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Labeling the Pulmonary Arterial Tree in CT Images for Automatic Quantification of Pulmonary Embolism

机译:在CT图像中标记肺动脉树以自动定量肺栓塞

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摘要

Contrast-enhanced CT Angiography has become an accepted diagnostic tool for detecting Pulmonary Embolism (PE). The CT obstruction index proposed by Qanadli, which is based on the number of obstructed arterial segments, enables the quantification of PE severity. Because the required manual identification of twenty arterial segments is time consuming, we propose a method for automated labeling of the pulmonary arterial tree to identify the arterial segments. Assuming that the peripheral parts of the arterial tree contain most relevant information for labeling, we propose a bottom-up labeling algorithm exploiting the spatial information of the peripheral arteries. A model of reference positions of the arterial segments was trained using manually labeled trees of 9 patients. To improve accuracy, the arterial tree was partitioned into sub-trees enabling an iterative labeling technique that labels each sub-tree separately. The accuracy of the labeling technique was evaluated using manually labeled trees of 10 patients. Initially an accuracy of 74% was obtained, whereas the iterative approach improved accuracy to 85%. The labeling errors had minor effects on the calculated Qanadli index. Therefore, the presented labeling approach is applicable in automated PE quantification.
机译:对比增强的CT血管造影已成为公认的诊断肺栓塞(PE)的诊断工具。 Qanadli提出的CT梗阻指数基于阻塞的动脉节段数量,可以量化PE的严重程度。因为需要手动识别20个动脉节段很耗时,所以我们提出了一种自动标记肺动脉树以识别动脉节段的方法。假定动脉树的外围部分包含最相关的标记信息,我们提出了一种利用外围动脉空间信息的自下而上的标记算法。使用9名患者的人工标记树训练了动脉节段的参考位置模型。为了提高准确性,将动脉树划分为子树,从而启用了一种迭代标记技术,可以分别标记每个子树。使用10名患者的人工标记树评估了标记技术的准确性。最初获得了74%的精度,而迭代方法将精度提高到了85%。标签错误对计算的Qanadli指数影响较小。因此,提出的标记方法适用于自动PE定量。

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