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Locally Adaptive Decision in Detection of Clustered Microcalcifications in Mammograms

机译:乳腺X线照片中微簇化钙化检测的局部自适应决策

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摘要

In computer-aided detection or diagnosis of clustered microcalcifications (MCs) in mammograms, the performance often suffers from not only the presence of false positives (FPs) among the detected individual MCs but also large variability in detection accuracy among different cases. To address this issue, we investigate a locally adaptive decision scheme in MC detection by exploiting the noise characteristics in a lesion area. Instead of developing a new MC detector, we propose a decision scheme on how to best decide whether a detected object is an MC or not in the detector output. We formulate the individual MCs as statistical outliers compared to the many noisy detections in a lesion area so as to account for the local image characteristics. To identify the MCs, we first consider a parametric method for outlier detection, the Mahalanobis distance detector, which is based on a multi-dimensional Gaussian distribution on the noisy detections. We also consider a non-parametric method which is based on a stochastic neighbor graph model of the detected objects. We demonstrated the proposed decision approach with two existing MC detectors on a set of 188 full-field digital mammograms (95 cases). The results, evaluated using free response operating characteristic (FROC) analysis, showed a significant improvement in detection accuracy by the proposed outlier decision approach over traditional thresholding (the partial area under the FROC curve increased from 3.95 to 4.25, p-value < 10−4). There was also a reduction in case-to-case variability in detected FPs at a given sensitivity level. The proposed adaptive decision approach could not only reduce the number of FPs in detected MCs but also improve case-to-case consistency in detection.
机译:在计算机辅助检测或诊断乳房X线照片中的群集微钙化(MC)时,性能通常不仅受到检测到的单个MC之间存在假阳性(FP)的困扰,而且在不同情况下检测准确性也存在较大差异。为了解决这个问题,我们通过利用病变区域的噪声特征来研究MC检测中的局部自适应决策方案。代替开发新的MC检测器,我们提出一种决策方案,该决策方案如何在检测器输出中最佳地确定检测到的对象是否为MC。我们将单个MC公式化为统计异常值,与病变区域中的许多嘈杂检测相比,以说明局部图像特征。为了识别MC,我们首先考虑一种用于离群值检测的参数方法,Mahalanobis距离检测器,它基于对噪声检测的多维高斯分布。我们还考虑了一种非参数方法,该方法基于检测到的对象的随机邻居图模型。我们在一组188个全场数字乳房X线照片(95例)上展示了两个现有的MC检测器提出的决策方法。使用自由响应操作特征(FROC)分析评估的结果表明,与传统阈值相比,拟议的异常决策方法显着提高了检测准确性(FROC曲线下的部分面积从3.95增加到4.25,p值<10 < sup> −4 )。在给定的灵敏度水平下,检测到的FP的个案差异也有所减少。所提出的自适应决策方法不仅可以减少检测到的MC中FP的数量,而且可以提高检测中案例之间的一致性。

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