脑状态分类的贝叶斯拓扑学习

Farzana Nasrin, Christopher Oballe, D. Boothe, V. Maroulas
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引用次数: 11

摘要

通过脑电图(EEG)信号来研究人脑状态是人机通信的关键步骤。然而,由于脑电信号具有噪声、非线性和非平稳的特点,对其进行分类和分析是一项具有挑战性的工作。目前用于分析这些信号的方法往往不足,因为它们包含了几个规律性假设。这项工作提供了一种有效、灵活和抗噪声的方案,通过提取相关信息来分析脑电图,同时遵守数据的3N(噪声、非线性和非平稳)性质。我们实现了一种拓扑工具,即持久同源性,它跟踪拓扑特征随时间间隔的演变,并通过贝叶斯框架计算后验分布,将个体的期望作为先验知识纳入其中。基于这些后验分布,我们将贝叶斯因子分类应用于有噪声的脑电测量。然后将该贝叶斯分类方案的性能与其他现有的脑电信号分类方法进行了比较。
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Bayesian Topological Learning for Brain State Classification
Investigation of human brain states through electroencephalograph (EEG) signals is a crucial step in human-machine communications. However, classifying and analyzing EEG signals are challenging due to their noisy, nonlinear and nonstationary nature. Current methodologies for analyzing these signals often fall short because they have several regularity assumptions baked in. This work provides an effective, flexible and noise-resilient scheme to analyze EEG by extracting pertinent information while abiding by the 3N (noisy, nonlinear and nonstationary) nature of data. We implement a topological tool, namely persistent homology, that tracks the evolution of topological features over time intervals and incorporates individual's expectations as prior knowledge by means of a Bayesian framework to compute posterior distributions. Relying on these posterior distributions, we apply Bayes factor classification to noisy EEG measurements. The performance of this Bayesian classification scheme is then compared with other existing methods for EEG signals.
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