Document detail
ID

oai:arXiv.org:2408.00906

Topic
Computer Science - Machine Learnin... Computer Science - Artificial Inte...
Author
Neves, Christopher Zeng, Yong Xiao, Yiming
Category

Computer Science

Year

2024

listing date

8/7/2024

Keywords
using data parkinson disease learning eeg
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Abstract

Parkinson's disease (PD) is a debilitating neurodegenerative disease that has severe impacts on an individual's quality of life.

Compared with structural and functional MRI-based biomarkers for the disease, electroencephalography (EEG) can provide more accessible alternatives for clinical insights.

While deep learning (DL) techniques have provided excellent outcomes, many techniques fail to model spatial information and dynamic brain connectivity, and face challenges in robust feature learning, limited data sizes, and poor explainability.

To address these issues, we proposed a novel graph neural network (GNN) technique for explainable PD detection using resting state EEG.

Specifically, we employ structured global convolutions with contrastive learning to better model complex features with limited data, a novel multi-head graph structure learner to capture the non-Euclidean structure of EEG data, and a head-wise gradient-weighted graph attention explainer to offer neural connectivity insights.

We developed and evaluated our method using the UC San Diego Parkinson's disease EEG dataset, and achieved 69.40% detection accuracy in subject-wise leave-one-out cross-validation while generating intuitive explanations for the learnt graph topology.

;Comment: Accepted at MLCN 2024

Neves, Christopher,Zeng, Yong,Xiao, Yiming, 2024, Parkinson's Disease Detection from Resting State EEG using Multi-Head Graph Structure Learning with Gradient Weighted Graph Attention Explanations

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