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A cross-validation deletion-substitution-addition model selection algorithm: Application to marginal structural models

机译:交叉验证删除-替代-添加模型选择算法:在边际结构模型中的应用

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摘要

The cross-validation deletion-substitution-addition (cvDSA) algorithm is based on data-adaptive estimation methodology to select and estimate marginal structural models (MSMs) for point treatment studies as well as models for conditional means where the outcome is continuous or binary. The algorithm builds and selects models based on userdefined criteria for model selection, and utilizes a loss function-based estimation procedure to distinguish between different model fits. In addition, the algorithm selects models based on cross-validation methodology to avoid "over-fitting" data. The cvDSA routine is an R software package available for download. An alternative R-package (DSA) based on the same principles as the cvDSA routine (i.e., cross-validation, loss function), but one that is faster and with additional refinements for selection and estimation of conditional means, is also available for download. Analyses of real and simulated data were conducted to demonstrate the use of these algorithms, and to compare MSMs where the causal effects were assumed (i.e., investigator-defined), with MSMs selected by the cvDSA. The package was used also to select models for the nuisance parameter (treatment) model to estimate the MSM parameters with inverse-probability of treatment weight (IPTW) estimation. Other estimation procedures (i.e., G-computation and double robust IPTW) are available also with the package.
机译:交叉验证删除-替代-加法(cvDSA)算法基于数据自适应估计方法,用于选择和估计用于点治疗研究的边际结构模型(MSM)以及用于结果为连续或二进制的条件均值模型。该算法基于用户定义的模型选择标准建立和选择模型,并利用基于损失函数的估算程序来区分不同的模型拟合。另外,该算法基于交叉验证方法选择模型,以避免“过度拟合”数据。 cvDSA例程是一个R软件包,可以下载。也可以下载另一种R-package(DSA),它基于与cvDSA例程相同的原理(即,交叉验证,损失函数),但速度更快,并且具有用于选择和估计条件均值的附加改进功能,它也可以下载。 。进行了真实和模拟数据的分析,以证明这些算法的使用,并比较假定因果效应(即由研究者定义)的MSM与cvDSA选择的MSM。该软件包还用于选择扰动参数(治疗)模型的模型,以估计具有治疗权重(IPTW)的反概率的MSM参数。套件中还提供了其他估算程序(例如,G计算和双重鲁棒IPTW)。

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