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Automated diagnosis of interstitial lung diseases and emphysema in MDCT imaging

机译:在MDCT成像中自动诊断间质性肺病和肺气肿

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Diffuse lung diseases (DLD) include a heterogeneous group of non-neoplasic disease resulting from damage to the lung parenchyma by varying patterns of inflammation. Characterization and quantification of DLD severity using MDCT, mainly in interstitial lung diseases and emphysema, is an important issue in clinical research for the evaluation of new therapies. This paper develops a 3D automated approach for detection and diagnosis of diffuse lung diseases such as fibrosis/honeycombing, ground glass and emphysema. The proposed methodology combines multi-resolution 3D morphological filtering (exploiting the sup-constrained connection cost operator) and graph-based classification for a full characterization of the parenchymal tissue. The morphological filtering performs a multi-level segmentation of the low- and medium-attenuated lung regions as well as their classification with respect to a granularity criterion (multi-resolution analysis). The original intensity range of the CT data volume is thus reduced in the segmented data to a number of levels equal to the resolution depth used (generally ten levels). The specificity of such morphological filtering is to extract tissue patterns locally contrasting with their neighborhood and of size inferior to the resolution depth, while preserving their original shape. A multivalued hierarchical graph describing the segmentation result is built-up according to the resolution level and the adjacency of the different segmented components. The graph nodes are then enriched with the textural information carried out by their associated components. A graph analysis-reorganization based on the nodes attributes delivers the final classification of the lung parenchyma in normal and ILD/emphysematous regions. It also makes possible to discriminate between different types, or development stages, among the same class of diseases.
机译:弥漫性肺疾病(DLD)包括通过不同炎症模式损伤肺实质损伤的非均相非肿瘤疾病组。 MDCT的表征和定量DLD严重程度,主要是间质性肺病和肺气肿,是评估新疗法的临床研究中的一个重要问题。本文开发了一种用于检测和诊断弥漫性肺部疾病,如纤维化/蜂窝,地面玻璃和肺气肿的3D自动化方法。该方法的方法结合了多分辨率3D形态过滤(利用Sup受限连接成本算子)和基于图的分类,以进行实质组织的全部表征。形态学过滤执行低衰减的肺区的多级分割以及相对于粒度标准(多分辨率分析)的分类。因此,CT数据量的原始强度范围在分段数据中降低到等于使用的分辨率深度的多个级别(通常为十个级别)。这种形态过滤的特异性是提取与其邻域局部对比的组织图案,并且尺寸不如分辨率深度,同时保留其原始形状。描述分割结果的多值分层图是根据分辨率级别的构建和不同分段组件的邻接。然后将图形节点丰富了由其相关组件执行的纹理信息。基于节点属性的图分析重组可提供正常和ILD /顽育地区的肺实质的最终分类。它还可以在同一类疾病中区分不同类型或发展阶段。

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