Improvement of Resting-state EEG Analysis Process with Spectrum Weight-Voting based on LES
Yumeng Ye, Haichun Liu, TianHong Zhang, Changchun Pan, Genke Yang,, JiJun Wang, Robert C. Qiu

TL;DR
This paper introduces a spectrum weight-voting method based on LES for EEG analysis, improving classification accuracy of schizophrenia phases by emphasizing influential frequency bands and aiding psychopathology studies.
Contribution
It proposes a novel weight-voting approach to determine band influence in EEG classification, enhancing accuracy and interpretability in schizophrenia phase detection.
Findings
High correlation between low gamma band weights and schizophrenia phases
Revised features based on weights improve classification accuracy
Band weight distribution aids in understanding schizophrenia risk factors
Abstract
EEG is a non-invasive technique for recording brain bioelectric activity, which has potential applications in various fields such as human-computer interaction and neuroscience. However, there are many difficulties in analyzing EEG data, including its complex composition, low amplitude as well as low signal-to-noise ratio. Some of the existing methods of analysis are based on feature extraction and machine learning to differentiate the phase of schizophrenia that samples belong to. However, medical research requires the use of machine learning not only to give more accurate classification results, but also to give the results that can be applied to pathological studies. The main purpose of this study is to obtain the weight values as the representation of influence of each frequency band on the classification of schizophrenia phases on the basis of a more effective classification method…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Functional Brain Connectivity Studies · Neural dynamics and brain function
