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首页> 外文期刊>Asian Pacific Journal of Cancer Prevention >Aiding the Digital Mammogram for Detecting the Breast Cancer Using Shearlet Transform and Neural Network
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Aiding the Digital Mammogram for Detecting the Breast Cancer Using Shearlet Transform and Neural Network

机译:使用Shearlet变换和神经网络来促使数字乳房X线照片用于检测乳腺癌

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Objective: Breast Cancer is the most invasive disease and fatal disease next to lung cancer in human. Early detectionof breast cancer is accomplished by X-ray mammography. Mammography is the most effective and efficient techniqueused for detection of breast cancer in women and also to improve the breast cancer prognosis. The numbers of imagesneed to be examined by the radiologists, the resulting may be misdiagnosis due to human errors by visual Fatigue.In order to avoid human errors, Computer Aided Diagnosis is implemented. In Computer Aided Diagnosis system,number of processing and analysis of an image is done by the suitable algorithm. Methods: This paper proposed atechnique to aid radiologist to diagnosis breast cancer using Shearlet transform image enhancement method. Similar towavelet filter, Shearlet coefficients are more directional sensitive than wavelet filters which helps detecting the cancercells particularly for small contours. After enhancement of an image, segmentation algorithm is applied to identify thesuspicious region. Result: Many features are extracted and utilized to classify the mammographic images into harmfulor harmless tissues using neural network classifier. Conclusions: Multi-scale Shearlet transform because more details ondata phase, directionality and shift invariance than wavelet based transforms. The proposed Shearlet transform gives multi?resolution result and generate malign and benign classification more accurate up to 93.45% utilizing DDSM database.
机译:目的:乳腺癌是人类肺癌旁边最具侵入性的疾病和致命疾病。早期检测乳腺癌是通过X射线乳腺X线摄影完成的。乳房X线照相术是最有效和高效的技术用于检测女性乳腺癌,也可以改善乳腺癌预后。放射科医师检查的图像数量,由此导致的由于人为误差而产生的误诊可能是通过视觉疲劳的人为错误。为了避免人类错误,实施计算机辅助诊断。在计算机辅助诊断系统中,图像的处理数量和分析由合适的算法完成。方法:本文提出了Atechnique以帮助放射学家使用Shearlet变换图像增强方法诊断乳腺癌。类似的拖曳滤波器,Shearlet系数比小波过滤器更定向敏感,这有助于检测探测器特别适用于小轮廓。在增强图像之后,将分割算法应用于识别粘性区域。结果:利用神经网络分类器将乳房X线监测图像分类为危害无害的组织的许多特征。结论:多尺度Shearlet变换,因为更多细节ONDATA相位,方向性和换档不变性而不是基于小波的变换。建议的Shearlet变换提供多?解决性结果并生成恶意和良性分类,更准确到93.45%利用DDSM数据库。

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