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Kernel descriptors for chest X-ray analysis

机译:胸部X射线分析的内核描述符

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In this study, we address the problem of lesion classification in radiographic scans. We adapt image kernel functions to be applicable for high-resolution, grayscale images to improve the classification accuracy of a support vector machine. We take existing kernel functions inspired by the histogram of oriented gradients, and derive an approximation that can be evaluated in linear time of the image size instead of the original quadratic complexity, enabling high-resolution input. Moreover, we propose a new variant inspired by the matched filter, to better utilize intensity space. The new kernels are improved to be scale-invariant and combined with a Gaussian kernel built from handcrafted image features. We introduce a simple multiple kernel learning framework that is robust when one of the kernels, in the current case the image feature kernel, dominates the others. The combined kernel is input to a support vector classifier. We tested our method on lesion classification both in chest radiographs and digital tomosynthesis scans. The radiographs originated from a database including 364 patients with lung nodules and 150 healthy cases. The digital tomosynthesis scans were obtained by simulation using 91 CT scans from the LIDC-IDRI database as input. The new kernels showed good separation capability: ROC AuC was in [0.827, 0.853] for the radiograph database and 0.763 for the tomosynthesis scans. Adding the new kernels to the image-feature-based classifier significantly improved accuracy: AuC increased from 0.958 to 0.967 and from 0.788 to 0.801 for the two applications.
机译:在这项研究中,我们解决了射线照相扫描中病变分类问题。我们适应图像内核功能,适用于高分辨率,灰度图像,以提高支持向量机的分类精度。我们采用由面向梯度直方图激发的现有内核功能,并导出可以在图像大小的线性时间中评估的近似,而不是原始的二次复杂性,从而实现高分辨率输入。此外,我们提出了一种由匹配过滤器启发的新变种,以更好地利用强度空间。新内核得到了改进的尺度不变,并与由手工映像功能构建的高斯内核相结合。我们介绍了一个简单的多个内核学习框架,当一个内核中的一个内核中,在当前情况下,映像要素内核,主导其他内核。组合内核输入到支持向量分类器。我们在胸部射线照片和数字粗糙度扫描中测试了对病变分类的方法。射线照相源自数据库,包括364名肺结核患者和150例健康病例。通过使用LIDC-IDRI数据库的91 CT扫描作为输入,通过仿真获得数字Tomosynest扫描。新内核显示出良好的分离能力:ROC AUC在[0.827,0.853]中,用于X射线图像数据库和Tomosynthesis扫描的0.763。将新内核添加到基于图像特征的分类器显着提高了精度:AUC从0.958增加到0.967,两个应用程序增加到0.788至0.801。

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