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Residual Networks for Pulmonary Nodule Segmentation and Texture Characterization

机译:残基网络用于肺结节分割和纹理表征

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The automated analysis of Computed Tomography scans of the lung holds great potential to enhance current clinical workflows for the screening of lung cancer. Among the tasks of interest in such analysis this paper is concerned with the segmentation of lung nodules and their characterization in terms of texture. This paper describes our solution for these two problems in the context of the LNdB challenge, held jointly with ICIAR 2020. We propose a) the optimization of a standard 2D Residual Network, but with a regularization technique adapted for the particular problem of texture classification, and b) a 3D U-Net architecture endowed with residual connections within each block and also connecting the downsampling and the upsampling paths. Cross-validation results indicate that our approach is specially effective for the task of texture classification. In the test set withheld by the organization, the presented method ranked 4th in texture classification and 3rd in the nodule segmentation tasks.
机译:肺部计算机断层扫描的自动化分析具有巨大的潜力,可以增强当前筛查肺癌的临床工作流程。在此类分析中感兴趣的任务中,本文涉及肺结节的分割及其在纹理方面的表征。本文在与ICIAR 2020联合举行的LNdB挑战的背景下,描述了我们针对这两个问题的解决方案。我们建议a)优化标准2D残差网络,但采用针对特定纹理分类问题的正则化技术, b)3D U-Net架构在每个块中具有残余连接,并且还连接了下采样路径和上采样路径。交叉验证的结果表明,我们的方法对于纹理分类任务特别有效。在组织保留的测试集中,提出的方法在纹理分类中排名第4,在结节分割任务中排名第3。

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