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A multivariate discrete failure time model for the analysis of infant motor development.

Brian NeelonAzza ShoaibiSara E Bejamin-Neelon
Published in: Statistics in medicine (2018)
We develop a multivariate discrete failure time model for the analysis of infant motor development. We use the model to jointly evaluate the time (in months) to achievement of three well-established motor milestones: sitting up, crawling, and walking. The model includes a subject-specific latent factor that reflects underlying heterogeneity in the population and accounts for within-subject dependence across the milestones. The factor loadings and covariate effects are allowed to vary flexibly across milestones, and the milestones are permitted to have unique at-risk intervals corresponding to different developmental windows. We adopt a Bayesian inferential approach and develop a convenient data-augmented Gibbs sampler for posterior computation. We conduct simulation studies to illustrate key features of the model and use the model to analyze data from the Nurture study, a birth cohort examining infant health and development during the first year of life.
Keyphrases
  • healthcare
  • public health
  • data analysis
  • risk assessment
  • electronic health record
  • machine learning
  • big data
  • climate change
  • artificial intelligence
  • health information