Lu Wenbin, Li Lexin
Department of Statistics, North Carolina State University, Raleigh, NC 27695, USA.
Biostatistics. 2008 Oct;9(4):658-67. doi: 10.1093/biostatistics/kxn005. Epub 2008 Mar 15.
We propose a general class of nonlinear transformation models for analyzing censored survival data, of which the nonlinear proportional hazards and proportional odds models are special cases. A cubic smoothing spline-based component-wise boosting algorithm is derived to estimate covariate effects nonparametrically using the gradient of the marginal likelihood, that is computed using importance sampling. The proposed method can be applied to survival data with high-dimensional covariates, including the case when the sample size is smaller than the number of predictors. Empirical performance of the proposed method is evaluated via simulations and analysis of a microarray survival data.
我们提出了一类用于分析删失生存数据的一般非线性变换模型,其中非线性比例风险模型和比例优势模型是特殊情况。我们推导了一种基于三次平滑样条的逐分量提升算法,使用重要性抽样计算的边际似然梯度非参数估计协变量效应。所提出的方法可应用于具有高维协变量的生存数据,包括样本量小于预测变量数量的情况。通过模拟和对微阵列生存数据的分析评估了所提出方法的实证性能。