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基于深度神经网络的秩损失加速失效时间模型。

Deep Neural Network-Based Accelerated Failure Time Models Using Rank Loss.

机构信息

Department of Statistics (Research Institute of Materials and Energy Sciences), Jeonbuk National University, Jeonju, Republic of Korea.

Center for Advanced Image and Information Technology, Jeonbuk National University, Jeonju, Republic of Korea.

出版信息

Stat Med. 2024 Dec 10;43(28):5331-5343. doi: 10.1002/sim.10235. Epub 2024 Oct 12.

Abstract

An accelerated failure time (AFT) model assumes a log-linear relationship between failure times and a set of covariates. In contrast to other popular survival models that work on hazard functions, the effects of covariates are directly on failure times, the interpretation of which is intuitive. The semiparametric AFT model that does not specify the error distribution is sufficiently flexible and robust to depart from the distributional assumption. Owing to its desirable features, this class of model has been considered a promising alternative to the popular Cox model in the analysis of censored failure time data. However, in these AFT models, a linear predictor for the mean is typically assumed. Little research has addressed the non-linearity of predictors when modeling the mean. Deep neural networks (DNNs) have received much attention over the past few decades and have achieved remarkable success in a variety of fields. DNNs have a number of notable advantages and have been shown to be particularly useful in addressing non-linearity. Here, we propose applying a DNN to fit AFT models using Gehan-type loss combined with a sub-sampling technique. Finite sample properties of the proposed DNN and rank-based AFT model (DeepR-AFT) were investigated via an extensive simulation study. The DeepR-AFT model showed superior performance over its parametric and semiparametric counterparts when the predictor was nonlinear. For linear predictors, DeepR-AFT performed better when the dimensions of the covariates were large. The superior performance of the proposed DeepR-AFT was demonstrated using three real datasets.

摘要

加速失效时间(AFT)模型假设失效时间与一组协变量之间存在对数线性关系。与其他基于危险函数的流行生存模型不同,协变量的影响直接作用于失效时间,这使得解释更加直观。不指定误差分布的半参数 AFT 模型具有足够的灵活性和稳健性,可以偏离分布假设。由于其理想的特点,在分析删失失效时间数据时,该类模型被认为是流行的 Cox 模型的一种有前途的替代方法。然而,在这些 AFT 模型中,通常假设均值的线性预测器。在对均值进行建模时,很少有研究涉及预测器的非线性。在过去的几十年里,深度神经网络(DNN)受到了广泛的关注,并在许多领域取得了显著的成功。DNN 具有许多显著的优点,并被证明在处理非线性方面特别有用。在这里,我们提出使用 Gehan 型损失结合子采样技术应用 DNN 来拟合 AFT 模型。通过广泛的模拟研究,研究了所提出的 DNN 和基于秩的 AFT 模型(DeepR-AFT)的有限样本性质。当预测器是非线性时,DeepR-AFT 模型在参数和半参数对应模型中表现出更好的性能。对于线性预测器,当协变量的维度较大时,DeepR-AFT 表现更好。通过三个真实数据集证明了所提出的 DeepR-AFT 的优越性能。

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