Eby Alexa L, Remedios Lucas W, Kim Michael E, Li Muwei, Gao Yurui, Gore John C, Schilling Kurt G, Landman Bennett A
Vanderbilt University, Nashville, TN.
Vanderbilt University Medical Center, Nashville, TN.
Proc SPIE Int Soc Opt Eng. 2024 Feb;12926. doi: 10.1117/12.3006231. Epub 2024 Apr 2.
White matter signals in resting state blood oxygen level dependent functional magnetic resonance (BOLD-fMRI) have been largely discounted, yet there is growing evidence that these signals are indicative of brain activity. Understanding how these white matter signals capture function can provide insight into brain physiology. Moreover, functional signals could potentially be used as early markers for neurological changes, such as in Alzheimer's Disease. To investigate white matter brain networks, we leveraged the OASIS-3 dataset to extract white matter signals from resting state BOLD-FMRI data on 711 subjects. The imaging was longitudinal with a total of 2,026 images. Hierarchical clustering was performed to investigate clusters of voxel-level correlations on the timeseries data. The stability of clusters was measured with the average Dice coefficients on two different cross fold validations. The first validated the stability between scans, and the second validated the stability between populations. Functional clusters at hierarchical levels 4, 9, 13, 18, and 24 had local maximum stability, suggesting better clustered white matter. In comparison with JHU-DTI-SS Type-I Atlas defined regions, clusters at lower hierarchical levels identified well-defined anatomical lobes. At higher hierarchical levels, functional clusters mapped motor and memory functional regions, identifying 50.00%, 20.00%, 27.27%, and 35.14% of the frontal, occipital, parietal, and temporal lobe regions respectively.
静息态血氧水平依赖性功能磁共振成像(BOLD-fMRI)中的白质信号在很大程度上被忽视了,但越来越多的证据表明这些信号指示着大脑活动。了解这些白质信号如何捕捉功能可以为大脑生理学提供见解。此外,功能信号有可能被用作神经学变化的早期标志物,比如在阿尔茨海默病中。为了研究白质脑网络,我们利用OASIS-3数据集从711名受试者的静息态BOLD-FMRI数据中提取白质信号。成像为纵向的,共有2026张图像。对时间序列数据进行层次聚类以研究体素级相关性的聚类。用两种不同交叉折叠验证的平均骰子系数来测量聚类的稳定性。第一次验证扫描之间的稳定性,第二次验证群体之间的稳定性。层次级别4、9、13、18和24的功能聚类具有局部最大稳定性,表明白质聚类更好。与JHU-DTI-SS I型图谱定义的区域相比,较低层次级别的聚类识别出了明确的解剖叶。在较高层次级别,功能聚类映射了运动和记忆功能区域,分别识别出额叶、枕叶、顶叶和颞叶区域的50.00%、20.00%、27.27%和35.14%。