Bach Thanh, An Guohua
Division of Pharmaceutics and Translational Therapeutics, College of Pharmacy, University of Iowa, Iowa City, IA, USA.
J Pharmacokinet Pharmacodyn. 2021 Aug;48(4):581-595. doi: 10.1007/s10928-021-09753-0. Epub 2021 Apr 21.
First-order conditional estimation (FOCE) has been the most frequently used estimation method in NONMEM, a leading program for population pharmacokinetic/pharmacodynamic modeling. However, with growing data complexity, the performance of FOCE is challenged by long run time, convergence problem and model instability. In NONMEM 7, expectation-maximization (EM) estimation methods and FOCE with FAST option (FOCE FAST) were introduced. In this study, we compared the performance of FOCE, FOCE FAST, and two EM methods, namely importance sampling (IMP) and stochastic approximation expectation-maximization (SAEM), utilizing the rich pharmacokinetic data of oxfendazole and its two metabolites obtained from the first-in-human single ascending dose study in healthy adults. All methods yielded similar parameter estimates, but great differences were observed in parameter precision and modeling time. For simpler models (i.e., models of oxfendazole and/or oxfendazole sulfone), FOCE and FOCE FAST were more efficient than EM methods with shorter run time and comparable parameter precision. FOCE FAST was about two times faster than FOCE but it was prone to premature termination. For the most complex model (i.e., model of all three analytes, one of which having high level of data below quantification limit), FOCE failed to reliably assess parameter precision, while parameter precision obtained by IMP and SAEM was similar with SAEM being the faster method. IMP was more sensitive to model misspecification; without pre-systemic metabolism, IMP analysis failed to converge. With parallel computing introduced in NONMEM 7.2, modeling speed increased less than proportionally with the increase in the number of CPUs from 1 to 16.
一阶条件估计(FOCE)一直是NONMEM中最常用的估计方法,NONMEM是群体药代动力学/药效学建模的领先程序。然而,随着数据复杂性的增加,FOCE的性能受到运行时间长、收敛问题和模型不稳定性的挑战。在NONMEM 7中,引入了期望最大化(EM)估计方法和带有FAST选项的FOCE(FOCE FAST)。在本研究中,我们利用从健康成年人的首次人体单剂量递增研究中获得的奥芬达唑及其两种代谢物的丰富药代动力学数据,比较了FOCE、FOCE FAST以及两种EM方法,即重要性抽样(IMP)和随机近似期望最大化(SAEM)的性能。所有方法都产生了相似的参数估计值,但在参数精度和建模时间上观察到了很大差异。对于较简单的模型(即奥芬达唑和/或奥芬达唑砜的模型),FOCE和FOCE FAST比EM方法更有效,运行时间更短且参数精度相当。FOCE FAST比FOCE快约两倍,但容易过早终止。对于最复杂的模型(即所有三种分析物的模型,其中一种有大量低于定量限的数据),FOCE未能可靠地评估参数精度,而IMP和SAEM获得的参数精度相似,SAEM是更快的方法。IMP对模型错误设定更敏感;没有首过代谢时,IMP分析无法收敛。随着NONMEM 7.2中引入并行计算,建模速度的增加与CPU数量从1增加到16的增加不成比例。