Wearable-based Remote Monitoring of Disease Symptoms in Myasthenia Gravis
Ashkan Vaziri1, Ram Kinker Mishra1, İlkay Yıldız Potter1, Adonay Sastre Nunes1, Meghan McAnally2, Carsten G. Bönnemann2, Petra W. Duda3, Amanda Guidon4
1BioSensics LLC, 2National Institute of Neurological Disorders and Stroke, 3Union Chimique Belge (UCB), 4Massachusetts General Hospital, Harvard Medical School
Objective:

To validate the use of wearable sensors in monitoring fatigue and disease symptoms in myasthenia gravis (MG).

Background:

MG is a chronic autoimmune disease characterized by fluctuating muscle weakness and fatigue. Traditional clinical assessments can be too infrequent to capture the day-to-day variability of MG symptoms and susceptible to variability in operator and participant performance that can impact their sensitivity and clinical meaningfulness. Wearable sensors can provide a more precise, frequent, and quantitative tool for assessing disease symptoms in MG and other neurological disorders.

Design/Methods:

Twenty individuals diagnosed with MG (mean age 59.2 ± 16.2 years) were monitored at home for seven consecutive days using the PAMSys pendant sensor, which tracks physical activity and posture. A correlation analysis between sensor-derived measures and standard validated questionnaires and clinical assessments, including MG activities of daily living profile (MG-ADL), MG composite scale (MGC), and Neuro-QOL Fatigue was performed.

Results:

19 of the 20 subjects achieved 100% compliance, wearing the sensor continuously around the clock (24 hours a day, 7 days a week). The results demonstrated significant correlations between physical activity metrics and clinical outcomes, highlighting the potential of wearable sensors to provide continuous, objective, and real-world data on disease manifestations. Stepwise linear regression analysis identified total standing time and total walking bouts as significantly correlated with patient-reported outcomes and clinical scores, including MG-ADL and QOL.

Conclusions:

Our study establishes the feasibility and initial clinical validity of using wearable sensors for monitoring disease severity and fatigue in MG.

10.1212/WNL.0000000000211867
Disclaimer: Abstracts were not reviewed by Neurology® and do not reflect the views of Neurology® editors or staff.