| Literature DB >> 23329867 |
Chih-Chi Hu1, Ying Kuen Cheung.
Abstract
Dose-finding in clinical studies is typically formulated as a quantile estimation problem, for which a correct specification of the variance function of the outcomes is important. This is especially true for sequential study where the variance assumption directly involves in the generation of the design points and hence sensitivity analysis may not be performed after the data are collected. In this light, there is a strong reason for avoiding parametric assumptions on the variance function, although this may incur efficiency loss. In this article, we investigate how much information one may retrieve by making additional parametric assumptions on the variance in the context of a sequential least squares recursion. By asymptotic comparison, we demonstrate that assuming homoscedasticity achieves only a modest efficiency gain when compared to nonparametric variance estimation: when homoscedasticity in truth holds, the latter is at worst 88% as efficient as the former in the limiting case, and often achieves well over 90% efficiency for most practical situations. Extensive simulation studies concur with this observation under a wide range of scenarios.Entities:
Year: 2013 PMID: 23329867 PMCID: PMC3544527 DOI: 10.1016/j.jspi.2012.08.014
Source DB: PubMed Journal: J Stat Plan Inference ISSN: 0378-3758 Impact factor: 1.111