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Automatic Detection and Segmentation of Focal Liver Lesions in Contrast Enhanced CT Images

机译:对比增强型CT图像中局灶性肝病变的自动检测和分割

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In this paper a novel system for automatic detection and segmentation of focal liver lesions in CT images is presented. It utilizes a probabilistic boosting tree to classify points in the liver as either lesion or parenchyma, thus providing both detection and segmentation of the lesions at the same time and fully automatically. To make the segmentation more robust, an iterative classification scheme is integrated, that incorporates knowledge gained from earlier iterations into later decisions. Finally, a comprehensive evaluation of both the segmentation and the detection performance for the most common hypo dense lesions is given. Detection rates of 77% could be achieved with a sensitivity of 0.95 and a specificity of 0.93 for lesion segmentation at the same settings.
机译:在本文中,提出了一种新颖的系统,用于自动检测和分割CT图像中的局灶性肝脏病变。它利用概率增强树将肝脏中的点分类为病变或实质,从而同时完全自动地提供病变的检测和分割。为了使分割更加鲁棒,我们集成了一个迭代分类方案,该方案将从早期迭代中获得的知识合并到以后的决策中。最后,对最常见的次密集型病变的分割和检测性能进行了综合评估。在相同设置下,对于病变分割的灵敏度为0.95,特异性为0.93,检出率为77%。

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