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An Automatically Generated Texture-based Atlas of the Lungs

机译:一个自动生成的基于纹理的肺部的地图

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Many pulmonary diseases can be characterized by visual abnormalities on lung CT scans. Some diseases manifest similar defects but require completely different treatments, as is the case for Pulmonary Hypertension (PH) and Pulmonary Embolism (PE): both present hypo- and hyper-perfused regions but with different distribution across the lung and require different treatment protocols. Finding these distributions by visual inspection is not trivial even for trained radiologists who currently use invasive catheterism to diagnose PH. A Computer-Aided Diagnosis (CAD) tool that could facilitate the non-invasive diagnosis of these diseases can benefit both the radiologists and the patients. Most of the visual differences in the parenchyma can be characterized using texture descriptors. Current CAD systems often use texture information but the texture is either computed in a patch-based fashion, or based on an anatomical division of the lung. The difficulty of precisely finding these divisions in abnormal lungs calls for new tools for obtaining new meaningful divisions of the lungs. In this paper we present a method for unsupervised segmentation of lung CT scans into subregions that are similar in terms of texture and spatial proximity. To this extent, we combine a previously validated Riesz-wavelet texture descriptor with a well-known superpixel segmentation approach that we extend to 3D. We demonstrate the feasibility and accuracy of our approach on a simulated texture dataset, and show preliminary results for CT scans of the lung comparing subjects suffering either from PH or PE. The resulting texture-based atlas of individual lungs can potentially help physicians in diagnosis or be used for studying common texture distributions related to other diseases.
机译:许多肺部疾病可通过在肺CT扫描视觉异常为特征。一些疾病表现类似的缺陷,但是需要完全不同的治疗方法,如对于肺动脉高压(PH)和肺栓塞(PE)的情况下:超灌注区域同时存在低血糖和但与整个肺不同的分布,需要不同的治疗方案。通过目测发现这些分布不是谁目前使用微创catheterism诊断PH训练有素的放射科医师琐碎甚至。计算机辅助诊断(CAD)工具,可以促进这些疾病的无创诊断都有好处,放射科医生和患者。大部分的在实质的视觉差异可以使用纹理描述符来表征。当前的CAD系统经常使用纹理信息但质地是在基于块拼贴的方式或者计算,或基于所述肺的解剖学分裂。在肺部异常发现正是这些分歧的难度,迫使人们获得肺部的有意义的新部门的新工具。在本文中,我们提出了肺CT扫描的无监督分割的方法成,质感和空间上邻近的方面相似的子区域。在这个意义上,我们有一个著名的超像素分割方法,我们扩展到三维结合先前验证里斯小波纹理描述符。我们证明在模拟的纹理数据集的可行性和我们的方法的准确性,初步结果显示,对于CT扫描肺科比较从PH或PE无论是痛苦的。个体肺部所得基于纹理图谱可以在诊断潜在的帮助医师或用于研究有关的其他疾病公共质地分布。

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