Katrina Prantzalos, Dipak Upadhyaya, Nassim Shafiabadi, Guadalupe Fernandez-BacaVaca, Nick Gurski, Kenneth Yoshimoto, Subhashini Sivagnanam, Amitava Majumdar, Satya S Sahoo
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引用次数: 0
摘要
拓扑数据分析(TDA)与机器学习(ML)算法相结合,是研究癫痫等神经系统疾病中复杂的大脑交互模式的有力方法。然而,使用 ML 算法和 TDA 分析异常大脑交互需要大量的计算领域知识和纯数学知识。为了降低临床和计算神经科学研究人员有效使用 ML 算法和 TDA 研究神经系统疾病的门槛,我们推出了一个名为 MaTiLDA 的集成网络平台。MaTiLDA 是第一个能让用户直观地使用 TDA 方法和 ML 模型来描述从神经生理学信号数据(如常规临床实践中记录的脑电图)中得出的交互模式的工具。MaTiLDA 支持持续同源性等 TDA 方法,可使用 ML 模型对信号数据进行分类,从而深入了解神经系统疾病中复杂的大脑交互模式。通过分析难治性癫痫患者的高分辨率颅内脑电图,我们展示了 MaTiLDA 的实际应用,以描述癫痫发作向不同脑区传播的不同阶段。MaTiLDA平台的网址是:https://bmhinformatics.case.edu/nicworkflow/MaTiLDA。
MaTiLDA: An Integrated Machine Learning and Topological Data Analysis Platform for Brain Network Dynamics.
Topological data analysis (TDA) combined with machine learning (ML) algorithms is a powerful approach for investigating complex brain interaction patterns in neurological disorders such as epilepsy. However, the use of ML algorithms and TDA for analysis of aberrant brain interactions requires substantial domain knowledge in computing as well as pure mathematics. To lower the threshold for clinical and computational neuroscience researchers to effectively use ML algorithms together with TDA to study neurological disorders, we introduce an integrated web platform called MaTiLDA. MaTiLDA is the first tool that enables users to intuitively use TDA methods together with ML models to characterize interaction patterns derived from neurophysiological signal data such as electroencephalogram (EEG) recorded during routine clinical practice. MaTiLDA features support for TDA methods, such as persistent homology, that enable classification of signal data using ML models to provide insights into complex brain interaction patterns in neurological disorders. We demonstrate the practical use of MaTiLDA by analyzing high-resolution intracranial EEG from refractory epilepsy patients to characterize the distinct phases of seizure propagation to different brain regions. The MaTiLDA platform is available at: https://bmhinformatics.case.edu/nicworkflow/MaTiLDA.