Causality-based Subject and Task Fingerprints using fMRI Time-series Data.

Dachuan Song, Li Shen, Duy Duong-Tran, Xuan Wang
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Abstract

Recently, there has been a revived interest in system neuroscience causation models due to their unique capability to unravel complex relationships in multi-scale brain networks. In this paper, our goal is to verify the feasibility and effectiveness of using a causality-based approach for fMRI fingerprinting. Specifically, we propose an innovative method that utilizes the causal dynamics activities of the brain to identify the unique cognitive patterns of individuals (e.g., subject fingerprint) and fMRI tasks (e.g., task fingerprint). The key novelty of our approach stems from the development of a two-timescale linear state-space model to extract 'spatio-temporal' (aka causal) signatures from an individual's fMRI time series data. To the best of our knowledge, we pioneer and subsequently quantify, in this paper, the concept of 'causal fingerprint.' Our method is well-separated from other fingerprint studies as we quantify fingerprints from a cause-and-effect perspective, which are then incorporated with a modal decomposition and projection method to perform subject identification and a GNN-based (Graph Neural Network) model to perform task identification. Finally, we show that the experimental results and comparisons with non-causality-based methods demonstrate the effectiveness of the proposed methods. We visualize the obtained causal signatures and discuss their biological relevance in light of the existing understanding of brain functionalities. Collectively, our work paves the way for further studies on causal fingerprints with potential applications in both healthy controls and neurodegenerative diseases.

使用fMRI时间序列数据的基于因果关系的主题和任务指纹。
最近,由于系统神经科学因果模型具有揭示多尺度大脑网络中复杂关系的独特能力,因此对系统神经科学因果模型的兴趣重新燃起。在本文中,我们的目标是验证使用基于因果关系的方法进行fMRI指纹识别的可行性和有效性。具体来说,我们提出了一种创新的方法,利用大脑的因果动力学活动来识别个体(例如,受试者指纹)和功能磁共振成像任务(例如,任务指纹)的独特认知模式。我们方法的关键新颖之处在于开发了一个双时间尺度线性状态空间模型,从个人的fMRI时间序列数据中提取“时空”(又名因果)特征。据我们所知,我们在本文中开创并随后量化了“因果指纹”的概念。我们的方法与其他指纹研究很好地分离,因为我们从因果角度量化指纹,然后将其与模态分解和投影方法结合起来进行受试者识别,并基于gnn(图神经网络)模型进行任务识别。最后,实验结果和与非因果关系方法的比较表明了所提出方法的有效性。我们将获得的因果特征可视化,并根据对大脑功能的现有理解讨论其生物学相关性。总的来说,我们的工作为进一步研究因果指纹在健康对照和神经退行性疾病中的潜在应用铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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