...
首页> 外文期刊>NeuroImage >Effective degrees of freedom of the Pearson's correlation coefficient under autocorrelation
【24h】

Effective degrees of freedom of the Pearson's correlation coefficient under autocorrelation

机译:在自相关下Pearson相关系数的有效自由度

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

The dependence between pairs of time series is commonly quantified by Pearson's correlation. However, if the time series are themselves dependent (i.e. exhibit temporal autocorrelation), the effective degrees of freedom (EDF) are reduced, the standard error of the sample correlation coefficient is biased, and Fisher's transformation fails to stabilise the variance. Since fMRI time series are notoriously autocorrelated, the issue of biased standard errors - before or after Fisher's transformation - becomes vital in individual-level analysis of resting-state functional connectivity (rsFC) and must be addressed anytime a standardised Z-score is computed. We find that the severity of autocorrelation is highly dependent on spatial characteristics of brain regions, such as the size of regions of interest and the spatial location of those regions. We further show that the available EDF estimators make restrictive assumptions that are not supported by the data, resulting in biased rsFC inferences that lead to distorted topological descriptions of the connectome on the individual level. We propose a practical "xDF" method that accounts not only for distinct autocorrelation in each time series, but instantaneous and lagged cross-correlation. We find the xDF correction varies substantially over node pairs, indicating the limitations of global EDF corrections used previously. In addition to extensive synthetic and real data validations, we investigate the impact of this correction on rsFC measures in data from the Young Adult Human Connectome Project, showing that accounting for autocorrelation dramatically changes fundamental graph theoretical measures relative to no correction.
机译:一对时间序列之间的依赖通常是通过Pearson的相关量量化的。然而,如果时间序列本身是依赖的(即表现时间自相关),则减少了有效的自由度(EDF),样品相关系数的标准误差偏置,并且Fisher的转换不能稳定方差。由于FMRI时间序列是臭名昭着的自相关的,因此Fisher转换之前或之后的偏见标准错误 - 在休息状态函数连接(RSFC)的个性级别分析中变得至关重要,并且必须在计算标准化的Z分数时解决。我们发现自相关的严重程度高度依赖于大脑区域的空间特征,例如感兴趣的区域的大小和这些区域的空间位置。我们进一步表明,可用的EDF估计器使得数据不支持的限制性假设,导致偏置RSFC推广,导致在各个级别对连接的扭曲拓扑描述。我们提出了一种实用的“XDF”方法,该方法不仅在每次序列中的不同自相关,而且瞬间和滞后的交叉相关。我们发现XDF校正基本上变化,节点对,表示先前使用的全局EDF校正的限制。除了广泛的合成和实际数据验证之外,我们还调查此更正对来自年轻成人人类连接项目数据中的RSFC措施的影响,表明自相关的核查显着地改变了相对于无校正的基本图形理论措施。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号