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Enhancing Active Learning Computed Tomography Image Segmentation with Domain Knowledge

机译:通过领域知识增强主动学习计算机断层扫描图像分割

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This paper follows previous works on the construction of interactive medical image segmentation system, allowing quick volume segmentation requiring minimal intervention of the human operator. This paper contributes to tackle this problem enhancing the previously proposed Active Learning image segmentation system with Domain Knowledge. Active Learning iterates the following process: first, a classifier is trained on the basis of a set of image features extrated for each training labeled voxel; second, a human operator is presented with the most uncertain unlabeled voxels to select some of them for inclusion in the training set assigining corresponding label. Finally, image segmentation is produced by voxel classification of the entire volume with the resulting classifier. The approach has been applied to the segmentation of the thrombus in CTA data of Abdominal Aortic Aneurysm (AAA) patients. The Domain Knowledge referring to the expected shape of the target structures is used to filter out undesired region detections in a post-processing step. We report computational experiments over 6 abdominal CTA datasets consisting. The performance measure is the true positive rate (TPR). Surface rendering provides a 3D visualization of the segmented thrombus. A few Active Learning iterations achieve accurate segmentation in areas where it is difficult to distinguish the anatomical structures due to noise conditions and similarity of gray levels between the thrombus and other structures.
机译:本文遵循先前关于交互式医学图像分割系统构建的工作,从而允许快速的体积分割,而无需人工干预。本文致力于解决该问题,从而增强了先前提出的带有“领域知识”的主动学习图像分割系统。主动学习重复以下过程:首先,基于为每个训练有素体素提取的图像特征集对分类器进行训练;其次,向操作员显示不确定性最强的未标记体素,以选择其中一些以包含在训练组中,以辅助相应的标签。最后,通过使用结果分类器对整个体积进行体素分类来生成图像分割。该方法已应用于腹主动脉瘤(AAA)患者CTA数据中的血栓分割。涉及目标结构的预期形状的领域知识用于在后处理步骤中过滤掉不需要的区域检测。我们报告了6个腹部CTA数据集组成的计算实验。绩效指标是真实的阳性率(TPR)。表面渲染提供了分段血栓的3D可视化。一些主动学习迭代可在噪声条件和血栓与其他结构之间的灰度相似性导致难以区分解剖结构的区域中实现准确的分割。

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