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Test–Retest Reliability of Computational Network Measurements Derived from the Structural Connectome of the Human Brain

机译:从人脑的结构连接体得出的计算网络测量的重测可靠性

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摘要

Structural magnetic resonance (MR) connectomics holds promise for the diagnosis, outcome prediction, and treatment monitoring of many common neurodevelopmental, psychiatric, and neurodegenerative disorders for which there is currently no clinical utility for MR imaging (MRI). Before computational network metrics from the human connectome can be applied in a clinical setting, their precision and their normative intersubject variation must be understood to guide the study design and the interpretation of longitudinal data. In this work, the reproducibility of commonly used graph theoretic measures is investigated, as applied to the structural connectome of healthy adult volunteers. Two datasets are examined, one consisting of 10 subjects scanned twice at one MRI facility and one consisting of five subjects scanned once each at two different facilities using the same imaging platform. Global graph metrics are calculated for unweighed and weighed connectomes, and two levels of granularity of the connectome are evaluated: one based on the 82-node cortical and subcortical parcellation from FreeSurfer and one based on an atlas-free parcellation of the gray–white matter boundary consisting of 1000 cortical nodes. The consistency of the unweighed and weighed edges and the module assignments are also computed for the 82-node connectomes. Overall, the results demonstrate good-to-excellent test–retest reliability for the entire connectome-processing pipeline, including the graph analytics, in both the intrasite and intersite datasets. These findings indicate that measurements of computational network metrics derived from the structural connectome have sufficient precision to be tested as potential biomarkers for diagnosis, prognosis, and monitoring of interventions in neurological and psychiatric diseases.
机译:结构磁共振(MR)连接组学有望用于许多常见的神经发育,精神病和神经退行性疾病的诊断,结果预测和治疗监测,而对于这些疾病,目前磁共振成像(MRI)尚无临床用途。在将来自人类连接体的计算网络指标应用于临床之前,必须了解其精度及其规范的受试者间差异,以指导研究设计和纵向数据的解释。在这项工作中,研究了适用于健康成人志愿者的结构连接体的常用图论度量的可重复性。检查了两个数据集,其中一个由10个对象组成,在一个MRI设施中扫描两次,一个由五个对象组成,每个对象在两个不同的设施中使用同一成像平台扫描一次。计算未称重和称重的连接体的全局图形度量,并评估连接体的两个粒度级别:一个基于FreeSurfer的82节点皮质和皮层下细胞分裂,另一个基于灰白色物质的无图集细胞分裂由1000个皮质节点组成的边界。还为82个节点的连接组计算了未称重和称重边缘的一致性以及模块分配。总体而言,结果表明,站点内和站点间数据集的整个连接组处理管道(包括图形分析)的测试重测可靠性都达到了出色。这些发现表明,源自结构连接体的计算网络指标的测量具有足够的精度,可以作为神经,精神疾病的干预措施的诊断,预后和监测的潜在生物标志物进行测试。

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