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Lung tumour detection by fusing extended local binary patterns and weighted orientation of difference from computed tomography

机译:通过融合扩展的局部二进制模式和加权与计算机断层扫描的方向来检测肺部肿瘤

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摘要

Lung cancer is one of the leading causes of death in the world. Although early detection of lung tumours (nodules) can remarkably diminish the mortal rate, precise detection of them is not always possible by visual inspection of the computerised tomography images. Since nodules with different sizes have non-uniform shape and brightness, texture attributes and also the gradient of orientation can be good candidate features, which have been used for this purpose. They determined the co-occurrence matrix of the extended local binary pattern (ELBP) along with weighted orientation difference (WOD) for each sub-region of the lung area. Local binary pattern is a texture descriptor that can extract the discriminative features efficiently. The proposed ELBP is rotation invariant and suitable to describe non-uniform patterns. Moreover, WOD as a structural feature uses the magnitude of each edge as the weight of its orientation difference. After constructing the co-occurrence matrix, discriminative features were extracted from this matrix and fed into a support vector machine in order to classify each sub-region as a cancerous (nodule) or normal tissue. The proposed method was compared to some of state-of-the-art nodule detection methods and was assessed over several real datasets in terms of specificity, sensitivity and accuracy.
机译:肺癌是世界上主要的死亡原因之一。尽管尽早发现肺部肿瘤(结节)可以显着降低死亡率,但通过对计算机断层扫描图像进行目视检查,并非总是能够准确检测出它们。由于具有不同大小的结节具有不均匀的形状和亮度,因此纹理属性以及取向梯度可以是良好的候选特征,已将其用于此目的。他们确定了肺区域每个子区域的扩展局部二进制模式(ELBP)的共现矩阵以及加权方向差(WOD)。局部二进制模式是一种纹理描述符,可以有效地提取区分特征。提出的ELBP是旋转不变的,适合描述非均匀模式。此外,WOD作为结构特征使用每个边缘的大小作为其方向差异的权重。构建共现矩阵后,从该矩阵中提取判别特征并将其输入支持向量机中,以便将每个子区域分类为癌性(结节)或正常组织。将该方法与一些最新的结核检测方法进行了比较,并在特异性,敏感性和准确性方面对多个真实数据集进行了评估。

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