Topological Feature Search Method for Multichannel EEG: Application in ADHD classification
Tianming Cai, Guoying Zhao, Junbin Zang, Chen Zong, Zhidong Zhang,, Chenyang Xue

TL;DR
This paper introduces an advanced topological data analysis method for multi-channel EEG to improve ADHD classification accuracy, addressing noise and variability issues inherent in EEG signals.
Contribution
The study develops a novel multi-channel TDA approach with optimized parameters, phase space reconstruction, and persistence diagram filtering, enhancing ADHD classification performance.
Findings
Achieved 78.27% accuracy in ADHD classification
Outperformed traditional TDA and nonlinear descriptors
Demonstrated higher robustness and precision
Abstract
In recent years, the preliminary diagnosis of ADHD using EEG has attracted the attention from researchers. EEG, known for its expediency and efficiency, plays a pivotal role in the diagnosis and treatment of ADHD. However, the non-stationarity of EEG signals and inter-subject variability pose challenges to the diagnostic and classification processes. Topological Data Analysis offers a novel perspective for ADHD classification, diverging from traditional time-frequency domain features. However, conventional TDA models are restricted to single-channel time series and are susceptible to noise, leading to the loss of topological features in persistence diagrams.This paper presents an enhanced TDA approach applicable to multi-channel EEG in ADHD. Initially, optimal input parameters for multi-channel EEG are determined. Subsequently, each channel's EEG undergoes phase space reconstruction…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Cell Image Analysis Techniques · Clusterin in disease pathology
