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Meaningful digital biomarkers derived from wearable sensors to predict daily fatigue in multiple sclerosis patients and healthy controls

Max Moebus, Shkurta Gashi, Marc Hilty, Pietro Oldrati, Christian Holz

2024iScience18 citationsDOIOpen Access PDF

Abstract

Fatigue is the most common symptom among multiple sclerosis (MS) patients and severely affects the quality of life. We investigate how perceived fatigue can be predicted using biomarkers collected from an arm-worn wearable sensor for MS patients (n = 51) and a healthy control group (n = 23) at an unprecedented time resolution of more than five times per day. On average, during our two-week study, participants reported their level of fatigue 51 times totaling more than 3,700 data points. Using interpretable generalized additive models, we find that increased physical activity, heart rate, sympathetic activity, and parasympathetic activity while awake and asleep relate to perceived fatigue throughout the day-partly affected by dysfunction of the ANS. We believe our analysis opens up new research opportunities for fine-grained modeling of perceived fatigue based on passively collected physiological signals using wearables-for MS patients and healthy controls alike.

Topics & Concepts

Wearable computerMultiple sclerosisWearable technologyMedicinePhysical medicine and rehabilitationPhysical therapyComputer scienceImmunologyEmbedded systemMultiple Sclerosis Research StudiesEffects of Vibration on HealthFibromyalgia and Chronic Fatigue Syndrome Research
Meaningful digital biomarkers derived from wearable sensors to predict daily fatigue in multiple sclerosis patients and healthy controls | Litcius