Department of Radiology, Stanford University, Stanford, California 94305, United States.
Department of Radiology, University of Michigan, Ann Arbor, Michigan 48109, United States.
ACS Chem Neurosci. 2022 Jun 15;13(12):1675-1683. doi: 10.1021/acschemneuro.2c00269. Epub 2022 May 23.
Positron emission tomography (PET) is a highly sensitive and versatile molecular imaging modality that leverages radiolabeled molecules, known as radiotracers, to interrogate biochemical processes such as metabolism, enzymatic activity, and receptor expression. The ability to probe specific molecular and cellular events longitudinally in a noninvasive manner makes PET imaging a particularly powerful technique for studying the central nervous system (CNS) in both health and disease. Unfortunately, developing and translating a single CNS PET tracer for clinical use is typically an extremely resource-intensive endeavor, often requiring synthesis and evaluation of numerous candidate molecules. While existing methods are beginning to address the challenge of derisking molecules prior to costly PET studies, most require a significant investment of resources and possess substantial limitations. In the context of CNS drug development, significant time and resources have been invested into the development and optimization of computational methods, particularly involving machine learning, to streamline the design of better CNS therapeutics. However, analogous efforts developed and validated for CNS radiotracer design are conspicuously limited. In this Perspective, we overview the requirements and challenges of CNS PET tracer design, survey the most promising computational methods for CNS drug design, and bridge these two areas by discussing the potential applications and impact of computational design tools in CNS radiotracer design.
正电子发射断层扫描(PET)是一种高度敏感和通用的分子成像方式,利用放射性标记分子,称为放射性示踪剂,来探究代谢、酶活性和受体表达等生化过程。以非侵入性方式纵向探测特定分子和细胞事件的能力使 PET 成像成为研究中枢神经系统(CNS)在健康和疾病中的一种特别强大的技术。不幸的是,开发和转化用于临床使用的单一 CNS PET 示踪剂通常是一项极其耗费资源的努力,通常需要合成和评估大量候选分子。虽然现有的方法开始在昂贵的 PET 研究之前解决降低风险的分子的挑战,但大多数方法都需要大量资源投入,并且存在很大的局限性。在 CNS 药物开发的背景下,已经投入了大量的时间和资源来开发和优化计算方法,特别是涉及机器学习,以简化更好的 CNS 治疗药物的设计。然而,为 CNS 示踪剂设计开发和验证的类似工作明显受到限制。在本观点中,我们综述了 CNS PET 示踪剂设计的要求和挑战,调查了用于 CNS 药物设计的最有前途的计算方法,并通过讨论计算设计工具在 CNS 示踪剂设计中的潜在应用和影响来弥合这两个领域。