Monti S, Cooper G F
Intelligent Systems Program, University of Pittsburgh, PA 15260, USA.
Proc AMIA Symp. 1998:592-6.
We present a new Bayesian classifier for computer-aided diagnosis. The new classifier builds upon the naive-Bayes classifier, and models the dependencies among patient findings in an attempt to improve its performance, both in terms of classification accuracy and in terms of calibration of the estimated probabilities. This work finds motivation in the argument that highly calibrated probabilities are necessary for the clinician to be able to rely on the model's recommendations. Experimental results are presented, supporting the conclusion that modeling the dependencies among findings improves calibration.
我们提出了一种用于计算机辅助诊断的新型贝叶斯分类器。这种新型分类器基于朴素贝叶斯分类器构建,并对患者检查结果之间的相关性进行建模,试图在分类准确性和估计概率的校准方面提高其性能。这项工作的动机在于这样一种观点,即高度校准的概率对于临床医生能够依赖模型的建议是必要的。文中给出了实验结果,支持了对检查结果之间的相关性进行建模可改善校准的结论。