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The Assessment of Non-Linear Effects in Clinical Research

机译:临床研究中的非线性效应评估

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Background: Novel models for the assessment of non-linear data are being developed for the benefit of making better predictions from the data. Objective: To review traditional and modern models. Results, and Conclusions: 1) Logit and probit transformations are often successfully used to mimic a linear model. Logistic regression, Cox regression, Poisson regression, and Markow modeling are examples of logit transformation; 2) Either the x- or y-axis or both of them can be logarithmically transformed. Also Box Cox transformation equations and ACE (alternating conditional expectations) or AVAS (additive and variance stabilization for regression) packages are simple empirical methods often successful for linearly remodeling of non-linear data; 3) Data that are sinusoidal, can, generally, be successfully modeled using polynomial regression or Fourier analysis; 4) For exponential patterns like plasma concentration time relationships exponential modeling with or without Laplace transformations is a possibility. Spline and Loess are computationally intensive modern methods, suitable for smoothing data patterns, if the data plot leaves you with no idea of the relationship between the y- and x-values. There are no statistical tests to assess the goodness of fit of these methods, but it is always better than that of traditional models.
机译:背景技术:正在开发用于评估非线性数据的新型模型,以便从数据中做出更好的预测。目的:回顾传统和现代模型。结果和结论:1)Logit和Probit转换通常成功地用于模拟线性模型。 Logistic回归的示例包括Logistic回归,Cox回归,泊松回归和Markow建模。 2)x轴或y轴或两者都可以对数转换。 Box Cox变换方程和ACE(替代条件期望值)或AVAS(回归的加法和方差稳定)程序包也是简单的经验方法,通常可以成功地对非线性数据进行线性重塑。 3)通常可以使用多项式回归或傅里叶分析来成功建模正弦数据; 4)对于诸如血浆浓度时间关系之类的指数模式,有或没有拉普拉斯变换的指数建模都是可能的。如果数据图使您不了解y值和x值之间的关系,则Spline和Loess是计算密集型的现代方法,适用于平滑数据模式。没有统计测试可以评估这些方法的拟合优度,但是它总是比传统模型更好。

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