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Texton and Sparse Representation Based Texture Classification of Lung Parenchyma in CT Images

机译:基于Texton和稀疏表示的CT图像中肺实质的纹理分类。

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摘要

Automated texture analysis of lung computed tomography (CT) images is a critical tool in subtyping pulmonary emphysema and diagnosing chronic obstructive pulmonary disease (COPD). Texton-based methods encode lung textures with nearest-texton frequency histograms, and have achieved high performance for supervised classification of emphysema subtypes from annotated lung CT images. In this work, we first explore characterizing lung textures with sparse decomposition from texton dictionaries, using different regularization strategies, and then extend the sparsity-inducing constraint to the construction of the dictionaries. The methods were evaluated on a publicly available lung CT database of annotated emphysema subtypes. We show that enforcing sparse decompositions from texton dictionaries and unsupervised dictionary learning can achieve high classification accuracy (>90%). The flexibility of sparse-inducing models embedded either in the representation stage or dictionary learning stage has potential in providing consistency in classification performance on heterogeneous lung CT datasets with further parameter tuning.
机译:肺计算机断层扫描(CT)图像的自动纹理分析是分型肺气肿和诊断慢性阻塞性肺疾病(COPD)的关键工具。基于Texton的方法使用最近的Texton频率直方图对肺纹理进行编码,并且在对带注释的肺部CT图像进行肺气肿亚型的监督分类方面取得了高性能。在这项工作中,我们首先使用不同的正则化策略探索从文本字典稀疏分解来表征肺纹理,然后将稀疏性诱导约束扩展到字典的构造。该方法在带有注释的肺气肿亚型的可公开获得的肺部CT数据库中进行了评估。我们表明,从文本字典中执行稀疏分解和无监督词典学习可以实现较高的分类精度(> 90%)。嵌入在表示阶段或词典学习阶段的稀疏诱导模型的灵活性具有潜在性,可以通过进一步的参数调整在异构肺CT数据集上提供分类性能的一致性。

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