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首页> 外文期刊>Current Journal of Applied Science and Technology >Automated Detection of Breast Cancera€?s Indicatorsin Mammogram via Image Processing Techniques
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Automated Detection of Breast Cancera€?s Indicatorsin Mammogram via Image Processing Techniques

机译:通过图像处理技术自动检测乳房X光检查中作为指标的乳腺癌

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Aims: The detection of abnormalities in mammographic images is an important step in the diagnosis of breast cancer. The indicators of cancer in mammograms can be in form of calcification, mass and stellate lesion. This paper proposed a two-stage procedure for the detection of these cancer’s indicators.Methodology: Twenty images were used for the study. The images were obtained from Mammographic Image Analysis Society (miniMIAS) database. The images were pre-processed and enhanced using top hat filtering method and the enhanced images were segmented using Otsu’s method. Four features were extracted and selected from the mammographic images using Gray Level Concurrence Matrix (GLCM). The features extracted and selected include energy, homogeneity, contrast, and correlation. Subtractive clustering and fuzzy logic techniques were employed for the classification of the cancer’s indicators in the mammograms. The implementation of the image processing techniques was done with matrix laboratory.Results: The result showed that seven of the images were affected by stellate lesion, nine of the images were affected by microcalcification while four of the images were affected by mass.Conclusion: The method presented in this paper would enhance the detection of cancerous cells in the breasts.
机译:目的:乳腺X线摄影图像的异常检测是诊断乳腺癌的重要步骤。乳房X光检查中的癌症指标可以是钙化,肿块和星状病变形式。本文提出了分两个阶段检测这些癌症指标的程序。方法:研究使用了20张图像。这些图像是从乳腺图像分析学会(miniMIAS)数据库获得的。使用高帽过滤方法对图像进行预处理和增强,并使用Otsu方法对增强图像进行分割。使用灰度并发矩阵(GLCM)从乳腺摄影图像中提取并选择了四个特征。提取和选择的特征包括能量,同质性,对比度和相关性。减法聚类和模糊逻辑技术被用于乳房X光照片中癌症指标的分类。结果:结果表明,其中7个图像受到星状病变的影响,其中9个图像受到微钙化的影响,而4个图像受到质量的影响。本文介绍的方法将增强对乳腺癌细胞的检测。

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