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An Interactive System for Computer-Aided Diagnosis of Breast Masses

机译:交互式的乳腺肿块计算机辅助诊断系统

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摘要

Although mammography is the only clinically accepted imaging modality for screening the general population to detect breast cancer, interpreting mammograms is difficult with lower sensitivity and specificity. To provide radiologists “a visual aid” in interpreting mammograms, we developed and tested an interactive system for computer-aided detection and diagnosis (CAD) of mass-like cancers. Using this system, an observer can view CAD-cued mass regions depicted on one image and then query any suspicious regions (either cued or not cued by CAD). CAD scheme automatically segments the suspicious region or accepts manually defined region and computes a set of image features. Using content-based image retrieval (CBIR) algorithm, CAD searches for a set of reference images depicting “abnormalities” similar to the queried region. Based on image retrieval results and a decision algorithm, a classification score is assigned to the queried region. In this study, a reference database with 1,800 malignant mass regions and 1,800 benign and CAD-generated false-positive regions was used. A modified CBIR algorithm with a new function of stretching the attributes in the multi-dimensional space and decision scheme was optimized using a genetic algorithm. Using a leave-one-out testing method to classify suspicious mass regions, we compared the classification performance using two CBIR algorithms with either equally weighted or optimally stretched attributes. Using the modified CBIR algorithm, the area under receiver operating characteristic curve was significantly increased from 0.865 ± 0.006 to 0.897 ± 0.005 (p < 0.001). This study demonstrated the feasibility of developing an interactive CAD system with a large reference database and achieving improved performance.
机译:尽管乳腺X线摄影是筛查普通人群以检测乳腺癌的唯一临床可接受的影像学方法,但以较低的敏感性和特异性很难解释乳腺X线照片。为了向放射科医生提供解释乳腺X线照片的“视觉帮助”,我们开发并测试了一种交互式系统,该系统可用于计算机辅助检测和诊断块状癌。使用此系统,观察者可以查看在一张图像上描绘的CAD提示质量区域,然后查询任何可疑区域(由CAD提示或不提示)。 CAD方案会自动分割可疑区域或接受手动定义的区域并计算一组图像特征。使用基于内容的图像检索(CBIR)算法,CAD搜索描述与查询区域相似的“异常”的一组参考图像。基于图像检索结果和决策算法,将分类分数分配给查询区域。在这项研究中,使用了具有1800个恶性肿块区域和1800个良性和CAD生成的假阳性区域的参考数据库。使用遗传算法优化了改进的CBIR算法,该算法具有在多维空间中扩展属性和决策方案的新功能。使用留一法测试方法对可疑质量区域进行分类,我们比较了两种具有相同加权或最佳拉伸属性的CBIR算法的分类性能。使用改进的CBIR算法,接收器工作特性曲线下的面积从0.865±0.006显着增加到0.897±0.005(p <0.001)。这项研究证明了开发具有大型参考数据库的交互式CAD系统并提高性能的可行性。

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