Rutgers, The State University of New Jersey, USA.
Department of Chemical and Biological Engineering, Princeton University, Princeton, NJ 08540, USA.
Adv Drug Deliv Rev. 2021 Apr;171:1-28. doi: 10.1016/j.addr.2020.11.009. Epub 2020 Nov 24.
Polymers are uniquely suited for drug delivery and biomaterial applications due to tunable structural parameters such as length, composition, architecture, and valency. To facilitate designs, researchers may explore combinatorial libraries in a high throughput fashion to correlate structure to function. However, traditional polymerization reactions including controlled living radical polymerization (CLRP) and ring-opening polymerization (ROP) require inert reaction conditions and extensive expertise to implement. With the advent of air-tolerance and automation, several polymerization techniques are now compatible with well plates and can be carried out at the benchtop, making high throughput synthesis and high throughput screening (HTS) possible. To avoid HTS pitfalls often described as "fishing expeditions," it is crucial to employ intelligent and big data approaches to maximize experimental efficiency. This is where the disruptive technologies of machine learning (ML) and artificial intelligence (AI) will likely play a role. In fact, ML and AI are already impacting small molecule drug discovery and showing signs of emerging in drug delivery. In this review, we present state-of-the-art research in drug delivery, gene delivery, antimicrobial polymers, and bioactive polymers alongside data-driven developments in drug design and organic synthesis. From this insight, important lessons are revealed for the polymer therapeutics community including the value of a closed loop design-build-test-learn workflow. This is an exciting time as researchers will gain the ability to fully explore the polymer structural landscape and establish quantitative structure-property relationships (QSPRs) with biological significance.
由于长度、组成、结构和价态等可调结构参数,聚合物非常适合药物输送和生物材料应用。为了便于设计,研究人员可能会以高通量的方式探索组合文库,以将结构与功能相关联。然而,传统的聚合反应,包括可控活性自由基聚合(CLRP)和开环聚合(ROP),需要惰性的反应条件和广泛的专业知识才能实施。随着耐空气性和自动化的出现,现在有几种聚合技术与微孔板兼容,可以在实验台上进行,从而实现高通量合成和高通量筛选(HTS)。为了避免通常被描述为“探险”的 HTS 陷阱,采用智能和大数据方法来最大限度地提高实验效率至关重要。这就是机器学习(ML)和人工智能(AI)的颠覆性技术可能发挥作用的地方。事实上,ML 和 AI 已经在小分子药物发现中发挥了作用,并在药物输送中显示出新兴的迹象。在这篇综述中,我们展示了药物输送、基因输送、抗菌聚合物和生物活性聚合物方面的最新研究进展,以及药物设计和有机合成方面的数据驱动发展。从这些见解中,聚合物治疗学领域的重要经验教训包括闭环设计-构建-测试-学习工作流程的价值。这是一个令人兴奋的时刻,因为研究人员将能够充分探索聚合物的结构景观,并建立具有生物学意义的定量结构-性质关系(QSPR)。