与基于相关性的连接组相比,通过脑电图数据进行图学习可改进大脑指纹识别技术

Maliheh Miri , Vahid Abootalebi , Enrico Amico , Hamid Saeedi-Sourck , Dimitri Van De Ville , Hamid Behjat
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引用次数: 0

摘要

过去十年中,越来越多的研究发现,大脑区域之间的功能性互动包含了特定对象的特异性,具有很强的可复制性。因此,功能连接模式可被视为个体的大脑指纹,能够在人群中识别其健康和疾病状况。传统的方法是将大脑区域视为顶点,利用区域时间序列之间成对的统计依赖性度量(如皮尔逊相关系数)作为边缘权重,从而构建功能连接组。然而,我们的研究侧重于脑电图数据,提出了另一种方法,即利用图信号处理原理从个体脑电图数据中学习稀疏图结构。推断出的特定对象图编码了脑电图电极集合之间微妙的瞬时空间关系,从而将脑电图图视为驻留在图上的平滑函数。我们在两个公开的脑电图数据集上验证了推断出的图,证明学习到的图在指纹识别性能上优于基于相关性的功能连接组。本讲座概述了我们提出的方法和相关结果,并在芬兰赫尔辛基举行的 2023 年欧洲信号处理会议上做了介绍。该作品被评选为第二最佳学生论文;除演讲外,我们还在比赛中展示了海报,海报的部分内容可在本文中找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph learning from EEG data improves brain fingerprinting compared to correlation-based connectomes

A growing body of research in the past decade has revealed that functional interaction between brain regions entail subject-specific idiosyncrasies that are highly replicable. As such, functional connectivity patterns can be seen as an individual's brain fingerprint, enabling their identification within a population, in health and disease. The conventional method involves constructing the functional connectome by treating brain regions as vertices and utilizing pairwise measures of statistical dependence, such as Pearson's correlation coefficient, between the regional time-courses as edge weights. However, by focusing on EEG data in our study, we propose an alternative approach to learn a sparse graph structure from an individual's EEG data using principles from graph signal processing. The inferred subject-specific graphs encode subtle instantaneous spatial relations between the ensemble set of EEG electrodes in such way that EEG maps are seen as smooth functions residing on the graph. We validated the inferred graphs on two publicly available EEG datasets, demonstrating that the learned graphs outperform correlation-based functional connectomes in fingerprinting performance. This talk provides an overview of our proposed method and related results, which was presented at the 2023 European Signal Processing Conference in Helsinki, Finland. The work was selected as the second-best student paper; aside from the talk, a poster was presented as part of the contest, segments of which can be found as figures in the present article.

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