首页> 外文期刊>Journal of Digital Imaging >Detection of Microcalcification Clusters Using Hessian Matrix and Foveal Segmentation Method on Multiscale Analysis in Digital Mammograms
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Detection of Microcalcification Clusters Using Hessian Matrix and Foveal Segmentation Method on Multiscale Analysis in Digital Mammograms

机译:基于Hessian矩阵和中心凹分割法的数字化乳腺X射线多尺度分析检测微钙化簇

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摘要

Mammography is the most efficient technique for detecting and diagnosing breast cancer. Clusters of microcalcifications have been mainly targeted as a reliable early sign of breast cancer and their earliest detection is essential to reduce the probability of mortality rate. Since the size of microcalcifications is very tiny and may be overlooked by the observing radiologist, we have developed a Computer Aided Diagnosis system for automatic and accurate cluster detection. A three-phased novel approach is presented in this paper. Firstly, regions of interest that corresponds to microcalcifications are identified. This can be achieved by analyzing the bandpass coefficients of the mammogram image. The suspicious regions are passed to the second phase, in which the nodular structured microcalcifications are detected based on eigenvalues of second order partial derivatives of the image and microcalcification pixels are segmented out by exploiting the foveal segmentation in multiscale analysis. Finally, by combining the responses coming out from the second order partial derivatives and the foveal method, potential microcalcifications are detected. The detection performance of the proposed method has been evaluated by using 370 mammograms. The detection method has a TP ratio of 97.76 % with 0.68 false positives per image. We have examined the performance of our computerized scheme using free-response operating characteristics curve.
机译:乳房X线照相术是检测和诊断乳腺癌的最有效技术。微钙化簇的主要目标是作为乳腺癌的可靠早期征兆,而尽早发现它们对于降低死亡率的可能性至关重要。由于微钙化的大小非常小,可能会被放射观察医师忽略,因此我们开发了一种计算机辅助诊断系统,可进行自动和准确的团簇检测。本文提出了一种三阶段的新颖方法。首先,确定对应于微钙化的目标区域。这可以通过分析乳房X光照片的带通系数来实现。将可疑区域传递到第二阶段,在第二阶段中,根据图像的二阶偏导数的特征值检测结节状微钙化,并通过在多尺度分析中利用中央凹分割将微钙化像素分割出来。最后,通过结合来自二阶偏导数和中心凹法的响应,可以检测到潜在的微钙化。该方法的检测性能已通过使用370幅乳腺X光照片进行了评估。该检测方法的TP率为97.76%,每个图像的假阳性为0.68。我们已经使用自由响应操作特征曲线检查了我们的计算机化方案的性能。

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