BGCSL:一个无监督框架揭示了大规模全脑功能连接网络的潜在结构。

IF 4.9 2区 医学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computer methods and programs in biomedicine Pub Date : 2025-01-02 DOI:10.1016/j.cmpb.2024.108573
Hua Zhang , Weiming Zeng , Ying Li , Jin Deng , Boyang Wei
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引用次数: 0

摘要

背景与目的:通过功能磁共振成像(fMRI)推断大规模脑网络提供了更详细和更丰富的连接信息,这对于深入了解大脑结构和功能以及预测临床表型至关重要。然而,随着网络节点数量的增加,大多数现有方法都存在以下局限性:(1)传统的浅层模型往往难以估计大规模的大脑网络。(2)现有深度图结构学习模型依赖于下游任务和标签。(3)它们依赖于稀疏的后处理操作。为了克服这些限制,本文提出了一个新的框架,通过图对比结构学习来揭示大规模的功能性大脑连接网络,称为BGCSL。方法:与传统的监督图结构学习方法不同,该框架不依赖于标记信息。它由两个重要模块组成:稀疏图结构学习器和图对比学习(GCL)。它在GCL中使用动态增强来训练稀疏图结构学习器,使其能够捕获数据的内在结构。结果:我们在12个合成数据集和2个公共功能磁共振成像数据集上进行了大量实验,证明了我们提出的框架的有效性。在合成数据集中,特别是在节点特征不足的情况下,BGCSL仍然保持最先进的性能。更重要的是,在ABIDE-I和HCP-rest数据集上,BGCSL不同程度地提高了基于GCN的模型(包括原始GCN、dGCN和ContrastPool)的下游任务性能。结论:本文提出的方法为未来大规模脑网络估计和表征提供了有价值的参考,并有助于探索更细粒度的生物标志物。
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BGCSL: An unsupervised framework reveals the underlying structure of large-scale whole-brain functional connectivity networks

Background and Objective:

Inferring large-scale brain networks from functional magnetic resonance imaging (fMRI) provides more detailed and richer connectivity information, which is critical for gaining insight into brain structure and function and for predicting clinical phenotypes. However, as the number of network nodes increases, most existing methods suffer from the following limitations: (1) Traditional shallow models often struggle to estimate large-scale brain networks. (2) Existing deep graph structure learning models rely on downstream tasks and labels. (3) They rely on sparse postprocessing operations. To overcome these limitations, this paper proposes a novel framework for revealing large-scale functional brain connectivity networks through graph contrastive structure learning, called BGCSL.

Methods:

Unlike traditional supervised graph structure learning methods, this framework does not rely on labeled information. It consists of two important modules: sparse graph structure learner and graph contrastive learning (GCL). It employs dynamic augmentation in GCL to train a sparse graph structure learner, enabling it to capture the intrinsic structure of the data.

Results:

We conducted extensive experiments on 12 synthetic datasets and 2 public functional magnetic resonance imaging datasets, demonstrating the effectiveness of our proposed framework. In the synthetic datasets, particularly in cases where node features are insufficient, BGCSL still maintains state-of-the-art performance. More importantly, on the ABIDE-I and HCP-rest datasets, BGCSL improved the downstream task performance of GCN-based models, including the original GCN, dGCN, and ContrastPool, to varying degrees.

Conclusion:

Our proposed method holds significant potential as a valuable reference for future large-scale brain network estimation and representation and is conducive to supporting the exploration of more fine-grained biomarkers.
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来源期刊
Computer methods and programs in biomedicine
Computer methods and programs in biomedicine 工程技术-工程:生物医学
CiteScore
12.30
自引率
6.60%
发文量
601
审稿时长
135 days
期刊介绍: To encourage the development of formal computing methods, and their application in biomedical research and medical practice, by illustration of fundamental principles in biomedical informatics research; to stimulate basic research into application software design; to report the state of research of biomedical information processing projects; to report new computer methodologies applied in biomedical areas; the eventual distribution of demonstrable software to avoid duplication of effort; to provide a forum for discussion and improvement of existing software; to optimize contact between national organizations and regional user groups by promoting an international exchange of information on formal methods, standards and software in biomedicine. Computer Methods and Programs in Biomedicine covers computing methodology and software systems derived from computing science for implementation in all aspects of biomedical research and medical practice. It is designed to serve: biochemists; biologists; geneticists; immunologists; neuroscientists; pharmacologists; toxicologists; clinicians; epidemiologists; psychiatrists; psychologists; cardiologists; chemists; (radio)physicists; computer scientists; programmers and systems analysts; biomedical, clinical, electrical and other engineers; teachers of medical informatics and users of educational software.
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