Mylan Pharma UK Ltd., Sandwich, UK.
Research Center Pharmaceutical Engineering GmbH, Graz, Austria.
Eur J Pharm Sci. 2018 Feb 15;113:41-52. doi: 10.1016/j.ejps.2017.10.030. Epub 2017 Oct 25.
Prediction of local exposure following inhalation of a locally acting pulmonary drug is central to the successful development of novel inhaled medicines, as well as generic equivalents. This work provides a comprehensive review of the state of the art with respect to multiscale computer models designed to provide a mechanistic prediction of local and systemic drug exposure following inhalation. The availability and quality of underpinning in vivo and in vitro data informing the computer based models is also considered. Mechanistic modelling of local exposure has the potential to speed up and improve the chances of successful inhaled API and product development. Although there are examples in the literature where this type of modelling has been used to understand and explain local and systemic exposure, there are two main barriers to more widespread use. There is a lack of generally recognised commercially available computational models that incorporate mechanistic modelling of regional lung particle deposition and drug disposition processes to simulate free tissue drug concentration. There is also a need for physiologically relevant, good quality experimental data to inform such modelling. For example, there are no standardized experimental methods to characterize the dissolution of solid drug in the lungs or measure airway permeability. Hence, the successful application of mechanistic computer models to understand local exposure after inhalation and support product development and regulatory applications hinges on: (i) establishing reliable, bio-relevant means to acquire experimental data, and (ii) developing proven mechanistic computer models that combine: a mechanistic model of aerosol deposition and post-deposition processes in physiologically-based pharmacokinetic models that predict free local tissue concentrations.
吸入局部作用肺部药物后的局部暴露预测对于新型吸入药物以及仿制药的成功开发至关重要。这项工作全面回顾了多尺度计算机模型的最新技术,这些模型旨在对吸入后局部和全身药物暴露进行机制预测。还考虑了为基于计算机的模型提供信息的基础体内和体外数据的可用性和质量。局部暴露的机制建模有可能加快并提高成功开发吸入 API 和产品的机会。尽管文献中有一些例子表明这种建模用于理解和解释局部和全身暴露,但更广泛使用仍存在两个主要障碍。缺乏普遍认可的商业上可用的计算模型,这些模型将区域肺部颗粒沉积和药物处置过程的机制建模纳入其中,以模拟游离组织药物浓度。还需要生理相关的高质量实验数据来为这种建模提供信息。例如,目前还没有标准化的实验方法来描述肺部中固体药物的溶解或测量气道通透性。因此,成功应用机制计算机模型来理解吸入后的局部暴露并支持产品开发和监管应用取决于:(i)建立可靠的、具有生物学相关性的方法来获取实验数据,以及(ii)开发经过验证的机制计算机模型,这些模型将:气溶胶沉积的机制模型和基于生理的药代动力学模型中的沉积后过程相结合,这些模型可预测游离局部组织浓度。