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Optimal Design for the Precise Estimation of an Interaction Threshold: The Impact of Exposure to a Mixture of 18 Polyhalogenated Aromatic Hydrocarbons

机译:相互作用阈值的精确估计的最佳设计:暴露于18个多卤代芳烃混合物的影响

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摘要

Traditional additivity models provide little flexibility in modeling the dose–response relationships of the single agents in a mixture. While the flexible single chemical required (FSCR) methods allow greater flexibility, its implicit nature is an obstacle in the formation of the parameter covariance matrix, which forms the basis for many statistical optimality design criteria. The goal of this effort is to develop a method for constructing the parameter covariance matrix for the FSCR models, so that (local) alphabetic optimality criteria can be applied. Data from Crofton et al. are provided as motivation; in an experiment designed to determine the effect of 18 polyhalogenated aromatic hydrocarbons on serum total thyroxine (T4), the interaction among the chemicals was statistically significant. Gennings et al. fit the FSCR interaction threshold model to the data. The resulting estimate of the interaction threshold was positive and within the observed dose region, providing evidence of a dose-dependent interaction. However, the corresponding likelihood-ratio-based confidence interval was wide and included zero. In order to more precisely estimate the location of the interaction threshold, supplemental data are required. Using the available data as the first stage, the Ds-optimal second-stage design criterion was applied to minimize the variance of the hypothesized interaction threshold. Practical concerns associated with the resulting design are discussed and addressed using the penalized optimality criterion. Results demonstrate that the penalized Ds-optimal second-stage design can be used to more precisely define the interaction threshold while maintaining the characteristics deemed important in practice.
机译:传统的添加性模型在模拟混合物中的单一药剂的剂量 - 反应关系方面提供了很少的灵活性。虽然所需的灵活的单一化学品(FSCR)方法允许更大的灵活性,但其隐含的性质是参数协方差矩阵形成的障碍,这构成了许多统计最优性设计标准的基础。这项努力的目标是开发一种用于构建FSCR模型的参数协方差矩阵的方法,从而可以应用(本地)字母顺序最优标准。来自CROFTON等人的数据。被提供为动机;在一个设计用于确定18个多卤代芳烃对血清总甲状腺素(T4)的影响的实验中,化学物质之间的相互作用是统计学上显着的。 Gennings等。将FSCR交互阈值模型适合数据。得到的相互作用阈值的结果估计是阳性的并且在观察到的剂量区域内,提供给剂量依赖性相互作用的证据。然而,相应的似然比基于基于的置信区间宽并且包括零。为了更精确地估计交互阈值的位置,需要补充数据。使用可用数据作为第一阶段,应用DS最优二阶设计标准以最小化假设交互阈值的方差。使用惩罚的最优标准讨论和解决与所产生的设计相关的实际问题。结果表明,惩罚的DS最优二阶设计可以用来更精确地定义相互作用阈值,同时保持在实践中认为重要的特征。

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