JMIR Formative Research (May 2022)

Automated Analysis of Drawing Process to Estimate Global Cognition in Older Adults: Preliminary International Validation on the US and Japan Data Sets

  • Yasunori Yamada,
  • Kaoru Shinkawa,
  • Masatomo Kobayashi,
  • Varsha D Badal,
  • Danielle Glorioso,
  • Ellen E Lee,
  • Rebecca Daly,
  • Camille Nebeker,
  • Elizabeth W Twamley,
  • Colin Depp,
  • Miyuki Nemoto,
  • Kiyotaka Nemoto,
  • Ho-Cheol Kim,
  • Tetsuaki Arai,
  • Dilip V Jeste

DOI
https://doi.org/10.2196/37014
Journal volume & issue
Vol. 6, no. 5
p. e37014

Abstract

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BackgroundWith the aging of populations worldwide, early detection of cognitive impairments has become a research and clinical priority, particularly to enable preventive intervention for dementia. Automated analysis of the drawing process has been studied as a promising means for lightweight, self-administered cognitive assessment. However, this approach has not been sufficiently tested for its applicability across populations. ObjectiveThe aim of this study was to evaluate the applicability of automated analysis of the drawing process for estimating global cognition in community-dwelling older adults across populations in different nations. MethodsWe collected drawing data with a digital tablet, along with Montreal Cognitive Assessment (MoCA) scores for assessment of global cognition, from 92 community-dwelling older adults in the United States and Japan. We automatically extracted 6 drawing features that characterize the drawing process in terms of the drawing speed, pauses between drawings, pen pressure, and pen inclinations. We then investigated the association between the drawing features and MoCA scores through correlation and machine learning–based regression analyses. ResultsWe found that, with low MoCA scores, there tended to be higher variability in the drawing speed, a higher pause:drawing duration ratio, and lower variability in the pen’s horizontal inclination in both the US and Japan data sets. A machine learning model that used drawing features to estimate MoCA scores demonstrated its capability to generalize from the US dataset to the Japan dataset (R2=0.35; permutation test, P<.001). ConclusionsThis study presents initial empirical evidence of the capability of automated analysis of the drawing process as an estimator of global cognition that is applicable across populations. Our results suggest that such automated analysis may enable the development of a practical tool for international use in self-administered, automated cognitive assessment.