SMART (Splitting-Merging Assisted Reliable) Independent Component Analysis for Extracting Accurate Brain Functional Networks.

IF 5.9 2区 医学 Q1 NEUROSCIENCES
Neuroscience bulletin Pub Date : 2024-07-01 Epub Date: 2024-03-15 DOI:10.1007/s12264-024-01184-4
Xingyu He, Vince D Calhoun, Yuhui Du
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引用次数: 0

Abstract

Functional networks (FNs) hold significant promise in understanding brain function. Independent component analysis (ICA) has been applied in estimating FNs from functional magnetic resonance imaging (fMRI). However, determining an optimal model order for ICA remains challenging, leading to criticism about the reliability of FN estimation. Here, we propose a SMART (splitting-merging assisted reliable) ICA method that automatically extracts reliable FNs by clustering independent components (ICs) obtained from multi-model-order ICA using a simplified graph while providing linkages among FNs deduced from different-model orders. We extend SMART ICA to multi-subject fMRI analysis, validating its effectiveness using simulated and real fMRI data. Based on simulated data, the method accurately estimates both group-common and group-unique components and demonstrates robustness to parameters. Using two age-matched cohorts of resting fMRI data comprising 1,950 healthy subjects, the resulting reliable group-level FNs are greatly similar between the two cohorts, and interestingly the subject-specific FNs show progressive changes while age increases. Furthermore, both small-scale and large-scale brain FN templates are provided as benchmarks for future studies. Taken together, SMART ICA can automatically obtain reliable FNs in analyzing multi-subject fMRI data, while also providing linkages between different FNs.

Abstract Image

用于提取准确大脑功能网络的 SMART(拆分-合并辅助可靠)独立成分分析法。
功能网络(FNs)在了解大脑功能方面具有重要前景。独立成分分析(ICA)已被应用于从功能磁共振成像(fMRI)中估计功能网络。然而,确定 ICA 的最佳模型阶次仍然具有挑战性,导致对 FN 估计可靠性的批评。在此,我们提出了一种 SMART(拆分-合并辅助可靠)ICA 方法,该方法通过使用简化图对从多模型阶 ICA 中获得的独立成分(IC)进行聚类,自动提取可靠的 FN,同时提供从不同模型阶推导出的 FN 之间的联系。我们将 SMART ICA 扩展到多受试者 fMRI 分析,并使用模拟和真实 fMRI 数据验证了其有效性。在模拟数据的基础上,该方法准确估算出了组内共同成分和组内独特成分,并证明了其对参数的稳健性。利用两组年龄匹配的静息 fMRI 数据(包括 1,950 名健康受试者),得出的可靠组级 FNs 在两组受试者之间非常相似,有趣的是,随着年龄的增长,受试者特定的 FNs 呈现渐进式变化。此外,还提供了小规模和大规模的大脑 FN 模板,作为未来研究的基准。综上所述,SMART ICA 可以在分析多受试者 fMRI 数据时自动获得可靠的 FN,同时还能提供不同 FN 之间的联系。
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来源期刊
Neuroscience bulletin
Neuroscience bulletin NEUROSCIENCES-
CiteScore
7.20
自引率
16.10%
发文量
163
审稿时长
6-12 weeks
期刊介绍: Neuroscience Bulletin (NB), the official journal of the Chinese Neuroscience Society, is published monthly by Shanghai Institutes for Biological Sciences (SIBS), Chinese Academy of Sciences (CAS) and Springer. NB aims to publish research advances in the field of neuroscience and promote exchange of scientific ideas within the community. The journal publishes original papers on various topics in neuroscience and focuses on potential disease implications on the nervous system. NB welcomes research contributions on molecular, cellular, or developmental neuroscience using multidisciplinary approaches and functional strategies. We feature full-length original articles, reviews, methods, letters to the editor, insights, and research highlights. As the official journal of the Chinese Neuroscience Society, which currently has more than 12,000 members in China, NB is devoted to facilitating communications between Chinese neuroscientists and their international colleagues. The journal is recognized as the most influential publication in neuroscience research in China.
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