计算机模拟方法在小分子PET示踪剂血脑屏障通透性预测中的应用

E Johanna L Stéen, Danielle J Vugts, Albert D Windhorst
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摘要

设计用于中枢神经系统(CNS)靶点的正电子发射断层扫描(PET)示踪剂具有挑战性。这些示踪剂除了对目标具有高亲和力和高选择性外,还必须能够穿过血脑屏障(BBB)。由于估计只有一小部分小分子能够穿过血脑屏障,因此能够在开发早期阶段预测渗透率的工具非常重要。其中一个工具是预测血脑屏障渗透率的计算机模型。到目前为止,这些模型都是基于中枢神经系统药物建立的,只有一个例外。在此,我们试图讨论和分析基于中枢神经系统药物建立的计算机预测是否也可以应用于中枢神经系统PET示踪剂,或者是否需要专门的模型用于后者。根据预测中考虑的因素,即被动扩散或主动内流/外排,可能需要建立基于CNS PET示踪剂的模型。在简短的介绍之后,对一些选定的硅bbb渗透率预测进行了概述,并介绍了该主题的简短历史背景。此外,结合先前报道的CNS PET示踪剂数据集,在几个选择的模型和预测血脑屏障通透性的指南中进行了评估。所选模型要么只预测被动扩散,要么也预测ADME(吸收、分布、代谢和排泄)参数的影响。综上所述,我们讨论了建立CNS PET示踪剂预测模型的潜在需求,并提出了建立该模型的关键问题。
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The Application of in silico Methods for Prediction of Blood-Brain Barrier Permeability of Small Molecule PET Tracers.

Designing positron emission tomography (PET) tracers for targets in the central nervous system (CNS) is challenging. Besides showing high affinity and high selectivity for their intended target, these tracers have to be able to cross the blood-brain barrier (BBB). Since only a small fraction of small molecules is estimated to be able to cross the BBB, tools that can predict permeability at an early stage during the development are of great importance. One such tool is in silico models for predicting BBB-permeability. Thus far, such models have been built based on CNS drugs, with one exception. Herein, we sought to discuss and analyze if in silico predictions that have been built based on CNS drugs can be applied for CNS PET tracers as well, or if dedicated models are needed for the latter. Depending on what is taken into account in the prediction, i.e., passive diffusion or also active influx/efflux, there may be a need for a model build on CNS PET tracers. Following a brief introduction, an overview of a few selected in silico BBB-permeability predictions is provided along with a short historical background to the topic. In addition, a combination of previously reported CNS PET tracer datasets were assessed in a couple of selected models and guidelines for predicting BBB-permeability. The selected models were either predicting only passive diffusion or also the influence of ADME (absorption, distribution, metabolism and excretion) parameters. To conclude, we discuss the potential need of a prediction model dedicated for CNS PET tracers and present the key issues in respect to setting up a such a model.

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