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Reduction of Lymph Tissue False Positives in Pulmonary Embolism Detection

机译:减少肺栓塞检测中淋巴组织假阳性

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Pulmonary embolism (PE) is a serious medical condition, characterized by the partial/complete blockage of an artery within the lungs. We have previously developed a fast yet effective approach for computer aided detection of PE in computed topographic pulmonary angiography (CTPA), which is capable of detecting both acute and chronic PEs, achieving a benchmark performance of 78% sensitivity at 4 false positives (FPs) per volume. By reviewing the FPs generated by this system, we found the most dominant type of FP, roughly one third of all FPs, to be lymph/connective tissue. In this paper, we propose a novel approach that specifically aims at reducing this FP type. Our idea is to explicitly exploit the anatomical context configuration of PE and lymph tissue in the lungs: a lymph FP connects to the airway and is located outside the artery, while a true PE should not connect to the airway and must be inside the artery. To realize this idea, given a detected candidate (i.e. a cluster of suspicious voxels), we compute a set of contextual features, including its distance to the airway based on local distance transform and its relative position to the artery based on fast tensor voting and Hessian "vesselness" scores. Our tests on unseen cases show that these features can reduce the lymph FPs by 59%, while improving the overall sensitivity by 3.4%.
机译:肺栓塞(PE)是一种严重的医疗状况,其特征在于肺部内动脉的部分/完全堵塞。我们之前已经开发出一种快速但有效的计算机辅助检测PE在计算的地形肺血管造影(CTPA)中的PE,其能够检测急性和慢性PE,在4个假阳性(FPS)下实现78%灵敏度的基准性能每卷。通过审查由该系统产生的FPS,我们发现最多的FP类型,大约三分之一的FPS,是淋巴/结缔组织。在本文中,我们提出了一种专门旨在减少该FP型的新方法。我们的想法是明确地利用肺中PE和淋巴组织的解剖背景配置:淋巴式FP连接到气道,位于动脉外,而真正的PE不应连接到气道,必须在动脉内部。为了认识到这种想法,给定检测到的候选者(即一群可疑体素),我们计算一组上下文特征,包括基于局部距离变换及其基于快速张量票的动脉的局部距离变换及其对动脉的相对位置的距离黑森州的“血管”得分。我们对看不见案例的测试表明,这些特征可以将淋巴式FP减少59%,同时将整体敏感性提高3.4%。

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