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Multicenter Computer-Aided Diagnosis for Lymph Nodes Using Unsupervised Domain-Adaptation Networks Based on Cross-Domain Confounding Representations

To achieve the robust high-performance computer-aided diagnosis systems for lymph nodes, CT images may be typically collected from multicenter data, which cause the isolated performance of the model based on different data source centers. The variability adaptation problem of lymph node data which i...

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Autores principales: Qin, RuoXi, Zhang, Huike, Jiang, LingYun, Qiao, Kai, Hai, Jinjin, Chen, Jian, Xu, Junling, Shi, Dapeng, Yan, Bin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Hindawi 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7239501/
https://www.ncbi.nlm.nih.gov/pubmed/32454880
http://dx.doi.org/10.1155/2020/3709873
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author Qin, RuoXi
Zhang, Huike
Jiang, LingYun
Qiao, Kai
Hai, Jinjin
Chen, Jian
Xu, Junling
Shi, Dapeng
Yan, Bin
author_facet Qin, RuoXi
Zhang, Huike
Jiang, LingYun
Qiao, Kai
Hai, Jinjin
Chen, Jian
Xu, Junling
Shi, Dapeng
Yan, Bin
author_sort Qin, RuoXi
collection PubMed
description To achieve the robust high-performance computer-aided diagnosis systems for lymph nodes, CT images may be typically collected from multicenter data, which cause the isolated performance of the model based on different data source centers. The variability adaptation problem of lymph node data which is related to the problem of domain adaptation in deep learning differs from the general domain adaptation problem because of the typically larger CT image size and more complex data distributions. Therefore, domain adaptation for this problem needs to consider the shared feature representation and even the conditioning information of each domain so that the adaptation network can capture significant discriminative representations in a domain-invariant space. This paper extracts domain-invariant features based on a cross-domain confounding representation and proposes a cycle-consistency learning framework to encourage the network to preserve class-conditioning information through cross-domain image translations. Compared with the performance of different domain adaptation methods, the accurate rate of our method achieves at least 4.4% points higher under multicenter lymph node data. The pixel-level cross-domain image mapping and the semantic-level cycle consistency provided a stable confounding representation with class-conditioning information to achieve effective domain adaptation under complex feature distribution.
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spelling pubmed-72395012020-05-23 Multicenter Computer-Aided Diagnosis for Lymph Nodes Using Unsupervised Domain-Adaptation Networks Based on Cross-Domain Confounding Representations Qin, RuoXi Zhang, Huike Jiang, LingYun Qiao, Kai Hai, Jinjin Chen, Jian Xu, Junling Shi, Dapeng Yan, Bin Comput Math Methods Med Research Article To achieve the robust high-performance computer-aided diagnosis systems for lymph nodes, CT images may be typically collected from multicenter data, which cause the isolated performance of the model based on different data source centers. The variability adaptation problem of lymph node data which is related to the problem of domain adaptation in deep learning differs from the general domain adaptation problem because of the typically larger CT image size and more complex data distributions. Therefore, domain adaptation for this problem needs to consider the shared feature representation and even the conditioning information of each domain so that the adaptation network can capture significant discriminative representations in a domain-invariant space. This paper extracts domain-invariant features based on a cross-domain confounding representation and proposes a cycle-consistency learning framework to encourage the network to preserve class-conditioning information through cross-domain image translations. Compared with the performance of different domain adaptation methods, the accurate rate of our method achieves at least 4.4% points higher under multicenter lymph node data. The pixel-level cross-domain image mapping and the semantic-level cycle consistency provided a stable confounding representation with class-conditioning information to achieve effective domain adaptation under complex feature distribution. Hindawi 2020-01-24 /pmc/articles/PMC7239501/ /pubmed/32454880 http://dx.doi.org/10.1155/2020/3709873 Text en Copyright © 2020 RuoXi Qin et al. http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Research Article
Qin, RuoXi
Zhang, Huike
Jiang, LingYun
Qiao, Kai
Hai, Jinjin
Chen, Jian
Xu, Junling
Shi, Dapeng
Yan, Bin
Multicenter Computer-Aided Diagnosis for Lymph Nodes Using Unsupervised Domain-Adaptation Networks Based on Cross-Domain Confounding Representations
title Multicenter Computer-Aided Diagnosis for Lymph Nodes Using Unsupervised Domain-Adaptation Networks Based on Cross-Domain Confounding Representations
title_full Multicenter Computer-Aided Diagnosis for Lymph Nodes Using Unsupervised Domain-Adaptation Networks Based on Cross-Domain Confounding Representations
title_fullStr Multicenter Computer-Aided Diagnosis for Lymph Nodes Using Unsupervised Domain-Adaptation Networks Based on Cross-Domain Confounding Representations
title_full_unstemmed Multicenter Computer-Aided Diagnosis for Lymph Nodes Using Unsupervised Domain-Adaptation Networks Based on Cross-Domain Confounding Representations
title_short Multicenter Computer-Aided Diagnosis for Lymph Nodes Using Unsupervised Domain-Adaptation Networks Based on Cross-Domain Confounding Representations
title_sort multicenter computer-aided diagnosis for lymph nodes using unsupervised domain-adaptation networks based on cross-domain confounding representations
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7239501/
https://www.ncbi.nlm.nih.gov/pubmed/32454880
http://dx.doi.org/10.1155/2020/3709873
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