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Published in: BMC Neurology 1/2021

Open Access 01-12-2021 | Tremor | Research article

Accelerating diagnosis of Parkinson’s disease through risk prediction

Authors: William Yuan, Brett Beaulieu-Jones, Richard Krolewski, Nathan Palmer, Christine Veyrat-Follet, Francesca Frau, Caroline Cohen, Sylvie Bozzi, Meaghan Cogswell, Dinesh Kumar, Catherine Coulouvrat, Bruno Leroy, Tanya Z. Fischer, S. Pablo Sardi, Karen J. Chandross, Lee L. Rubin, Anne-Marie Wills, Isaac Kohane, Scott L. Lipnick

Published in: BMC Neurology | Issue 1/2021

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Abstract

Background

Characterization of prediagnostic Parkinson’s Disease (PD) and early prediction of subsequent development are critical for preventive interventions, risk stratification and understanding of disease pathology. This study aims to characterize the role of the prediagnostic period in PD and, using selected features from this period as novel interception points, construct a prediction model to accelerate the diagnosis in a real-world setting.

Methods

We constructed two sets of machine learning models: a retrospective approach highlighting exposures up to 5 years prior to PD diagnosis, and an alternative model that prospectively predicted future PD diagnosis from all individuals at their first diagnosis of a gait or tremor disorder, these being features that appeared to represent the initiation of a differential diagnostic window.

Results

We found many novel features captured by the retrospective models; however, the high accuracy was primarily driven from surrogate diagnoses for PD, such as gait and tremor disorders, suggesting the presence of a distinctive differential diagnostic period when the clinician already suspected PD. The model utilizing a gait/tremor diagnosis as the interception point, achieved a validation AUC of 0.874 with potential time compression to a future PD diagnosis of more than 300 days. Comparisons of predictive diagnoses between the prospective and prediagnostic cohorts suggest the presence of distinctive trajectories of PD progression based on comorbidity profiles.

Conclusions

Overall, our machine learning approach allows for both guiding clinical decisions such as the initiation of neuroprotective interventions and importantly, the possibility of earlier diagnosis for clinical trials for disease modifying therapies.
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Metadata
Title
Accelerating diagnosis of Parkinson’s disease through risk prediction
Authors
William Yuan
Brett Beaulieu-Jones
Richard Krolewski
Nathan Palmer
Christine Veyrat-Follet
Francesca Frau
Caroline Cohen
Sylvie Bozzi
Meaghan Cogswell
Dinesh Kumar
Catherine Coulouvrat
Bruno Leroy
Tanya Z. Fischer
S. Pablo Sardi
Karen J. Chandross
Lee L. Rubin
Anne-Marie Wills
Isaac Kohane
Scott L. Lipnick
Publication date
01-12-2021
Publisher
BioMed Central
Published in
BMC Neurology / Issue 1/2021
Electronic ISSN: 1471-2377
DOI
https://doi.org/10.1186/s12883-021-02226-4

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