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Seizure detection and prediction through clustering and temporal analysis of micro electrocorticographic data

机译:通过微电压数据的聚类和时间分析抓取检测和预测

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We have developed flexible, active, multiplexed recording devices for high resolution recording over large, clinically relevant areas in the brain. While this technology has enabled a much higher-resolution view of the electrical activity of the brain, the analytical methods to process, categorize and respond to the huge volumes of data produced by these devices have not yet been developed. In our previous work, we applied advanced video analysis techniques to segment electrographic spikes, extracted features from the identified segments, and then used clustering methods (particularly Dirichlet Process Mixture models) to group similar spatiotemporal spike patterns. From this analysis, we were able to identify common spike motion patterns. In this paper, we explored the possibility of detecting and predicting seizures in this dataset using the Hidden Markov Model (HMM) to characterize the temporal dynamics of spike cluster labels. HMM and other supervised learning methods are united under the same framework to perform seizure detection and prediction. These methods have been applied to in-vivo feline seizure recordings and yielded promising results.
机译:我们开发了灵活,有效,多路复用的记录设备,可用于大脑中大型临床相关区域的高分辨率录制。虽然这项技术使大脑电气活动的高分辨率视图,但尚未开发出处理,分类和响应这些设备产生的大量数据的分析方法。在我们以前的工作中,我们将高级视频分析技术应用于分段电尺寸,从识别的段中提取的特征,然后使用聚类方法(特别是Dirichlet Process混合物模型)来分组类似的时空尖峰图案。从这个分析中,我们能够识别共同的尖峰运动模式。在本文中,我们探讨了使用隐马尔可夫模型(HMM)来对该数据集进行检测和预测癫痫发作的可能性,以表征Spike Cluster标签的时间动态。在同一框架下,嗯和其他受监督的学习方法是为了执行癫痫发作检测和预测。这些方法已被应用于体内猫的癫痫发作记录,并产生了有希望的结果。

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