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Exploring features towards semantic characterization of lung nodules in Computed Tomography images

机译:探索计算机断层扫描图像中肺结核语义特征的特征

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One of the main challenges in the integration of medical data reports is translating numerical features from different sources into a common abstract vocabulary that support a seamless combination of such data. When it comes to image analysis, a very common pipeline to describe the image involves extracting numerical features from image data and translate them into meaningful pre-defined semantic concepts. In this context, we propose a methodology for selecting numerical features and relating them to semantic features using the publicly available categorization in the lung nodules LIDC NIH database. We present several numerical features joined several classifiers, and a comparison between two feature selection methods and discuss how different features contribute to the discrimination of different semantic characteristics of lung nodules. Our results show the potential of such methodology for translating features into abstract semantic concepts for lung nodules characterization.
机译:医疗数据报告集成的主要挑战之一是将不同来源的数字特征转化为支持这些数据无缝组合的常见抽象词汇表。当谈到图像分析时,描述图像的非常常见的流水线涉及从图像数据中提取数字特征并将其转换为有意义的预定义语义概念。在此上下文中,我们提出了一种用于选择数字特征的方法,并使用肺结核LIDC NIH数据库中的公开分类来将它们与语义特征相关联。我们提出了几个数值特征,连接了几个分类器,以及两个特征选择方法之间的比较,并讨论了不同的特征如何有助于肺结节不同语义特征的辨别。我们的结果表明,用于将功能转化为肺结节表征的抽象语义概念的方法。

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