Swensson R G
Department of Radiology, The University of Pittsburgh, Pennsylvania 15261, USA.
Med Decis Making. 2000 Apr-Jun;20(2):170-85. doi: 10.1177/0272989X0002000203.
A recently developed model uses the localization of abnormalities on images to improve statistical precision in measuring detection accuracy Az, the area below an observer's receiver operating characteristic (ROC) curve for ratings of sampled normal and abnormal cases. This study evaluated that improvement by investigating how much the standard error of estimated Az decreased when the statistical analysis included localization data. Comparisons of analyses with vs without localizations were made for: 1) the estimates of Az from observers' rating ROC curves for nodular lesions on clinical chest films and liver CT scans; 2) the probability of correct choices between paired samples of normal and abnormal cases (equivalent to Az); and 3) the sampling distributions of Az measured in Monte Carlo simulations of 2,000 independent rating experiments. Localization information considerably improved the precision of Az estimates, particularly when detection accuracy was low (Az approximately 0.60). These data provided roughly the same benefits in estimation precision as would two-to-fourfold increases in the sizes of both 1) the samples of positive and negative cases and 2) the observer samples used to estimate Az means.
一种最近开发的模型利用图像上异常的定位来提高测量检测准确性(Az)时的统计精度,(Az)是观察者对采样的正常和异常病例进行评级的接收器操作特征(ROC)曲线下方的面积。本研究通过调查当统计分析纳入定位数据时估计的(Az)的标准误差降低了多少来评估这种改进。对有定位和无定位的分析进行了比较,比较内容包括:1)根据观察者对临床胸部X光片和肝脏CT扫描上结节性病变的评级ROC曲线估计的(Az);2)正常和异常病例配对样本之间正确选择的概率(等同于(Az));3)在2000次独立评级实验的蒙特卡洛模拟中测量的(Az)的抽样分布。定位信息显著提高了(Az)估计的精度,尤其是在检测准确性较低((Az)约为0.60)时。这些数据在估计精度方面提供的益处大致等同于将1)阳性和阴性病例样本以及2)用于估计(Az)均值的观察者样本的大小增加两到四倍所带来的益处。