题名 | Uncertainty-guided graph attention network for parapneumonic effusion diagnosis |
作者 | |
通讯作者 | Zhao,Yitian |
发表日期 | 2022
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DOI | |
发表期刊 | |
ISSN | 1361-8415
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EISSN | 1361-8423
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卷号 | 75 |
摘要 | Parapneumonic effusion (PPE) is a common condition that causes death in patients hospitalized with pneumonia. Rapid distinction of complicated PPE (CPPE) from uncomplicated PPE (UPPE) in Computed Tomography (CT) scans is of great importance for the management and medical treatment of PPE. However, UPPE and CPPE display similar appearances in CT scans, and it is challenging to distinguish CPPE from UPPE via a single 2D CT image, whether attempted by a human expert, or by any of the existing disease classification approaches. 3D convolutional neural networks (CNNs) can utilize the entire 3D volume for classification: however, they typically suffer from the intrinsic defect of over-fitting. Therefore, it is important to develop a method that not only overcomes the heavy memory and computational requirements of 3D CNNs, but also leverages the 3D information. In this paper, we propose an uncertainty-guided graph attention network (UG-GAT) that can automatically extract and integrate information from all CT slices in a 3D volume for classification into UPPE, CPPE, and normal control cases. Specifically, we frame the distinction of different cases as a graph classification problem. Each individual is represented as a directed graph with a topological structure, where vertices represent the image features of slices, and edges encode the spatial relationship between them. To estimate the contribution of each slice, we first extract the slice representations with uncertainty, using a Bayesian CNN: we then make use of the uncertainty information to weight each slice during the graph prediction phase in order to enable more reliable decision-making. We construct a dataset consisting of 302 chest CT volumetric data from different subjects (99 UPPE, 99 CPPE and 104 normal control cases) in this study, and to the best of our knowledge, this is the first attempt to classify UPPE, CPPE and normal cases using a deep learning method. Extensive experiments show that our approach is lightweight in demands, and outperforms accepted state-of-the-art methods by a large margin. Code is available at https://github.com/iMED-Lab/UG-GAT. |
关键词 | |
相关链接 | [Scopus记录] |
收录类别 | |
语种 | 英语
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学校署名 | 其他
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EI入藏号 | 20214611150586
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EI主题词 | Classification (of information)
; Computerized tomography
; Decision making
; Deep learning
; Diagnosis
; Directed graphs
; Uncertainty analysis
; Volumetric analysis
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EI分类号 | Ergonomics and Human Factors Engineering:461.4
; Medicine and Pharmacology:461.6
; Information Theory and Signal Processing:716.1
; Computer Applications:723.5
; Chemistry:801
; Information Sources and Analysis:903.1
; Management:912.2
; Combinatorial Mathematics, Includes Graph Theory, Set Theory:921.4
; Probability Theory:922.1
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ESI学科分类 | COMPUTER SCIENCE
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引用统计 |
被引频次[WOS]:18
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成果类型 | 期刊论文 |
条目标识符 | http://sustech.caswiz.com/handle/2SGJ60CL/256306 |
专题 | 工学院_计算机科学与工程系 |
作者单位 | 1.Cixi Institute of Biomedical Engineering,Ningbo Institute of Materials Technology and Engineering,Chinese Academy of Sciences,Ningbo,China 2.Hwa Mei Hospital,University of Chinese Academy of Sciences,Ningbo,China 3.Department of Computer Science and Engineering,Southern University of Science and Technology,Shenzhen,China 4.Department of Computer Science,Edge Hill University,Ormskirk,United Kingdom 5.Ningbo Eye Hospital,Ningbo,China 6.Zhejiang International Scientific and Technological Cooperative Base of Biomedical Materials and Technology,Ningbo Institute of Materials Technology and Engineering,Chinese Academy of Sciences,Ningbo,China 7.Zhejiang Engineering Research Center for Biomedical Materials,Ningbo Institute of Materials Technology and Engineering,Chinese Academy of Sciences,Ningbo,China 8.University of Chinese Academy of Sciences,Beijing,China |
推荐引用方式 GB/T 7714 |
Hao,Jinkui,Liu,Jiang,Pereira,Ella,et al. Uncertainty-guided graph attention network for parapneumonic effusion diagnosis[J]. MEDICAL IMAGE ANALYSIS,2022,75.
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APA |
Hao,Jinkui.,Liu,Jiang.,Pereira,Ella.,Liu,Ri.,Zhang,Jiong.,...&Zhao,Yitian.(2022).Uncertainty-guided graph attention network for parapneumonic effusion diagnosis.MEDICAL IMAGE ANALYSIS,75.
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MLA |
Hao,Jinkui,et al."Uncertainty-guided graph attention network for parapneumonic effusion diagnosis".MEDICAL IMAGE ANALYSIS 75(2022).
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条目包含的文件 | ||||||
文件名称/大小 | 文献类型 | 版本类型 | 开放类型 | 使用许可 | 操作 | |
Uncertainty-guided G(2619KB) | -- | -- | 限制开放 | -- |
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