Center for Vital Longevity and School of Behavioral and Brain Sciences, University of Texas at Dallas, Dallas, TX 75235, United States.
Department of Psychiatry, University of Texas Southwestern Medical Center, Dallas, TX 75390, United States.
Cereb Cortex. 2024 Jan 31;34(2). doi: 10.1093/cercor/bhad506.
Measures of functional brain network segregation and integration vary with an individual's age, cognitive ability, and health status. Based on these relationships, these measures are frequently examined to study and quantify large-scale patterns of network organization in both basic and applied research settings. However, there is limited information on the stability and reliability of the network measures as applied to functional time-series; these measurement properties are critical to understand if the measures are to be used for individualized characterization of brain networks. We examine measurement reliability using several human datasets (Midnight Scan Club and Human Connectome Project [both Young Adult and Aging]). These datasets include participants with multiple scanning sessions, and collectively include individuals spanning a broad age range of the adult lifespan. The measurement and reliability of measures of resting-state network segregation and integration vary in relation to data quantity for a given participant's scan session; notably, both properties asymptote when estimated using adequate amounts of clean data. We demonstrate how this source of variability can systematically bias interpretation of differences and changes in brain network organization if appropriate safeguards are not included. These observations have important implications for cross-sectional, longitudinal, and interventional comparisons of functional brain network organization.
大脑功能网络的分离和整合的度量标准随个体的年龄、认知能力和健康状况而变化。基于这些关系,这些度量标准经常被用于研究和量化基础和应用研究环境中网络组织的大规模模式。然而,关于这些应用于功能时间序列的网络度量的稳定性和可靠性的信息有限;如果要将这些度量用于大脑网络的个体化特征描述,则这些测量特性至关重要。我们使用几个人类数据集(午夜扫描俱乐部和人类连接组计划[包括年轻成人和老龄化])来检查测量的可靠性。这些数据集包括多个扫描会话的参与者,并且集体包括跨越成年生命周期的广泛年龄范围的个体。对于给定参与者的扫描会话,静息态网络分离和整合的度量的测量和可靠性与数据量有关;值得注意的是,当使用足够数量的清洁数据进行估计时,这两个特性都会渐近。我们展示了如果不包含适当的保护措施,这种可变性源如何系统地影响对大脑网络组织差异和变化的解释。这些观察结果对功能大脑网络组织的横断面、纵向和干预性比较具有重要意义。