Age-related behavioral resilience in smartphone touchscreen interaction dynamics

Open Access
Authors
Publication date 18-06-2024
Journal Proceedings of the National Academy of Sciences
Article number e2311865121
Volume | Issue number 121 | 25
Number of pages 9
Organisations
  • Faculty of Social and Behavioural Sciences (FMG) - Psychology Research Institute (PsyRes)
Abstract

We experience a life that is full of ups and downs. The ability to bounce back after adverse life events such as the loss of a loved one or serious illness declines with age, and such isolated events can even trigger accelerated aging. How humans respond to common day-to-day perturbations is less clear. Here, we infer the aging status from smartphone behavior by using a decision tree regression model trained to accurately estimate the chronological age based on the dynamics of touchscreen interactions. Individuals (N = 280, 21 to 87 y of age) expressed smartphone behavior that appeared younger on certain days and older on other days through the observation period that lasted up to ~4 y. We captured the essence of these fluctuations by leveraging the mathematical concept of critical transitions and tipping points in complex systems. In most individuals, we find one or more alternative stable aging states separated by tipping points. The older the individual, the lower the resilience to forces that push the behavior across the tipping point into an older state. Traditional accounts of aging based on sparse longitudinal data spanning decades suggest a gradual behavioral decline with age. Taken together with our current results, we propose that the gradual age-related changes are interleaved with more complex dynamics at shorter timescales where the same individual may navigate distinct behavioral aging states from one day to the next. Real-world behavioral data modeled as a complex system can transform how we view and study aging.

Document type Article
Note With supporting information
Language English
Related dataset Age-related behavioral resilience in smartphone touchscreen interaction dynamics
Published at https://doi.org/10.1073/pnas.2311865121
Other links https://github.com/codelableidenvelux/ML_Age_Trajectory_2023 https://www.scopus.com/pages/publications/85195887884
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