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Tumor segmentation by tolerance near set approach in mammography and lesion classification with neural network

机译:乳腺X线摄影和病灶分类中基于容忍近集法的肿瘤分割神经网络

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The mammography is the most effective procedure for an early diagnosis of the breast cancer. In this paper, a new algorithm to detect suspicious lesions in mammograms is developed using tolerance near set approach. Near set theory provides a method to establish resemblance between objects contained in a disjoint set. Objects that have, in some degree, affinities are considered perceptually near each other. The probe functions are defined in terms of digital images such as: gray level, entropy, color, texture, etc. Objects in visual field are always presented with respect to the selected probe functions. Moreover, it is the probe functions that are used to measure characteristics of visual objects and similarities among perceptual objects, making it possible to determine if two objects are associated with the same pattern. The algorithm has been verified on mammograms from the CICRI (Central India Cancer Research Institute, Nagpur, India) and Mias database. Results of segmentation are compared with Otsu method of segmentation.. Once the features are computed for each region of interest (ROI), they are used as inputs to a supervised Back Propagation Neural Network. Results indicate that Tolerance Near sets segmentation method performs better than otsu method in terms of classification accuracy.
机译:乳房X线照相术是早期诊断乳腺癌的最有效方法。在本文中,开发了一种使用容差近集方法检测乳房X线照片中可疑病变的新算法。近似集理论提供了一种建立不相交集合中包含的对象之间相似性的方法。在某种程度上具有亲和力的对象在感知上彼此接近。探针功能是根据数字图像定义的,例如:灰度,熵,颜色,纹理等。始终根据所选探针功能显示视野中的对象。此外,探测功能用于测量视觉对象的特性和感知对象之间的相似性,从而可以确定两个对象是否与同一模式相关联。该算法已在CICRI(印度那格浦尔中部印度癌症研究所)和Mias数据库的乳房X光照片上得到验证。将分割结果与Otsu分割方法进行比较。一旦针对每个感兴趣区域(ROI)计算了特征,就将它们用作监督反向传播神经网络的输入。结果表明,在分类准确度方面,Tolerance Near sets分割方法的性能优于otsu方法。

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