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Brain Hematoma Segmentation Using Active Learning and an Active Contour Model

机译:使用主动学习和主动轮廓模型进行脑血肿分割

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Traumatic brain injury (TBI) is a massive public health problem worldwide. Accurate and fast automatic brain hematoma segmentation is important for TBI diagnosis, treatment and outcome prediction. In this study, we developed a fully automated system to detect and segment hematoma regions in head Computed Tomography (CT) images of patients with acute TBI. We first over-segmented brain images into superpixels and then extracted statistical and textural features to capture characteristics of superpixels. To overcome the shortage of annotated data, an uncertainty-based active learning strategy was designed to adaptively and iteratively select the most informative unlabeled data to be annotated for training a Support Vector Machine classifier (SVM). Finally, the coarse segmentation from the SVM classifier was incorporated into an active contour model to improve the accuracy of the segmentation. From our experiments, the proposed active learning strategy can achieve a comparable result with 5 times fewer labeled data compared with regular machine learning. Our proposed automatic hematoma segmentation system achieved an average Dice coefficient of 0.60 on our dataset, where patients are from multiple health centers and at multiple levels of injury. Our results show that the proposed method can effectively overcome the challenge of limited and highly varied dataset.
机译:颅脑外伤(TBI)是世界范围内的重大公共卫生问题。准确快速的脑血肿自动分割对TBI诊断,治疗和结果预测很重要。在这项研究中,我们开发了一种全自动系统,用于检测和分割急性TBI患者的头部计算机断层扫描(CT)图像中的血肿区域。我们首先将脑图像过度分割为超像素,然后提取统计和纹理特征以捕获超像素的特征。为了克服带注释的数据的不足,设计了一种基于不确定性的主动学习策略,以自适应地和迭代地选择要进行注释的信息量最大的未标记数据,以训练支持向量机分类器(SVM)。最后,将来自SVM分类器的粗略分割合并到主动轮廓模型中,以提高分割的准确性。根据我们的实验,与常规机器学习相比,提出的主动学习策略可以达到可比较的结果,其标记数据要少5倍。我们提出的自动血肿分割系统在我们的数据集上实现了平均Dice系数为0.60,其中患者来自多个健康中心并且处于多个伤害级别。我们的结果表明,所提出的方法可以有效地克服有限和高度变化的数据集的挑战。

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