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An information network flow approach for measuring functional connectivity and predicting behavior

机译:一种用于测量功能连接性和预测行为的信息网络流方法

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摘要

IntroductionConnectome‐based predictive modeling (CPM) is a recently developed machine‐learning‐based framework to predict individual differences in behavior from functional brain connectivity (FC). In these models, FC was operationalized as Pearson's correlation between brain regions’ fMRI time courses. However, Pearson's correlation is limited since it only captures linear relationships. We developed a more generalized metric of FC based on information flow. This measure represents FC by abstracting the brain as a flow network of nodes that send bits of information to each other, where bits are quantified through an information theory statistic called transfer entropy.
机译:简介基于Connectome的预测模型(CPM)是最近开发的基于机器学习的框架,用于预测功能性大脑连接(FC)的行为个体差异。在这些模型中,FC被作为Pearson在大脑区域的fMRI时间过程之间的相关性进行运算。但是,Pearson的相关性有限,因为它仅捕获线性关系。我们基于信息流开发了一种更为通用的FC指标。这项措施通过将大脑抽象为节点之间的流动网络来表示FC,该节点相互之间发送信息位,其中,这些位通过称为传输熵的信息理论统计量进行量化。

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