切线空间脑网络功能连接体指纹识别的有效性。

IF 3.6 3区 医学 Q2 NEUROSCIENCES
Network Neuroscience Pub Date : 2025-04-30 eCollection Date: 2025-01-01 DOI:10.1162/netn_a_00445
Davor Curic, Sudhanva Kalasapura Venugopal Krishna, Jörn Davidsen
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引用次数: 0

摘要

功能性连接体(Functional connectome, fc)是对脑活动中脑区域相互作用的估计,通常来自功能性磁共振成像记录。量化fc之间的距离对于理解行为、障碍、疾病和连通性变化之间的关系非常重要。最近,考虑FC数学空间曲率的切空间投影被提出用于计算FC距离。为了研究静息状态和基于任务的受试者判别性,我们使用Midnight Scan Club数据集比较了该方法与传统方法在受试者识别背景下的有效性。发现切空间法普遍优于传统方法。我们还关注了子网的主题识别效能。某些子网被发现优于其他子网,这种二分法在很大程度上遵循静息状态网络的“控制”和“处理”分类,并将子网灵活性与主体可辨别性联系起来。虽然某些子网看起来与任务无关,但识别效率也受到任务的调节。数据集的唯一长记录也允许探索有效主题识别的资源需求。人们发现切空间方法通常需要较少的数据,这使得它非常适合只有短记录可用的情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficacy of functional connectome fingerprinting using tangent-space brain networks.

Functional connectomes (FCs) are estimations of brain region interaction derived from brain activity, often obtained from functional magnetic resonance imaging recordings. Quantifying the distance between FCs is important for understanding the relation between behavior, disorders, disease, and changes in connectivity. Recently, tangent space projections, which account for the curvature of the mathematical space of FCs, have been proposed for calculating FC distances. We compare the efficacy of this approach relative to the traditional method in the context of subject identification using the Midnight Scan Club dataset in order to study resting-state and task-based subject discriminability. The tangent space method is found to universally outperform the traditional method. We also focus on the subject identification efficacy of subnetworks. Certain subnetworks are found to outperform others, a dichotomy that largely follows the "control" and "processing" categorization of resting-state networks, and relates subnetwork flexibility with subject discriminability. Identification efficacy is also modulated by tasks, though certain subnetworks appear task independent. The uniquely long recordings of the dataset also allow for explorations of resource requirements for effective subject identification. The tangent space method is found to universally require less data, making it well suited when only short recordings are available.

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来源期刊
Network Neuroscience
Network Neuroscience NEUROSCIENCES-
CiteScore
6.40
自引率
6.40%
发文量
68
审稿时长
16 weeks
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