTrend.AI
  • Papers
  • Communities
  • Events
  • Blog
  • Pricing
Papers
Communities
Social Events
Terms and Conditions
Pricing
Parameter LabParameter LabTwitterGitHubLinkedInBlueskyYoutube

© 2025 ResearchTrend.AI, All rights reserved.

  1. Home
  2. Papers
  3. 2307.16262
65
1
v1v2v3v4 (latest)

An objective validation of polyp and instrument segmentation methods in colonoscopy through Medico 2020 polyp segmentation and MedAI 2021 transparency challenges

30 July 2023
Debesh Jha
Vanshali Sharma
Debapriya Banik
Debayan Bhattacharya
K. Roy
Steven A. Hicks
Nikhil Kumar Tomar
Vajira Thambawita
Adrian Krenzer
Ge-Peng Ji
S. Poudel
George Batchkala
Saruar Alam
Awadelrahman M. A. Ahmed
Quoc-Huy Trinh
Zeshan Khan
Tien-Phat Nguyen
S. Shrestha
S. Nathan
Jeonghwan Gwak
R. Jha
Zheyu Zhang
Alexander Schlaefer
D. Bhattacharjee
M. Bhuyan
P. Das
Deng-Ping Fan
Sravanthi Parsa
Sharib Ali
Michael A. Riegler
Pål Halvorsen
Thomas de Lange
Ulas Bagci
ArXiv (abs)PDFHTML
Abstract

Automatic analysis of colonoscopy images has been an active field of research motivated by the importance of early detection of precancerous polyps. However, detecting polyps during the live examination can be challenging due to various factors such as variation of skills and experience among the endoscopists, lack of attentiveness, and fatigue leading to a high polyp miss-rate. Deep learning has emerged as a promising solution to this challenge as it can assist endoscopists in detecting and classifying overlooked polyps and abnormalities in real time. In addition to the algorithm's accuracy, transparency and interpretability are crucial to explaining the whys and hows of the algorithm's prediction. Further, most algorithms are developed in private data, closed source, or proprietary software, and methods lack reproducibility. Therefore, to promote the development of efficient and transparent methods, we have organized the "Medico automatic polyp segmentation (Medico 2020)" and "MedAI: Transparency in Medical Image Segmentation (MedAI 2021)" competitions. We present a comprehensive summary and analyze each contribution, highlight the strength of the best-performing methods, and discuss the possibility of clinical translations of such methods into the clinic. For the transparency task, a multi-disciplinary team, including expert gastroenterologists, accessed each submission and evaluated the team based on open-source practices, failure case analysis, ablation studies, usability and understandability of evaluations to gain a deeper understanding of the models' credibility for clinical deployment. Through the comprehensive analysis of the challenge, we not only highlight the advancements in polyp and surgical instrument segmentation but also encourage qualitative evaluation for building more transparent and understandable AI-based colonoscopy systems.

View on arXiv
Comments on this paper