Cargando…

An ultrasound image‐based deep multi‐scale texture network for liver fibrosis grading in patients with chronic HBV infection

BACKGROUND & AIMS: The evaluation of the stage of liver fibrosis is essential in patients with chronic liver disease. However, due to the low quality of ultrasound images, the non‐invasive diagnosis of liver fibrosis based on ultrasound images is still an outstanding question. This study aimed t...

Descripción completa

Detalles Bibliográficos
Autores principales: Ruan, Dongsheng, Shi, Yu, Jin, Linfeng, Yang, Qiao, Yu, Wenwen, Ren, Haotang, Zheng, Weiyang, Chen, Yongping, Zheng, Nenggan, Zheng, Min
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9291892/
https://www.ncbi.nlm.nih.gov/pubmed/34219353
http://dx.doi.org/10.1111/liv.14999
_version_ 1784749238321676288
author Ruan, Dongsheng
Shi, Yu
Jin, Linfeng
Yang, Qiao
Yu, Wenwen
Ren, Haotang
Zheng, Weiyang
Chen, Yongping
Zheng, Nenggan
Zheng, Min
author_facet Ruan, Dongsheng
Shi, Yu
Jin, Linfeng
Yang, Qiao
Yu, Wenwen
Ren, Haotang
Zheng, Weiyang
Chen, Yongping
Zheng, Nenggan
Zheng, Min
author_sort Ruan, Dongsheng
collection PubMed
description BACKGROUND & AIMS: The evaluation of the stage of liver fibrosis is essential in patients with chronic liver disease. However, due to the low quality of ultrasound images, the non‐invasive diagnosis of liver fibrosis based on ultrasound images is still an outstanding question. This study aimed to investigate the diagnostic accuracy of a deep learning‐based method in ultrasound images for liver fibrosis staging in multicentre patients. METHODS: In this study, we proposed a novel deep learning‐based approach, named multi‐scale texture network (MSTNet), to assess liver fibrosis, which extracted multi‐scale texture features from constructed image pyramid patches. Its diagnostic accuracy was investigated by comparing it with APRI, FIB‐4, Forns and sonographers. Data of 508 patients who underwent liver biopsy were included from 4 hospitals. The area‐under‐the ROC curve (AUC) was determined by receiver operating characteristics (ROC) curves for significant fibrosis (≥F2) and cirrhosis (F4). RESULTS: The AUCs (95% confidence interval) of MSTNet were 0.92 (0.87‐0.96) for ≥F2 and 0.89 (0.83‐0.95) for F4 on the validation group, which significantly outperformed APRI, FIB‐4 and Forns. The sensitivity and specificity of MSTNet (85.1% (74.5%‐92.0%) and 87.6% (78.0%‐93.6%)) were better than those of three sonographers in assessing ≥F2. CONCLUSIONS: The proposed MSTNet is a promising ultrasound image‐based method for the non‐invasive grading of liver fibrosis in patients with chronic HBV infection.
format Online
Article
Text
id pubmed-9291892
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher John Wiley and Sons Inc.
record_format MEDLINE/PubMed
spelling pubmed-92918922022-07-20 An ultrasound image‐based deep multi‐scale texture network for liver fibrosis grading in patients with chronic HBV infection Ruan, Dongsheng Shi, Yu Jin, Linfeng Yang, Qiao Yu, Wenwen Ren, Haotang Zheng, Weiyang Chen, Yongping Zheng, Nenggan Zheng, Min Liver Int Cirrhosis, Liver Failure and Transplantation BACKGROUND & AIMS: The evaluation of the stage of liver fibrosis is essential in patients with chronic liver disease. However, due to the low quality of ultrasound images, the non‐invasive diagnosis of liver fibrosis based on ultrasound images is still an outstanding question. This study aimed to investigate the diagnostic accuracy of a deep learning‐based method in ultrasound images for liver fibrosis staging in multicentre patients. METHODS: In this study, we proposed a novel deep learning‐based approach, named multi‐scale texture network (MSTNet), to assess liver fibrosis, which extracted multi‐scale texture features from constructed image pyramid patches. Its diagnostic accuracy was investigated by comparing it with APRI, FIB‐4, Forns and sonographers. Data of 508 patients who underwent liver biopsy were included from 4 hospitals. The area‐under‐the ROC curve (AUC) was determined by receiver operating characteristics (ROC) curves for significant fibrosis (≥F2) and cirrhosis (F4). RESULTS: The AUCs (95% confidence interval) of MSTNet were 0.92 (0.87‐0.96) for ≥F2 and 0.89 (0.83‐0.95) for F4 on the validation group, which significantly outperformed APRI, FIB‐4 and Forns. The sensitivity and specificity of MSTNet (85.1% (74.5%‐92.0%) and 87.6% (78.0%‐93.6%)) were better than those of three sonographers in assessing ≥F2. CONCLUSIONS: The proposed MSTNet is a promising ultrasound image‐based method for the non‐invasive grading of liver fibrosis in patients with chronic HBV infection. John Wiley and Sons Inc. 2021-07-26 2021-10 /pmc/articles/PMC9291892/ /pubmed/34219353 http://dx.doi.org/10.1111/liv.14999 Text en © 2021 The Authors. Liver International published by John Wiley & Sons Ltd. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the terms of the http://creativecommons.org/licenses/by-nc-nd/4.0/ (https://creativecommons.org/licenses/by-nc-nd/4.0/) License, which permits use and distribution in any medium, provided the original work is properly cited, the use is non‐commercial and no modifications or adaptations are made.
spellingShingle Cirrhosis, Liver Failure and Transplantation
Ruan, Dongsheng
Shi, Yu
Jin, Linfeng
Yang, Qiao
Yu, Wenwen
Ren, Haotang
Zheng, Weiyang
Chen, Yongping
Zheng, Nenggan
Zheng, Min
An ultrasound image‐based deep multi‐scale texture network for liver fibrosis grading in patients with chronic HBV infection
title An ultrasound image‐based deep multi‐scale texture network for liver fibrosis grading in patients with chronic HBV infection
title_full An ultrasound image‐based deep multi‐scale texture network for liver fibrosis grading in patients with chronic HBV infection
title_fullStr An ultrasound image‐based deep multi‐scale texture network for liver fibrosis grading in patients with chronic HBV infection
title_full_unstemmed An ultrasound image‐based deep multi‐scale texture network for liver fibrosis grading in patients with chronic HBV infection
title_short An ultrasound image‐based deep multi‐scale texture network for liver fibrosis grading in patients with chronic HBV infection
title_sort ultrasound image‐based deep multi‐scale texture network for liver fibrosis grading in patients with chronic hbv infection
topic Cirrhosis, Liver Failure and Transplantation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9291892/
https://www.ncbi.nlm.nih.gov/pubmed/34219353
http://dx.doi.org/10.1111/liv.14999
work_keys_str_mv AT ruandongsheng anultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT shiyu anultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT jinlinfeng anultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT yangqiao anultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT yuwenwen anultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT renhaotang anultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT zhengweiyang anultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT chenyongping anultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT zhengnenggan anultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT zhengmin anultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT ruandongsheng ultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT shiyu ultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT jinlinfeng ultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT yangqiao ultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT yuwenwen ultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT renhaotang ultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT zhengweiyang ultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT chenyongping ultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT zhengnenggan ultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection
AT zhengmin ultrasoundimagebaseddeepmultiscaletexturenetworkforliverfibrosisgradinginpatientswithchronichbvinfection