JMIR Formative Research (Nov 2024)

Sensor-Derived Measures of Motor and Cognitive Functions in People With Multiple Sclerosis Using Unsupervised Smartphone-Based Assessments: Proof-of-Concept Study

  • Matthew Scaramozza,
  • Aurélie Ruet,
  • Patrizia A Chiesa,
  • Laïtissia Ahamada,
  • Emmanuel Bartholomé,
  • Loïc Carment,
  • Julie Charre-Morin,
  • Gautier Cosne,
  • Léa Diouf,
  • Christine C Guo,
  • Adrien Juraver,
  • Christoph M Kanzler,
  • Angelos Karatsidis,
  • Claudia Mazzà,
  • Joaquin Penalver-Andres,
  • Marta Ruiz,
  • Aurore Saubusse,
  • Gabrielle Simoneau,
  • Alf Scotland,
  • Zhaonan Sun,
  • Minao Tang,
  • Johan van Beek,
  • Lauren Zajac,
  • Shibeshih Belachew,
  • Bruno Brochet,
  • Nolan Campbell

DOI
https://doi.org/10.2196/60673
Journal volume & issue
Vol. 8
p. e60673

Abstract

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BackgroundSmartphones and wearables are revolutionizing the assessment of cognitive and motor function in neurological disorders, allowing for objective, frequent, and remote data collection. However, these assessments typically provide a plethora of sensor-derived measures (SDMs), and selecting the most suitable measure for a given context of use is a challenging, often overlooked problem. ObjectiveThis analysis aims to develop and apply an SDM selection framework, including automated data quality checks and the evaluation of statistical properties, to identify robust SDMs that describe the cognitive and motor function of people with multiple sclerosis (MS). MethodsThe proposed framework was applied to data from a cross-sectional study involving 85 people with MS and 68 healthy participants who underwent in-clinic supervised and remote unsupervised smartphone-based assessments. The assessment provided high-quality recordings from cognitive, manual dexterity, and mobility tests, from which 47 SDMs, based on established literature, were extracted using previously developed and publicly available algorithms. These SDMs were first separately and then jointly screened for bias and normality by 2 expert assessors. Selected SDMs were then analyzed to establish their reliability, using an intraclass correlation coefficient and minimal detectable change at 95% CI. The convergence of selected SDMs with in-clinic MS functional measures and patient-reported outcomes was also evaluated. ResultsA total of 16 (34%) of the 47 SDMs passed the selection framework. All selected SDMs demonstrated moderate-to-good reliability in remote settings (intraclass correlation coefficient 0.5-0.85; minimal detectable change at 95% CI 19%-35%). Selected SDMs extracted from the smartphone-based cognitive test demonstrated good-to-excellent correlation (Spearman correlation coefficient, |ρ|>0.75) with the in-clinic Symbol Digit Modalities Test and fair correlation with Expanded Disability Status Scale (EDSS) scores (0.25≤|ρ|0.75) for mobility test SDMs. Overall, correlations were similar when smartphone-based tests were performed in a clinic or remotely. ConclusionsReported results highlight that smartphone-based assessments are suitable tools to remotely obtain high-quality SDMs of cognitive and motor function in people with MS. The presented SDM selection framework promises to increase the interpretability and standardization of smartphone-based SDMs in people with MS, paving the way for their future use in interventional trials.