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High-throughput in-silico prediction of ionization equilibria for pharmacokinetic modeling

机译:高通量计算机模拟药物代谢动力学模型的电离平衡

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摘要

Chemical ionization plays an important role in many aspects of pharmacokinetic (PK) processes such as protein binding, tissue partitioning, and apparent volume of distribution at steady state (Vdss). Here, estimates of ionization equilibrium constants (i.e., pKa) were analyzed for 8,132 pharmaceuticals and 24,281 other compounds to which humans might be exposed in the environment. Results revealed broad differences in the ionization of pharmaceutical chemicals and chemicals with either near-field (in the home) or far-field sources. The utility of these high-throughput ionization predictions was evaluated via a case-study of predicted PK Vdss for 22 compounds monitored in the blood and serum of the U.S. population by the U.S. Centers for Disease Control and Prevention National Health and Nutrition Examination Survey (NHANES). The chemical distribution ratio between water and tissue was estimated using predicted ionization states characterized by pKa. Probability distributions corresponding to ionizable atom types (IATs) were then used to analyze the sensitivity of predicted Vdss on predicted pKa using Monte Carlo methods. 8 of the 22 compounds were predicted to be ionizable. For 5 of the 8 the predictions based upon ionization are significantly different from what would be predicted for a neutral compound. For all but one (foramsulfuron), the probability distribution of predicted Vdss generated by IAT sensitivity analysis spans both the neutral prediction and the prediction using ionization. As new data sets of chemical-specific information on metabolism and excretion for hundreds of chemicals are being made available (e.g., ), high-throughput methods for calculating Vdss and tissue-specific PK distribution coefficients will allow the rapid construction of PK models to provide context for both biomonitoring data and high-throughput toxicity screening studies such as Tox21 and ToxCast.
机译:化学电离在药代动力学(PK)过程的许多方面起着重要作用,例如蛋白质结合,组织分配和稳态下的表观分布量(Vdss)。在这里,分析了8132种药物和24281种其他可能在环境中暴露给人类的化合物的电离平衡常数(即pKa)。结果表明,药物化学物质和具有近场(在家中)或远场源的化学物质的电离差异很大。这些高通量电离预测的效用是通过对美国疾病控制和预防中心国家健康与营养检查调查(NHANES)在美国人群的血液和血清中监测的22种化合物的预测PK Vdss进行案例研究而评估的)。使用以pKa为特征的预测电离态估算水和组织之间的化学分布比。然后,使用蒙特卡罗方法,将对应于可电离原子类型(IAT)的概率分布用于分析预测Vdss对预测pKa的敏感性。预计22种化合物中有8种可离子化。对于8个中的5个,基于电离的预测与针对中性化合物的预测存在显着差异。对于除了一个(甲磺隆)以外的所有化合物,IAT灵敏度分析生成的预测Vdss的概率分布既跨越中性预测,也跨越使用电离的预测。随着有关数百种化学物质代谢和排泄的化学物质特定信息的新数据集可用(例如),用于计算Vdss和组织特定PK分布系数的高通量方法将允许快速构建PK模型,以提供生物监测数据和高通量毒性筛选研究(例如Tox21和ToxCast)的背景。

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