基于参数核图切算法的乳房x线图像微钙化多区域分割

Aminah Abdul Malek, N. A. Abdul Rahim, Nor Farah Nabilah Mushtafa, Nadhirah Afiqah Zailan, Norlyda Mohamed
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引用次数: 0

摘要

早期发现乳腺癌可以通过筛查乳房x光检查发现。然而,潜在的异常,如微钙化,由于体积很小,有时被隐藏在乳房组织的密度后面,很难被放射科医生区分出来。因此,需要图像分割技术。本文提出了参数核图切算法在微钙化分割中的潜在应用。通过准确性、灵敏度、Dice和Jaccard系数对该方法的性能进行了评价。所有的实验结果都产生了令人满意的结果,所有图像的Dice系数平均值为91.67%,Jaccard系数平均值为84.72%。同时,准确度和灵敏度分别达到97.84%和96%。因此,参数核图切算法对微钙化的分割具有鲁棒性和有效性。
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Multiregion segmentation of microcalcificationin mammogram images by using Parametric Kernel Graph Cut algorithm
Early detection of breast cancer can be detected through screening mammography. However, the potential abnormality such as microcalcification can hardly be differentiated by the radiologists due to the tiny size, which sometimes be hidden behind the density of breast tissue. Therefore, image segmentation technique is required. This paper proposes the potential use of Parametric Kernel Graph Cut Algorithm in segmenting microcalcification. The performances of this method were measured based on accuracy, sensitivity, Dice and Jaccard coefficient. All the experimental results generated satisfying results, whereby all images produced the average of 91.67% for Dice coefficient and 84.72% for Jaccard coefficient. Meanwhile, both accuracy and sensitivity results acquired 97.84% and 96%, respectively. Therefore, Parametric Kernel Graph Cut algorithm had proved its ability to segment the microcalcification robustly and efficiently.
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