Martínez-Camblor Pablo, Pardo-Fernández Juan Carlos
1 The Dartmouth Institute of Health Police and Clinical Practice, Geisel School of Medicine, Dartmouth College, Hanover, NH, USA.
2 Universidad Autónoma de Chile, Santiago, Chile.
Stat Methods Med Res. 2018 Mar;27(3):651-674. doi: 10.1177/0962280217740786. Epub 2017 Nov 29.
The receiver operating characteristic curve is a popular graphical method often used to study the diagnostic capacity of continuous (bio)markers. When the considered outcome is a time-dependent variable, two main extensions have been proposed: the cumulative/dynamic receiver operating characteristic curve and the incident/dynamic receiver operating characteristic curve. In both cases, the main problem for developing appropriate estimators is the estimation of the joint distribution of the variables time-to-event and marker. As usual, different approximations lead to different estimators. In this article, the authors explore the use of a bivariate kernel density estimator which accounts for censored observations in the sample and produces smooth estimators of the time-dependent receiver operating characteristic curves. The performance of the resulting cumulative/dynamic and incident/dynamic receiver operating characteristic curves is studied by means of Monte Carlo simulations. Additionally, the influence of the choice of the required smoothing parameters is explored. Finally, two real-applications are considered. An R package is also provided as a complement to this article.
受试者工作特征曲线是一种常用的图形方法,常用于研究连续(生物)标志物的诊断能力。当所考虑的结果是一个随时间变化的变量时,已经提出了两种主要的扩展方法:累积/动态受试者工作特征曲线和事件发生/动态受试者工作特征曲线。在这两种情况下,开发合适估计量的主要问题是对事件发生时间和标志物变量的联合分布进行估计。与往常一样,不同的近似方法会导致不同的估计量。在本文中,作者探讨了使用双变量核密度估计量,该估计量考虑了样本中的删失观测值,并生成随时间变化的受试者工作特征曲线的平滑估计量。通过蒙特卡罗模拟研究了所得累积/动态和事件发生/动态受试者工作特征曲线的性能。此外,还探讨了所需平滑参数选择的影响。最后,考虑了两个实际应用。本文还提供了一个R包作为补充。