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Model-Based Individualized Treatment of Chemotherapeutics: Bayesian Population Modeling and Dose Optimization

机译:基于模型的化学疗法个体化治疗:贝叶斯群体建模和剂量优化

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摘要

6-Mercaptopurine (6-MP) is one of the key drugs in the treatment of many pediatric cancers, auto immune diseases and inflammatory bowel disease. 6-MP is a prodrug, converted to an active metabolite 6-thioguanine nucleotide (6-TGN) through enzymatic reaction involving thiopurine methyltransferase (TPMT). Pharmacogenomic variation observed in the TPMT enzyme produces a significant variation in drug response among the patient population. Despite 6-MP’s widespread use and observed variation in treatment response, efforts at quantitative optimization of dose regimens for individual patients are limited. In addition, research efforts devoted on pharmacogenomics to predict clinical responses are proving far from ideal. In this work, we present a Bayesian population modeling approach to develop a pharmacological model for 6-MP metabolism in humans. In the face of scarcity of data in clinical settings, a global sensitivity analysis based model reduction approach is used to minimize the parameter space. For accurate estimation of sensitive parameters, robust optimal experimental design based on D-optimality criteria was exploited. With the patient-specific model, a model predictive control algorithm is used to optimize the dose scheduling with the objective of maintaining the 6-TGN concentration within its therapeutic window. More importantly, for the first time, we show how the incorporation of information from different levels of biological chain-of response (i.e. gene expression-enzyme phenotype-drug phenotype) plays a critical role in determining the uncertainty in predicting therapeutic target. The model and the control approach can be utilized in the clinical setting to individualize 6-MP dosing based on the patient’s ability to metabolize the drug instead of the traditional standard-dose-for-all approach.
机译:6-巯基嘌呤(6-MP)是治疗许多小儿癌症,自身免疫性疾病和炎性肠病的关键药物之一。 6-MP是一种前药,通过涉及硫嘌呤甲基转移酶(TPMT)的酶促反应转化为活性代谢物6-硫鸟嘌呤核苷酸(6-TGN)。 TPMT酶中观察到的药物基因组学变异在患者人群中产生了显着的药物反应变异。尽管6-MP的广泛使用和观察到的治疗反应有所不同,但针对个别患者的剂量方案的定量优化工作仍然有限。此外,事实证明,药物基因组学用于预测临床反应的研究工作远非理想。在这项工作中,我们提出一种贝叶斯人口建模方法,以开发人类6-MP代谢的药理模型。面对临床环境中数据的匮乏,使用基于全局灵敏度分析的模型缩减方法来最小化参数空间。为了准确估计敏感参数,利用了基于D最优性准则的鲁棒性最优实验设计。对于特定于患者的模型,模型预测控制算法用于优化剂量计划,目的是将6-TGN浓度保持在其治疗范围内。更重要的是,我们首次展示了来自不同水平的生物反应链(即基因表达-酶表型-药物表型)的信息整合如何在确定预测治疗目标的不确定性中起关键作用。该模型和对照方法可在临床环境中用于根据患者代谢药物的能力来个性化6-MP剂量,而不是使用传统的“所有人都标准剂量”方法。

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