Kahn C E, Roberts L M, Wang K, Jenks D, Haddawy P
Department of Radiology, Medical College of Wisconsin, Milwaukee, Wisconsin 53226-0509, USA.
Proc Annu Symp Comput Appl Med Care. 1995:208-12.
Bayesian networks use the techniques of probability theory to reason under conditions of uncertainty. We investigated the use of Bayesian networks for radiological decision support. A Bayesian network for the interpretation of mammograms (MammoNet) was developed based on five patient-history features, two physical findings, and 15 mammographic features extracted by experienced radiologists. Conditional-probability data, such as sensitivity and specificity, were derived from peer-reviewed journal articles and from expert opinion. In testing with a set of 77 cases from a mammography atlas and a clinical teaching file, MammoNet performed well in distinguishing between benign and malignant lesions, and yielded a value of 0.881 (+/- 0.045) for the area under the receiver operating characteristic curve. We conclude that Bayesian networks provide a potentially useful tool for mammographic decision support.
贝叶斯网络运用概率论技术在不确定条件下进行推理。我们研究了贝叶斯网络在放射学决策支持中的应用。基于五个患者病史特征、两个体格检查结果以及经验丰富的放射科医生提取的15个乳房X线摄影特征,开发了用于解读乳房X线照片的贝叶斯网络(MammoNet)。诸如敏感度和特异度等条件概率数据源自同行评审的期刊文章以及专家意见。在使用来自乳房X线摄影图谱和临床教学文件的一组77个病例进行测试时,MammoNet在区分良性和恶性病变方面表现良好,并且受试者操作特征曲线下面积的值为0.881(±0.045)。我们得出结论,贝叶斯网络为乳房X线摄影决策支持提供了一种潜在有用的工具。