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Suspicious lesion detection in mammograms using undecimated wavelet transform and adaptive thresholding

机译:使用未抽取小波变换和自适应阈值的X光检查可疑病变

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Mammographic screening is the most effective procedure for the early detection of breast cancers. However, typical diagnostic signs such as masses are difficult to detect as mammograms are low-contrast noisy images. This paper proposes a systematic method for the detection of suspicious lesions in digital mammograms based on undecimated wavelet transform and adaptive thresholding techniques. Undecimated wavelet transform is used here to generate a multiresolution representation of the original mammogram. Adaptive global and local thresholding techniques are then applied to segment possible malignancies. The segmented regions are enhanced by using morphological filtering and seeded region growing. The proposed method is evaluated on 120 images of the Mammographic Image Analysis Society (MIAS) Mini Mammographic database, that include 89 images having in total 92 lesions. The experimental results show that the proposed method successfully detects 87 of the 92 lesions, performing with a sensitivity of 94.56 % at 0.8 false positives per image (FPI), which is better than earlier reported techniques. This shows the effectiveness of the proposed system in detecting breast cancer in early stages.
机译:乳房X光检查是早期发现乳腺癌的最有效方法。但是,由于乳房X线照片是低对比度的噪点图像,因此很难检测到诸如肿块等典型的诊断信号。本文提出了一种基于未抽取小波变换和自适应阈值技术的数字化乳腺X线照片中可疑病变的检测方法。这里使用未抽取的小波变换来生成原始乳房X线照片的多分辨率表示。然后,将自适应全局和局部阈值处理技术应用于可能的恶性肿瘤的分割。通过使用形态过滤和种子区域生长增强了分割区域。在乳房X线摄影图像分析协会(MIAS)小型乳房X线摄影数据库的120张图像上评估了提出的方法,该图像包括89张图像,总共有92个病灶。实验结果表明,所提出的方法成功检测出92个病变中的87个,在每张图像0.8假阳性(FPI)时的灵敏度为94.56%,优于早期报道的技术。这表明了所提出的系统在早期检测乳腺癌中的有效性。

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