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首页> 外文期刊>IEEE Transactions on Medical Imaging >Individual Resting-State Brain Networks Enabled by Massive Multivariate Conditional Mutual Information
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Individual Resting-State Brain Networks Enabled by Massive Multivariate Conditional Mutual Information

机译:各个休息状态大脑网络通过大规模多元条件相互信息启用

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摘要

Individual-level resting-state networks (RSNs) based on resting-state fMRI (rs-fMRI) are of great interest due to evidence that network dysfunction may underlie some diseases. Most current rs-fMRI analyses use linear correlation. Since correlation is a bivariate measure of association, it discards most of the information contained in the spatial variation of the thousands of hemodynamic signals within the voxels in a given brain region. Subject-specific functional RSNs using typical rs-fMRI data, are therefore dominated by indirect connections and loss of spatial information and can only deliver reliable connectivity after group averaging. While bivariate partial correlation can rule out indirect connections, it results in connectivity that is too sparse due to lack of sensitivity. We have developed a method that uses all the spatial variation information in a given parcel by employing a multivariate information-theoretic association measure based on canonical correlations. Our method, multivariate conditional mutual information (mvCMI) reliably constructs single-subject connectivity estimates showing mostly direct connections. Averaging across subjects is not needed. The method is applied to Human Connectome Project data and compared to diffusion MRI. The results are far superior to those obtained by correlation and partial correlation.
机译:基于休息状态FMRI(RSNS)的个性级休息状态网络(RSNS)由于网络功能障碍可能面临着一些疾病而具有巨大的兴趣。大多数当前RS-FMRI分析使用线性相关性。由于相关性是一体的关联测量,因此它丢弃了给定脑区域中体素内的数千个血液动力学信号的空间变化中所含的大多数信息。因此,使用典型的RS-FMRI数据的特定主题功能RSN是由间接连接和空间信息丢失的主导,并且只能在组平均后提供可靠的连接。虽然双相位相关可以排除间接连接,但它会导致连通性,这是由于缺乏灵敏度而太稀疏。我们开发了一种方法,该方法通过采用基于规范相关性的多变量信息 - 理论性关联度量来使用给定宗地中的所有空间变化信息。我们的方法,多变量条件互信息(MVCMI)可靠地构造单对象连接估计,显示主要是直接连接。不需要跨对象的平均值。该方法应用于人类连接项目数据并与扩散MRI进行比较。结果远远优于通过相关性和部分相关性得到的。

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