A4 Refereed article in a conference publication

Evaluating Effects of Resting-State Electroencephalography Data Pre-Processing on a Machine Learning Task for Parkinson's Disease




AuthorsVlieger, Robin; Daskalaki, Elena; Apthorp, Deborah; Lueck, Christian J.; Suominen, Hanna

EditorsBichel-Findlay, Jen;Otero, Paula; Scott, Philip; Huesing, Elaine

Conference nameWorld Congress on Medical and Health Informatics

Publication year2024

JournalStudies in Health Technology and Informatics

Book title MEDINFO 2023 - The Future Is Accessible: Proceedings of the 19th World Congress on Medical and Health Informatics

Journal name in sourceStudies in health technology and informatics

Journal acronymStud Health Technol Inform

Volume310

First page 1480

Last page1481

ISBN978-1-64368-456-7

eISBN978-1-64368-457-4

ISSN0926-9630

eISSN1879-8365

DOIhttps://doi.org/10.3233/SHTI231254

Web address https://ebooks.iospress.nl/doi/10.3233/SHTI231254

Self-archived copy’s web addresshttps://research.utu.fi/converis/portal/detail/Publication/387203582


Abstract
Resting-state electroencephalography pre-processing methods in machine learning studies into Parkinson's disease classification vary widely. Here three separate data sets were pre-processed to four different stages to investigate the effects on evaluation metrics, using power features from six regions-of-interest, Random Forest Classifiers for feature selection, and Support Vector Machines for classification. This showed muscle artefact inflated evaluation metrics, and alpha and theta band features produced the best results when fully pre-processing data.

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Funding information in the publication
This study was funded by Our Health in Our Hands, an initiative of the Australian National University, which aims to transform health care by developing new personalised health technologies and solutions. We gratefully acknowledge the funding from the ANU School of Computing for the first author’s PhD studies.


Last updated on 2024-28-11 at 12:03