Colorectal Polyp Detection in Real-world Scenario: Design and Experiment Study
Xinzi Sun, Dechun Wang, Chenxi Zhang, Pengfei Zhang, Zinan Xiong, Yu, Cao, Benyuan Liu, Xiaowei Liu, Shuijiao Chen

TL;DR
This paper presents a real-world dataset of 7,313 colonoscopy images and an integrated system architecture that significantly improves polyp detection accuracy and speed in practical clinical scenarios.
Contribution
The study introduces a large, realistic colonoscopy image dataset and a novel system architecture tailored to real-world challenges for improved polyp detection.
Findings
Effective real-time polyp detection achieved
System outperforms existing methods in real-world scenarios
Dataset enables better training and evaluation
Abstract
Colorectal polyps are abnormal tissues growing on the intima of the colon or rectum with a high risk of developing into colorectal cancer, the third leading cause of cancer death worldwide. Early detection and removal of colon polyps via colonoscopy have proved to be an effective approach to prevent colorectal cancer. Recently, various CNN-based computer-aided systems have been developed to help physicians detect polyps. However, these systems do not perform well in real-world colonoscopy operations due to the significant difference between images in a real colonoscopy and those in the public datasets. Unlike the well-chosen clear images with obvious polyps in the public datasets, images from a colonoscopy are often blurry and contain various artifacts such as fluid, debris, bubbles, reflection, specularity, contrast, saturation, and medical instruments, with a wide variety of polyps of…
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Taxonomy
TopicsColorectal Cancer Screening and Detection · Advanced Image and Video Retrieval Techniques · COVID-19 diagnosis using AI
