Publication: Parkinson's Disease Severity at 3 Years Can Be Predicted from Non-Motor Symptoms at Baseline
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Date
2017-10-30
Authors
Ayala, Alba
Matias Trivino-Juarez, Jose
Joao Forjaz, Maria
Rodriguez-Blazquez, Carmen
Rojo-Abuin, Jose-Manuel
Martinez-Martin, Pablo
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Frontiers media sa
Abstract
Objective: The aim of this study is to present a predictive model of Parkinson's disease (PD) global severity, measured with the Clinical Impression of Severity Index for Parkinson's Disease (CISI-PD).Methods: This is an observational, longitudinal study with annual follow-up assessments over 3 years (four time points). A multilevel analysis and multiple imputation techniques were performed to generate a predictive model that estimates changes in the CISI-PD at 1, 2, and 3 years.Results: The clinical state of patients (CISI-PD) significantly worsened in the 3-year follow-up. However, this change was of small magnitude (effect size: 0.44). The following baseline variables were significant predictors of the global severity change: baseline global severity of disease, levodopa equivalent dose, depression and anxiety symptoms, autonomic dysfunction, and cognitive state. The goodness-of-fit of the model was adequate, and the sensitive analysis showed that the data imputation method applied was suitable.Conclusion: Disease progression depends more on the individual's baseline characteristics than on the 3-year time period. Results may contribute to a better understanding of the evolution of PD including the non-motor manifestations of the disease.
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Keywords
Parkinson's disease, disease global severity, predictive model, multilevel analysis, multiple imputation, Quality-of-life, Psychosis rating-scale, Psychometric attributes, Multiple imputation, Sydney multicenter, Prognostic-factors, Hospital anxiety, Progression, Motor, Depression