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Optimal sampling strategy development methodology using maximum a posteriori bayesian estimation.

机译:使用最大后验贝叶斯估计的最佳采样策略开发方法。

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摘要

Maximum a posteriori Bayesian (MAPB) pharmacokinetic parameter estimation is an accurate and flexible method of estimating individual pharmacokinetic parameters using individual blood concentrations and prior information. In the past decade, many studies have developed optimal sampling strategies to estimate pharmacokinetic parameters as accurately as possible using either multiple regression analysis or MAPB estimation. This has been done for many drugs, especially immunosuppressants and anticancer agents. Methods of development for optimal sampling strategies (OSS) are diverse and heterogeneous. This review provides a comprehensive overview of OSS development methodology using MAPB pharmacokinetic parameter estimation, determines the transferability of published OSSs, and compares sampling strategies determined by MAPB estimation and multiple regression analysis. OSS development has the following components: 1) prior distributions; 2) reference value determination; 3) optimal sampling time identification; and 4) validation of the OSS. Published OSSs often lack all data necessary for the OSS to be clinically transferable. MAPB estimation is similar to multiple regression analysis in terms of predictive performance but superior in flexibility.
机译:最大后验贝叶斯(MAPB)药代动力学参数估计是一种使用个体血药浓度和先验信息估计各个药代动力学参数的准确而灵活的方法。在过去的十年中,许多研究已经开发出最佳的采样策略,以使用多元回归分析或MAPB估计尽可能准确地估计药代动力学参数。对于许多药物,尤其是免疫抑制剂和抗癌药,已经做到了这一点。最佳采样策略(OSS)的开发方法是多种多样的。这篇综述提供了使用MAPB药代动力学参数估计的OSS开发方法的全面概述,确定了已发布OSS的可转移性,并比较了通过MAPB估计和多元回归分析确定的采样策略。 OSS开发包含以下组件:1)先前的发行版; 2)参考值确定; 3)最佳采样时间识别; 4)OSS的验证。已发布的OSS通常缺少使OSS可临床转移所需的所有数据。 MAPB估计在预测性能方面类似于多元回归分析,但灵活性更高。

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