聚合物长效注射剂药物释放的机器学习预测

Pauric Bannigan, F. Häse, Matteo Aldeghi, Zeqing Bao, Alán Aspuru-Guzik, C. Allen
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引用次数: 2

摘要

机器学习使包括药物发现和材料科学在内的多个领域取得了飞跃性进展。目前的研究探索了机器学习的应用,以解决药物配方开发中的一个关键挑战:预测聚合物长效注射剂的药物释放曲线。长效注射剂被认为是治疗慢性病最有前景的治疗策略之一,因为它们可以提高治疗效果、安全性和患者依从性。聚合物材料在这种药物配方策略中的使用可以提供无与伦比的多样性,因为它能够合成具有广泛性质的材料。然而,包括药物和聚合物的物理化学性质在内的多个参数之间的相互作用,几乎不可能先验地预测这些系统的性能。这导致需要通过广泛而耗时的体外实验来开发和表征广泛的候选制剂。在这项研究中,构建和训练了各种神经网络架构,从而准确预测了与实验数据一致的药物释放曲线。使用有限的训练数据识别这些广泛适用的机器学习模型的简单性证明了数据驱动方法在高级药物配方开发中的巨大潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Predictions of Drug Release from Polymeric Long Acting Injectables
Machine learning is enabling leap-step advances in a number of fields including drug discovery and materials science. The current study explores the application of machine learning to address a critical challenge in pharmaceutical formulation development: the prediction of drug release profiles from polymer-based long-acting injectables. Long acting injectables are considered one of the most promising therapeutic strategies for the treatment of chronic diseases as they can afford improved therapeutic efficacy, safety, and patient compliance. The use of polymer materials in such a drug formulation strategy can offer unparalleled diversity owing to the ability to synthesize materials with a wide range of properties. However, the interplay between multiple parameters, including the physicochemical properties of the drug and polymer, make it near to impossible to predict the performance of these systems a priori. This results in a need to develop and characterize a wide array of formulation candidates through extensive and time-consuming in vitro experimentation. In this study, various neural network architectures are constructed and trained, resulting in accurate predictions of drug release profiles that agree with experimental data. The simplicity with which these broadly applicable machine learning models are identified, using a limited amount of training data, is evidence of the promising potential of data-driven approaches in advanced pharmaceutical formulation development.
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