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Probabilistic Design space determination in pharmaceutical product development: A Bayesian/latent variable approach

机译:药物产品开发中的概率设计空间测定:贝叶斯/潜在可变方法

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> To find the design space (DS) of a pharmaceutical process, quantification of the “assurance of quality” for the product under development is required. In this study, latent‐variable modeling is combined with multivariate Bayesian regression to identify a subset of input combinations (process operating conditions and raw materials properties) within which the DS of the product will lie at a probability equal to, or greater than, an assigned threshold. Partial least‐squares regression is used to obtain a linear transformation between the original multidimensional input space and a low‐dimensional latent space. The input domain is then discretized on its lower dimensional representation and a Bayesian posterior predictive approach is used to quantify the probability that the critical quality attributes of the product will meet their specifications for each discretization point. The methodology is tested on two case studies taken from the literature, one of which involving experimental data. The ability of the proposed approach to obtain a probabilistic identification of the DS, while simultaneously reducing the computational burden for the discretization of the input domain and providing a simple graphical representation of the DS, is shown. ? 2018 American Institute of Chemical Engineers AIChE J , 64: 2438–2449, 2018
机译: > 要查找制药过程的设计空间(DS),需要为正在开发的产品的“质量保证”的量化。在本研究中,潜在变量建模与多元贝叶斯回归相结合,以识别输入组合(过程操作条件和原材料性能)的子集,其中产品的DS将呈现等于或大于的概率。分配阈值。部分最小二乘回归用于在原始多维输入空间和低维潜空间之间获得线性变换。然后将输入域离散地在其较低的尺寸表示上,并且用于量化贝叶斯后预测方法来量化产品的临界质量属性将满足每个离散化点的规格。该方法在从文献中取出的两种情况研究,其中一个涉及实验数据。所提出的方法获得DS的概率识别的方法,同时减少输入域的离散化并提供DS的简单图形表示的计算负担。还2018年美国化学工程研究所 aiche j ,64:2438-2449,2018

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