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针对与多个靶点结合的药物的基于靶点的药物处置模型。

Target-mediated drug disposition model for drugs that bind to more than one target.

机构信息

QuantPharm LLC, North Potomac, MD, USA.

出版信息

J Pharmacokinet Pharmacodyn. 2010 Aug;37(4):323-46. doi: 10.1007/s10928-010-9163-3. Epub 2010 Jul 29.

Abstract

Until recently, most therapeutic monoclonal antibodies (mAb) were designed to bind only one target. However, several existing mAbs bind to soluble and membrane forms of the same receptor. Moreover, design of bi-specific and multi-specific proteins that bind to more than one target is a promising direction of drug design. The pharmacokinetics and pharmacodynamics of these drugs may be described by the target-mediated drug disposition (TMDD). This work extended the TMDD model to drugs that bind more than one target. The quasi-steady-state (QSS) and Michaelis-Menten (MM) approximations of the model were also derived. Identifiability of model parameters was studied by simulations. The drug and target parameters used in simulations were chosen to imitate a monoclonal antibody that binds to the soluble (S) and membrane-bound (M) targets. The data were simulated for 224 subjects using the full TMDD model and dosing that mimicked typical Phase I and Phase II designs with rich sampling. Four population pharmacokinetic models were fitted to the free (unbound) drug and total (unbound and bound to the drug) S-target data: a one-target QSS model that simultaneously described the free drug and the total S-target (M1), a model with parallel linear and MM elimination that described the free drug combined with a separate S-target model that utilized the free drug concentrations but did not influence them (M2), a two-target QSS model where the S-target was described by the QSS approximation while the contribution of the M-target was described by the MM elimination term (M3), and a two-target full TMDD model (M4). The influence of relative contributions of the S and M-targets to target-mediated elimination on identifiability of the model parameters was investigated. The influence of assay sensitivity and availability of the total rather than free drug concentration measurements were also investigated. The results indicated that for the dosing regimens and system parameters investigated in this work the pharmacokinetic data alone did not allow to distinguish influences of the two targets. When the drug and S-target data were available, the model M1 described the data with the deficiencies of the fit visible only at the lowest dose level. However, the parameter estimates were strongly biased. The model M2 improved the fit and provided the precise estimates of the S-target parameters. However, no information concerning the M-target could be obtained from this model. The model M3 provided an excellent description of the data and the unbiased estimates of all the parameters. It also provided the unbiased estimates of change from baseline of the unobservable M-target concentrations. The models M1-M3 were robust while M4 was unstable despite the prohibitively long run time. The results were similar when the total rather than free drug was measured. The M-target parameters were estimated only when M-target elimination was at least comparable to S-target elimination. Improvement of the assay sensitivity has not resulted in marked improvement of the parameter estimates. In summary, for the cases investigated in this work the QSS approximation of the two-target TMDD model provided the unbiased and robust estimates of all the relevant TMDD parameters.

摘要

直到最近,大多数治疗性单克隆抗体 (mAb) 都被设计为仅与一个靶标结合。然而,一些现有的 mAb 与同一受体的可溶性和膜形式结合。此外,设计与多个靶标结合的双特异性和多特异性蛋白是药物设计的一个有前途的方向。这些药物的药代动力学和药效学可以通过靶介导药物处置 (TMDD) 来描述。这项工作将 TMDD 模型扩展到了与多个靶标结合的药物。还推导出了模型的准稳态 (QSS) 和米氏-门坦 (MM) 近似。通过模拟研究了模型参数的可识别性。模拟中使用的药物和靶标参数被选择来模拟与可溶性 (S) 和膜结合 (M) 靶标结合的单克隆抗体。使用完整的 TMDD 模型和具有丰富采样的模拟典型 I 期和 II 期设计的给药方案,对 224 名受试者的数据进行了模拟。四种群体药代动力学模型被拟合到游离(未结合)药物和总(未结合和与药物结合的)S-靶标数据:一个同时描述游离药物和总 S-靶标的单靶标 QSS 模型(M1),一个具有平行线性和 MM 消除的模型,描述游离药物与单独的 S-靶标模型相结合,该模型利用游离药物浓度但不影响它们(M2),一个其中 S-靶标通过 QSS 近似描述而 M-靶标通过 MM 消除项描述的双靶标 QSS 模型(M3),以及一个双靶标完整 TMDD 模型(M4)。研究了 S 和 M-靶标对靶介导消除的相对贡献对模型参数可识别性的影响。还研究了分析灵敏度和总药物浓度(而非游离药物浓度)测量的可用性的影响。结果表明,对于本工作研究的给药方案和系统参数,单独的药代动力学数据不足以区分两个靶标的影响。当药物和 S-靶标数据可用时,模型 M1 可以很好地描述数据,但仅在最低剂量水平下才能看到拟合的缺陷。然而,参数估计存在严重偏差。模型 M2 改善了拟合,并提供了 S-靶标参数的精确估计。然而,无法从该模型中获得有关 M-靶标的信息。模型 M3 提供了对数据的出色描述和所有参数的无偏估计。它还提供了不可观察的 M-靶标浓度从基线变化的无偏估计。模型 M1-M3 是稳健的,而 M4 尽管运行时间过长,但很不稳定。当测量总药物而不是游离药物时,结果相似。仅当 M-靶标消除至少与 S-靶标消除相当时,才能估计 M-靶标参数。提高分析灵敏度并没有导致参数估计有明显改善。总之,对于本工作研究的情况,双靶标 TMDD 模型的 QSS 近似提供了所有相关 TMDD 参数的无偏和稳健估计。

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