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A bayesian design space for analytical methods based on multivariate models and predictions

机译:基于多元模型和预测的分析方法的贝叶斯设计空间

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摘要

The International Conference for Harmonization (ICH) has released regulatory guidelines for pharmaceutical development. In the document ICH Q8, the design space of a process is presented as the set of factor settings providing satisfactory results. However, ICH Q8 does not propose any practical methodology to define, derive, and compute design space. In parallel, in the last decades, it has been observed that the diversity and the quality of analytical methods have evolved exponentially, allowing substantial gains in selectivity and sensitivity. However, there is still a lack of a rationale toward the development of robust separation methods in a systematic way. Applying ICH Q8 to analytical methods provides a methodology for predicting a region of the space of factors in which results will be reliable. Combining design of experiments and Bayesian standard multivariate regression, an identified form of the predictive distribution of a new response vector has been identified and used, under noninformative as well as informative prior distributions of the parameters. From the responses and their predictive distribution, various critical quality attributes can be easily derived. This Bayesian framework was then extended to the multicriteria setting to estimate the predictive probability that several critical quality attributes will be jointly achieved in the future use of an analytical method. An example based on a high-performance liquid chromatography (HPLC) method is given. For this example, a constrained sampling scheme was applied to ensure the modeled responses have desirable properties.
机译:国际协调会议(ICH)发布了药品开发的监管指南。在ICH Q8文档中,过程的设计空间以提供令人满意结果的因子设置集的形式表示。但是,ICH Q8没有提出任何实用的方法来定义,推导和计算设计空间。同时,在过去的几十年中,已经观察到分析方法的多样性和质量呈指数级增长,从而大大提高了选择性和灵敏度。但是,仍然缺乏以系统的方式开发健壮的分离方法的理由。将ICH Q8应用于分析方法可提供一种方法,用于预测结果可靠的因素空间区域。结合实验设计和贝叶斯标准多元回归,在参数的非信息性和信息性先验分布下,已确定并使用了新响应向量的预测分布的确定形式。根据响应及其预测分布,可以轻松得出各种关键质量属性。然后将该贝叶斯框架扩展到多准则设置,以估计在将来使用分析方法时将共同实现几个关键质量属性的预测概率。给出了基于高效液相色谱(HPLC)方法的示例。对于此示例,应用了约束采样方案以确保建模的响应具有理想的属性。

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