An adaptive threshold method for mass detection in mammographic images

M. Eltoukhy, I. Faye
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引用次数: 14

Abstract

An early detection of abnormalities is the key point to improve the prognostic of breast Cancer. Masses are among the most frequent abnormalities. Their detection is however a very tedious and time-consuming task. This paper presents an automatic scheme to perform both detection and segmentation of breast masses. Firstly, the breast region is determined and extracted from the whole mammogram image. Secondly, an adaptive algorithm is proposed to perform an accurate identification of the mass region. Finally, a false positive reduction method is applied through a feature extraction method and classification using the advantages of multiresolution representations (curvelet and wavelet). The classification step is achieved using SVM and KNN classifiers to distinguish between normal and abnormal tissues. The proposed method is tested on 118 images from mammographic images analysis society (MIAS) datasets. The experimental results demonstrate that the proposed scheme achieves 100% sensitivity with average of 1.87 False Positive (FP) detections per image.
乳房x线影像肿块检测的自适应阈值方法
早期发现异常是改善乳腺癌预后的关键。肿块是最常见的异常之一。然而,检测它们是一项非常繁琐和耗时的任务。本文提出了一种乳腺肿块的自动检测和分割方案。首先,从整个乳房x光图像中确定并提取乳房区域;其次,提出了一种自适应算法对质量区域进行精确识别。最后,利用多分辨率表示(曲波和小波)的优点,通过特征提取方法和分类,应用假阳性还原方法。分类步骤是使用SVM和KNN分类器来区分正常和异常组织。该方法在来自乳腺x线图像分析学会(MIAS)数据集的118张图像上进行了测试。实验结果表明,该方法达到100%的灵敏度,平均每幅图像有1.87个假阳性(FP)检测。
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