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
量子力学
政治
物理
法学
政治学
作者
Jean‐Michel Gries,Davide Verotta
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.
科研通智能强力驱动
Strongly Powered by AbleSci AI