Malloy Elizabeth J, Spiegelman Donna, Eisen Ellen A
Department of Mathematics and Statistics, American University, Washington, DC 20016, USA.
Comput Stat Data Anal. 2009 May 15;53(7):2605-2616. doi: 10.1016/j.csda.2008.12.008.
This article presents an application and a simulation study of model fit criteria for selecting the optimal degree of smoothness for penalized splines in Cox models. The criteria considered were the Akaike information criterion, the corrected AIC, two formulations of the Bayesian information criterion, and a generalized cross-validation method. The estimated curves selected by the five methods were compared to each other in a study of rectal cancer mortality in autoworkers. In the stimulation study, we estimated the fit of the penalized spline models in six exposure-response scenarios, using the five model fit criteria. The methods were compared based on a mean squared-error score and the power and size of hypothesis tests for any effect and for detecting nonlinearity. All comparisons were made across a range in the total sample size and number of cases.
本文介绍了用于在Cox模型中选择惩罚样条最优平滑度的模型拟合准则的一个应用和一项模拟研究。所考虑的准则有赤池信息准则、校正后的AIC、贝叶斯信息准则的两种形式以及一种广义交叉验证方法。在一项针对汽车工人直肠癌死亡率的研究中,对这五种方法所选择的估计曲线进行了相互比较。在模拟研究中,我们使用这五种模型拟合准则,在六种暴露-反应情形下估计了惩罚样条模型的拟合情况。基于均方误差得分以及针对任何效应和检测非线性的假设检验的功效和规模对这些方法进行了比较。所有比较都是在总样本量和病例数的一个范围内进行的。