Cargando…

A Hierarchical Siamese Network for Noninvasive Staging of Liver Fibrosis Based on US Image Pairs of the Liver and Spleen

Due to the heterogeneity of ultrasound (US) images and the indeterminate US texture of liver fibrosis (LF), automatic evaluation of LF based on US images is still challenging. Thus, this study aimed to propose a hierarchical Siamese network that combines the information from liver and spleen US imag...

Descripción completa

Detalles Bibliográficos
Autores principales: Wang, Xue, Song, Ling, Zhuang, Yan, Han, Lin, Chen, Ke, Lin, Jiangli, Luo, Yan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10302592/
https://www.ncbi.nlm.nih.gov/pubmed/37420617
http://dx.doi.org/10.3390/s23125450
_version_ 1785065080310726656
author Wang, Xue
Song, Ling
Zhuang, Yan
Han, Lin
Chen, Ke
Lin, Jiangli
Luo, Yan
author_facet Wang, Xue
Song, Ling
Zhuang, Yan
Han, Lin
Chen, Ke
Lin, Jiangli
Luo, Yan
author_sort Wang, Xue
collection PubMed
description Due to the heterogeneity of ultrasound (US) images and the indeterminate US texture of liver fibrosis (LF), automatic evaluation of LF based on US images is still challenging. Thus, this study aimed to propose a hierarchical Siamese network that combines the information from liver and spleen US images to improve the accuracy of LF grading. There were two stages in the proposed method. In stage one, a dual-channel Siamese network was trained to extract features from paired liver and spleen patches that were cropped from US images to avoid vascular interferences. Subsequently, the L1 distance was used to quantify the liver–spleen differences (LSDs). In stage two, the pretrained weights from stage one were transferred into the Siamese feature extractor of the LF staging model, and a classifier was trained using the fusion of the liver and LSD features for LF staging. This study was retrospectively conducted on US images of 286 patients with histologically proven liver fibrosis stages. Our method achieved a precision and sensitivity of 93.92% and 91.65%, respectively, for cirrhosis (S4) diagnosis, which is about 8% higher than that of the baseline model. The accuracy of the advanced fibrosis (≥S3) diagnosis and the multi-staging of fibrosis (≤S2 vs. S3 vs. S4) both improved about 5% to reach 90.40% and 83.93%, respectively. This study proposed a novel method that combined hepatic and splenic US images and improved the accuracy of LF staging, which indicates the great potential of liver–spleen texture comparison in noninvasive assessment of LF based on US images.
format Online
Article
Text
id pubmed-10302592
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-103025922023-06-29 A Hierarchical Siamese Network for Noninvasive Staging of Liver Fibrosis Based on US Image Pairs of the Liver and Spleen Wang, Xue Song, Ling Zhuang, Yan Han, Lin Chen, Ke Lin, Jiangli Luo, Yan Sensors (Basel) Article Due to the heterogeneity of ultrasound (US) images and the indeterminate US texture of liver fibrosis (LF), automatic evaluation of LF based on US images is still challenging. Thus, this study aimed to propose a hierarchical Siamese network that combines the information from liver and spleen US images to improve the accuracy of LF grading. There were two stages in the proposed method. In stage one, a dual-channel Siamese network was trained to extract features from paired liver and spleen patches that were cropped from US images to avoid vascular interferences. Subsequently, the L1 distance was used to quantify the liver–spleen differences (LSDs). In stage two, the pretrained weights from stage one were transferred into the Siamese feature extractor of the LF staging model, and a classifier was trained using the fusion of the liver and LSD features for LF staging. This study was retrospectively conducted on US images of 286 patients with histologically proven liver fibrosis stages. Our method achieved a precision and sensitivity of 93.92% and 91.65%, respectively, for cirrhosis (S4) diagnosis, which is about 8% higher than that of the baseline model. The accuracy of the advanced fibrosis (≥S3) diagnosis and the multi-staging of fibrosis (≤S2 vs. S3 vs. S4) both improved about 5% to reach 90.40% and 83.93%, respectively. This study proposed a novel method that combined hepatic and splenic US images and improved the accuracy of LF staging, which indicates the great potential of liver–spleen texture comparison in noninvasive assessment of LF based on US images. MDPI 2023-06-08 /pmc/articles/PMC10302592/ /pubmed/37420617 http://dx.doi.org/10.3390/s23125450 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Wang, Xue
Song, Ling
Zhuang, Yan
Han, Lin
Chen, Ke
Lin, Jiangli
Luo, Yan
A Hierarchical Siamese Network for Noninvasive Staging of Liver Fibrosis Based on US Image Pairs of the Liver and Spleen
title A Hierarchical Siamese Network for Noninvasive Staging of Liver Fibrosis Based on US Image Pairs of the Liver and Spleen
title_full A Hierarchical Siamese Network for Noninvasive Staging of Liver Fibrosis Based on US Image Pairs of the Liver and Spleen
title_fullStr A Hierarchical Siamese Network for Noninvasive Staging of Liver Fibrosis Based on US Image Pairs of the Liver and Spleen
title_full_unstemmed A Hierarchical Siamese Network for Noninvasive Staging of Liver Fibrosis Based on US Image Pairs of the Liver and Spleen
title_short A Hierarchical Siamese Network for Noninvasive Staging of Liver Fibrosis Based on US Image Pairs of the Liver and Spleen
title_sort hierarchical siamese network for noninvasive staging of liver fibrosis based on us image pairs of the liver and spleen
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10302592/
https://www.ncbi.nlm.nih.gov/pubmed/37420617
http://dx.doi.org/10.3390/s23125450
work_keys_str_mv AT wangxue ahierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen
AT songling ahierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen
AT zhuangyan ahierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen
AT hanlin ahierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen
AT chenke ahierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen
AT linjiangli ahierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen
AT luoyan ahierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen
AT wangxue hierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen
AT songling hierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen
AT zhuangyan hierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen
AT hanlin hierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen
AT chenke hierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen
AT linjiangli hierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen
AT luoyan hierarchicalsiamesenetworkfornoninvasivestagingofliverfibrosisbasedonusimagepairsoftheliverandspleen