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A longitudinal human phantom reliability study of multi-center T1-weighted, DTI, and resting state fMRI data

机译:多中心T1加权,DTI和休息状态FMRI数据的纵向人体幻像可靠性研究

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摘要

Multi-center MRI studies can enhance power, generalizability, and discovery for clinical neuroimaging research in brain disorders. Here, we sought to establish the utility of a clustering algorithm as an alternative to more traditional intra-class correlation coefficient approaches in a longitudinal multi-center human phantom study. We completed annual reliability scans on 'travelling human phantoms'. Acquisitions across sites were harmonized prospectively. Twenty-seven MRI sessions were available across four participants, scanned on five scanners, across three years. For each scan, three metrics were extracted: cortical thickness (CT), white matter fractional anisotropy (FA), and resting state functional connectivity (FC). For each metric, hierarchical clustering (Wards method) was performed. The cluster solutions were compared to participant and scanner using the adjusted Rand index (ARI). For all metrics, data clustered by participant rather than by scanner (ARI 0.8 comparing clusters to participants, ARI 0.2 comparing clusters to scanners). These results demonstrate that hierarchical clustering can reliably identify structural and functional scans from different participants imaged on different scanners across time. With increasing interest in data-driven approaches in psychiatric and neurologic brain imaging studies, our findings provide a framework for multi-center analytic approaches aiming to identify subgroups of participants based on brain structure or function.
机译:多中心MRI研究可以提高脑疾病临床神经影像研究的功率,普遍性和发现。在这里,我们试图建立聚类算法的效用作为纵向多中心人类幻影研究中更传统的类相关系数方法的替代方案。我们完成了“旅行人类幽灵”的年度可靠性扫描。跨地的收购正在前瞻性协调。四个参与者提供了二十七个MRI会议,在三年内扫描了五个扫描仪。对于每次扫描,提取三个度量:皮质厚度(CT),白质分数各向异性(FA),以及休息状态功能连接(FC)。对于每个度量标准,执行分层聚类(沃德方法)。使用调整后的rand指数(ARI)将群集解决方案与参与者和扫描仪进行比较。对于所有指标,通过参与者而不是扫描仪聚集的数据(ARI& 0.8将群集与参与者进行比较,ARI& 0.2将集群与扫描仪进行比较)。这些结果表明,分层聚类可以可靠地识别跨越不同扫描仪上成像的不同参与者的结构和功能扫描。随着对精神病和神经脑成像研究中的数据驱动方法的兴趣,我们的研究结果为基于大脑结构或功能来识别参与者的子组提供了多中心分析方法的框架。

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