Dynamic model for multivariate markers of fecundability

Author affiliations (3)
  • University of South Carolina ROR
  • University of Utah ROR
  • National Institute of Environmental Health Sciences ROR

Biometrics, 66(3), 905-913, 2009

DOI 10.1111/j.1541-0420.2009.01327.x PMID 19751248

Abstract

Dynamic latent class models provide a flexible framework for studying biologic processes that evolve over time. Motivated by studies of markers of the fertile days of the menstrual cycle, we propose a discrete-time dynamic latent class framework, allowing change points to depend on time, fixed predictors, and random effects. Observed data consist of multivariate categorical indicators, which change dynamically in a flexible manner according to latent class status. Given the flexibility of the framework, which incorporates semi-parametric components using mixtures of betas, identifiability constraints are needed to define the latent classes. Such constraints are most appropriately based on the known biology of the process. The Bayesian method is developed particularly for analyzing mucus symptom data from a study of women using natural family planning.

Topics

dynamic latent class model menstrual cycle fecundability, Dunson Stanford Bayesian mucus symptom analysis, multivariate markers fertile window menstrual cycle, cervical mucus symptom data natural family planning statistical model, change point model ovulation prediction biological markers, discrete time latent class framework fertility awareness, semi-parametric Bayesian mixture model reproductive biomarkers, natural family planning mucus symptom statistical analysis, Stanford JB fecundability marker methodology, categorical indicators latent class menstrual cycle dynamics
PMID 19751248 19751248 DOI 10.1111/j.1541-0420.2009.01327.x 10.1111/j.1541-0420.2009.01327.x

Cite this article

Cai, B., Dunson, D. B., & Stanford, J. B. (2010). Dynamic model for multivariate markers of fecundability. *Biometrics*, *66*(3), 905-913. https://doi.org/10.1111/j.1541-0420.2009.01327.x