Abstract
AbstractThis study introduces PDMotion, a mobile application comprising 11 digital tests, including those adapted from the MDS-Unified Parkinson's Disease Rating Scale (MDS-UPDRS) Part III and novel assessments, for remote Parkinson's Disease (PD) motor symptoms evaluation. Employing machine learning techniques on data from 50 PD patients and 29 healthy controls, PDMotion achieves accuracies of 0.878 for PD status prediction and 0.715 for severity assessment. A post-hoc explanation model is employed to assess the importance of features and tasks in diagnosis and severity evaluation. Notably, novel tasks that are not adapted from MDS-UPDRS Part III like the circle drawing, coordination test, and alternative tapping test are found to be highly important, suggesting digital assessments for PD can go beyond digitizing existing tests. The alternative tapping test emerges as the most significant task. Using its features alone achieves prediction accuracies comparable to the full task set, underscoring its potential as an independent screening tool. This study addresses a notable research gap by digitalizing a wide array of tests, including novel ones, and conducting a comparative analysis of their feature and task importance. These insights provide guidance for task selection and future development in PD mobile assessments, a field previously lacking such comparative studies.
Publisher
Springer Science and Business Media LLC
Reference37 articles.
1. Dorsey, E. R. et al. Global, regional, and national burden of Parkinson’s disease, 1990–2016: A systematic analysis for the global burden of disease study 2016. Lancet Neurol. 17, 939–953 (2018).
2. Maserejian, N., Vinikoor-Imler, L. & Dilley, A. Estimation of the 2020 global population of Parkinson’s Disease (PD) [abstract]. Mov. Disord. 35(suppl 1), 198 (2020).
3. Chandra, J. et al. Screening of Parkinson’s disease using geometric features extracted from spiral drawings. Brain Sci. 11, 1297 (2021).
4. Aghanavesi, S., Nyholm, D., Senek, M., Bergquist, F. & Memedi, M. A smartphone-based system to quantify dexterity in Parkinson’s disease patients. Inform. Med. Unlocked 9, 11–17 (2017).
5. Pan, D., Dhall, R., Lieberman, A. & Petitti, D. B. A mobile cloud-based Parkinson’s disease assessment system for home-based monitoring. JMIR mHealth uHealth. 3(1), e29. https://doi.org/10.2196/mhealth.3956 (2015).