Integrating digital gait data with metabolomics and clinical data to predict outcomes in Parkinson’s disease

Parkinson’s disease (PD) presents diverse symptoms and comorbidities, complicating its diagnosis and management. The primary objective of this cross-sectional, monocentric study was to assess digital gait sensor data’s utility for monitoring and diagnosis of motor and gait impairment in PD. As a sec...

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Veröffentlicht in:NPJ digital medicine 2024-09, Vol.7 (1), p.235-16, Article 235
Hauptverfasser: Brzenczek, Cyril, Klopfenstein, Quentin, Hähnel, Tom, Fröhlich, Holger, Glaab, Enrico
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Sprache:eng
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Zusammenfassung:Parkinson’s disease (PD) presents diverse symptoms and comorbidities, complicating its diagnosis and management. The primary objective of this cross-sectional, monocentric study was to assess digital gait sensor data’s utility for monitoring and diagnosis of motor and gait impairment in PD. As a secondary objective, for the more challenging tasks of detecting comorbidities, non-motor outcomes, and disease progression subgroups, we evaluated for the first time the integration of digital markers with metabolomics and clinical data. Using shoe-attached digital sensors, we collected gait measurements from 162 patients and 129 controls in a single visit. Machine learning models showed significant diagnostic power, with AUC scores of 83–92% for PD vs. control and up to 75% for motor severity classification. Integrating gait data with metabolomics and clinical data improved predictions for challenging-to-detect comorbidities such as hallucinations. Overall, this approach using digital biomarkers and multimodal data integration can assist in objective disease monitoring, diagnosis, and comorbidity detection.
ISSN:2398-6352
2398-6352
DOI:10.1038/s41746-024-01236-z