Computer Science Department, University of Alabama at Birmingham, Birmingham, Alabama, USA.
Department of Electrical and Computer Engineering, AU MRI Research Center, Auburn University, Alabama, USA.
Hum Brain Mapp. 2023 Sep;44(13):4637-4651. doi: 10.1002/hbm.26403. Epub 2023 Jul 14.
There is increasing interest in investigating brain function based on functional connectivity networks (FCN) obtained from resting-state functional magnetic resonance imaging (fMRI). FCNs, typically obtained using measures of time series association such as Pearson's correlation, are sensitive to data acquisition parameters such as sampling period. This introduces non-neural variability in data pooled from different acquisition protocols and MRI scanners, negating the advantages of larger sample sizes in pooled data. To address this, we hypothesize that the topology or shape of brain networks must be preserved irrespective of how densely it is sampled, and metrics which capture this topology may be statistically similar across sampling periods, thereby alleviating this source of non-neural variability. Accordingly, we present an end-to-end pipeline that uses persistent homology (PH), a branch of topological data analysis, to demonstrate similarity across FCNs acquired at different temporal sampling periods. PH, as a technique, extracts topological features by capturing the network organization across all continuous threshold values, as opposed to graph theoretic methods, which fix a discrete network topology by thresholding the connectivity matrix. The extracted topological features are encoded in the form of persistent diagrams that can be compared against one another using the earth-moving metric, also popularly known as the Wasserstein distance. We extract topological features from three data cohorts, each acquired at different temporal sampling periods and demonstrate that these features are statistically the same, hence, empirically showing that PH may be robust to changes in data acquisition parameters such as sampling period.
人们越来越感兴趣的是基于静息态功能磁共振成像(fMRI)获得的功能连接网络(FCN)来研究大脑功能。FCN 通常使用时间序列关联的度量方法(如 Pearson 相关系数)获得,对数据采集参数(如采样周期)敏感。这会给从不同采集协议和 MRI 扫描仪中汇集的数据带来非神经变异性,从而否定了在汇集数据中使用更大样本量的优势。为了解决这个问题,我们假设无论采样密度如何,脑网络的拓扑结构或形状都必须保持不变,并且捕获这种拓扑结构的度量标准在采样期间可能在统计学上是相似的,从而减轻这种非神经变异性的来源。因此,我们提出了一个端到端的管道,使用持久同调(PH),一种拓扑数据分析的分支,来证明不同时间采样周期下获得的 FCN 之间的相似性。PH 作为一种技术,通过捕获整个连续阈值下的网络组织来提取拓扑特征,而不是图论方法,后者通过对连接矩阵进行阈值处理来固定离散的网络拓扑结构。提取的拓扑特征以持久图的形式编码,可以使用流行的称为 Wasserstein 距离的移动地球度量来相互比较。我们从三个不同时间采样周期采集的数据集中提取拓扑特征,并证明这些特征在统计学上是相同的,因此,经验表明 PH 可能对数据采集参数(如采样周期)的变化具有鲁棒性。