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Pulmonary Embolism Detection using Localized Vessel-Based Features in Dual Energy CT

机译:在双能CT中使用基于血管的局部特征进行肺栓塞检测

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Pulmonary embolism (PE) affects up to 600,000 patients and contributes to at least 100,000 deaths every year in the United States alone. Diagnosis of PE can be difficult as most symptoms are unspecific and early diagnosis is essential for successful treatment. Computed Tomography (CT) images can show morphological anomalies that suggest the existance of PE. Various image-based procedures have been proposed for improving computer-aided diagnosis of PE. We propose a novel method for detecting PE based on localized vessel-based features computed in Dual Energy CT (DECT) images. DECT provides 4D data indexed by the three spatial coordinates and the energy level. The proposed features encode the variation of the Hounsfield Units across the different levels and the CT attenuation related to the amount of iodine contrast in each vessel. A local classification of the vessels is obtained through the classification of these features. Moreover, the localization of the vessel in the lung provides better comparison between patients. Results show that the simple features designed are able to classify pulmonary embolism patients with an AUC (area under the receiver operating curve) of 0.71 on a lobe basis. Prior segmentation of the lung lobes is not necessary because an automatic atlas-based segmentation obtains similar AUC levels (0.65) for the same dataset. The automatic atlas reaches 0.80 AUC in a larger dataset with more control cases.
机译:仅在美国,肺栓塞(PE)每年就影响600,000例患者,并导致至少100,000例死亡。 PE的诊断可能很困难,因为大多数症状是非特异性的,早期诊断对于成功治疗至关重要。计算机断层扫描(CT)图像可显示形态异常,提示存在PE。已经提出了各种基于图像的程序来改善PE的计算机辅助诊断。我们提出了一种基于在双能CT(DECT)图像中计算出的基于局部血管的特征来检测PE的新颖方法。 DECT提供了由三个空间坐标和能级索引的4D数据。提出的特征编码了不同水平的Hounsfield单位的变化以及与每个血管中碘对比量有关的CT衰减。通过这些特征的分类获得血管的局部分类。此外,血管在肺部的定位可在患者之间提供更好的比较。结果表明,所设计的简单功能能够基于肺叶对AUC(接受者工作曲线下面积)为0.71的肺栓塞患者进行分类。不需要事先对肺叶进行分割,因为基于自动图集的分割对于相同的数据集可获得相似的AUC水平(0.65)。在具有更多控制案例的更大数据集中,自动图集达到0.80 AUC。

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