Division of Clinical Pharmacology, Department of Medicine, Indiana University School of Medicine, Indianapolis, IN, USA.
J Pharmacokinet Pharmacodyn. 2012 Aug;39(4):393-414. doi: 10.1007/s10928-012-9258-0. Epub 2012 Jul 6.
A limitation in traditional stepwise population pharmacokinetic model building is the difficulty in handling interactions between model components. To address this issue, a method was previously introduced which couples NONMEM parameter estimation and model fitness evaluation to a single-objective, hybrid genetic algorithm for global optimization of the model structure. In this study, the generalizability of this approach for pharmacokinetic model building is evaluated by comparing (1) correct and spurious covariate relationships in a simulated dataset resulting from automated stepwise covariate modeling, Lasso methods, and single-objective hybrid genetic algorithm approaches to covariate identification and (2) information criteria values, model structures, convergence, and model parameter values resulting from manual stepwise versus single-objective, hybrid genetic algorithm approaches to model building for seven compounds. Both manual stepwise and single-objective, hybrid genetic algorithm approaches to model building were applied, blinded to the results of the other approach, for selection of the compartment structure as well as inclusion and model form of inter-individual and inter-occasion variability, residual error, and covariates from a common set of model options. For the simulated dataset, stepwise covariate modeling identified three of four true covariates and two spurious covariates; Lasso identified two of four true and 0 spurious covariates; and the single-objective, hybrid genetic algorithm identified three of four true covariates and one spurious covariate. For the clinical datasets, the Akaike information criterion was a median of 22.3 points lower (range of 470.5 point decrease to 0.1 point decrease) for the best single-objective hybrid genetic-algorithm candidate model versus the final manual stepwise model: the Akaike information criterion was lower by greater than 10 points for four compounds and differed by less than 10 points for three compounds. The root mean squared error and absolute mean prediction error of the best single-objective hybrid genetic algorithm candidates were a median of 0.2 points higher (range of 38.9 point decrease to 27.3 point increase) and 0.02 points lower (range of 0.98 point decrease to 0.74 point increase), respectively, than that of the final stepwise models. In addition, the best single-objective, hybrid genetic algorithm candidate models had successful convergence and covariance steps for each compound, used the same compartment structure as the manual stepwise approach for 6 of 7 (86 %) compounds, and identified 54 % (7 of 13) of covariates included by the manual stepwise approach and 16 covariate relationships not included by manual stepwise models. The model parameter values between the final manual stepwise and best single-objective, hybrid genetic algorithm models differed by a median of 26.7 % (q₁ = 4.9 % and q₃ = 57.1 %). Finally, the single-objective, hybrid genetic algorithm approach was able to identify models capable of estimating absorption rate parameters for four compounds that the manual stepwise approach did not identify. The single-objective, hybrid genetic algorithm represents a general pharmacokinetic model building methodology whose ability to rapidly search the feasible solution space leads to nearly equivalent or superior model fits to pharmacokinetic data.
传统逐步群体药代动力学模型构建的一个局限性是难以处理模型成分之间的相互作用。为了解决这个问题,先前介绍了一种方法,该方法将 NONMEM 参数估计和模型拟合评估与单一目标、混合遗传算法结合在一起,用于模型结构的全局优化。在这项研究中,通过比较(1)来自自动化逐步协变量建模、Lasso 方法和单目标混合遗传算法的模拟数据集的正确和虚假协变量关系,以及(2)信息准则值、模型结构、收敛性和模型参数值,评估了这种方法在药代动力学模型构建中的通用性,这些结果来自于七种化合物的手动逐步与单目标、混合遗传算法方法构建模型。手动逐步和单目标、混合遗传算法方法都被应用于从一组共同的模型选项中选择隔室结构以及纳入和模型形式的个体间和个体间变异性、残差和协变量,两种方法都是盲法的,彼此的结果是未知的。对于模拟数据集,逐步协变量建模确定了四个真实协变量中的三个,两个虚假协变量;lasso 确定了四个真实协变量中的两个和零个虚假协变量;单目标、混合遗传算法确定了四个真实协变量中的三个和一个虚假协变量。对于临床数据集,Akaike 信息准则的最佳单目标混合遗传算法候选模型比最终的手动逐步模型低中位数 22.3 分(范围为 470.5 分降低到 0.1 分降低):对于四个化合物,Akaike 信息准则降低超过 10 分,对于三个化合物,Akaike 信息准则降低小于 10 分。最佳单目标混合遗传算法候选模型的均方根误差和绝对平均预测误差分别高中位数 0.2 分(范围为 38.9 分降低到 27.3 分增加)和 0.02 分(范围为 0.98 分降低到 0.74 分增加),而最终的逐步模型。此外,最佳单目标、混合遗传算法候选模型成功地为每个化合物完成了收敛和协方差步骤,对于 7 种化合物中的 6 种(86%),使用了与手动逐步方法相同的隔室结构,并确定了 54%(13 个中的 7 个)手动逐步方法纳入的协变量和 16 个手动逐步模型未纳入的协变量关系。最终的手动逐步和最佳单目标、混合遗传算法模型之间的模型参数值差异中位数为 26.7%(q₁=4.9%和 q₃=57.1%)。最后,单目标、混合遗传算法方法能够识别出四种化合物的吸收速率参数的模型,而手动逐步方法无法识别这些模型。单目标、混合遗传算法代表了一种通用的药代动力学模型构建方法,其快速搜索可行解空间的能力导致对药代动力学数据的几乎等效或更好的模型拟合。