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Reinforcement Learning Based Model Selection and Parameter Estimation for Pharmacokinetic Analysis in Drug Selection

机译:基于增强学习的药代动力学分析模型选择和参数估计

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Selecting effective drug candidate is a crucial procedure in drug discovery and development. Dynamic Positron Emission Tomography (dPET) is an ideal imaging tool for pharmacokinetic analysis in drug selection, because it offers possibilities to tract the whole procedure of drug delivery and metabolism when the drug is radio-labeled properly. However, various challenges remain: 1) the kinetic models for drugs are generally very complicated and selecting a proper model is very difficult, 2) solving the kinetic models often needs special mathematical considerations, 3) dPET imaging suffers from poor spatial and temporal resolutions, 4) blood sampling is required in pharmacokinetic analysis, but it is very hard to generate an accurate one. In this paper, we propose a reinforcement learning based model selection and parameter estimation method for pharmacokinetic analysis in drug selection. We first utilize several physical constraints to select the best possible model from a bank of models, and then estimate the kinetic parameters based on the selected model. The method highly improves the accuracy in model selection and can estimate corresponding kinetic parameters even with an inaccurate blood sampling. The quantitative accuracy of our method is tested by experiments using digital phantom and Monte Carlo simulations. Furthermore, 3 cases of patient studies on model selection and parameter estimation are also provided to show the potentials to reduce drug development cycle and save money for the pharmaceutical industry.
机译:选择有效的药物候选人是药物发现和发展的关键程序。动态正电子发射断层扫描(DPET)是药物选择中药代动力学分析的理想成像工具,因为当药物正确标记时,它提供了在药物的无线电标记的整个药物递送和新陈代谢的过程中的可能性。然而,各种挑战仍然存在:1)药物的动力学模型通常非常复杂,选择适当的模型是非常困难的,2)解决动力学模型通常需要特殊的数学考虑,3)DPET成像患有差的空间和时间分辨率, 4)药代动力学分析需要血液取样,但很难产生准确的。本文提出了一种基于增强基于学习的药代动力学分析的基于增强学习的模型选择和参数估计方法。我们首先利用了几个物理约束来选择来自模型库的最佳模型,然后根据所选模型估计动态参数。该方法高度提高了模型选择中的准确性,并且即使具有不准确的血液采样,也可以估计相应的动力学参数。我们的方法的定量精度是通过使用数码幻影和蒙特卡罗模拟的实验来测试的。此外,还提供了用于模型选择和参数估计的3例患者研究,以显示减少药物开发周期并为制药行业省钱的潜力。

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