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Data-driven estimation of mutual information using frequency domain and its application to epilepsy

机译:频域数据驱动的互信息估计及其在癫痫中的应用

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We consider the problem of estimating mutual information between dependent data, an important problem in many science and engineering applications. We propose a data-driven estimator of mutual information in this paper. The main novelty of our solution lies in transforming the data to frequency domain to make the problem tractable. We define a novel metric-mutual information in frequency (Ml-in-frequency)-to detect and quantify the dependence between two random processes across frequency using Cramer's spectral representation. Our solution calculates mutual information as a function of frequency to estimate the mutual information between the dependent data over time and validate its performance on linear and nonlinear models. We then use our MI-in-frequency metric to infer the cross-frequency coupling during epileptic seizures, by analyzing electrocorticographic recordings from a total of eleven seizures in four medial temporal lobe epilepsy patients.
机译:我们考虑估计依赖数据之间的相互信息的问题,这是许多科学和工程应用程序中的重要问题。我们在本文中提出了一种数据驱动的互信息估计器。我们解决方案的主要新颖之处在于将数据转换到频域以使问题易于解决。我们定义了一种新颖的频率互斥信息(频率互斥),以使用Cramer频谱表示法检测和量化整个频率范围内两个随机过程之间的相关性。我们的解决方案根据频率计算互信息,以估计随时间变化的相关数据之间的互信息,并验证其在线性和非线性模型上的性能。然后,我们通过分析4位颞叶内侧癫痫患者总共11次癫痫发作的电皮质记录,来使用我们的MI频率指标来推断癫痫发作期间的跨频耦合。

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