Improved clustering Of spike patterns through video segmentation and motion analysis of micro electrocorticographic data

Bugra Akyildiz, Yilin Song, J. Viventi, Yao Wang
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引用次数: 3

Abstract

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 seizure data produced by these devices have not yet been developed. This paper examines a series of segmentation, feature extraction, and unsupervised clustering methods for interictal and itcal spike segmentation and spike pattern clustering. We first applied advanced video analysis techniques (particularly region growing and motion analysis) for spike segmentation and feature extraction. Then we examined the effectiveness of several different clustering methods for identifying natural clusters of the spike patterns using different features. These methdos have been applied to in-vivo feline seizure recordings. Based on both the similarity with a human clustering result and on the ratio of the intra-cluster vs. inter-cluster correlations, we found the best results by clustering using a Dirichlet Process Mixture Model on the correlation matrix of the spikes extracted using video segmentation. Effective clustering of spike patterns and subsequent analysis of the temporal variation of the spike pattern is an important step towards understanding how seizures initiate, progress and terminate.
通过视频分割和微皮质电图数据的运动分析改进了脉冲模式的聚类
我们已经开发出灵活的、有源的、多路复用的记录设备,用于对大脑中与临床相关的大区域进行高分辨率记录。虽然这项技术已经能够对大脑的电活动进行更高分辨率的观察,但对这些设备产生的大量癫痫发作数据进行处理、分类和响应的分析方法还没有开发出来。本文研究了一系列的分割、特征提取和无监督聚类方法,用于间隔和临界尖峰分割和尖峰模式聚类。我们首先应用先进的视频分析技术(特别是区域增长和运动分析)进行尖峰分割和特征提取。然后,我们研究了几种不同的聚类方法的有效性,用于识别使用不同特征的穗状图案的自然簇。这些方法已被应用于猫体内癫痫发作的记录。基于与人类聚类结果的相似性以及聚类内与聚类间相关性的比率,我们发现使用Dirichlet过程混合模型对视频分割提取的峰值相关矩阵进行聚类的结果最好。对尖峰模式的有效聚类和随后对尖峰模式的时间变化的分析是理解癫痫发作如何开始、进展和终止的重要一步。
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