Automated Classification and Segmentation in Colorectal Images Based on Self-Paced Transfer Network

Colorectal imaging improves on diagnosis of colorectal diseases by providing colorectal images. Manual diagnosis of colorectal disease is labor-intensive and time-consuming. In this paper, we present a method for automatic colorectal disease classification and segmentation. Because of label unbalanc...

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Main Authors: Yao Yao, Shuiping Gou, Ru Tian, Xiangrong Zhang, Shuixiang He
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:BioMed Research International
Online Access:http://dx.doi.org/10.1155/2021/6683931
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spelling doaj-491da93a14d94f75b00174d3ee4b5c1e2021-02-15T12:52:45ZengHindawi LimitedBioMed Research International2314-61332314-61412021-01-01202110.1155/2021/66839316683931Automated Classification and Segmentation in Colorectal Images Based on Self-Paced Transfer NetworkYao Yao0Shuiping Gou1Ru Tian2Xiangrong Zhang3Shuixiang He4School of Artificial Intelligence, Xidian University, Xi’an, Shanxi 710071, ChinaSchool of Artificial Intelligence, Xidian University, Xi’an, Shanxi 710071, ChinaSchool of Artificial Intelligence, Xidian University, Xi’an, Shanxi 710071, ChinaSchool of Artificial Intelligence, Xidian University, Xi’an, Shanxi 710071, ChinaDepartment of Gastroenterology, First Affiliated Hospital of Xi’an Jiaotong University, Xi’an, Shanxi 710071, ChinaColorectal imaging improves on diagnosis of colorectal diseases by providing colorectal images. Manual diagnosis of colorectal disease is labor-intensive and time-consuming. In this paper, we present a method for automatic colorectal disease classification and segmentation. Because of label unbalanced and difficult colorectal data, the classification based on self-paced transfer VGG network (STVGG) is proposed. ImageNet pretraining network parameters are transferred to VGG network with training colorectal data to acquire good initial network performance. And self-paced learning is used to optimize the network so that the classification performance of label unbalanced and difficult samples is improved. In order to assist the colonoscopist to accurately determine whether the polyp needs surgical resection, feature of trained STVGG model is shared to Unet segmentation network as the encoder part and to avoid repeat learning of polyp segmentation model. The experimental results on 3061 colorectal images illustrated that the proposed method obtained higher classification accuracy (96%) and segmentation performance compared with a few other methods. The polyp can be segmented accurately from around tissues by the proposed method. The segmentation results underpin the potential of deep learning methods for assisting colonoscopist in identifying polyps and enabling timely resection of these polyps at an early stage.http://dx.doi.org/10.1155/2021/6683931
collection DOAJ
language English
format Article
sources DOAJ
author Yao Yao
Shuiping Gou
Ru Tian
Xiangrong Zhang
Shuixiang He
spellingShingle Yao Yao
Shuiping Gou
Ru Tian
Xiangrong Zhang
Shuixiang He
Automated Classification and Segmentation in Colorectal Images Based on Self-Paced Transfer Network
BioMed Research International
author_facet Yao Yao
Shuiping Gou
Ru Tian
Xiangrong Zhang
Shuixiang He
author_sort Yao Yao
title Automated Classification and Segmentation in Colorectal Images Based on Self-Paced Transfer Network
title_short Automated Classification and Segmentation in Colorectal Images Based on Self-Paced Transfer Network
title_full Automated Classification and Segmentation in Colorectal Images Based on Self-Paced Transfer Network
title_fullStr Automated Classification and Segmentation in Colorectal Images Based on Self-Paced Transfer Network
title_full_unstemmed Automated Classification and Segmentation in Colorectal Images Based on Self-Paced Transfer Network
title_sort automated classification and segmentation in colorectal images based on self-paced transfer network
publisher Hindawi Limited
series BioMed Research International
issn 2314-6133
2314-6141
publishDate 2021-01-01
description Colorectal imaging improves on diagnosis of colorectal diseases by providing colorectal images. Manual diagnosis of colorectal disease is labor-intensive and time-consuming. In this paper, we present a method for automatic colorectal disease classification and segmentation. Because of label unbalanced and difficult colorectal data, the classification based on self-paced transfer VGG network (STVGG) is proposed. ImageNet pretraining network parameters are transferred to VGG network with training colorectal data to acquire good initial network performance. And self-paced learning is used to optimize the network so that the classification performance of label unbalanced and difficult samples is improved. In order to assist the colonoscopist to accurately determine whether the polyp needs surgical resection, feature of trained STVGG model is shared to Unet segmentation network as the encoder part and to avoid repeat learning of polyp segmentation model. The experimental results on 3061 colorectal images illustrated that the proposed method obtained higher classification accuracy (96%) and segmentation performance compared with a few other methods. The polyp can be segmented accurately from around tissues by the proposed method. The segmentation results underpin the potential of deep learning methods for assisting colonoscopist in identifying polyps and enabling timely resection of these polyps at an early stage.
url http://dx.doi.org/10.1155/2021/6683931
work_keys_str_mv AT yaoyao automatedclassificationandsegmentationincolorectalimagesbasedonselfpacedtransfernetwork
AT shuipinggou automatedclassificationandsegmentationincolorectalimagesbasedonselfpacedtransfernetwork
AT rutian automatedclassificationandsegmentationincolorectalimagesbasedonselfpacedtransfernetwork
AT xiangrongzhang automatedclassificationandsegmentationincolorectalimagesbasedonselfpacedtransfernetwork
AT shuixianghe automatedclassificationandsegmentationincolorectalimagesbasedonselfpacedtransfernetwork
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