Model Averaging with AIC Weights for Hypothesis Testing of Hormesis at Low Doses

For many dose–response studies, large samples are not available. Particularly, when the outcome of interest is binary rather than continuous, a large sample size is required to provide evidence for hormesis at low doses. In a small or moderate sample, we can gain statistical power by the use of a pa...

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Main Authors: Steven B. Kim, Nathan Sanders
Format: Article
Language:English
Published: SAGE Publishing 2017-06-01
Series:Dose-Response
Online Access:https://doi.org/10.1177/1559325817715314
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spelling doaj-378324f06dc048548b732f1489b993102020-11-25T02:52:31ZengSAGE PublishingDose-Response1559-32582017-06-011510.1177/1559325817715314Model Averaging with AIC Weights for Hypothesis Testing of Hormesis at Low DosesSteven B. Kim0Nathan Sanders1 Department of Mathematics and Statistics, California State University, Monterey Bay, Seaside, CA, USA Department of Mathematics and Statistics, California State University, Monterey Bay, Seaside, CA, USAFor many dose–response studies, large samples are not available. Particularly, when the outcome of interest is binary rather than continuous, a large sample size is required to provide evidence for hormesis at low doses. In a small or moderate sample, we can gain statistical power by the use of a parametric model. It is an efficient approach when it is correctly specified, but it can be misleading otherwise. This research is motivated by the fact that data points at high experimental doses have too much contribution in the hypothesis testing when a parametric model is misspecified. In dose–response analyses, to account for model uncertainty and to reduce the impact of model misspecification, averaging multiple models have been widely discussed in the literature. In this article, we propose to average semiparametric models when we test for hormesis at low doses. We show the different characteristics of averaging parametric models and averaging semiparametric models by simulation. We apply the proposed method to real data, and we show that P values from averaged semiparametric models are more credible than P values from averaged parametric methods. When the true dose–response relationship does not follow a parametric assumption, the proposed method can be an alternative robust approach.https://doi.org/10.1177/1559325817715314
collection DOAJ
language English
format Article
sources DOAJ
author Steven B. Kim
Nathan Sanders
spellingShingle Steven B. Kim
Nathan Sanders
Model Averaging with AIC Weights for Hypothesis Testing of Hormesis at Low Doses
Dose-Response
author_facet Steven B. Kim
Nathan Sanders
author_sort Steven B. Kim
title Model Averaging with AIC Weights for Hypothesis Testing of Hormesis at Low Doses
title_short Model Averaging with AIC Weights for Hypothesis Testing of Hormesis at Low Doses
title_full Model Averaging with AIC Weights for Hypothesis Testing of Hormesis at Low Doses
title_fullStr Model Averaging with AIC Weights for Hypothesis Testing of Hormesis at Low Doses
title_full_unstemmed Model Averaging with AIC Weights for Hypothesis Testing of Hormesis at Low Doses
title_sort model averaging with aic weights for hypothesis testing of hormesis at low doses
publisher SAGE Publishing
series Dose-Response
issn 1559-3258
publishDate 2017-06-01
description For many dose–response studies, large samples are not available. Particularly, when the outcome of interest is binary rather than continuous, a large sample size is required to provide evidence for hormesis at low doses. In a small or moderate sample, we can gain statistical power by the use of a parametric model. It is an efficient approach when it is correctly specified, but it can be misleading otherwise. This research is motivated by the fact that data points at high experimental doses have too much contribution in the hypothesis testing when a parametric model is misspecified. In dose–response analyses, to account for model uncertainty and to reduce the impact of model misspecification, averaging multiple models have been widely discussed in the literature. In this article, we propose to average semiparametric models when we test for hormesis at low doses. We show the different characteristics of averaging parametric models and averaging semiparametric models by simulation. We apply the proposed method to real data, and we show that P values from averaged semiparametric models are more credible than P values from averaged parametric methods. When the true dose–response relationship does not follow a parametric assumption, the proposed method can be an alternative robust approach.
url https://doi.org/10.1177/1559325817715314
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