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Computerized Breast Mass Detection Using Multi-Scale Hessian-Based Analysis for Dynamic Contrast-Enhanced MRI

机译:基于多尺度Hessian分析的计算机乳房质量检测用于动态对比增强MRI

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摘要

This study aimed to investigate a computer-aided system for detecting breast masses using dynamic contrast-enhanced magnetic resonance imaging for clinical use. Detection performance of the system was analyzed on 61 biopsy-confirmed lesions (21 benign and 40 malignant lesions) in 34 women. The breast region was determined using the demons deformable algorithm. After the suspicious tissues were identified by kinetic feature (area under the curve) and the fuzzy c-means clustering method, all breast masses were detected based on the rotation-invariant and multi-scale blob characteristics. Subsequently, the masses were further distinguished from other detected non-tumor regions (false positives). Free-response operating characteristics (FROC) curve and detection rate were used to evaluate the detection performance. Using the combined features, including blob, enhancement, morphologic, and texture features with 10-fold cross validation, the mass detection rate was 100 % (61/61) with 15.15 false positives per case and 91.80 % (56/61) with 4.56 false positives per case. In conclusion, the proposed computer-aided detection system can help radiologists reduce inter-observer variability and the cost associated with detection of suspicious lesions from a large number of images. Our results illustrated that breast masses can be efficiently detected and that enhancement and morphologic characteristics were useful for reducing non-tumor regions.
机译:这项研究旨在研究一种计算机辅助系统,该系统可使用动态对比增强磁共振成像技术检测乳腺肿块,以用于临床。分析了该系统在34位女性中61例经活检确认的病变(21例良性和40例恶性病变)的检测性能。使用恶魔可变形算法确定乳房区域。通过动力学特征(曲线下的面积)和模糊c均值聚类方法识别可疑组织后,根据旋转不变和多尺度斑点特征检测所有乳腺肿块。随后,将肿块与其他检测到的非肿瘤区域(假阳性)进一步区分开。使用自由响应操作特性(FROC)曲线和检测率评估检测性能。使用结合的特征,包括斑点,增强,形态和纹理特征以及10倍交叉验证,质量检出率为100%(61/61),每例假阳性为15.15,91.80%(56/61)为4.56每个案例的误报率。总之,所提出的计算机辅助检测系统可以帮助放射线医师减少观察者之间的差异以及与从大量图像中检测可疑病变相关的成本。我们的结果表明,可以有效地检测到乳房肿块,并且增强和形态特征可用于减少非肿瘤区域。

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