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Large-scale directed network inference with multivariate transfer entropy and hierarchical statistical testing

机译:具有多变量传递熵和分层统计检验的大规模定向网络推理

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摘要

Network inference algorithms are valuable tools for the study of large-scale neuroimaging datasets. Multivariate transfer entropy is well suited for this task, being a model-free measure that captures nonlinear and lagged dependencies between time series to infer a minimal directed network model. Greedy algorithms have been proposed to efficiently deal with high-dimensional datasets while avoiding redundant inferences and capturing synergistic effects. However, multiple statistical comparisons may inflate the false positive rate and are computationally demanding, which limited the size of previous validation studies. The algorithm we present—as implemented in the IDTxl open-source software—addresses these challenges by employing hierarchical statistical tests to control the family-wise error rate and to allow for efficient parallelization. The method was validated on synthetic datasets involving random networks of increasing size (up to 100 nodes), for both linear and nonlinear dynamics. The performance increased with the length of the time series, reaching consistently high precision, recall, and specificity (>98% on average) for 10,000 time samples. Varying the statistical significance threshold showed a more favorable precision-recall trade-off for longer time series. Both the network size and the sample size are one order of magnitude larger than previously demonstrated, showing feasibility for typical EEG and magnetoencephalography experiments.
机译:网络推理算法是研究大规模神经影像数据集的宝贵工具。多元传递熵非常适合此任务,它是一种无模型度量,可捕获时间序列之间的非线性和滞后依存关系,以推断出最小有向网络模型。已经提出了贪婪算法,以有效处理高维数据集,同时避免冗余推理并捕获协同效应。但是,多个统计比较可能会使假阳性率上升,并且在计算上要求很高,这限制了以前的验证研究的规模。我们提出的算法(在IDTxl开源软件中实现)通过采用分层统计测试来控制按族方式的错误率并允许有效的并行化来解决这些挑战。该方法在涉及线性和非线性动力学的,规模不断增加(最多100个节点)的随机网络的合成数据集上得到了验证。性能随时间序列的长度而增加,可对10,000个时间样本达到始终如一的高精度,召回率和特异性(平均> 98%)。改变统计显着性阈值显示出更长的时间序列更有利的精确召回折衷。网络规模和样本规模都比以前证明的大一个数量级,表明典型的脑电图和脑磁图实验的可行性。

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