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A Gradient Markov Chain Monte Carlo Algorithm for Computing Multivariate Maximum Likelihood Estimates and Posterior Distributions: Mixture Dose-Response Assessment

机译:梯度马尔可夫链蒙特卡罗算法,用于计算多元最大似然估计和后验分布:混合剂量响应评估

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摘要

Multivariate probability distributions, such as may be used for mixture dose-response assessment, are typically highly parameterized and difficult to fit to available data. However, such distributions may be useful in analyzing the large electronic data sets becoming available, such as dose-response biomarker and genetic information. In this article, a new two-stage computational approach is introduced for estimating multivariate distributions and addressing parameter uncertainty. The proposed first stage comprises a gradient Markov chain Monte Carlo (GMCMC) technique to find Bayesian posterior mode estimates (PMEs) of parameters, equivalent to maximum likelihood estimates (MLEs) in the absence of subjective information. In the second stage, these estimates are used to initialize a Markov chain Monte Carlo (MCMC) simulation, replacing the conventional burn-in period to allow convergent simulation of the full joint Bayesian posterior distribution and the corresponding unconditional multivariate distribution (not conditional on uncertain parameter values). When the distribution of parameter uncertainty is such a Bayesian posterior, the unconditional distribution is termed predictive. The method is demonstrated by finding conditional and unconditional versions of the recently proposed emergent dose-response function (DRF). Results are shown for the five-parameter common-mode and seven-parameter dissimilar-mode models, based on published data for eight benzene-toluene dose pairs. The common mode conditional DRF is obtained with a 21-fold reduction in data requirement versus MCMC. Example common-mode unconditional DRFs are then found using synthetic data, showing a 71 % reduction in required data. The approach is further demonstrated for a PCB 126-PCB 153 mixture. Applicability is analyzed and discussed. Matlab® computer programs are provided.
机译:多元概率分布(例如可用于混合物剂量反应评估的分布)通常是高度参数化的,很难适应可用数据。但是,这样的分布在分析可用的大型电子数据集(例如剂量反应生物标记物和遗传信息)中可能有用。在本文中,引入了一种新的两阶段计算方法来估计多元分布并解决参数不确定性。拟议的第一阶段包括梯度马尔可夫链蒙特卡洛(GMCMC)技术,以找到参数的贝叶斯后验模式估计(PME),相当于在没有主观信息的情况下的最大似然估计(MLE)。在第二阶段中,这些估计值用于初始化马尔可夫链蒙特卡罗(MCMC)模拟,代替常规的老化期,以允许对完整的联合贝叶斯后验分布和相应的无条件多元分布进行收敛性模拟(非条件不确定条件)参数值)。当参数不确定性的分布为贝叶斯后验时,无条件分布称为预测性分布。通过找到最近提出的紧急剂量反应功能(DRF)的有条件和无条件版本来证明该方法。基于已发布的八对苯甲苯剂量对数据,显示了五参数共模和七参数异模模型的结果。与MCMC相比,共模条件DRF的数据需求减少了21倍。然后使用合成数据找到示例共模无条件DRF,显示所需数据减少了71%。该方法在PCB 126-PCB 153混合物中得到了进一步证明。分析并讨论了适用性。提供了Matlab®计算机程序。

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