Predicting Quality of Life in Parkinson’s Disease: A Machine Learning Approach Employing Common Clinical Variables

Author:

Magano Daniel12ORCID,Taveira-Gomes Tiago345ORCID,Massano João67ORCID,Barros António S.8ORCID

Affiliation:

1. Ph.D. Program in Health Data Science, Faculty of Medicine, University of Porto, 4200-319 Porto, Portugal

2. Medical Department, BIAL-Portela & Cª., S.A., 4745-457 São Mamede do Coronado, Portugal

3. Department of Community Medicine, Information and Decision in Health, Faculty of Medicine, University of Porto, 4200-319 Porto, Portugal

4. Faculty of Health Sciences, University Fernando Pessoa, 4200-150 Porto, Portugal

5. SIGIL Scientific Enterprises, 4076 Dubai, United Arab Emirates

6. Department of Clinical Neurosciences and Mental Health, Faculty of Medicine University of Porto, 4200-319 Porto, Portugal

7. Department of Neurology, Centro Hospitalar Universitário de São João, 4200-319 Porto, Portugal

8. Department of Surgery and Physiology, Cardiovascular R&D Centre-UnIC@RISE, Faculty of Medicine, University of Porto, 4200-319 Porto, Portugal

Abstract

Background: Parkinson’s Disease significantly impacts health-related quality of life, with the Parkinson’s Disease Questionnaire-39 extensively used for its assessment. However, predicting such outcomes remains a challenge due to the subjective nature and variability in patient experiences. This study develops a machine learning model using accessible clinical data to enable predictions of life-quality outcomes in Parkinson’s Disease and utilizes explainable machine learning techniques to identify key influencing factors, offering actionable insights for clinicians. Methods: Data from the Parkinson’s Real-world Impact Assessment study (PRISM), involving 861 patients across six European countries, were analyzed. After excluding incomplete data, 627 complete observations were used for the analysis. An ensemble machine learning model was developed with a 90% training and 10% validation split. Results: The model demonstrated a Mean Absolute Error of 4.82, a Root Mean Squared Error of 8.09, and an R2 of 0.75 in the training set, indicating a strong model fit. In the validation set, the model achieved a Mean Absolute Error of 11.22, a Root Mean Squared Error of 13.99, and an R2 of 0.36, showcasing moderate variation. Key predictors such as age at diagnosis, patient’s country, dementia, and patient’s age were identified, providing insights into the model’s decision-making process. Conclusions: This study presents a robust model capable of predicting the impact of Parkinson’s Disease on patients’ quality of life using common clinical variables. These results demonstrate the potential of machine learning to enhance clinical decision-making and patient care, suggesting directions for future research to improve model generalizability and applicability.

Funder

PhD Program in Health Data Science of the Faculty of Medicine of the University of Porto, Portugal, heads.med.up.pt

Publisher

MDPI AG

Reference30 articles.

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3. World Health Organization (2022). Parkinson Disease: A Public Health Approach, World Health Organization.

4. Clinical Approach to Parkinson’s Disease: Features, Diagnosis, and Principles of Management;Massano;Cold Spring Harb. Perspect. Med.,2012

5. Health Related Quality of Life in Parkinson’s Disease: A Systematic Review of Disease Specific Instruments;Marinus;J. Neurol. Neurosurg. Psychiatry,2002

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