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Detecting, Localising and Classifying Polyps from Colonoscopy Videos using Deep Learning

Authors :
Tian, Yu
Pu, Leonardo Zorron Cheng Tao
Liu, Yuyuan
Maicas, Gabriel
Verjans, Johan W.
Burt, Alastair D.
Shin, Seon Ho
Singh, Rajvinder
Carneiro, Gustavo
Publication Year :
2021

Abstract

In this paper, we propose and analyse a system that can automatically detect, localise and classify polyps from colonoscopy videos. The detection of frames with polyps is formulated as a few-shot anomaly classification problem, where the training set is highly imbalanced with the large majority of frames consisting of normal images and a small minority comprising frames with polyps. Colonoscopy videos may contain blurry images and frames displaying feces and water jet sprays to clean the colon -- such frames can mistakenly be detected as anomalies, so we have implemented a classifier to reject these two types of frames before polyp detection takes place. Next, given a frame containing a polyp, our method localises (with a bounding box around the polyp) and classifies it into five different classes. Furthermore, we study a method to improve the reliability and interpretability of the classification result using uncertainty estimation and classification calibration. Classification uncertainty and calibration not only help improve classification accuracy by rejecting low-confidence and high-uncertain results, but can be used by doctors to decide how to decide on the classification of a polyp. All the proposed detection, localisation and classification methods are tested using large data sets and compared with relevant baseline approaches.<br />Comment: Preprint to submit to IEEE journals

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2101.03285
Document Type :
Working Paper