LINEAR MIXED-EFFECT MULTIVARIATE ADAPTIVE REGRESSION SPLINES APPLIED TO NONLINEAR PHARMACOKINETICS DATA

多元自适应回归样条 代表(政治) 药代动力学 数学 线性模型 线性回归 非线性系统 多元统计 计算机科学 贝叶斯多元线性回归 统计 药理学 医学 物理 量子力学 政治 政治学 法学
作者
Jean‐Michel Gries,Davide Verotta
出处
期刊:Journal of Biopharmaceutical Statistics [Taylor & Francis]
卷期号:10 (3): 383-398 被引量:3
标识
DOI:10.1081/bip-100102501
摘要

In a frequently performed pharmacokinetics study, different subjects are given different doses of a drug. After each dose is given, drug concentrations are observed according to the same sampling design. The goal of the experiment is to obtain a representation for the pharmacokinetics of the drug, and to determine if drug concentrations observed at different times after a dose are linear in respect to dose. The goal of this paper it to obtain a representation for concentration as a function of time and dose, which (a) makes no assumptions on the underlying pharmacokinetics of the drug; (b) takes into account the repeated measure structure of the data; and (c) detects nonlinearities in respect to dose. To address (a) we use a multivariate adaptive regression splines representation (MARS), which we recast into a linear mixed-effects model, addressing (b). To detect nonlinearity we describe a general algorithm that obtains nested (mixed-effect) MARS representations. In the pharmacokinetics application, the algorithm obtains representations containing time, and time and dose, respectively, with the property that the bases functions of the first representation are a subset of the second. Standard statistical model selection criteria are used to select representations linear or nonlinear in respect to dose. The method can be applied to a variety of pharmacokinetics (and pharmacodynamic) preclinical and phase I–III trials. Examples of applications of the methodology to real and simulated data are reported.

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