The use of event-related potentials and machine learning to improve diagnostic testing and prediction of disease progression in Parkinson's disease

Abstract

Current tests of disease status in Parkinson’s disease suffer from high variability, limiting their ability to determine disease severity and prognosis. Event-related potentials, in conjunction with machine learning, may provide a more objective assessment. In this study, we will use event-related potentials to develop machine learning models, aiming to provide an objective way to assess disease status and predict disease progression in Parkinson’s disease.

Publication
Studies in Health Technology and Informatics