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Multi-resolution analysis to differentiate the healthy and unhealthy breast using breast thermogram

机译:使用乳房温度记录图进行多分辨率分析,以区分健康乳房和不健康乳房

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In this study, we have proposed a novel effective method for distinguishing unhealthy breast patients from healthy individuals. It is necessary to emphasize that unhealthy breast thermograms not necessarily mean malignant. Two feature images, called magnitude features of breast thermogram (MFBT) and orientation features of breast thermogram (OFBT), are formed from the preprocessed and segmented gray scale image of breast region by computing gradient direction and orientation of each pixels. After that two multi-resolution filters are employed to represent the MFBT and OFBT at different resolutions. A 36 element feature vector is formed from the multi-resolution MFBT and OFBT images which are then classified using a feed-forward artificial neural network with gradient decent training rule. To validate the proposed method, it has been tested on 453 breast thermograms of 151 individuals (61 healthy and 90 unhealthy) of DMR database [7] and our proposed method provides excellent classification accuracy of 98.6% with the sensitivity and specificity of 100% and 97.8% respectively.
机译:在这项研究中,我们提出了一种新的有效方法,可将不健康的乳腺癌患者与健康的个体区分开。有必要强调的是,不健康的乳房温度记录不一定意味着恶性肿瘤。通过对乳房区域进行预处理和分割后的灰度图像,通过计算每个像素的梯度方向和方向,可以形成两个特征图像,分别称为乳房热像图的幅值特征(MFBT)和乳房热像图的取向特征(OFBT)。之后,使用两个多分辨率滤镜分别以不同的分辨率表示MFBT和OFBT。由多分辨率MFBT和OFBT图像形成一个36元素的特征向量,然后使用前馈人工神经网络和梯度体面训练规则对它们进行分类。为了验证该方法的有效性,已对DMR数据库的151个个体(61个健康的人和90个不健康的人)的453个乳房温度记录图进行了测试[7],我们的方法提供了98.6%的出色分类准确度,灵敏度和特异性分别为100%和分别为97.8%。

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