Kuo Wen-Jia, Chang Ruey-Feng, Moon Woo Kyung, Lee Cheng Chun, Chen Dar-Ren
Department of Computer Science and Information Engineering, National Chung Cheng University, Chiayi, Taiwan, Republic of China.
Acad Radiol. 2002 Jul;9(7):793-9. doi: 10.1016/s1076-6332(03)80349-5.
The authors performed this study to determine whether a computer-aided diagnostic (CAD) system was suitable from one ultrasound (US) unit to another after parameters were adjusted by using intelligent selection algorithms.
The authors used texture analysis and data mining with a decision tree model to classify breast tumors with different US systems. The databases of training cases from one unit and testing cases from another were collected from different countries. Regions of interest on US scans and co-variance texture parameters were used in the diagnosis system. Proposed adjustment schemes for different US systems were used to transform the information needed for a differential diagnosis.
Comparison of the diagnostic system with and without adjustment, respectively, yielded the following results: accuracy, 89.9% and 82.2%; sensitivity, 94.6% and 92.2%; specificity, 85.4% and 72.3%; positive predictive value, 86.5% and 76.8%; and negative predictive value, 94.1% and 90.4%. The improvement in accuracy, specificity, and positive predictive value was statistically significant. Diagnostic performance was improved after the adjustment.
After parameters were adjusted by using intelligent selection algorithms, the performance of the proposed CAD system was better both with the same and with different systems. Different resolutions, different setting conditions, and different scanner ages are no longer obstacles to the application of such a CAD system.
作者开展本研究以确定在使用智能选择算法调整参数后,计算机辅助诊断(CAD)系统是否适用于不同的超声(US)设备。
作者使用纹理分析和带有决策树模型的数据挖掘技术,通过不同的超声系统对乳腺肿瘤进行分类。从不同国家收集了来自一个设备的训练病例数据库和来自另一个设备的测试病例数据库。超声扫描的感兴趣区域和协方差纹理参数被用于诊断系统。针对不同超声系统提出的调整方案被用于转换鉴别诊断所需的信息。
分别对调整前后的诊断系统进行比较,结果如下:准确率分别为89.9%和82.2%;敏感度分别为94.6%和92.2%;特异度分别为85.4%和72.3%;阳性预测值分别为86.5%和76.8%;阴性预测值分别为94.1%和90.4%。准确率、特异度和阳性预测值的提高具有统计学意义。调整后诊断性能得到改善。
在使用智能选择算法调整参数后,所提出的CAD系统在相同和不同系统中的性能均更佳。不同的分辨率、不同的设置条件以及不同的扫描仪使用年限不再是此类CAD系统应用的障碍。