| Literature DB >> 24176136 |
Henrik Stryhn1, Jette Christensen2.
Abstract
This paper discusses statistical modelling for data with a hierarchical structure, and distinguishes in this context between three different meanings of the term hierarchical model: to account for clustering, to investigate variability and separate predictive equations at different hierarchical levels (multi-level analysis), and in a Bayesian framework to involve multiple layers of data or prior information. Within each of these areas, the paper reviews both past developments and the present state, and offers indications of future directions. In a worked example, previously reported data on piglet lameness are reanalyzed with multi-level methodology for survival analysis, leading to new insights into the data structure and predictor effects. In our view, hierarchical models of all three types discussed have much to offer for data analysis in veterinary epidemiology and other disciplines.Keywords: Bayesian modelling; Hierarchical data structure; Multi-level; Non-proportional hazards; Random-effects model; Survival analysis
Mesh:
Year: 2013 PMID: 24176136 DOI: 10.1016/j.prevetmed.2013.10.001
Source DB: PubMed Journal: Prev Vet Med ISSN: 0167-5877 Impact factor: 2.670