Virtual screening of drug materials for pharmaceutical tablet manufacturability with reference to sticking.

IF 5.3 2区 医学 Q1 PHARMACOLOGY & PHARMACY
Ahmad Ramahi, Vishal Shinde, Tim Pearce, Csaba Sinka
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引用次数: 0

Abstract

The manufacturing of pharmaceutical solid dosage forms, such as tablets involves a large number of successive processing operations including crystallisation of the drug substance, granulation, drying, milling, mixing of the formulation, and compaction. Each step is fraught with manufacturing problems. Undesired adhesion of powders to the surface of the compaction tooling, known as sticking, is a frequent and highly disruptive problem that occurs at the very end of the process chain when the tablet is formed. As an alternative to the mechanistic approaches to address sticking, we introduce two different machine learning strategies to predict sticking directly from the chemical formula of the drug substance, represented by molecular descriptors. An empirical database for sticking behaviour was developed and used to train the machine learning (ML) algorithms to predict sticking properties from molecular descriptors. The ML model has successfully classified sticking/non-sticking behaviour of powders with 100% separation. Predictions were made for materials in the handbook of Pharmaceutical Excipients and a subset of molecules included in the ChemBL database, demonstrating the potential use of machine learning approaches to screen for sticking propensity early at drug discovery and development stages. This is the first-time molecular descriptors and machine learning were used to predict and screen for sticking behaviour. The method has potential to transform the development of medicines by providing manufacturability information at drug screening stage and is potentially applicable to other manufacturing problems controlled by the chemistry of the drug substance.

虚拟筛选药物材料,以了解药用片剂的可制造性。
片剂等药物固体制剂的生产涉及大量连续的加工操作,包括药物的结晶、制粒、干燥、研磨、制剂的混合和压实。每个步骤都充满了生产问题。粉末与压制工具表面的意外粘附(即粘连)是一个经常发生且极具破坏性的问题,它发生在片剂成型这一工艺链的最末端。作为解决粘连问题的机械方法的替代方案,我们引入了两种不同的机器学习策略,直接从分子描述符表示的药物化学式中预测粘连。我们开发了一个有关粘附行为的经验数据库,用于训练机器学习(ML)算法,以便从分子描述符预测粘附特性。ML 模型成功地对粉末的粘性/非粘性行为进行了分类,分离度达到 100%。对《药用辅料手册》中的材料和 ChemBL 数据库中的分子子集进行了预测,证明了机器学习方法在药物发现和开发阶段早期筛选粘附倾向的潜在用途。这是首次使用分子描述符和机器学习来预测和筛选粘附行为。通过在药物筛选阶段提供可制造性信息,该方法有望改变药物的开发,并有可能适用于由药物化学控制的其他制造问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
10.70
自引率
8.60%
发文量
951
审稿时长
72 days
期刊介绍: The International Journal of Pharmaceutics is the third most cited journal in the "Pharmacy & Pharmacology" category out of 366 journals, being the true home for pharmaceutical scientists concerned with the physical, chemical and biological properties of devices and delivery systems for drugs, vaccines and biologicals, including their design, manufacture and evaluation. This includes evaluation of the properties of drugs, excipients such as surfactants and polymers and novel materials. The journal has special sections on pharmaceutical nanotechnology and personalized medicines, and publishes research papers, reviews, commentaries and letters to the editor as well as special issues.
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