Department of Pharmacy, Uppsala University, BOX 580, S-751 23 Uppsala, Sweden.
Eur J Pharm Sci. 2013 Jul 16;49(4):679-98. doi: 10.1016/j.ejps.2013.05.019. Epub 2013 May 29.
Oral drug delivery is the predominant administration route for a major part of the pharmaceutical products used worldwide. Further understanding and improvement of gastrointestinal drug absorption predictions is currently a highly prioritized area of research within the pharmaceutical industry. The fraction absorbed (fabs) of an oral dose after administration of a solid dosage form is a key parameter in the estimation of the in vivo performance of an orally administrated drug formulation. This study discloses an evaluation of the predictive performance of the mechanistic physiologically based absorption model GI-Sim. GI-Sim deploys a compartmental gastrointestinal absorption and transit model as well as algorithms describing permeability, dissolution rate, salt effects, partitioning into micelles, particle and micelle drifting in the aqueous boundary layer, particle growth and amorphous or crystalline precipitation. Twelve APIs with reported or expected absorption limitations in humans, due to permeability, dissolution and/or solubility, were investigated. Predictions of the intestinal absorption for different doses and formulations were performed based on physicochemical and biopharmaceutical properties, such as solubility in buffer and simulated intestinal fluid, molecular weight, pK(a), diffusivity and molecule density, measured or estimated human effective permeability and particle size distribution. The performance of GI-Sim was evaluated by comparing predicted plasma concentration-time profiles along with oral pharmacokinetic parameters originating from clinical studies in healthy individuals. The capability of GI-Sim to correctly predict impact of dose and particle size as well as the in vivo performance of nanoformulations was also investigated. The overall predictive performance of GI-Sim was good as >95% of the predicted pharmacokinetic parameters (C(max) and AUC) were within a 2-fold deviation from the clinical observations and the predicted plasma AUC was within one standard deviation of the observed mean plasma AUC in 74% of the simulations. GI-Sim was also able to correctly capture the trends in dose- and particle size dependent absorption for the study drugs with solubility and dissolution limited absorption, respectively. In addition, GI-Sim was also shown to be able to predict the increase in absorption and plasma exposure achieved with nanoformulations. Based on the results, the performance of GI-Sim was shown to be suitable for early risk assessment as well as to guide decision making in pharmaceutical formulation development.
口服给药是全球使用的大部分药物制剂的主要给药途径。进一步了解和改善胃肠道药物吸收预测是制药行业目前高度优先的研究领域。口服固体制剂给药后,吸收分数(fabs)是评估口服药物制剂体内性能的关键参数。本研究评估了机制生理吸收模型 GI-Sim 的预测性能。GI-Sim 采用了一个肠吸收和转运的房室模型以及描述渗透性、溶解速率、盐效应、胶束分配、颗粒和胶束在水边界层漂移、颗粒生长和无定形或结晶沉淀的算法。对 12 种 API 进行了研究,这些 API 由于渗透性、溶解和/或溶解度而在人体中具有吸收限制。根据溶解度在缓冲液和模拟肠液中的物理化学和生物药剂学特性,如溶解度、分子量、pK(a)、扩散率和分子密度、测量或估计的人体有效渗透性和颗粒尺寸分布,对不同剂量和制剂的肠吸收进行了预测。通过比较来自健康个体的临床研究的预测血浆浓度-时间曲线以及口服药代动力学参数,评估了 GI-Sim 的性能。还研究了 GI-Sim 正确预测剂量和粒径以及纳米制剂体内性能的能力。GI-Sim 的总体预测性能良好,因为 >95%的预测药代动力学参数(C(max)和 AUC)与临床观察值的偏差在 2 倍以内,预测的血浆 AUC 在 74%的模拟中与观察到的平均血浆 AUC 的偏差在一个标准差以内。GI-Sim 还能够正确捕捉研究药物中分别具有溶解度和溶解限制吸收的剂量和粒径依赖性吸收的趋势。此外,GI-Sim 还能够预测纳米制剂增加的吸收和血浆暴露。基于这些结果,GI-Sim 的性能被证明适合于早期风险评估以及指导药物制剂开发中的决策。