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Reliability of graph analysis of resting state fMRI using test-retest dataset from the Human Connectome Project

机译:休息状态FMRI的曲线图分析的可靠性,使用了人类连接项目的测试 - RETEST数据集

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摘要

The exploration of brain networkswith resting-state fMRI (rs-fMRI) combined with graph theoretical approaches has become popular, with the perspective of finding network graphmetrics as biomarkers in the context of clinical studies. A preliminary requirement for such findings is to assess the reliability of the graph based connectivity metrics. In previous test-retest (TRT) studies, this reliability has been explored using intraclass correlation coefficient (ICC) with heterogeneous results. But the issue of sample size has not been addressed. Using the large TRT rs-fMRI dataset from the Human Connectome Project (HCP), we computed ICCs and their corresponding p-values (applying permutation and bootstrap techniques) and varied the number of subjects (from 20 to 100), the scan duration (from 400 to 1200 timepoints), the cost and the graphmetrics, using the Anatomic-Automatic Labelling (AAL) parcellation scheme. We quantified the reliability of the graph metrics computed both at global and regional level depending, at optimal cost, on two key parameters, the sample size and the number of time points or scan duration. In the cost range between 20% to 35%, most of the global graph metrics are reliable with 40 subjects or more with long scan duration (14 min 24 s). In large samples (for instance, 100 subjects), most global and regional graph metrics are reliable for a minimum scan duration of 7 min 14 s. Finally, for 40 subjects and long scan duration (14 min 24 s), the reliable regions are located in the main areas of the default mode network (DMN), the motor and the visual networks. (C) 2016 Elsevier Inc. All rights reserved.
机译:大脑网络休息状态FMRI(RS-FMRI)与图形理论方法相结合的探索已经流行,在临床研究中寻找网络图形测定作为生物标志物的视角。对此类发现的初步要求是评估基于图形的连接度量的可靠性。在先前的测试重新测试(TRT)研究中,使用具有异质结果的脑内相关系数(ICC)来探讨这种可靠性。但尚未解决样本规模的问题。使用来自人类连接项目(HCP)的大型TRT RS-FMRI数据集,我们计算了ICCS及其相应的P值(应用置换和引导技术),并改变对象的数量(从20到100),扫描持续时间(使用Anatomic-Automatic标记(AAL)局部方案,从400到1200时分),成本和图形测定器。我们量化了在全局和区域级别计算的图表度量的可靠性,根据最佳成本,在两个关键参数,样本大小和时间点或扫描持续时间内。在成本范围内的20%至35%之间,大多数全局图标准度数可靠,具有长扫描持续时间(14分24分)的40个或更多。在大型样品(例如,100个受试者)中,大多数全球和区域图标测量值可靠,最小扫描持续时间为7分14秒。最后,对于40个受试者和长扫描持续时间(14分24秒),可靠区域位于默认模式网络(DMN),电机和视觉网络的主要区域。 (c)2016 Elsevier Inc.保留所有权利。

著录项

  • 来源
    《NeuroImage》 |2016年第null期|共16页
  • 作者单位

    Univ Grenoble Alpes GIN F-38000 Grenoble France;

    CHU Grenoble Pole Rech F-38000 Grenoble France;

    Univ Grenoble Alpes GIN F-38000 Grenoble France;

    Univ Grenoble Alpes GIPSA Lab F-38000 Grenoble France;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 诊断学;
  • 关键词

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