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A Hierarchical Dirichlet Process Model with Multiple Levels of Clustering for Human EEG Seizure Modeling

机译:具有多级聚类的分层Dirichlet过程模型,用于人EEG癫痫发作建模

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Driven by the multi-level structure of human intracranial electroencephalogram (iEEG) recordings of epileptic seizures, we introduce a new variant of a hierarchical Dirichlet Process-the multi-level clustering hierarchical Dirichlet Process (MLC-HDP)-that simultaneously clusters datasets on multiple levels. Our seizure dataset contains brain activity recorded in typically more than a hundred individual channels for each seizure of each patient. The MLC-HDP model clusters over channels-types, seizure-types, and patient-types simultaneously. We describe this model and its implementation in detail. We also present the results of a simulation study comparing the MLC-HDP to a similar model, the Nested Dirichlet Process and finally demonstrate the MLC-HDP's use in modeling seizures across multiple patients. We find the MLC-HDP's clustering to be comparable to independent human physician clusterings. To our knowledge, the MLC-HDP model is the first in the epilepsy literature capable of clustering seizures within and between patients.
机译:由癫痫发作的人颅内脑电图(IEEG)记录的多级结构驱动,我们引入了分层DireChlet过程的新变种 - 多级聚类分层Dirichlet过程(MLC-HDP) - 该同时簇数水平。我们的癫痫发作数据集包含通常超过一百多个个人频道的大脑活动,每个患者的癫痫发作。 MLC-HDP模型同时通过通道类型,癫痫发作和患者类型进行群集。我们详细描述了该模型及其实施。我们还介绍了将MLC-HDP与类似模型进行比较的仿真研究的结果,嵌套的Dirichlet方法,最后演示了MLC-HDP在多个患者逐渐模拟癫痫发作中的用途。我们发现MLC-HDP的聚类与独立人类医师集群相当。为了我们的知识,MLC-HDP模型是癫痫文献中的第一部分,能够在患者内部和之间进行癫痫发作。

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