基于活动轮廓综合方法的毛刺体自动检测

Piyatragoon Boonthong, Suwanna Rasmequan, Annupan Rodtook, K. Chinnasarn
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引用次数: 0

摘要

在过去的几年里,医学图像处理技术已经被用于乳腺癌的诊断研究。棘状肿块是提示潜在恶性肿瘤的一个因素。提出了一种推测质量检测的自动算法。该算法包含高效的图像处理步骤。去除胸肌和数字乳房x光背景,只留下脂肪组织和乳房肿块,这是该算法的早期优先事项。然后需要自动提取ROI。所提出的多项式在强度对比方面提高了ROI的质量。利用Radon变换和分层聚类方法,建立了基于GGVF的活动轮廓初始模型。活动模式的最终形状代表了不规则的毛刺形状。数值试验表明,本文提出的算法对乳腺肿块的检测具有良好的准确性。
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Automated detection of spiculated masses using integrated method based on active contour
Medical image processing techniques have been used for breast cancer diagnosis research in the last few years. The spiculated mass is a factors that indicates underlying malignancy. This proposes an automatic algorithm for speculated mass detection. The algorithm comprises efficient image processing steps. Removing the pectoral muscles and digital mammography background leaves only the fatty tissue and breast masses that are early priorities of this algorithm. Then automatic extraction of ROI is required. The proposed polynomial improves the quality of the ROI in term of intensity contrast. The initial models of active contour based on GGVF are constructed using Radon transform and the hierarchical clustering. The final shape of active model represents the irregular shape of spiculation. The numerical tests employing images from the digital database for screening mammography show good accuracy of our proposed algorithm for detecting spiculated masses.
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