An improved deep learning approach and its applications on colonic polyp images detection

Abstract Background Colonic polyps are more likely to be cancerous, especially those with large diameter, large number and atypical hyperplasia. If colonic polyps cannot be treated in early stage, they are likely to develop into colon cancer. Colonoscopy is easily limited by the operator’s experienc...

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Main Authors: Wei Wang, Jinge Tian, Chengwen Zhang, Yanhong Luo, Xin Wang, Ji Li
Format: Article
Language:English
Published: BMC 2020-07-01
Series:BMC Medical Imaging
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12880-020-00482-3
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spelling doaj-4683cd4e201346aaab5079acdf38eb112020-11-25T03:39:11ZengBMCBMC Medical Imaging1471-23422020-07-0120111410.1186/s12880-020-00482-3An improved deep learning approach and its applications on colonic polyp images detectionWei Wang0Jinge Tian1Chengwen Zhang2Yanhong Luo3Xin Wang4Ji Li5School of Computer and Communication Engineering, Changsha University of Science and TechnologySchool of Computer and Communication Engineering, Changsha University of Science and TechnologySchool of Computer and Communication Engineering, Changsha University of Science and TechnologyHunan Children’s HospitalSchool of Computer and Communication Engineering, Changsha University of Science and TechnologySchool of Computer and Communication Engineering, Changsha University of Science and TechnologyAbstract Background Colonic polyps are more likely to be cancerous, especially those with large diameter, large number and atypical hyperplasia. If colonic polyps cannot be treated in early stage, they are likely to develop into colon cancer. Colonoscopy is easily limited by the operator’s experience, and factors such as inexperience and visual fatigue will directly affect the accuracy of diagnosis. Cooperating with Hunan children’s hospital, we proposed and improved a deep learning approach with global average pooling (GAP) in colonoscopy for assisted diagnosis. Our approach for assisted diagnosis in colonoscopy can prompt endoscopists to pay attention to polyps that may be ignored in real time, improve the detection rate, reduce missed diagnosis, and improve the efficiency of medical diagnosis. Methods We selected colonoscopy images from the gastrointestinal endoscopy room of Hunan children’s hospital to form the colonic polyp datasets. And we applied the image classification method based on Deep Learning to the classification of Colonic Polyps. The classic networks we used are VGGNets and ResNets. By using global average pooling, we proposed the improved approaches: VGGNets-GAP and ResNets-GAP. Results The accuracies of all models in datasets exceed 98%. The TPR and TNR are above 96 and 98% respectively. In addition, VGGNets-GAP networks not only have high classification accuracies, but also have much fewer parameters than those of VGGNets. Conclusions The experimental results show that the proposed approach has good effect on the automatic detection of colonic polyps. The innovations of our method are in two aspects: (1) the detection accuracy of colonic polyps has been improved. (2) our approach reduces the memory consumption and makes the model lightweight. Compared with the original VGG networks, the parameters of our VGG19-GAP networks are greatly reduced.http://link.springer.com/article/10.1186/s12880-020-00482-3Colonic polypsDeep learningConvolutional neural networksGlobal average pooling
collection DOAJ
language English
format Article
sources DOAJ
author Wei Wang
Jinge Tian
Chengwen Zhang
Yanhong Luo
Xin Wang
Ji Li
spellingShingle Wei Wang
Jinge Tian
Chengwen Zhang
Yanhong Luo
Xin Wang
Ji Li
An improved deep learning approach and its applications on colonic polyp images detection
BMC Medical Imaging
Colonic polyps
Deep learning
Convolutional neural networks
Global average pooling
author_facet Wei Wang
Jinge Tian
Chengwen Zhang
Yanhong Luo
Xin Wang
Ji Li
author_sort Wei Wang
title An improved deep learning approach and its applications on colonic polyp images detection
title_short An improved deep learning approach and its applications on colonic polyp images detection
title_full An improved deep learning approach and its applications on colonic polyp images detection
title_fullStr An improved deep learning approach and its applications on colonic polyp images detection
title_full_unstemmed An improved deep learning approach and its applications on colonic polyp images detection
title_sort improved deep learning approach and its applications on colonic polyp images detection
publisher BMC
series BMC Medical Imaging
issn 1471-2342
publishDate 2020-07-01
description Abstract Background Colonic polyps are more likely to be cancerous, especially those with large diameter, large number and atypical hyperplasia. If colonic polyps cannot be treated in early stage, they are likely to develop into colon cancer. Colonoscopy is easily limited by the operator’s experience, and factors such as inexperience and visual fatigue will directly affect the accuracy of diagnosis. Cooperating with Hunan children’s hospital, we proposed and improved a deep learning approach with global average pooling (GAP) in colonoscopy for assisted diagnosis. Our approach for assisted diagnosis in colonoscopy can prompt endoscopists to pay attention to polyps that may be ignored in real time, improve the detection rate, reduce missed diagnosis, and improve the efficiency of medical diagnosis. Methods We selected colonoscopy images from the gastrointestinal endoscopy room of Hunan children’s hospital to form the colonic polyp datasets. And we applied the image classification method based on Deep Learning to the classification of Colonic Polyps. The classic networks we used are VGGNets and ResNets. By using global average pooling, we proposed the improved approaches: VGGNets-GAP and ResNets-GAP. Results The accuracies of all models in datasets exceed 98%. The TPR and TNR are above 96 and 98% respectively. In addition, VGGNets-GAP networks not only have high classification accuracies, but also have much fewer parameters than those of VGGNets. Conclusions The experimental results show that the proposed approach has good effect on the automatic detection of colonic polyps. The innovations of our method are in two aspects: (1) the detection accuracy of colonic polyps has been improved. (2) our approach reduces the memory consumption and makes the model lightweight. Compared with the original VGG networks, the parameters of our VGG19-GAP networks are greatly reduced.
topic Colonic polyps
Deep learning
Convolutional neural networks
Global average pooling
url http://link.springer.com/article/10.1186/s12880-020-00482-3
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