Gimenez Francisco J, Wu Yirong, Burnside Elizabeth S, Rubin Daniel L
Biomedical Informatics Training Program, Stanford, CA.
Department of Radiology, School of Medicine and Public Health, University of Wisconsin, Madison, WI.
AMIA Annu Symp Proc. 2014 Nov 14;2014:1758-67. eCollection 2014.
Mammography has been shown to improve outcomes of women with breast cancer, but it is subject to inter-reader variability. One well-documented source of such variability is in the content of mammography reports. The mammography report is of crucial importance, since it documents the radiologist's imaging observations, interpretation of those observations in terms of likelihood of malignancy, and suggested patient management. In this paper, we define an incompleteness score to measure how incomplete the information content is in the mammography report and provide an algorithm to calculate this metric. We then show that the incompleteness score can be used to predict errors in interpretation. This method has 82.6% accuracy at predicting errors in interpretation and can possibly reduce total diagnostic errors by up to 21.7%. Such a method can easily be modified to suit other domains that depend on quality reporting.
乳房X光检查已被证明可改善乳腺癌女性的治疗效果,但它存在阅片者之间的差异。这种差异的一个有充分记录的来源在于乳房X光检查报告的内容。乳房X光检查报告至关重要,因为它记录了放射科医生的影像观察结果、根据恶性可能性对这些观察结果的解读以及建议的患者管理措施。在本文中,我们定义了一个不完整度评分来衡量乳房X光检查报告中的信息内容有多不完整,并提供一种算法来计算该指标。然后我们表明,不完整度评分可用于预测解读错误。该方法在预测解读错误方面的准确率为82.6%,并且有可能将总诊断错误最多减少21.7%。这样一种方法可以很容易地进行修改,以适用于其他依赖高质量报告的领域。