Liu, ZiyueCappola, Anne R.Crofford, Leslie J.Guo, Whensheng2016-03-072016-03-072014-01-01Liu, Z., Cappola, A. R., Crofford, L. J., & Guo, W. (2014). Modeling Bivariate Longitudinal Hormone Profiles by Hierarchical State Space Models. Journal of the American Statistical Association, 109(505), 108–118. http://doi.org/10.1080/01621459.2013.830071https://hdl.handle.net/1805/8745The hypothalamic-pituitary-adrenal (HPA) axis is crucial in coping with stress and maintaining homeostasis. Hormones produced by the HPA axis exhibit both complex univariate longitudinal profiles and complex relationships among different hormones. Consequently, modeling these multivariate longitudinal hormone profiles is a challenging task. In this paper, we propose a bivariate hierarchical state space model, in which each hormone profile is modeled by a hierarchical state space model, with both population-average and subject-specific components. The bivariate model is constructed by concatenating the univariate models based on the hypothesized relationship. Because of the flexible framework of state space form, the resultant models not only can handle complex individual profiles, but also can incorporate complex relationships between two hormones, including both concurrent and feedback relationship. Estimation and inference are based on marginal likelihood and posterior means and variances. Computationally efficient Kalman filtering and smoothing algorithms are used for implementation. Application of the proposed method to a study of chronic fatigue syndrome and fibromyalgia reveals that the relationships between adrenocorticotropic hormone and cortisol in the patient group are weaker than in healthy controls.en-USPublisher PolicyCircadian rhythmFeedback RelationshipHPA axisKalman filterPeriodic splinesModeling bivariate longitudinal hormone profiles by hierarchical state space modelsArticle