Mu Song, Ludden Thomas M
GloboMax LLC, 7250 Parkway Drive, Suite 430, Hanover, MD 21076, USA.
J Pharmacokinet Pharmacodyn. 2003 Feb;30(1):53-81. doi: 10.1023/a:1023297426153.
In population pharmacokinetic (PK) studies, patients' drug plasma profiles are routinely analyzed assuming that all patients took their drug at the times and in the amounts specified. However, patient non-compliance with the prescribed drug regimen is a leading source of failure to drug therapy. It has been reported that over 30% of patients routinely skip doses regardless of their disease, prognosis, or symptoms. This brings into question the assumption regarding full compliance for population PK analyses. This paper describes the estimation of population PK parameters in the presence and absence of non-compliance while either assuming full compliance or estimating compliance using a hierarchical Bayesian approach. Assessment of compliance for a given dose was limited to one of three possibilities: no dose was taken at the prescribed time, the prescribed dose was taken at the prescribed time, or twice the prescribed dose was taken at the prescribed time. Simulated data sets based on a one-compartment pharmacokinetic model with first order elimination were analyzed using WinBUGS (Bayesian inference Using Gibbs Sampling) software. An initial feasibility simulation experiment, using a simple, but informative PK sampling design with bolus input of drug, was performed. A second simulation study was then carried out using a more realistic sampling design and first-order input of drug. The simulated sampling design included observations after known doses as well as after uncertain doses. Results from the feasibility study revealed that when compliance was estimated instead of being assumed to be 100%, the relative prediction error for clearance (CL) decreased from 0.25 to 0.10 for 60% compliance and from 0.6 to 0.2 for 35% compliance. Estimates of the interoccasion variability of clearance were improved by compliance estimation but still had substantial positive bias. Estimated of interindividual variability were relatively insensitive to compliance estimation. Estimates for volume of distribution (V) and its associated variances were not affected by incorporation of compliance estimates, perhaps due to the specific sampling design that was used. The design was relatively uninformative regarding V. In the more realistic study, estimates for CL, V and the difference between the absorption rate constant and the elimination rate constant (KA-K) were improved by the incorporation of compliance estimation. The median relative errors were reduced from 0.51 to -0.01 for CL, from 0.49 to 0.04 for V, and from 0.49 to -0.02 for Ka-K. The bias in interoccasion variances for V and CL appeared to be reduced by compliance estimation while estimates of interindividual variability were not affected in a systematic fashion. The bias in the residual error variance was decreased from a relative error of about 2 to close to 0. The use of hierarchical Bayesian modeling with the incorporation of compliance estimation decreased the bias in the typical value parameter but the effects on variance parameters were less consistent. The encouraging results of these simulation experiments will hopefully stimulate further evaluation of this methodology for the estimation of population pharmacokinetic parameters in the presence of potential patient noncompliance.
在群体药代动力学(PK)研究中,通常假定所有患者都按照规定的时间和剂量服用药物,进而对患者的血浆药物浓度进行常规分析。然而,患者不遵守规定的药物治疗方案是药物治疗失败的主要原因。据报道,超过30%的患者会经常漏服药物,无论其疾病、预后或症状如何。这使得群体PK分析中关于完全依从性的假设受到质疑。本文描述了在存在和不存在不依从性的情况下群体PK参数的估计方法,其中一种情况是假定完全依从,另一种情况是使用分层贝叶斯方法估计依从性。对给定剂量的依从性评估仅限于三种可能性之一:在规定时间未服药、在规定时间服用规定剂量或在规定时间服用两倍规定剂量。使用WinBUGS(使用吉布斯采样的贝叶斯推理)软件对基于具有一级消除的单室药代动力学模型的模拟数据集进行了分析。进行了一项初步可行性模拟实验,采用简单但信息丰富的PK采样设计,药物采用静脉推注输入。然后使用更现实的采样设计和药物的一级输入进行了第二项模拟研究。模拟采样设计包括已知剂量后以及不确定剂量后的观察结果。可行性研究结果表明,当估计依从性而不是假定为100%时,清除率(CL)的相对预测误差在依从性为60%时从0.25降至0.10,在依从性为35%时从0.6降至0.2。通过依从性估计,清除率的给药间隔变异性估计值有所改善,但仍存在较大的正偏差。个体间变异性估计对依从性估计相对不敏感。分布容积(V)及其相关方差的估计不受依从性估计纳入的影响,这可能是由于所使用的特定采样设计。该设计对V的信息量相对较少。在更现实的研究中,通过纳入依从性估计,CL、V以及吸收速率常数与消除速率常数之差(KA-K)的估计得到改善。CL的中位数相对误差从0.51降至-0.01,V从0.49降至0.04,Ka-K从0.49降至-0.02。V和CL的给药间隔方差偏差似乎通过依从性估计而降低,而个体间变异性估计没有受到系统影响。残差方差偏差从约2的相对误差降至接近0。使用分层贝叶斯建模并纳入依从性估计降低了典型值参数的偏差,但对方差参数的影响不太一致。这些模拟实验的令人鼓舞的结果有望刺激对这种方法的进一步评估,以在存在潜在患者不依从的情况下估计群体药代动力学参数。