Journal article
Bayesian hierarchical regression on clearance rates in the presence of "lag" and "tail" phases with an application to malaria parasites
CB Fogarty, MP Fay, JA Flegg, K Stepniewska, RM Fairhurst, DS Small
Biometrics | OXFORD UNIV PRESS | Published : 2015
DOI: 10.1111/biom.12307
Abstract
We present a principled technique for estimating the effect of covariates on malaria parasite clearance rates in the presence of "lag" and "tail" phases through the use of a Bayesian hierarchical linear model. The hierarchical approach enables us to appropriately incorporate the uncertainty in both estimating clearance rates in patients and assessing the potential impact of covariates on these rates into the posterior intervals generated for the parameters associated with each covariate. Furthermore, it permits us to incorporate information about individuals for whom there exists only one observation time before censoring, which alleviates a systematic bias affecting inference when these ind..
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Awarded by National Institute of Allergy and Infectious Diseases
Funding Acknowledgements
We thank Dr. Chanaki Amaratunga for providing the data used in Section 4. This research was supported in part by the Intramural Research Program of the NIH, NIAID.