Salahinejad Maryam, Winkler David A, Shiri Fereshteh
Radiation Application Research School, Nuclear Science and Technology Research Institute (NSTRI), Tehran, Iran.
Department of Biochemistry and Chemistry, La Trobe Institute for Molecular Science, La Trobe University, Melbourne, Victoria, 3086, Australia.
Curr Radiopharm. 2022;15(4):271-319. doi: 10.2174/1874471015666220831091403.
There has been impressive growth in the use of radiopharmaceuticals for therapy, selective toxic payload delivery, and noninvasive diagnostic imaging of disease. The increasing timeframes and costs involved in the discovery and development of new radiopharmaceuticals have driven the development of more efficient strategies for this process. Computer-Aided Drug Design (CADD) methods and Machine Learning (ML) have become more effective over the last two decades for drug and materials discovery and optimization. They are now fast, flexible, and sufficiently accurate to accelerate the discovery of new molecules and materials. Radiopharmaceuticals have also started to benefit from rapid developments in computational methods. Here, we review the types of computational molecular design techniques that have been used for radiopharmaceuticals design. We also provide a thorough examination of success stories in the design of radiopharmaceuticals, and the strengths and weaknesses of the computational methods. We begin by providing a brief overview of therapeutic and diagnostic radiopharmaceuticals and the steps involved in radiopharmaceuticals design and development. We then review the computational design methods used in radiopharmaceutical studies, including molecular mechanics, quantum mechanics, molecular dynamics, molecular docking, pharmacophore modelling, and datadriven ML. Finally, the difficulties and opportunities presented by radiopharmaceutical modelling are highlighted. The review emphasizes the potential of computational design methods to accelerate the production of these very useful clinical radiopharmaceutical agents and aims to raise awareness among radiopharmaceutical researchers about computational modelling and simulation methods that can be of benefit to this field.
放射性药物在治疗、选择性毒性载荷递送和疾病的非侵入性诊断成像方面的应用有了显著增长。新放射性药物研发过程中涉及的时间框架延长和成本增加,推动了该过程中更高效策略的发展。在过去二十年中,计算机辅助药物设计(CADD)方法和机器学习(ML)在药物和材料发现及优化方面变得更加有效。它们现在速度快、灵活性高且足够准确,能够加速新分子和材料的发现。放射性药物也开始受益于计算方法的快速发展。在此,我们回顾了用于放射性药物设计的计算分子设计技术的类型。我们还对放射性药物设计中的成功案例以及计算方法的优缺点进行了全面审视。我们首先简要概述治疗性和诊断性放射性药物以及放射性药物设计和开发所涉及的步骤。然后我们回顾放射性药物研究中使用的计算设计方法,包括分子力学、量子力学、分子动力学、分子对接、药效团建模和数据驱动的机器学习。最后,强调了放射性药物建模所带来的困难和机遇。本综述强调了计算设计方法在加速这些非常有用的临床放射性药物制剂生产方面的潜力,并旨在提高放射性药物研究人员对可造福该领域的计算建模和模拟方法的认识。