Developing Recurrent Neural Networks to Predict Gait Speed with Longitudinal Clinical Information

ORAL

Abstract

Gait speed is recognized as a significant indicator of biological aging. Through the development and use of tools that identify accelerated aging trajectories and their associated biomarkers, clinical decisions can be better-informed to include earlier and more effective interventions. Recurrent deep learning models allow for the investigation of longitudinal, nonlinear relationships between clinical variables and outcomes. The purpose of this work is to develop a recurrent neural network (RNN) to predict aging-related incident slow gait and its determinants across various timeframes from a basic set of health measures. By comparing the longitudinal analysis of an RNN with the analysis of a non-longitudinal neural network (NN), we intend to determine the relevance of longitudinal information in predictions of aging-related decline. We are utilizing the 3,821 gait speed measurements from 1,363 unique subjects in the Baltimore Longitudinal Study of Aging (BLSA) and a clinically relevant gait speed cut-point (1.0 m/s) to investigate the prediction of both current and future (2-year and 6-year timeframes) slow gait. Currently, the RNN has not demonstrated an improvement in performance over the NN for each of the current and future predictions. Going forward, we are developing new RNN architectures and exploring additional variables to identify the determinants of gait speed and determine the significance of longitudinal information in the BLSA.

Presenters

  • Michael Mansour

    • National Institutes of Health

Authors

  • Michael Mansour

    • National Institutes of Health
  • Alison Deatsch

    • University of Wisconsin - Madison
  • Michael McKenna

    • National Institutes of Health
  • Jonathan L Palumbo

    • National Institutes of Health
  • Qu Tian

    • National Institutes of Health
  • Eleanor Simonsick

    • National Institutes of Health
  • Luigi Ferrucci

    • National Institutes of Health
  • Robert Jeraj

    • University of Wisconsin - Madison
  • Richard G Spencer

    • National Institute on Aging/National Institutes of Health