Chakraborty D P, Yoon Hong-Jun
Department of Radiology, University of Pittsburgh, 3520 Forbes Avenue, Parkvale Building, Room 109, Pittsburgh, Pennsylvania 15261, USA.
Med Phys. 2008 Feb;35(2):435-45. doi: 10.1118/1.2820902.
In 1996 Swensson published an observer model that predicted receiver operating characteristic (ROC), localization ROC (LROC), free-response ROC (FROC) and alternative FROC (AFROC) curves, thereby achieving "unification" of different observer performance paradigms. More recently a model termed initial detection and candidate analysis (IDCA) has been proposed for fitting computer aided detection (CAD) generated FROC data, and recently a search model for human observer FROC data has been proposed. The purpose of this study was to derive IDCA and the search model based expressions for operating characteristics, and to compare the predictions to the Swensson model. For three out of four mammography CAD data sets all models yielded good fits in the high-confidence region, i.e., near the lower end of the plots. The search model and IDCA tended to better fit the data in the low-confidence region, i.e., near the upper end of the plots, particularly for FROC curves for which the Swensson model predictions departed markedly from the data. For one data set none of the models yielded satisfactory fits. A unique characteristic of search model and IDCA predicted operating characteristics is that the operating point is not allowed to move continuously to the lowest confidence limit of the corresponding Swensson model curves. This prediction is actually observed in the CAD raw data and it is the primary reason for the poor FROC fits of the Swensson model in the low-confidence region.
1996年,斯文森发表了一种观测者模型,该模型可预测接收器操作特性(ROC)、定位ROC(LROC)、自由响应ROC(FROC)和替代FROC(AFROC)曲线,从而实现了不同观测者性能范式的“统一”。最近,有人提出了一种名为初始检测和候选分析(IDCA)的模型,用于拟合计算机辅助检测(CAD)生成的FROC数据,并且最近还提出了一种针对人类观测者FROC数据的搜索模型。本研究的目的是推导基于IDCA和搜索模型的操作特性表达式,并将这些预测结果与斯文森模型进行比较。对于四个乳腺X线摄影CAD数据集中的三个,所有模型在高置信度区域(即图的下端附近)都给出了良好的拟合。搜索模型和IDCA在低置信度区域(即图的上端附近)往往能更好地拟合数据,特别是对于斯文森模型预测与数据明显偏离的FROC曲线。对于一个数据集,没有一个模型给出令人满意的拟合。搜索模型和IDCA预测的操作特性的一个独特之处在于,操作点不允许连续移动到相应斯文森模型曲线的最低置信极限。这一预测实际上在CAD原始数据中得到了观察,并且这是斯文森模型在低置信度区域FROC拟合不佳的主要原因。