Unsupervised mobility and motion assessment in neuromuscular and musculoskeletal disorders using mobile health technology

Authors

  • Muhammad Osama Foundation University College of Physical Therapy, Foundation University, Islamabad, Pakistan
  • Bruno Bonnechere REVAL Rehabilitation Research Center, University of Hasselt (UHasselt), Hasselt, Belgium
  • Sabah Afridi Department of Physical Therapy, Rawal Institute of Health Sciences, Islamabad, Pakistan

DOI:

https://doi.org/10.47391/JPMA.10657

Keywords:

digital health innovation, Telehealth, e-health, Clinical assessment, Outcome, range of motion, Functional mobility, Mobility

Abstract

Mobility deficits are not uncommon in persons with neuromuscular and musculoskeletal disorders. This can have a negative impact in terms of morbidity, mortality, quality of life and activities of daily living (1). Conventionally, mobility and physical activity have been measured in a clinical and laboratory setting by a qualified health professional and is thus called supervised assessment (1). It is either a qualitative or quantitative one- time snapshot evaluation of physical activity, mobility or motion and is highly influenced by factors such as the Hawthorne effect, the time of day when the measurement was taken, white coat and reverse white coat effect (1). Moreover, supervised mobility assessment may have many limitations such as limited ecological validity, lack of patient-centered focus, inability to record real-world challenges, absence of real-time feedback, lack of ability to consider patient's environment, and an omission in observing the range of performance across the day or week (1).

To tackle the above mentioned limitations, recently unsupervised mobility assessment of mobility and physical activity using mobile health technology has emerged as an alternative to conventional supervised assessment (1-3). Significant differences may be observed when comparing identical mobility outcomes measured under supervised and unsupervised conditions (1, 3). A systematic review revealed significant variations of 40-180% in identical mobility measures acquired from the same participants across different settings (1). The disparities between supervised and unsupervised measurements are notably greater than the effects observed in treatment interventions. Minor to moderate treatment effects may be overshadowed by these substantial differences in measurement modes (1).

Unsupervised assessment holds the potential to address the limitations of supervised assessment as it is patient-centered, ecologically valid, capable of recording fluctuating and rare events, unaffected by the white coat and Hawthorne effects, provides real-time treatment feedback, records real-world challenges, is influenced by a person's mood and fatigue, considers the environment, and reports performance across the day or week (1). Moreover, unsupervised assessment does not require the presence of a trained professional, or the patient to report to a clinic or hospital, and thus can be of great value in rural environments and in tele-medicine/rehabilitation. Not only would this be cost effective, it will also decrease the load on the health care system and the need for health care human resource.

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Author Biographies

Muhammad Osama , Foundation University College of Physical Therapy, Foundation University, Islamabad, Pakistan

Assistant Professor - Foundation University College of Physical Therapy, Foundation University Islamabad.

Postgraduate Mobility Researcher - REVAL Rehabilitation Research Center, Faculty of Rehabilitation Sciences, University of Hasselt (UHasselt)

Research Consultant - Brainstorm Research (brainstormresearch.org)

Bruno Bonnechere, REVAL Rehabilitation Research Center, University of Hasselt (UHasselt), Hasselt, Belgium

Assistant Professor - REVAL Rehabilitation Research Center, Faculty of Rehabilitation Sciences, University of Hasselt (UHasselt)

Sabah Afridi, Department of Physical Therapy, Rawal Institute of Health Sciences, Islamabad, Pakistan

Lecturer - Rawal Institute of Health Sciences

Research Associate - Brainstorm Research (brainstormresearch.org)

Published

2024-02-11

How to Cite

Osama , M., Bonnechere, B., & Afridi, S. (2024). Unsupervised mobility and motion assessment in neuromuscular and musculoskeletal disorders using mobile health technology. Journal of the Pakistan Medical Association, 74(3), 603–604. https://doi.org/10.47391/JPMA.10657

Issue

Section

LETTER TO THE EDITOR