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A physician-completed digital tool for evaluating disease progression (multiple sclerosis progression discussion tool): Validation study
Multiple Sclerosis
Jahr
Publikationsjahr
2020
Autoren
Autorenliste der Publikation
Ziemssen T, Piani-Meier D, Bennett B, Johnson C, Tinsley K, Trigg A, Hach T, Dahlke F, Tomic D, Tolley C, Freedman MS.
Verlag
Publisher-Information
J Med Internet Res. 2020 Feb 12;22(2):e16932.
Link
Zur Publikation (externer Server)
https://doi.org/10.2196/16932
Tags
Forschungsthemen
Multiple Sklerose
Management & Science
eHealth
MSZ
MASC
2020
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