Web of Science: 69 citas, Scopus: 73 citas, Google Scholar: citas,
Harnessing Real-World Data to Inform Decision-Making : Multiple Sclerosis Partners Advancing Technology and Health Solutions (MS PATHS)
Mowry, Ellen M. (Johns Hopkins University)
Bermel, Robert (Cleveland Clinic)
Williams, James R. (Biogen)
Benzinger, Tammie L. S. (Washington University in St. Louis)
de Moor, Carl (Biogen)
Fisher, Elizabeth (Biogen)
Hersh, Carrie M. (Cleveland Clinic Lou Ruvo Center for Brain Health)
Hyland, Megan H. (University of Rochester Medical Center)
Izbudak, Izlem (Johns Hopkins University)
Jones, Stephen E. (Cleveland Clinic)
Kieseier, Bernd C. (Biogen)
Kitzler, Hagen H. (University Clinic Carl Gustav Carus, TU Dresden)
Krupp, Lauren (New York University)
Lui, Yvonne W. (New York University)
Montalban, Xavier (Hospital Universitari Vall d'Hebron)
Naismith, Robert T. (Washington University in St. Louis)
Nicholas, Jacqueline A. (OhioHealth)
Pellegrini, Fabio (Biogen)
Rovira, Alex (Hospital Universitari Vall d'Hebron)
Schulze, Maximilian (University Hospital of Giessen and Marburg (Alemanya))
Tackenberg, Björn (University Hospital of Giessen and Marburg (Alemanya))
Tintoré, Mar (Hospital Universitari Vall d'Hebron)
Tivarus, Madalina E. (University of Rochester Medical Center)
Ziemssen, Tjalf (Technische Universität Dresden. Center of Clinical Neuroscience)
Rudick, Richard A. (Biogen)
Universitat Autònoma de Barcelona

Fecha: 2020
Resumen: Background: Multiple Sclerosis Partners Advancing Technology and Health Solutions (MS PATHS) is the first example of a learning health system in multiple sclerosis (MS). This paper describes the initial implementation of MS PATHS and initial patient characteristics. Methods: MS PATHS is an ongoing initiative conducted in 10 healthcare institutions in three countries, each contributing standardized information acquired during routine care. Institutional participation required the following: active MS patient census of ≥500, at least one Siemens 3T magnetic resonance imaging scanner, and willingness to standardize patient assessments, share standardized data for research, and offer universal enrolment to capture a representative sample. The eligible participants have diagnosis of MS, including clinically isolated syndrome, and consent for sharing pseudonymized data for research. MS PATHS incorporates a self-administered patient assessment tool, the Multiple Sclerosis Performance Test, to collect a structured history, patient-reported outcomes, and quantitative testing of cognition, vision, dexterity, and walking speed. Brain magnetic resonance imaging is acquired using standardized acquisition sequences on Siemens 3T scanners. Quantitative measures of brain volume and lesion load are obtained. Using a separate consent, the patients contribute DNA, RNA, and serum for future research. The clinicians retain complete autonomy in using MS PATHS data in patient care. A shared governance model ensures transparent data and sample access for research. Results: As of August 5, 2019, MS PATHS enrolment included participants (n = 16,568) with broad ranges of disease subtypes, duration, and severity. Overall, 14,643 (88. 4%) participants contributed data at one or more time points. The average patient contributed 15. 6 person-months of follow-up (95% CI: 15. 5-15. 8); overall, 166,158 person-months of follow-up have been accumulated. Those with relapsing-remitting MS demonstrated more demographic heterogeneity than the participants in six randomized phase 3 MS treatment trials. Across sites, a significant variation was observed in the follow-up frequency and the patterns of disease-modifying therapy use. Conclusions: Through digital health technology, it is feasible to collect standardized, quantitative, and interpretable data from each patient in busy MS practices, facilitating the merger of research and patient care. This approach holds promise for data-driven clinical decisions and accelerated systematic learning.
Derechos: Aquest document està subjecte a una llicència d'ús Creative Commons. Es permet la reproducció total o parcial, la distribució, la comunicació pública de l'obra i la creació d'obres derivades, fins i tot amb finalitats comercials, sempre i quan es reconegui l'autoria de l'obra original. Creative Commons
Lengua: Anglès
Documento: Article ; recerca ; Versió publicada
Materia: Learning health system ; Multiple sclerosis ; MS PATHS ; Digital health technology ; Standardized brain magnetic resonance imaging
Publicado en: Frontiers in neurology, Vol. 11 (august 2020) , ISSN 1664-2295

DOI: 10.3389/fneur.2020.00632
PMID: 32849170


15 p, 865.1 KB

El registro aparece en las colecciones:
Artículos > Artículos de investigación
Artículos > Artículos publicados

 Registro creado el 2022-02-07, última modificación el 2025-05-07



   Favorit i Compartir