Semiparametric accelerated failure time (AFT) models are a useful alternative to Cox proportional hazards models, especially when the assumption of constant hazard ratios is untenable. However, rank-based criteria for fitting AFT models are often non-differentiable, which poses a computational challenge in high-dimensional settings. In this article, we propose a new alternating direction method of multipliers algorithm for fitting semiparametric AFT models by minimizing a penalized rank-based loss function. Our algorithm scales well in both the number of subjects and number of predictors; and can easily accommodate a wide range of popular penalties. To improve the selection of tuning parameters, we propose a new criterion which avoids some common problems in cross-validation with censored responses. Through extensive simulation studies, we show that our algorithm and software is much faster than existing methods (which can only be applied to special cases), and we show that estimators which minimize a penalized rank-based criterion often outperform alternative estimators which minimize penalized weighted least squares criteria. Application to nine cancer datasets further demonstrates that rank-based estimators of semiparametric AFT models are competitive with estimators assuming proportional hazards model in high-dimensional settings, whereas weighted least squares estimators are often not. A software package implementing the algorithm, along with a set of auxiliary functions, is available for download at github.com/ajmolstad/penAFT.
翻译:半偏差加速故障时间模型(AFT)是Cox成比例危害模型的有用替代物,特别是在假设常态危险比率是站不住脚的情况下。然而,基于等级的AFT模型安装标准往往无法区分,这在高维环境中构成一个计算挑战。在本条中,我们提出一种新的交替的乘数算法方法,以通过尽量减少一个受罚的按级损失函数来安装半对称 AFT模型。我们的算法尺度在主题和预测器数量上都非常优于各种预测器;而且很容易适应广泛的流行惩罚。为了改进调试参数的选择,我们提出了一个新的标准,避免了与受审查的反应进行交叉校准的一些常见问题。通过广泛的模拟研究,我们表明我们的算法和软件比现有方法(只能适用于特殊情况)要快得多。我们表明,尽可能降低受罚的按级标准定得分数的标准往往优于能尽量减少受罚的加权最低正方位标准;对九种癌症数据集的应用进一步表明,基于等级的AFTFT模型的定型估量模型/定位模型往往与可操作的Astimaim Astialim Stabitaimal Aslistal 和可与高级的定型的定型的定型的定型的固定的固定的固定的固定的固定的固定的固定的固定的固定的固定的固定的固定的AFFFTFTA-commasmasmasmasmasmasmatial,在与可与可操作的固定的计算。