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Neuro-fuzzy Models as an IVIVR Tool and Their Applicability in Generic Drug Development

机译:作为IVIVR工具的神经模糊模型及其在仿制药开发中的适用性

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摘要

The usefulness of neuro-fuzzy (NF) models as an alternative in vitro-in vivo relationship (IVIVR) tool and as a support to quality by design (QbD) in generic drug development is presented. For drugs with complicated pharmacokinetics, immediate release drugs or nasal sprays, suggested level A correlations are not capable to satisfactorily describe the IVIVR. NF systems were recognized as a reasonable method in comparison to the published approaches for development of IVIVR. Consequently, NF models were built to predict 144 pharmacokinetic (PK) parameter ratios required for demonstration of bioequivalence (BE) for 88 pivotal BE studies. Input parameters of models included dissolution data and their combinations in different media, presence of food, formulation strength, technology type, particle size, and spray pattern for nasal sprays. Ratios of PK parameters Cmax or AUC were used as output variables. The prediction performance of models resulted in the following values: 79% of models have acceptable external prediction error (PE) below 10%, 13% of models have inconclusive PE between 10 and 20%, and remaining 8% of models show inadequate PE above 20%. Average internal predictability (LE) is 0.3%, and average external predictability of all models results in 7.7%. In average, models have acceptable internal and external predictabilities with PE lower than 10% and are therefore useful for IVIVR needs during formulation development, as a support to QbD and for the prediction of BE study outcome.Electronic supplementary materialThe online version of this article (doi:10.1208/s12248-014-9569-8) contains supplementary material, which is available to authorized users.
机译:提出了神经模糊(NF)模型作为替代的体外-体内关系(IVIVR)工具以及作为通用药物开发中设计质量(QbD)的支持的有用性。对于具有复杂药代动力学的药物,速释药物或喷鼻剂,建议的A级相关性不能令人满意地描述IVIVR。与已发布的IVIVR开发方法相比,NF系统被认为是一种合理的方法。因此,建立了NF模型来预测88个关键BE研究的生物等效性(BE)证明所需的144药代动力学(PK)参数比率。模型的输入参数包括溶出度数据及其在不同介质中的组合,食物的存在,制剂强度,技术类型,粒径和鼻喷雾剂的喷雾方式。 PK参数Cmax或AUC的比率用作输出变量。模型的预测性能得出以下值:79%的模型具有低于10%的可接受的外部预测误差(PE),13%的模型具有10%至20%之间的不确定PE,其余8%的模型显示PE不足20%。平均内部可预测性(LE)为0.3%,所有模型的平均外部可预测性为7.7%。平均而言,模型具有可接受的内部和外部可预测性,PE低于10%,因此可用于制剂开发过程中的IVIVR需求,支持QbD和预测BE研究成果。电子补充材料doi:10.1208 / s12248-014-9569-8)包含补充材料,授权用户可以使用。

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