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Tracking amyotrophic lateral sclerosis disease progression using passively collected smartphone sensor data

Marta Karas, Julia Olsen, Marcin Strączkiewicz, Stephen A. Johnson, Katherine M. Burke, Satoshi Iwasaki, Amir Lahav, Zoe A. Scheier, Alison Clark, Amrita S. Iyer, Emily J. Huang, James D. Berry, Jukka‐Pekka Onnela

2024Annals of Clinical and Translational Neurology18 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Passively collected smartphone sensor data provide an opportunity to study physical activity and mobility unobtrusively over long periods of time and may enable disease monitoring in people with amyotrophic lateral sclerosis (PALS). METHODS: We enrolled 63 PALS who used Beiwe mobile application that collected their smartphone accelerometer and GPS data and administered the self-entry ALS Functional Rating Scale-Revised (ALSFRS-RSE) survey. We identified individual steps from accelerometer data and used the Activity Index to summarize activity at the minute level. Walking, Activity Index, and GPS outcomes were then aggregated into day-level measures. We used linear mixed effect models (LMMs) to estimate baseline and monthly change for ALSFRS-RSE scores (total score, subscores Q1-3, Q4-6, Q7-9, Q10-12) and smartphone sensor data measures, as well as the associations between them. FINDINGS: The analytic sample (N = 45) was 64.4% male with a mean age of 60.1 years. The mean observation period was 292.3 days. The ALSFRS-RSE total score baseline mean was 35.8 and had a monthly rate of decline of -0.48 (p-value <0.001). We observed statistically significant change over time and association with ALSFRS-RSE total score for four smartphone sensor data-derived measures: walking cadence from top 1 min and log-transformed step count, step count from top 1 min, and Activity Index from top 1 min. INTERPRETATION: Smartphone sensors can unobtrusively track physical changes in PALS, potentially aiding disease monitoring and future research.

Topics & Concepts

MedicineAmyotrophic lateral sclerosisAccelerometerRating scalePhysical medicine and rehabilitationCadencePhysical therapyPhysical activityDiseaseInternal medicineComputer scienceStatisticsOperating systemMathematicsAmyotrophic Lateral Sclerosis ResearchBalance, Gait, and Falls PreventionCerebral Palsy and Movement Disorders
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