Patrick E A, Moskowitz M, Mansukhani V T, Gruenstein E I
Department of Electrical Engineering, University of Cincinnati, OH 45204.
Invest Radiol. 1991 Jun;26(6):534-9. doi: 10.1097/00004424-199106000-00004.
Breast calcification diagnosis was studied by using clinical findings and computerized image processing of a mammogram in a network of trained expert learning systems (Outcome Advisor [OA]). The system was tested with records not used for training and performance was compared with radiologist. The network was 72% accurate in classifying clusters of calcifications as malignant or benign over a set of test cases radiologists had considered "hard-to-diagnose calcifications," and referred for biopsy. The radiologists had decided to conduct biopsy by selecting an equal number of positive and negative cases for the test group; thus the radiologists' performance with respect to categories of benign versus malignant was constrained to be 50/50. Statistical analysis shows only a 2% probability that the observed accuracy of 72% was a chance performance in recognizing whether a cluster is benign or malignant. The feasibility of developing a network of OAs for diagnosing breast cancer integrating digital image processing of mammograms is promising.
通过在经过训练的专家学习系统网络(结果顾问[OA])中使用临床发现和乳房X光照片的计算机图像处理来研究乳腺钙化诊断。该系统用未用于训练的记录进行测试,并将性能与放射科医生的进行比较。在一组放射科医生认为“难以诊断的钙化”并建议进行活检的测试病例中,该网络将钙化簇分类为恶性或良性的准确率为72%。放射科医生通过为测试组选择数量相等的阳性和阴性病例来决定进行活检;因此,放射科医生在良性与恶性类别方面的表现被限制为50/50。统计分析表明,观察到的72%的准确率在识别一个簇是良性还是恶性方面是偶然表现的概率仅为2%。开发一个整合乳房X光照片数字图像处理的用于诊断乳腺癌的OA网络的可行性很有前景。