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BgNet: Classification of benign and malignant tumors with MRI multi-plane attention learning

OBJECTIVES: To propose a deep learning-based classification framework, which can carry out patient-level benign and malignant tumors classification according to the patient’s multi-plane images and clinical information. METHODS: A total of 430 cases of spinal tumor, including axial and sagittal plan...

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Autores principales: Liu, Hong, Jiao, Meng-Lei, Xing, Xiao-Ying, Ou-Yang, Han-Qiang, Yuan, Yuan, Liu, Jian-Fang, Li, Yuan, Wang, Chun-Jie, Lang, Ning, Qian, Yue-Liang, Jiang, Liang, Yuan, Hui-Shu, Wang, Xiang-Dong
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9646829/
https://www.ncbi.nlm.nih.gov/pubmed/36387085
http://dx.doi.org/10.3389/fonc.2022.971871
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author Liu, Hong
Jiao, Meng-Lei
Xing, Xiao-Ying
Ou-Yang, Han-Qiang
Yuan, Yuan
Liu, Jian-Fang
Li, Yuan
Wang, Chun-Jie
Lang, Ning
Qian, Yue-Liang
Jiang, Liang
Yuan, Hui-Shu
Wang, Xiang-Dong
author_facet Liu, Hong
Jiao, Meng-Lei
Xing, Xiao-Ying
Ou-Yang, Han-Qiang
Yuan, Yuan
Liu, Jian-Fang
Li, Yuan
Wang, Chun-Jie
Lang, Ning
Qian, Yue-Liang
Jiang, Liang
Yuan, Hui-Shu
Wang, Xiang-Dong
author_sort Liu, Hong
collection PubMed
description OBJECTIVES: To propose a deep learning-based classification framework, which can carry out patient-level benign and malignant tumors classification according to the patient’s multi-plane images and clinical information. METHODS: A total of 430 cases of spinal tumor, including axial and sagittal plane images by MRI, of which 297 cases for training (14072 images), and 133 cases for testing (6161 images) were included. Based on the bipartite graph and attention learning, this study proposed a multi-plane attention learning framework, BgNet, for benign and malignant tumor diagnosis. In a bipartite graph structure, the tumor area in each plane is used as the vertex of the graph, and the matching between different planes is used as the edge of the graph. The tumor areas from different plane images are spliced at the input layer. And based on the convolutional neural network ResNet and visual attention learning model Swin-Transformer, this study proposed a feature fusion model named ResNetST for combining both global and local information to extract the correlation features of multiple planes. The proposed BgNet consists of five modules including a multi-plane fusion module based on the bipartite graph, input layer fusion module, feature layer fusion module, decision layer fusion module, and output module. These modules are respectively used for multi-level fusion of patient multi-plane image data to realize the comprehensive diagnosis of benign and malignant tumors at the patient level. RESULTS: The accuracy (ACC: 79.7%) of the proposed BgNet with multi-plane was higher than that with a single plane, and higher than or equal to the four doctors’ ACC (D1: 70.7%, p=0.219; D2: 54.1%, p<0.005; D3: 79.7%, p=0.006; D4: 72.9%, p=0.178). Moreover, the diagnostic accuracy and speed of doctors can be further improved with the aid of BgNet, the ACC of D1, D2, D3, and D4 improved by 4.5%, 21.8%, 0.8%, and 3.8%, respectively. CONCLUSIONS: The proposed deep learning framework BgNet can classify benign and malignant tumors effectively, and can help doctors improve their diagnostic efficiency and accuracy. The code is available at https://github.com/research-med/BgNet.
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spelling pubmed-96468292022-11-15 BgNet: Classification of benign and malignant tumors with MRI multi-plane attention learning Liu, Hong Jiao, Meng-Lei Xing, Xiao-Ying Ou-Yang, Han-Qiang Yuan, Yuan Liu, Jian-Fang Li, Yuan Wang, Chun-Jie Lang, Ning Qian, Yue-Liang Jiang, Liang Yuan, Hui-Shu Wang, Xiang-Dong Front Oncol Oncology OBJECTIVES: To propose a deep learning-based classification framework, which can carry out patient-level benign and malignant tumors classification according to the patient’s multi-plane images and clinical information. METHODS: A total of 430 cases of spinal tumor, including axial and sagittal plane images by MRI, of which 297 cases for training (14072 images), and 133 cases for testing (6161 images) were included. Based on the bipartite graph and attention learning, this study proposed a multi-plane attention learning framework, BgNet, for benign and malignant tumor diagnosis. In a bipartite graph structure, the tumor area in each plane is used as the vertex of the graph, and the matching between different planes is used as the edge of the graph. The tumor areas from different plane images are spliced at the input layer. And based on the convolutional neural network ResNet and visual attention learning model Swin-Transformer, this study proposed a feature fusion model named ResNetST for combining both global and local information to extract the correlation features of multiple planes. The proposed BgNet consists of five modules including a multi-plane fusion module based on the bipartite graph, input layer fusion module, feature layer fusion module, decision layer fusion module, and output module. These modules are respectively used for multi-level fusion of patient multi-plane image data to realize the comprehensive diagnosis of benign and malignant tumors at the patient level. RESULTS: The accuracy (ACC: 79.7%) of the proposed BgNet with multi-plane was higher than that with a single plane, and higher than or equal to the four doctors’ ACC (D1: 70.7%, p=0.219; D2: 54.1%, p<0.005; D3: 79.7%, p=0.006; D4: 72.9%, p=0.178). Moreover, the diagnostic accuracy and speed of doctors can be further improved with the aid of BgNet, the ACC of D1, D2, D3, and D4 improved by 4.5%, 21.8%, 0.8%, and 3.8%, respectively. CONCLUSIONS: The proposed deep learning framework BgNet can classify benign and malignant tumors effectively, and can help doctors improve their diagnostic efficiency and accuracy. The code is available at https://github.com/research-med/BgNet. Frontiers Media S.A. 2022-10-27 /pmc/articles/PMC9646829/ /pubmed/36387085 http://dx.doi.org/10.3389/fonc.2022.971871 Text en Copyright © 2022 Liu, Jiao, Xing, Ou-Yang, Yuan, Liu, Li, Wang, Lang, Qian, Jiang, Yuan and Wang https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Oncology
Liu, Hong
Jiao, Meng-Lei
Xing, Xiao-Ying
Ou-Yang, Han-Qiang
Yuan, Yuan
Liu, Jian-Fang
Li, Yuan
Wang, Chun-Jie
Lang, Ning
Qian, Yue-Liang
Jiang, Liang
Yuan, Hui-Shu
Wang, Xiang-Dong
BgNet: Classification of benign and malignant tumors with MRI multi-plane attention learning
title BgNet: Classification of benign and malignant tumors with MRI multi-plane attention learning
title_full BgNet: Classification of benign and malignant tumors with MRI multi-plane attention learning
title_fullStr BgNet: Classification of benign and malignant tumors with MRI multi-plane attention learning
title_full_unstemmed BgNet: Classification of benign and malignant tumors with MRI multi-plane attention learning
title_short BgNet: Classification of benign and malignant tumors with MRI multi-plane attention learning
title_sort bgnet: classification of benign and malignant tumors with mri multi-plane attention learning
topic Oncology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9646829/
https://www.ncbi.nlm.nih.gov/pubmed/36387085
http://dx.doi.org/10.3389/fonc.2022.971871
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