Department of Statistics, George Mason University, Fairfax, VA 22030, USA.
Stat Med. 2013 Jun 15;32(13):2209-20. doi: 10.1002/sim.5654. Epub 2012 Oct 11.
We propose efficient nonparametric statistics to compare medical imaging modalities in multi-reader multi-test data and to compare markers in longitudinal ROC data. The proposed methods are based on the weighted area under the ROC curve, which includes the area under the curve and the partial area under the curve as special cases. The methods maximize the local power for detecting the difference between imaging modalities. We develop the asymptotic results of the proposed methods under a complex correlation structure. Our simulation studies show that the proposed statistics result in much better powers than existing statistics. We apply the proposed statistics to an endometriosis diagnosis study.
我们提出了有效的非参数统计方法,用于比较多读者多测试数据中的医学成像模式,并比较纵向 ROC 数据中的标志物。所提出的方法基于 ROC 曲线下的加权面积,它包括曲线下面积和部分曲线下面积作为特例。该方法最大限度地提高了检测成像模式之间差异的局部功效。我们在复杂相关结构下发展了所提出方法的渐近结果。我们的模拟研究表明,所提出的统计量比现有统计量具有更好的功效。我们将所提出的统计方法应用于子宫内膜异位症诊断研究。