Zhang Ying, Alonzo Todd A
Department of Biostatistics, University of Southern California, Keck School of Medicine, Los Angeles, CA, USA.
Stat Methods Med Res. 2018 Mar;27(3):715-739. doi: 10.1177/0962280217742541. Epub 2018 Jan 17.
The receiver-operating characteristic surface is frequently used for presenting the accuracy of a diagnostic test for three-category classification problems. One common problem that can complicate the estimation of the volume under receiver-operating characteristic surface is that not all subjects receive the verification of the true disease status. Estimation based only on data from subjects with verified disease status may be biased, which is referred to as verification bias. In this article, we propose new verification bias correction methods to estimate the volume under receiver-operating characteristic surface for a continuous diagnostic test. We assume the verification process is missing not at random, which means the missingness might be related to unobserved clinical characteristics. Three classes of estimators are proposed, namely, inverse probability weighted, imputation-based, and doubly robust estimators. A jackknife estimator of variance is derived for all the proposed volume under receiver-operating characteristic surface estimators. The finite sample properties of the new estimators are examined via simulation studies. We illustrate our methods with data collected from Alzheimer's disease research.
接收者操作特征曲面常用于呈现针对三类分类问题的诊断测试的准确性。一个可能使接收者操作特征曲面下体积估计复杂化的常见问题是,并非所有受试者都能得到真实疾病状态的验证。仅基于已验证疾病状态的受试者数据进行估计可能会产生偏差,这被称为验证偏差。在本文中,我们提出了新的验证偏差校正方法,以估计连续诊断测试的接收者操作特征曲面下的体积。我们假设验证过程并非随机缺失,这意味着缺失可能与未观察到的临床特征有关。提出了三类估计器,即逆概率加权估计器、基于插补的估计器和双重稳健估计器。为所有提出的接收者操作特征曲面下体积估计器推导了方差的刀切估计器。通过模拟研究检验了新估计器的有限样本性质。我们用从阿尔茨海默病研究中收集的数据说明了我们的方法。