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首页> 外文期刊>Journal of medical systems >Detection and Segmentation of Pectoral Muscle on MLO-View Mammogram Using Enhancement Filter
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Detection and Segmentation of Pectoral Muscle on MLO-View Mammogram Using Enhancement Filter

机译:使用增强滤波器MLO-View乳房图对胸肌的检测与分割

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摘要

The presence of predominant density region of the pectoral muscle in Medio-Lateral Oblique (MLO) view of the mammograms can affect or bias the results of mammograms processing for breast cancer detection using intensity based methods. Therefore, to improve the diagnostic performance of breast cancer detection using computer-aided system, identification and segmentation of pectoral muscle is an important task. This paper presents, an intensity based approach to identify the pectoral region in mammograms. In the presented approach enhancement mask and threshold technique is used to enhance and select the pectoral region and boundary points respectively, to find the boundary of pectoral muscle. Then curve fitting by Least Square Error (LSE) method is used to refine the rough initial boundaries. The proposed approach was applied on 320 mammograms from mini-Mammographic Image Analysis Society (mini-MIAS) database of 322 mammograms, with acceptable rate of 96.56% from radiologist experts. The performance evaluation for pectoral muscle segmentation, based on Hausdorff distance (Hd), False Positive (FP) and False Negative (FN) rate, shows the usefulness and effectiveness of the proposed approach.
机译:乳房X线照片中侧侧倾斜(MLO)视图中胸肌的主要密度区域的存在可以影响或偏压基于强度的方法的乳腺癌检测的乳腺癌处理结果。因此,通过计算机辅助系统改善乳腺癌检测的诊断性能,胸肌的鉴定和分割是一项重要任务。本文呈现,基于强度的方法,以识别乳房X线图中的胸部区域。在所提出的方法中,使用阈值技术分别用于增强和选择胸部区域和边界点,以找到胸肌的边界。然后,曲线拟合至少方形误差(LSE)方法用于优化粗略的初始边界。拟议的方法应用于320乳房X线图(Mini-Mias)数据库322乳房照片的320乳房X线照片,从放射科专家可接受的速率为96.56%。基于Hausdorff距离(HD),假阳性(FP)和假阴性(FN)率的胸肌细分的性能评估显示了所提出的方法的有用性和有效性。

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