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Automatic Categorization and Scoring of Solid Part-Solid and Non-Solid Pulmonary Nodules in CT Images with Convolutional Neural Network

机译:基于卷积神经网络的CT图像中固体半固体和非固体肺结节的自动分类和评分

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摘要

We present a computer-aided diagnosis system (CADx) for the automatic categorization of solid, part-solid and non-solid nodules in pulmonary computerized tomography images using a Convolutional Neural Network (CNN). Provided with only a two-dimensional region of interest (ROI) surrounding each nodule, our CNN automatically reasons from image context to discover informative computational features. As a result, no image segmentation processing is needed for further analysis of nodule attenuation, allowing our system to avoid potential errors caused by inaccurate image processing. We implemented two computerized texture analysis schemes, classification and regression, to automatically categorize solid, part-solid and non-solid nodules in CT scans, with hierarchical features in each case learned directly by the CNN model. To show the effectiveness of our CNN-based CADx, an established method based on histogram analysis (HIST) was implemented for comparison. The experimental results show significant performance improvement by the CNN model over HIST in both classification and regression tasks, yielding nodule classification and rating performance concordant with those of practicing radiologists. Adoption of CNN-based CADx systems may reduce the inter-observer variation among screening radiologists and provide a quantitative reference for further nodule analysis.
机译:我们提出了一种计算机辅助诊断系统(CADx),用于使用卷积神经网络(CNN)对肺部计算机断层扫描图像中的固体,部分固体和非固体结节进行自动分类。我们的CNN仅在每个结节周围都设有一个二维关注区域(ROI),因此会自动从图像上下文中进行推理以发现信息丰富的计算特征。结果,不需要进一步的结节衰减分析就可以进行图像分割处理,从而避免了由于图像处理不准确而导致的潜在错误。我们实施了两种计算机化的纹理分析方案,即分类和回归,以自动对CT扫描中的实心,部分实心和非实心结节进行分类,每种情况下的分层特征都可以通过CNN模型直接学习。为了显示基于CNN的CADx的有效性,我们采用了一种基于直方图分析(HIST)的既定方法进行比较。实验结果表明,相比于HIST,CNN模型在分类和回归任务上的性能都有显着提高,产生的结节分类和评级性能与放射线医生的一致。基于CNN的CADx系统的采用可以减少放射线筛查医师之间观察者之间的差异,并为进一步的结节分析提供定量参考。

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