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首页> 外文期刊>Neurocomputing >Random forest active learning for AAA thrombus segmentation in computed tomography angiography images
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Random forest active learning for AAA thrombus segmentation in computed tomography angiography images

机译:在计算机断层扫描血管造影图像中进行AAA血栓分割的随机森林主动学习

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摘要

Image segmentation of 3D Computed Tomography Angiography (CTA) is affected by a variety of noise conditions that may render ineffective image segmentation procedures that have been developed and validated on a collection of training CTA data when applied on new CTA data. The approach followed in this paper to tackle this problem is to provide an Active Learning based interactive image segmentation system which will allow quick volume segmentation, with minimal intervention of a human operator. Image segmentation is achieved by a Random forest (RF) classifier applied on a set of image features extracted from each voxel and its neighborhood. An initial set of labeled voxels is required to start the process, training an initial RF. The most uncertain unlabeled voxels are shown to the human operator to select some of them for inclusion in the training set, retraining the RF classifier. The approach is applied to the segmentation of the thrombus of Abdominal Aortic Aneurysm (AAA) in CTA data (of patients), showing that the CTA volume can be accurately segmented after few iterations requiring a small labeled data sample.
机译:3D计算机断层扫描血管造影(CTA)的图像分割受各种噪声条件的影响,这些噪声条件可能会导致无效的图像分割程序,而这些程序已在将训练CTA数据应用于新的CTA数据时进行了开发和验证。本文采用的解决此问题的方法是提供一种基于主动学习的交互式图像分割系统,该系统将允许快速的体积分割,而无需人工干预。图像分割是通过将随机森林(RF)分类器应用于从每个体素及其邻域提取的一组图像特征来实现的。需要初始标记的体素集来开始该过程,训练初始RF。向操作员显示最不确定的未标记体素,以选择其中一些以包含在训练集中,从而对RF分类器进行重新训练。该方法应用于(患者)CTA数据中的腹主动脉瘤(AAA)血栓的分割,表明CTA量可以在几次迭代后准确分割,而需要少量标记数据样本。

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