Hamadeh Abdullah, Troutman John, Najjar Abdulkarim, Edginton Andrea
School of Pharmacy, University of Waterloo, Kitchener, ON N2G 1C5, Canada.
The Procter & Gamble Company, Mason, OH 45040, United States of America.
J Pharm Sci. 2022 Mar;111(3):838-851. doi: 10.1016/j.xphs.2021.11.028. Epub 2021 Dec 4.
Computational models can play an integral role in the chemical risk assessment of dermatological products. However, a limitation on the ability of mathematical models to extrapolate from in vitro measurements to in human predictions arises from context-dependence: modeling assumptions made in one setting may not carry over to another scenario. Mechanistic models of dermal absorption relate the skin penetration kinetics of permeants to their partitioning and diffusion across elementary sub-compartments of the skin. This endows them with a flexibility through which specific model components can be adjusted to better reflect dermal absorption in contexts that differ from the in vitro setting, while keeping fixed any context-invariant parameters that remain unchanged in the two scenarios. This paper presents a workflow for predicting in vivo dermal absorption by integrating a mechanistic model of skin penetration with in vitro permeation test (IVPT) measurements. A Bayesian approach is adopted to infer a joint posterior distribution of context-invariant model parameters. By populating the model with samples of context-invariant parameters from this distribution and adjusting context-dependent parameters to suit the in vivo setting, simulations of the model yield estimates of the likely range of in vivo dermal absorption given the IVPT data. This workflow is applied to five compounds previously tested in vivo. In each case, the range of in vivo predictions encompassed the range observed experimentally. These studies demonstrate that the proposed workflow enables the derivation of mechanistically derived upper bounds on dermal absorption for the purposes of chemical risk assessment.
计算模型在皮肤病学产品的化学风险评估中可以发挥不可或缺的作用。然而,数学模型从体外测量推断人体预测能力的一个局限性源于上下文依赖性:在一种情况下做出的建模假设可能不适用于另一种情况。皮肤吸收的机理模型将渗透剂的皮肤渗透动力学与其在皮肤基本子隔室中的分配和扩散联系起来。这赋予了它们一种灵活性,通过这种灵活性,可以调整特定的模型组件,以更好地反映与体外环境不同的情况下的皮肤吸收,同时保持在两种情况下不变的任何上下文不变参数不变。本文提出了一种通过将皮肤渗透机理模型与体外渗透试验(IVPT)测量相结合来预测体内皮肤吸收的工作流程。采用贝叶斯方法来推断上下文不变模型参数的联合后验分布。通过用来自该分布的上下文不变参数样本填充模型,并调整上下文相关参数以适应体内环境,模型的模拟给出了根据IVPT数据得出的体内皮肤吸收可能范围的估计值。该工作流程应用于之前在体内测试过的五种化合物。在每种情况下,体内预测范围都涵盖了实验观察到的范围。这些研究表明,所提出的工作流程能够为化学风险评估推导基于机理的皮肤吸收上限。