Jiang Yulei, Metz Charles E
Department of Radiology, The University of Chicago, Chicago, IL 60637, USA.
Acad Radiol. 2006 Feb;13(2):140-51. doi: 10.1016/j.acra.2005.11.004.
Some computer-aided diagnosis (CAD) methods produce a quantitative diagnostic assessment (eg, likelihood of malignancy) based on computer image analysis that a radiologist who uses the computer aid must combine with his or her own assessment. Observer studies show that although CAD helps radiologists improve diagnostic performance, ad hoc use of computer aid can produce performance inferior to that of computer alone, indicating that radiologists are unable to incorporate computer assessment optimally into their final assessment. We describe a mathematical model for combining two correlated diagnostic assessments that may provide a basis for merging radiologists' ratings with computer assessments in a way that yields greater diagnostic accuracy than ad hoc merging by radiologists.
We calculate a likelihood ratio from the bivariate binormal model that describes joint probability density functions of latent decision variables of two correlated diagnostic assessments. To the extent that the bivariate binormal model is valid and that the model's parameters can be estimated reliably, results obtained in this way will be optimal because the likelihood ratio is the decision variable used by the ideal observer in any two-group classification task. We evaluated this method on two observer study datasets and in Monte Carlo simulations.
This method produced better performance than achieved by radiologists when they incorporated computer assessment in an ad hoc way. Simulations show that with a large number of cases, this method can produce results indistinguishable from the ideal observer performance.
This method can potentially help radiologists use quantitative computed diagnostic assessments optimally, thereby surpassing the computer in accuracy.
一些计算机辅助诊断(CAD)方法基于计算机图像分析生成定量诊断评估(例如恶性可能性),使用计算机辅助工具的放射科医生必须将其与自身评估相结合。观察性研究表明,尽管CAD有助于放射科医生提高诊断性能,但临时使用计算机辅助工具可能会导致性能低于仅使用计算机的情况,这表明放射科医生无法将计算机评估最佳地纳入其最终评估。我们描述了一种用于合并两个相关诊断评估的数学模型,该模型可能为将放射科医生的评级与计算机评估以比放射科医生临时合并更高的诊断准确性的方式合并提供基础。
我们从双变量正态模型计算似然比,该模型描述了两个相关诊断评估的潜在决策变量的联合概率密度函数。只要双变量正态模型有效且模型参数能够可靠估计,以这种方式获得的结果将是最优的,因为似然比是理想观察者在任何两组分类任务中使用的决策变量。我们在两个观察性研究数据集和蒙特卡罗模拟中评估了该方法。
当放射科医生以临时方式纳入计算机评估时,该方法产生的性能优于他们。模拟表明,对于大量病例,该方法可以产生与理想观察者性能难以区分的结果。
该方法可能有助于放射科医生最佳地使用定量计算机诊断评估,从而在准确性上超过计算机。