Evaluation of Parkinsons disease with early diagnosis using single-channel EEG features and auditory cognitive assessment
Lior Molcho, Neta B. Maimon, Neomi Hezi, Talya Zeimer, Nathan, Intrator, Tanya Gurevich

TL;DR
This study investigates a noninvasive, low-cost EEG-based method combined with auditory cognitive assessment and machine learning to support early Parkinson's disease diagnosis, showing promising results in distinguishing PD from healthy controls.
Contribution
It introduces a novel approach using single-channel EEG features and ML to differentiate PD patients from controls, potentially aiding early diagnosis.
Findings
EEG features A0 and Delta band significantly differentiate PD from controls
Machine learning model accurately predicts F-DOPA PET results
Resting state EEG activity differs between PD and healthy subjects
Abstract
Parkinsons disease (PD) diagnosis is challenging due to subtle early clinical signs. F-DOPA PET is commonly used for early PD diagnosis. We explore the potential of machine-learning (ML) based EEG features extracted from single-channel EEG during auditory cognitive assessment as a noninvasive, low-cost support for PD diagnosis. The study included data collected from 32 participants who underwent an F-DOPA PET scan as part of their standard treatment and 20 cognitively healthy controls. Participants performed an auditory cognitive assessment recorded with Neurosteer EEG device. Data processing involved wavelet-packet decomposition and ML. First, a prediction model was developed to predict 1/3 of the undisclosed F-DOPA results. Then, generalized linear mixed models were calculated to distinguish between PD and non-PD subjects on the frequency bands and ML-based EEG features (A0 and L1)…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · ECG Monitoring and Analysis · Neural dynamics and brain function
