稳定性建模方法,让患者更早获得治疗。

IF 3.7 3区 医学 Q2 CHEMISTRY, MEDICINAL
Andrew Lennard, Boris Zimmermann, Didier Clenet, Michael Molony, Cecilia Tami, Cristian Oliva Aviles, Amy Moran, Philip Pue-Gilchrist, E'Lissa Flores
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引用次数: 0

摘要

近年来,利用统计工具、先验知识和行业经验进行稳定性预测建模的方法,在许多情况下都能对医药产品的保质期/失效期或再试验期进行稳健可靠的预测,这一点已经获得了信心。这些以科学和风险为基础的方法可以弥补首次提交监管申请时没有完整的实时稳定性数据集的不足,从而加快新药的上市速度。预测稳定性建模的例子包括加速稳定性评估程序 (ASAP)、高级动力学建模 (AKM) 以及涉及使用贝叶斯统计和人工智能 (AI) 应用(如机器学习 (ML))的新型建模方法,适用于合成分子和生物分子。对于生物制剂,可利用特定产品和平台先验知识来克服非定量稳定性指示属性模型的局限性。通过将预测数据与实时稳定性数据进行比较来成功进行持续验证的方法将是一种适当的风险管理方法,旨在解决监管机构关注的问题,并进一步建立监管机构对这些预测建模方法稳健性的信心。全球监管机构对稳定性建模的认可可以让患者更快地获得潜在的救命药物,而不会影响质量、安全性或疗效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stability modeling methodologies to enable earlier patient access.

Over recent years, confidence has been gained that predictive stability modeling approaches using statistical tools, prior knowledge and industry experience enable, in many instances, a robust and reliable shelf-life/expiry or retest period prediction for medicinal products. These science and risk-based approaches can compensate for not having a complete real-time stability data set to be included in regulatory applications at the time of initial submission and, thereby, accelerate the availability of new medicines. Examples of predictive stability modeling include accelerated stability assessment procedure (ASAP), advanced kinetic modeling (AKM), and novel modeling approaches that involve the use of Bayesian statistics and Artificial Intelligence (AI) applications such as Machine Learning (ML), with applicability to both synthetic and biological molecules. For biologics, product-specific and platform prior knowledge could be used to overcome model limitations known for non-quantitative stability indicating attributes. A successful ongoing verification approach by comparing the predicted data with real-time stability data would be an appropriate risk management approach which is intended to address regulatory concerns, and further build confidence in the robustness of these predictive modelling approaches with regulatory agencies. Global regulatory acceptance of stability modeling could allow patients to receive potential life-saving medications faster without compromising quality, safety or efficacy.

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来源期刊
CiteScore
7.30
自引率
13.20%
发文量
367
审稿时长
33 days
期刊介绍: The Journal of Pharmaceutical Sciences will publish original research papers, original research notes, invited topical reviews (including Minireviews), and editorial commentary and news. The area of focus shall be concepts in basic pharmaceutical science and such topics as chemical processing of pharmaceuticals, including crystallization, lyophilization, chemical stability of drugs, pharmacokinetics, biopharmaceutics, pharmacodynamics, pro-drug developments, metabolic disposition of bioactive agents, dosage form design, protein-peptide chemistry and biotechnology specifically as these relate to pharmaceutical technology, and targeted drug delivery.
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