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Development and validation of a deep-learning algorithm for the detection of polyps during colonoscopy

Authors :
Liangping Li
Mengtian Tu
Yan Song
Di Zhang
Xiao Hu
Jingjia Liu
Xue Yang
Xin Yi
Peixi Liu
Xiao Xiao
Jeremy R. Glissen Brown
Tyler M. Berzin
Pu Wang
Fei Xiong
Xiaogang Liu
Jiong He
Source :
Nature Biomedical Engineering. 2:741-748
Publication Year :
2018
Publisher :
Springer Science and Business Media LLC, 2018.

Abstract

The detection and removal of precancerous polyps via colonoscopy is the gold standard for the prevention of colon cancer. However, the detection rate of adenomatous polyps can vary significantly among endoscopists. Here, we show that a machine-learning algorithm can detect polyps in clinical colonoscopies, in real time and with high sensitivity and specificity. We developed the deep-learning algorithm by using data from 1,290 patients, and validated it on newly collected 27,113 colonoscopy images from 1,138 patients with at least one detected polyp (per-image-sensitivity, 94.38%; per-image-specificity, 95.92%; area under the receiver operating characteristic curve, 0.984), on a public database of 612 polyp-containing images (per-image-sensitivity, 88.24%), on 138 colonoscopy videos with histologically confirmed polyps (per-image-sensitivity of 91.64%; per-polyp-sensitivity, 100%), and on 54 unaltered full-range colonoscopy videos without polyps (per-image-specificity, 95.40%). By using a multi-threaded processing system, the algorithm can process at least 25 frames per second with a latency of 76.80 ± 5.60 ms in real-time video analysis. The software may aid endoscopists while performing colonoscopies, and help assess differences in polyp and adenoma detection performance among endoscopists.

Details

ISSN :
2157846X
Volume :
2
Database :
OpenAIRE
Journal :
Nature Biomedical Engineering
Accession number :
edsair.doi.dedup.....6b87ce231f09f0ca1036f5e7624454f6