Article (Scientific journals)
Integrating digital gait sensor data with metabolomics and clinical data to predict clinically relevant outcomes in Parkinson's disease
Brzenczek, C.; Klopfenstein, Q.; Hähnel, T. et al.
2024In npj Digital Medicine, 7 (235)
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Keywords :
Parkinson’s disease; Gait analysis; Metabolomics; Machine learning; Predictive modeling; Digital biomarkers
Abstract :
[en] 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.
Research center :
Luxembourg Centre for Systems Biomedicine (LCSB): Biomedical Data Science (Glaab Group)
Disciplines :
Neurology
Life sciences: Multidisciplinary, general & others
Human health sciences: Multidisciplinary, general & others
Biotechnology
Author, co-author :
Brzenczek, C.
Klopfenstein, Q.
Hähnel, T.
Fröhlich, H.
GLAAB, Enrico  ;  University of Luxembourg > Luxembourg Centre for Systems Biomedicine (LCSB) > Biomedical Data Science
External co-authors :
yes
Language :
English
Title :
Integrating digital gait sensor data with metabolomics and clinical data to predict clinically relevant outcomes in Parkinson's disease
Publication date :
2024
Journal title :
npj Digital Medicine
eISSN :
2398-6352
Volume :
7
Issue :
235
Peer reviewed :
Peer Reviewed verified by ORBi
Focus Area :
Systems Biomedicine
Development Goals :
3. Good health and well-being
FnR Project :
R-AGR-3931 - INTER/ERAPerMed 20/14599012/DIGIPD - GLAAB Enrico
Name of the research project :
R-AGR-3931 - INTER/ERAPerMed 20/14599012/DIGIPD - GLAAB Enrico
Funders :
FNR - Fonds National de la Recherche
Funding number :
INTER/ERAPerMed 20/14599012/DIGIPD
Funding text :
We acknowledge funding support by the Luxembourg National Research Fund (FNR) as part of the National Centre for Excellence in Research on Parkinson’s disease (NCER-PD, grant no. FNR/NCER13/BM/11264123), the project PreDYT (INTER/EJPRD22l1/7027921/ PreDYT), the project RECAST (INTER/22/17104370/RECAST), and for the project DIGIPD (INTER/ERAPerMed20/14599012) as part of the European Union’s Horizon 2020 Programme for Research and Innovation.
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since 28 August 2024

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