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Transfer learning radiomics based on multimodal ultrasound imaging for staging liver fibrosis
OBJECTIVES: To propose a transfer learning (TL) radiomics model that efficiently combines the information from gray scale and elastogram ultrasound images for accurate liver fibrosis grading. METHODS: Totally 466 patients undergoing partial hepatectomy were enrolled, including 401 with chronic hepat...
Autores principales: | , , , , , , , , |
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Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Springer Berlin Heidelberg
2020
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Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7160214/ https://www.ncbi.nlm.nih.gov/pubmed/31965257 http://dx.doi.org/10.1007/s00330-019-06595-w |
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author | Xue, Li-Yun Jiang, Zhuo-Yun Fu, Tian-Tian Wang, Qing-Min Zhu, Yu-Li Dai, Meng Wang, Wen-Ping Yu, Jin-Hua Ding, Hong |
author_facet | Xue, Li-Yun Jiang, Zhuo-Yun Fu, Tian-Tian Wang, Qing-Min Zhu, Yu-Li Dai, Meng Wang, Wen-Ping Yu, Jin-Hua Ding, Hong |
author_sort | Xue, Li-Yun |
collection | PubMed |
description | OBJECTIVES: To propose a transfer learning (TL) radiomics model that efficiently combines the information from gray scale and elastogram ultrasound images for accurate liver fibrosis grading. METHODS: Totally 466 patients undergoing partial hepatectomy were enrolled, including 401 with chronic hepatitis B and 65 without fibrosis pathologically. All patients received elastography and got liver stiffness measurement (LSM) 2–3 days before surgery. We proposed a deep convolutional neural network by TL to analyze images of gray scale modality (GM) and elastogram modality (EM). The TL process was used for liver fibrosis classification by Inception-V3 network which pretrained on ImageNet. The diagnostic performance of TL and non-TL was compared. The value of single modalities, including GM and EM alone, and multimodalities, including GM + LSM and GM + EM, was evaluated and compared with that of LSM and serological indexes. Receiver operating characteristic curve analysis was performed to calculate the optimal area under the curve (AUC) for classifying fibrosis of S4, ≥ S3, and ≥ S2. RESULTS: TL in GM and EM demonstrated higher diagnostic accuracy than non-TL, with significantly higher AUCs (all p < .01). Single-modal GM and EM both performed better than LSM and serum indexes (all p < .001). Multimodal GM + EM was the most accurate prediction model (AUCs are 0.950, 0.932, and 0.930 for classifying S4, ≥ S3, and ≥ S2, respectively) compared with GM + LSM, GM and EM alone, LSM, and biomarkers (all p < .05). CONCLUSIONS: Liver fibrosis can be staged by a transfer learning modal based on the combination of gray scale and elastogram ultrasound images, with excellent performance. KEY POINTS: • Transfer learning consists in applying to a specific deep learning algorithm that pretrained on another relevant problem, expected to reduce the risk of overfitting due to insufficient medical images. • Liver fibrosis can be staged by transfer learning radiomics with excellent performance. • The most accurate prediction model of transfer learning by Inception-V3 network is the combination of gray scale and elastogram ultrasound images. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (10.1007/s00330-019-06595-w) contains supplementary material, which is available to authorized users. |
format | Online Article Text |
id | pubmed-7160214 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2020 |
publisher | Springer Berlin Heidelberg |
record_format | MEDLINE/PubMed |
spelling | pubmed-71602142020-04-23 Transfer learning radiomics based on multimodal ultrasound imaging for staging liver fibrosis Xue, Li-Yun Jiang, Zhuo-Yun Fu, Tian-Tian Wang, Qing-Min Zhu, Yu-Li Dai, Meng Wang, Wen-Ping Yu, Jin-Hua Ding, Hong Eur Radiol Imaging Informatics and Artificial Intelligence OBJECTIVES: To propose a transfer learning (TL) radiomics model that efficiently combines the information from gray scale and elastogram ultrasound images for accurate liver fibrosis grading. METHODS: Totally 466 patients undergoing partial hepatectomy were enrolled, including 401 with chronic hepatitis B and 65 without fibrosis pathologically. All patients received elastography and got liver stiffness measurement (LSM) 2–3 days before surgery. We proposed a deep convolutional neural network by TL to analyze images of gray scale modality (GM) and elastogram modality (EM). The TL process was used for liver fibrosis classification by Inception-V3 network which pretrained on ImageNet. The diagnostic performance of TL and non-TL was compared. The value of single modalities, including GM and EM alone, and multimodalities, including GM + LSM and GM + EM, was evaluated and compared with that of LSM and serological indexes. Receiver operating characteristic curve analysis was performed to calculate the optimal area under the curve (AUC) for classifying fibrosis of S4, ≥ S3, and ≥ S2. RESULTS: TL in GM and EM demonstrated higher diagnostic accuracy than non-TL, with significantly higher AUCs (all p < .01). Single-modal GM and EM both performed better than LSM and serum indexes (all p < .001). Multimodal GM + EM was the most accurate prediction model (AUCs are 0.950, 0.932, and 0.930 for classifying S4, ≥ S3, and ≥ S2, respectively) compared with GM + LSM, GM and EM alone, LSM, and biomarkers (all p < .05). CONCLUSIONS: Liver fibrosis can be staged by a transfer learning modal based on the combination of gray scale and elastogram ultrasound images, with excellent performance. KEY POINTS: • Transfer learning consists in applying to a specific deep learning algorithm that pretrained on another relevant problem, expected to reduce the risk of overfitting due to insufficient medical images. • Liver fibrosis can be staged by transfer learning radiomics with excellent performance. • The most accurate prediction model of transfer learning by Inception-V3 network is the combination of gray scale and elastogram ultrasound images. ELECTRONIC SUPPLEMENTARY MATERIAL: The online version of this article (10.1007/s00330-019-06595-w) contains supplementary material, which is available to authorized users. Springer Berlin Heidelberg 2020-01-21 2020 /pmc/articles/PMC7160214/ /pubmed/31965257 http://dx.doi.org/10.1007/s00330-019-06595-w Text en © The Author(s) 2020 Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. |
spellingShingle | Imaging Informatics and Artificial Intelligence Xue, Li-Yun Jiang, Zhuo-Yun Fu, Tian-Tian Wang, Qing-Min Zhu, Yu-Li Dai, Meng Wang, Wen-Ping Yu, Jin-Hua Ding, Hong Transfer learning radiomics based on multimodal ultrasound imaging for staging liver fibrosis |
title | Transfer learning radiomics based on multimodal ultrasound imaging for staging liver fibrosis |
title_full | Transfer learning radiomics based on multimodal ultrasound imaging for staging liver fibrosis |
title_fullStr | Transfer learning radiomics based on multimodal ultrasound imaging for staging liver fibrosis |
title_full_unstemmed | Transfer learning radiomics based on multimodal ultrasound imaging for staging liver fibrosis |
title_short | Transfer learning radiomics based on multimodal ultrasound imaging for staging liver fibrosis |
title_sort | transfer learning radiomics based on multimodal ultrasound imaging for staging liver fibrosis |
topic | Imaging Informatics and Artificial Intelligence |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7160214/ https://www.ncbi.nlm.nih.gov/pubmed/31965257 http://dx.doi.org/10.1007/s00330-019-06595-w |
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