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Modeling error in assessment of mammographic image features for improved computer-aided mammography training: initial experience

机译:乳腺X线摄影图像特征评估中的建模误差,用于改进的计算机辅助乳腺X线摄影训练:初步经验

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In this study we investigate the hypothesis that there exist patterns in erroneous assessment of BI-RADS image features among radiology trainees when performing diagnostic interpretation of mammograms. We also investigate whether these error making patterns can be captured by individual user models. To test our hypothesis we propose a user modeling algorithm that uses the previous readings of a trainee to identify whether certain BI-RADS feature values (e.g. "spiculated" value for "margin" feature) are associated with higher than usual likelihood that the feature will be assessed incorrectly. In our experiments we used readings of 3 radiology residents and 7 breast imaging experts for 33 breast masses for the following BI-RADS features: parenchyma density, mass margin, mass shape and mass density. The expert readings were considered as the gold standard. Rule-based individual user models were developed and tested using the leave one-one-out crossvalidation scheme. Our experimental evaluation showed that the individual user models are accurate in identifying cases for which errors are more likely to be made. The user models captured regularities in error making for all 3 residents. This finding supports our hypothesis about existence of individual error making patterns in assessment of mammographic image features using the BI-RADS lexicon. Explicit user models identifying the weaknesses of each resident could be of great use when developing and adapting a personalized training plan to meet the resident's individual needs. Such approach fits well with the framework of adaptive computer-aided educational systems in mammography we have proposed before.
机译:在这项研究中,我们调查的假设是,在进行乳房X线照片的诊断解释时,放射学受训者中BI-RADS图像特征的错误评估中存在模式。我们还研究了这些错误产生模式是否可以由单个用户模型捕获。为了检验我们的假设,我们提出了一种用户建模算法,该算法使用受训者的先前读数来识别某些BI-RADS特征值(例如,“ margin”特征的“ spiculated”值)是否与该特征将比平常更高的可能性相关联被错误地评估。在我们的实验中,我们使用了3位放射科住院医师和7位乳房影像专家的读数,得出了33个乳腺肿块的以下BI-RADS特征:实质密度,肿块边缘,肿块形状和肿块密度。专家的读数被认为是黄金标准。使用离开一对一交叉验证方案开发和测试基于规则的个人用户模型。我们的实验评估表明,各个用户模型在识别更可能出现错误的案例时是准确的。用户模型捕获了所有3位居民在错误决策中的规律性。这一发现支持了我们关于使用BI-RADS词典评估乳房X线图像特征时存在个体错误制作模式的假设。在制定和调整个性化培训计划以满足居民的个人需求时,识别每个居民的弱点的显式用户模型可能会很有用。这种方法非常适合我们之前提出的乳房X射线摄影中自适应计算机辅助教育系统的框架。

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