School of Biomedical Engineering, McMaster University, Hamilton, Ontario, Canada.
Department of Psychology Neuroscience & Behaviour, McMaster University, Hamilton, Ontario, Canada.
Hum Brain Mapp. 2021 Oct 15;42(15):4940-4957. doi: 10.1002/hbm.25590. Epub 2021 Jul 23.
There is a growing interest in examining the wealth of data generated by fusing functional and structural imaging information sources. These approaches may have clinical utility in identifying disruptions in the brain networks that underlie major depressive disorder (MDD). We combined an existing software toolbox with a mathematically dense statistical method to produce a novel processing pipeline for the fast and easy implementation of data fusion analysis (FATCAT-awFC). The novel FATCAT-awFC pipeline was then utilized to identify connectivity (conventional functional, conventional structural and anatomically weighted functional connectivy) changes in MDD patients compared to healthy comparison participants (HC). Data were acquired from the Canadian Biomarker Integration Network for Depression (CAN-BIND-1) study. Large-scale resting-state networks were assessed. We found statistically significant anatomically-weighted functional connectivity (awFC) group differences in the default mode network and the ventral attention network, with a modest effect size (d < 0.4). Functional and structural connectivity seemed to overlap in significance between one region-pair within the default mode network. By combining structural and functional data, awFC served to heighten or reduce the magnitude of connectivity differences in various regions distinguishing MDD from HC. This method can help us more fully understand the interconnected nature of structural and functional connectivity as it relates to depression.
人们越来越感兴趣地研究融合功能和结构成像信息源所产生的大量数据。这些方法在识别导致重度抑郁症(MDD)的大脑网络中断方面可能具有临床应用价值。我们将现有的软件工具箱与数学密集型统计方法相结合,为快速简便地实现数据融合分析(FATCAT-awFC)创建了一个新的处理管道。然后,我们利用新的 FATCAT-awFC 管道来识别 MDD 患者与健康对照参与者(HC)相比的连接(常规功能、常规结构和解剖加权功能连接)变化。数据来自加拿大抑郁生物标志物整合网络(CAN-BIND-1)研究。评估了大规模静息状态网络。我们发现默认模式网络和腹侧注意网络的解剖加权功能连接(awFC)存在统计学显著的组间差异,效应量较小(d < 0.4)。在默认模式网络内的一对区域之间,功能和结构连接在重要性上似乎存在重叠。通过结合结构和功能数据,awFC 有助于增强或减少区分 MDD 和 HC 的各个区域的连接差异的幅度。这种方法可以帮助我们更全面地了解与抑郁相关的结构和功能连接的相互关联性质。