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Abdominal CTA Image Analysis Through Active Learning and Decision Random Forests: Application to AAA Segmentation

机译:腹部CTA通过主动学习和决定随机森林进行图像分析:AAA分段的应用

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Abdominal Aortic Aneurysm (AAA) is a local dilation of the Aorta that occurs between the renal and iliac arteries. The weakening of the aortic wall leads to its deformation and the generation of a thrombus. Recently developed treatment involves the insertion of a endovascular prosthetic (EVAR), which has the advantage of being a minimally invasive procedure but also requires monitoring to analyze postoperative patient outcomes using 3D Contrast Computerized Tomography Angiography (CTA) imaging procedures. In order to effectively assess the changes experienced after surgery, it is necessary to segment the aneurysm in the CT volume, which is a very time-consuming task. Here we provide results of a novel active learning approach for the semi-automatic detection and segmentation of the lumen and the thrombus of the AAA, which uses image intensity features and discriminative Random Forest classifiers.
机译:腹主动脉瘤(AAA)是肾和髂动脉之间发生的主动脉的局部扩张。主动脉壁的弱化导致其变形和血栓的产生。最近开发的治疗涉及插入血管内假体(EVAR),其具有最微创手术的优点,但还需要使用3D对比计算机断层造影血管造影(CTA)成像程序来分析术后患者结果。为了有效评估手术后经历的变化,有必要在CT卷中分段,这是一个非常耗时的任务。在这里,我们提供了一种用于半自动检测和腔的半自动检测和分割的新型活性学习方法的结果,其使用图像强度特征和鉴别的随机林分类器。

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