Department of Radiology, Carl E. Ravin Advanced Imaging Laboratories, Duke University, Durham, North Carolina 27705, USA.
Med Phys. 2010 Mar;37(3):1152-60. doi: 10.1118/1.3301575.
The authors propose the framework for an individualized adaptive computer-aided educational system in mammography that is based on user modeling. The underlying hypothesis is that user models can be developed to capture the individual error making patterns of radiologists-in-training. In this pilot study, the authors test the above hypothesis for the task of breast cancer diagnosis in mammograms.
The concept of a user model was formalized as the function that relates image features to the likelihood/extent of the diagnostic error made by a radiologist-in-training and therefore to the level of difficulty that a case will pose to the radiologist-in-training (or "user"). Then, machine learning algorithms were implemented to build such user models. Specifically, the authors explored k-nearest neighbor, artificial neural networks, and multiple regression for the task of building the model using observer data collected from ten Radiology residents at Duke University Medical Center for the problem of breast mass diagnosis in mammograms. For each resident, a user-specific model was constructed that predicts the user's expected level of difficulty for each presented case based on two BI-RADS image features. In the experiments, leave-one-out data handling scheme was applied to assign each case to a low-predicted-difficulty or a high-predicted-difficulty group for each resident based on each of the three user models. To evaluate whether the user model is useful in predicting difficulty, the authors performed statistical tests using the generalized estimating equations approach to determine whether the mean actual error is the same or not between the low-predicted-difficulty group and the high-predicted-difficulty group.
When the results for all observers were pulled together, the actual errors made by residents were statistically significantly higher for cases in the high-predicted-difficulty group than for cases in the low-predicted-difficulty group for all modeling algorithms (p < or = 0.002 for all methods). This indicates that the user models were able to accurately predict difficulty level of the analyzed cases. Furthermore, the authors determined that among the two BI-RADS features that were used in this study, mass margin was the most useful in predicting individual user errors.
The pilot study shows promise for developing individual user models that can accurately predict the level of difficulty that each case will pose to the radiologist-in-training. These models could allow for constructing adaptive computer-aided educational systems in mammography.
作者提出了一种基于用户建模的个体化自适应计算机辅助教育系统框架。其基本假设是,可以开发用户模型来捕获放射科住院医师的个体错误模式。在这项初步研究中,作者针对乳腺 X 线摄影中的乳腺癌诊断任务对上述假设进行了测试。
将用户模型的概念形式化为将图像特征与放射科住院医师的诊断错误概率/程度相关联的函数,因此也与病例对放射科住院医师(或“用户”)的难度程度相关联。然后,实施机器学习算法来构建此类用户模型。具体来说,作者使用从杜克大学医学中心的 10 名放射科住院医师那里收集的观察者数据,探索了 k-最近邻、人工神经网络和多元回归算法,用于构建使用 BI-RADS 图像特征预测每个病例的用户预期难度的模型。对于每个住院医师,构建了一个特定于用户的模型,该模型根据两种 BI-RADS 图像特征预测用户对每个呈现病例的预期难度水平。在实验中,采用了留一法数据处理方案,根据三种用户模型中的每一种,将每个病例分配到低预测难度或高预测难度组。为了评估用户模型是否有助于预测难度,作者使用广义估计方程方法进行了统计检验,以确定平均实际误差在低预测难度组和高预测难度组之间是否相同。
当汇总所有观察者的结果时,对于所有建模算法,住院医师在高预测难度组中所犯的实际错误均明显高于在低预测难度组中所犯的错误(所有方法的 p 值均≤0.002)。这表明用户模型能够准确预测分析病例的难度水平。此外,作者确定在本研究中使用的两种 BI-RADS 特征中,肿块边界是预测个体用户错误最有用的特征。
初步研究表明,开发能够准确预测每个病例对放射科住院医师的难度的个体化用户模型具有很大的潜力。这些模型可以用于构建乳腺 X 线摄影中的自适应计算机辅助教育系统。