Predicting Real-World Physical Activity in Multiple Sclerosis: An Integrated Approach Using Clinical, Sensor-Based, and Self-Reported Measures

Multiple sclerosis (MS) is a chronic neurodegenerative disease characterized by mobility impairments that limit physical activity and reduce quality of life. While traditional clinical measures and participant-reported outcomes provide valuable insights, they often fall short of fully capturing the...

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Main Authors: Patrick G. Monaghan, Michael VanNostrand, Taylor N. Takla, Nora E. Fritz
Format: Article
Language:English
Published: MDPI AG 2025-03-01
Series:Sensors
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Online Access:https://www.mdpi.com/1424-8220/25/6/1780
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author Patrick G. Monaghan
Michael VanNostrand
Taylor N. Takla
Nora E. Fritz
author_facet Patrick G. Monaghan
Michael VanNostrand
Taylor N. Takla
Nora E. Fritz
author_sort Patrick G. Monaghan
collection DOAJ
description Multiple sclerosis (MS) is a chronic neurodegenerative disease characterized by mobility impairments that limit physical activity and reduce quality of life. While traditional clinical measures and participant-reported outcomes provide valuable insights, they often fall short of fully capturing the complexities of real-world mobility. This study evaluates the predictive value of combining sensor-derived clinical measures and participant-reported outcomes to better forecast prospective physical activity levels in individuals with MS. Forty-six participants with MS completed surveys assessing fatigue, concern about falling, and perceived walking ability (MSWS-12), alongside sensor-based assessments of gait and balance. Over three months, participants wore Fitbit devices to monitor physical activity, including step counts and total activity levels. Forward stepwise regression revealed that a combined model of participant-reported outcomes and sensor-derived measures explained the most variance in future physical activity, with MSWS-12 and backward walking velocity emerging as key predictors. These findings highlight the importance of integrating subjective and objective measures to provide a more comprehensive understanding of physical activity patterns in MS. This approach supports the development of personalized interventions aimed at improving mobility, increasing physical activity, and enhancing overall quality of life for individuals with MS.
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spelling doaj-art-d0e1a9eb951944a9aa5f154d3ca7b9c12025-08-20T03:44:03ZengMDPI AGSensors1424-82202025-03-01256178010.3390/s25061780Predicting Real-World Physical Activity in Multiple Sclerosis: An Integrated Approach Using Clinical, Sensor-Based, and Self-Reported MeasuresPatrick G. Monaghan0Michael VanNostrand1Taylor N. Takla2Nora E. Fritz3Department of Health Care Sciences, Wayne State University, Detroit, MI 48201, USADepartment of Health Care Sciences, Wayne State University, Detroit, MI 48201, USANeuroimaging and Neurorehabilitation Laboratory, Wayne State University, Detroit, MI 48201, USADepartment of Health Care Sciences, Wayne State University, Detroit, MI 48201, USAMultiple sclerosis (MS) is a chronic neurodegenerative disease characterized by mobility impairments that limit physical activity and reduce quality of life. While traditional clinical measures and participant-reported outcomes provide valuable insights, they often fall short of fully capturing the complexities of real-world mobility. This study evaluates the predictive value of combining sensor-derived clinical measures and participant-reported outcomes to better forecast prospective physical activity levels in individuals with MS. Forty-six participants with MS completed surveys assessing fatigue, concern about falling, and perceived walking ability (MSWS-12), alongside sensor-based assessments of gait and balance. Over three months, participants wore Fitbit devices to monitor physical activity, including step counts and total activity levels. Forward stepwise regression revealed that a combined model of participant-reported outcomes and sensor-derived measures explained the most variance in future physical activity, with MSWS-12 and backward walking velocity emerging as key predictors. These findings highlight the importance of integrating subjective and objective measures to provide a more comprehensive understanding of physical activity patterns in MS. This approach supports the development of personalized interventions aimed at improving mobility, increasing physical activity, and enhancing overall quality of life for individuals with MS.https://www.mdpi.com/1424-8220/25/6/1780multiple sclerosisphysical activityassessmentmobilityreal-world function
spellingShingle Patrick G. Monaghan
Michael VanNostrand
Taylor N. Takla
Nora E. Fritz
Predicting Real-World Physical Activity in Multiple Sclerosis: An Integrated Approach Using Clinical, Sensor-Based, and Self-Reported Measures
Sensors
multiple sclerosis
physical activity
assessment
mobility
real-world function
title Predicting Real-World Physical Activity in Multiple Sclerosis: An Integrated Approach Using Clinical, Sensor-Based, and Self-Reported Measures
title_full Predicting Real-World Physical Activity in Multiple Sclerosis: An Integrated Approach Using Clinical, Sensor-Based, and Self-Reported Measures
title_fullStr Predicting Real-World Physical Activity in Multiple Sclerosis: An Integrated Approach Using Clinical, Sensor-Based, and Self-Reported Measures
title_full_unstemmed Predicting Real-World Physical Activity in Multiple Sclerosis: An Integrated Approach Using Clinical, Sensor-Based, and Self-Reported Measures
title_short Predicting Real-World Physical Activity in Multiple Sclerosis: An Integrated Approach Using Clinical, Sensor-Based, and Self-Reported Measures
title_sort predicting real world physical activity in multiple sclerosis an integrated approach using clinical sensor based and self reported measures
topic multiple sclerosis
physical activity
assessment
mobility
real-world function
url https://www.mdpi.com/1424-8220/25/6/1780
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AT taylorntakla predictingrealworldphysicalactivityinmultiplesclerosisanintegratedapproachusingclinicalsensorbasedandselfreportedmeasures
AT noraefritz predictingrealworldphysicalactivityinmultiplesclerosisanintegratedapproachusingclinicalsensorbasedandselfreportedmeasures