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Viscosity-mediated negative food effect on oral absorption of poorly-permeable drugs with an absorption window in the proximal intestine: In vitro experimental simulation and computational verification.肠道黏滞度对近端肠腔有吸收窗的低通透性药物口服吸收的负向食物效应:体外实验模拟与计算验证。
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In vivo methods for drug absorption - comparative physiologies, model selection, correlations with in vitro methods (IVIVC), and applications for formulation/API/excipient characterization including food effects.药物吸收的体内方法——比较生理学、模型选择、与体外方法的相关性(体外-体内相关性)以及在制剂/原料药/辅料特性表征中的应用,包括食物影响。
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From bench to humans: formulation development of a poorly water soluble drug to mitigate food effect.从实验室到人体:改善难溶性药物的制剂开发以减轻食物影响。
AAPS PharmSciTech. 2014 Apr;15(2):407-16. doi: 10.1208/s12249-013-0069-4. Epub 2014 Jan 18.
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Comparison of canine and human gastrointestinal physiology.犬与人类胃肠道生理学的比较。
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Use of the pentagastrin dog model to explore the food effects on formulations in early drug development.利用五肽胃泌素犬模型探索早期药物研发中食物对制剂的影响。
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In vitro models for the prediction of in vivo performance of oral dosage forms.用于预测口服剂型体内性能的体外模型。
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Case studies for practical food effect assessments across BCS/BDDCS class compounds using in silico, in vitro, and preclinical in vivo data.应用计算机模拟、体外和临床前体内数据对 BCS/BDDCS 分类化合物进行实际食物效应评估的案例研究。
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The use of modeling tools to drive efficient oral product design.利用建模工具提高口腔产品设计效率。
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BDDCS applied to over 900 drugs.BDDCS 应用于超过 900 种药物。
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食物对人体的影响:通过体外溶出度和体内药代动力学模型预测风险

Food Effect in Humans: Predicting the Risk Through In Vitro Dissolution and In Vivo Pharmacokinetic Models.

作者信息

Mathias Neil, Xu Yan, Vig Balvinder, Kestur Umesh, Saari Amy, Crison John, Desai Divyakant, Vanarase Aditya, Hussain Munir

机构信息

Drug Product Science & Technology, Bristol-Myers Squibb Co., New Brunswick, New Jersey, 08903, USA,

出版信息

AAPS J. 2015 Jul;17(4):988-98. doi: 10.1208/s12248-015-9759-z. Epub 2015 May 2.

DOI:10.1208/s12248-015-9759-z
PMID:25933598
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC4476984/
Abstract

In vitro and in vivo experimental models are frequently used to assess a new chemical entity's (NCE) biopharmaceutical performance risk for food effect (FE) in humans. Their ability to predict human FE hinges on replicating key features of clinical FE studies and building an in vitro-in vivo relationship (IVIVR). In this study, 22 compounds that span a wide range of physicochemical properties, Biopharmaceutics Classification System (BCS) classes, and food sensitivity were evaluated for biorelevant dissolution in fasted- and fed-state intestinal media and the dog fed/fasted-state pharmacokinetic model. Using the area under the curve (AUC) as a performance measure, the ratio of the fed-to-fasted AUC (FE ratio) was used to correlate each experimental model to FE ratio in humans. A linear correlation was observed for the in vitro dissolution-human IVIVR (R (2) = 0.66, % mean square error 20.7%). Similarly, the dog FE ratio correlated linearly with the FE ratio in humans (R (2) = 0.74, % mean square error 16.25%) for 15 compounds. Data points near the correlation line indicate dissolution-driven mechanism for food effect, while deviations from the correlation line shed light on unique mechanisms that can come into play such as GI physiology or unusual physicochemical properties. In summary, fed/fasted dissolution studies and dog PK studies show a reasonable correlation to human FE, hence are useful tools to flag high-risk NCEs entering clinical development. Combining kinetic dissolution, dog FE model and in silico modeling one can study FE mechanism and formulation strategies to mitigate the FE risk.

摘要

体外和体内实验模型经常被用于评估新化学实体(NCE)在人体中产生食物效应(FE)的生物药剂学性能风险。它们预测人体食物效应的能力取决于复制临床食物效应研究的关键特征并建立体外-体内关系(IVIVR)。在本研究中,对22种具有广泛物理化学性质、生物药剂学分类系统(BCS)类别和食物敏感性的化合物进行了空腹和进食状态下肠道介质中的生物相关溶出度以及犬类进食/空腹状态下的药代动力学模型评估。以曲线下面积(AUC)作为性能指标,进食与空腹AUC之比(食物效应比)用于将每个实验模型与人体中的食物效应比相关联。体外溶出度与人体IVIVR之间观察到线性相关性(R (2) = 0.66,均方误差百分比20.7%)。同样,对于15种化合物,犬类食物效应比与人体中的食物效应比呈线性相关(R (2) = 0.74,均方误差百分比16.25%)。靠近相关线的数据点表明食物效应是由溶出驱动的机制,而偏离相关线则揭示了可能起作用的独特机制,如胃肠道生理学或异常的物理化学性质。总之,进食/空腹溶出度研究和犬类药代动力学研究显示与人体食物效应有合理的相关性,因此是标记进入临床开发的高风险NCE的有用工具。结合动力学溶出、犬类食物效应模型和计算机模拟建模,可以研究食物效应机制和减轻食物效应风险的制剂策略。