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Computerized Detection and Classification ofMalignant and Benign Microcalcifications on Full Field Digital Mammograms

机译:全场数字乳房X线图对井井和良性微透析的计算机化检测和分类

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The purpose of the study is to develop an automated system for detecting microcalcifications within a predefined region of interest (ROI), and classifying the clusters as malignant and benign on full-filled digital mammograms (FFDM). Our system consists of two stages. In the first stage, a detection program is used to detect cluster candidates within the ROI. A rule-based identification method is designed to differentiate the true and false clusters. In the second stage, morphological and texture features are extracted from the selected clusters and a classifier is trained to classify malignant and benign clusters. In this study, a data set of 247 ROIs (63 malignant and 184 benign) containing biopsy-proven calcification clusters were used. An MQSA radiologist identified 117 corresponding clusters on the CC and MLO pairs of mammograms. Leave-one-case-out resampling was used for feature selection and classification. Two MQSA radiologists evaluated the two view pairs. The detection program correctly detected 100% (247/247) of the clusters of interest with 0.14 (35/247) FPs/ROI. The identification program correctly selected 99.2% (245/247) of the index clusters. In the classification stage an average of 4 features was selected from the training subsets. The most frequently selected features included 3 morphological and 1 texture features. The classifier achieved a test Az of 0.73 for classifying the 247 clusters as malignant or benign. For the 117 pairs of matched CC and MLO views the test Az was 0.77. The partial area index above a sensitivity of 0.9, Az~(0.9), was 0.21. In comparison, the two experienced MQSA radiologists achieved Az of 0.76 and 0.73, respectively, for the 117 CC and MLO view pairs. The partial area index Az~(0.9) was 0.27 and 0.12, respectively. Our classification system can detect the microcalcifications within the specified ROI on mammogram with high sensitivity and satisfactory specificity, and classify them with an accuracy comparable to that of an experienced radiologist.
机译:该研究的目的是开发一种用于检测预定义的感兴趣区域(ROI)内的微钙化的自动化系统,并将集群分类为恶性和良性的全填充数字乳房X光图(FFDM)。我们的系统由两个阶段组成。在第一阶段,检测程序用于检测ROI内的集群候选。基于规则的识别方法旨在区分真假群集。在第二阶段,从所选簇中提取形态和纹理特征,培训分类器以分类恶性和良性集群。在本研究中,使用了247 rois(63恶性和184次良性)的含有活组织检查证明钙化簇的数据集。 MQSA放射科医生在CC和MLO对乳房X线照片上识别117个相应的簇。休假 - 一例案例重新采样用于特征选择和分类。两个MQSA放射科医师评估了两个视图对。检测程序正确地检测到0.14(35/247)FPS / ROI的感兴趣簇的100%(247/247)。识别程序正确地选择了99.2%(245/247)的索引簇。在分类阶段,从训练子集中选择平均4个特征。最常见的特征包括3个形态和1个纹理特征。分类器实现了0.73的测试AZ,用于将247集群分类为恶性或良性。对于117对匹配的CC和MLO视图,测试AZ为0.77。高于0.9,AZ〜(0.9)的敏感性的部分区域指数为0.21。相比之下,两个经验丰富的MQSA放射科学医生分别实现了117个CC和MLO视图对的0.76和0.73。部分区域指数AZ〜(0.9)分别为0.27和0.12。我们的分类系统可以检测具有高灵敏度和令人满意的特异性的乳房X线照片上的指定ROI内的微钙化,并以与经验丰富的放射科医师相当的准确性对它们进行分类。

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