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Development of a New Pre- and Post-Processing Tool (SADAPT-TRAN) for Nonlinear Mixed-Effects Modeling in S-ADAPT

机译:开发新的预处理和后处理工具(SADAPT-TRAN)用于S-ADAPT中的非线性混合效果建模

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摘要

Mechanistic modeling greatly benefits from automated pre- and post-processing of model code and modeling results. While S-ADAPT provides many state-of-the-art parametric population estimation methods, its pre- and post-processing capabilities are limited. Our objective was to develop a fully automated, open-source pre- and post-processor for nonlinear mixed-effects modeling in S-ADAPT. We developed a new translator tool (SADAPT-TRAN) based on Perl scripts. These scripts (a) automatically translate the core model components into robust Fortran code, (b) perform extensive mutual error checks across all input files and the raw dataset, (c) extend the options of the Monte Carlo Parametric Expectation Maximization (MC-PEM) algorithm, and (d) improve the numerical robustness of the model code. The post-processing scripts automatically summarize the results of one or multiple models as tables and, by generating problem specific R scripts, provide an extended series of standard and covariate-stratified diagnostic plots. The SADAPT-TRAN package substantially improved the efficiency to specify, debug, and evaluate models and enhanced the flexibility of using the MC-PEM algorithm for parallelized estimation in S-ADAPT. The parameter variability model can take any combination of normally, log-normally, or logistically distributed parameters and the SADAPT-TRAN package can automatically generate the Fortran code required to specify between occasion variability. Extended estimation features are available to avoid local minima, estimate means with negligible variances, and estimate variances for fixed means. The SADAPT-TRAN package significantly facilitated model development in S-ADAPT, reduced model specification errors, and provided useful error messages for beginner and advanced users. This benefit was greatest for complex mechanistic models.Electronic supplementary materialThe online version of this article (doi:10.1208/s12248-011-9257-x) contains supplementary material, which is available to authorized users.
机译:机械建模极大地受益于模型代码和建模结果的自动预处理和后处理。尽管S-ADAPT提供了许多最新的参数总体估计方法,但其预处理和后处理能力是有限的。我们的目标是为S-ADAPT中的非线性混合效应建模开发一个全自动的开源预处理器和后处理器。我们基于Perl脚本开发了一种新的翻译器工具(SADAPT-TRAN)。这些脚本(a)自动将核心模型组件转换为健壮的Fortran代码;(b)对所有输入文件和原始数据集执行广泛的相互错误检查;(c)扩展蒙特卡洛参数期望最大化(MC-PEM)的选项)算法,以及(d)提高模型代码的数值鲁棒性。后处理脚本自动将一个或多个模型的结果汇总为表格,并通过生成特定于问题的R脚本,提供一系列扩展的标准和协变量分层诊断图。 SADAPT-TRAN软件包极大地提高了指定,调试和评估模型的效率,并增强了使用MC-PEM算法在S-ADAPT中进行并行估计的灵活性。参数可变性模型可以采用正态,对数正态或逻辑分布参数的任意组合,并且SADAPT-TRAN程序包可以自动生成指定场合间可变性所需的Fortran代码。扩展的估计功能可用于避免局部最小值,方差可忽略的估计均值和固定均值的估计方差。 SADAPT-TRAN软件包极大地促进了S-ADAPT中的模型开发,减少了模型规范错误,并为初学者和高级用户提供了有用的错误消息。对于复杂的机械模型,此好处最大。电子补充材料本文的在线版本(doi:10.1208 / s12248-011-9257-x)包含补充材料,授权用户可以使用。

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