IEEE Trans Med Imaging. 2017 May;36(5):1066-1075. doi: 10.1109/TMI.2016.2645881. Epub 2016 Dec 28.
This study introduces an individualized tool for identifying mammogram interpretation errors, called eye-Computer Assisted Perception (iCAP). iCAP consists of two modules, one which processes areas marked by radiologists as suspicious for cancer and classifies these as False Positive (FP) or True Positive (TP) decisions, while the second module classifies fixated but not marked locations as False Negative (FN) or True-Negative (TN) decisions. iCAP relies on both radiologists' gaze-related parameters, extracted from eye tracking data, and image-based features. In order to evaluate iCAP, eye tracking data from eight breast radiologists reading 120 two-view digital mammograms were collected. Fifty-nine cases had biopsy proven cancer. For each radiologist, a user-specific support vector machine model was built to classify the radiologist' s reported areas as TPs or FPs and fixated locations as TNs or FNs. The performances of the classifiers were evaluated by utilizing leave-one-out cross validation. iCAP was tested retrospectively in a simulated scenario in which it was assumed that the radiologists would accept all iCAP decisions. Using iCAP led to an average increase of 12%±6% in the number of correctly localized cancer and an average decrease of 44.5%±22.7% in the number of FPs per image.
本研究引入了一种用于识别乳房 X 光照片判读错误的个体化工具,称为眼-计算机辅助感知(iCAP)。iCAP 由两个模块组成,一个模块处理放射科医生标记为可疑癌症的区域,并将其分类为假阳性(FP)或真阳性(TP)决策,而第二个模块则将未标记但固定的位置分类为假阴性(FN)或真阴性(TN)决策。iCAP 依赖于放射科医生的注视相关参数,这些参数从眼动追踪数据中提取,并结合图像特征。为了评估 iCAP,从 8 位阅读 120 张双视图数字乳房 X 光片的乳腺放射科医生那里收集了眼动追踪数据。其中 59 例经活检证实患有癌症。对于每位放射科医生,都建立了一个用户特定的支持向量机模型,以将放射科医生报告的区域分类为 TP 或 FP,并将固定的位置分类为 TN 或 FN。通过使用留一交叉验证评估了分类器的性能。在模拟场景中对 iCAP 进行了回顾性测试,假设放射科医生将接受 iCAP 的所有决策。使用 iCAP 可使正确定位癌症的数量平均增加 12%±6%,每张图像的 FP 数量平均减少 44.5%±22.7%。