| Literature DB >> 23914133 |
Walter W Piegorsch1, Hui Xiong, Rabi N Bhattacharya, Lizhen Lin.
Abstract
An important statistical objective in environmental risk analysis is estimation of minimum exposure levels, called benchmark doses (BMDs), that induce a pre-specified benchmark response in a dose-response experiment. In such settings, representations of the risk are traditionally based on a parametric dose-response model. It is a well-known concern, however, that if the chosen parametric form is misspecified, inaccurate and possibly unsafe low-dose inferences can result. We apply a nonparametric approach for calculating benchmark doses, based on an isotonic regression method for dose-response estimation with quantal-response data (Bhattacharya and Kong, 2007). We determine the large-sample properties of the estimator, develop bootstrap-based confidence limits on the BMDs, and explore the confidence limits' small-sample properties via a short simulation study. An example from cancer risk assessment illustrates the calculations.Entities:
Keywords: Benchmark analysis; bootstrap confidence limits; dose-response analysis; isotonic regression; pool-adjacent-violators algorithm
Year: 2012 PMID: 23914133 PMCID: PMC3727302 DOI: 10.1002/env.2175
Source DB: PubMed Journal: Environmetrics ISSN: 1099-095X Impact factor: 1.900