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一种用于区间删失生存时间数据的集成方法。

An ensemble method for interval-censored time-to-event data.

作者信息

Yao Weichi, Frydman Halina, Simonoff Jeffrey S

机构信息

Department of Technology, Operations, and Statistics, Stern School of Business, New York University, 44 West 4th Street, New York, NY, USA.

出版信息

Biostatistics. 2021 Jan 28;22(1):198-213. doi: 10.1093/biostatistics/kxz025.

Abstract

Interval-censored data analysis is important in biomedical statistics for any type of time-to-event response where the time of response is not known exactly, but rather only known to occur between two assessment times. Many clinical trials and longitudinal studies generate interval-censored data; one common example occurs in medical studies that entail periodic follow-up. In this article, we propose a survival forest method for interval-censored data based on the conditional inference framework. We describe how this framework can be adapted to the situation of interval-censored data. We show that the tuning parameters have a non-negligible effect on the survival forest performance and guidance is provided on how to tune the parameters in a data-dependent way to improve the overall performance of the method. Using Monte Carlo simulations, we find that the proposed survival forest is at least as effective as a survival tree method when the underlying model has a tree structure, performs similarly to an interval-censored Cox proportional hazards model fit when the true relationship is linear, and outperforms the survival tree method and Cox model when the true relationship is nonlinear. We illustrate the application of the method on a tooth emergence data set.

摘要

区间删失数据分析在生物医学统计学中对于任何类型的事件发生时间响应都很重要,在这种情况下,响应时间并非确切已知,而仅知道发生在两个评估时间之间。许多临床试验和纵向研究都会产生区间删失数据;一个常见的例子出现在需要定期随访的医学研究中。在本文中,我们基于条件推断框架提出了一种用于区间删失数据的生存森林方法。我们描述了如何将此框架应用于区间删失数据的情况。我们表明,调整参数对生存森林性能有不可忽视的影响,并提供了如何以数据依赖的方式调整参数以提高该方法整体性能的指导。通过蒙特卡罗模拟,我们发现当基础模型具有树结构时,所提出的生存森林至少与生存树方法一样有效;当真实关系为线性时,其表现与区间删失Cox比例风险模型拟合相似;而当真实关系为非线性时,它优于生存树方法和Cox模型。我们说明了该方法在牙齿萌出数据集上的应用。

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