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Automated Subdural Hematoma Segmentation for Traumatic Brain Injured (TBI) Patients

机译:创伤性脑部受伤(TBI)患者的自动血管血肿分段

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Traumatic brain injury is a serious public health problem in the U.S. contributing to a large portion of permanent disability. However, its early management and treatment could limit the impact of the injury, save lives and reduce the burden of cost for patients as well as healthcare systems. Subdural hematoma is one of the most common types of TBI, which its visual detection and quantitative evaluation are time consuming and prone to error. In this study, we propose a fully automated machine learning based approach for 3D segmentation of convexity subdural hematomas. Textural, statistical and geometrical features of sample points from intracranial region are extracted based on head Computed Tomography (CT) images. Then, a tree bagger classifier is implemented to classify each pixel as hematoma or no-hematoma. Our method yields sensitivity, specificity and area under the receiver operating curve (AUC) of 85.02%, 73.74% and 0.87 respectively.
机译:创伤性脑损伤是美国的严重公共卫生问题。为大部分永久性残疾做出贡献。然而,其早期的管理和治疗可能会限制伤害的影响,挽救生命,减少患者的成本负担以及医疗保健系统。硬膜体血肿是最常见的TBI之一,其目视检测和定量评估是耗时和易于误差的耗时。在这项研究中,我们提出了一种全自动机基于机器学习的凸性硬膜瘤血肿的3D分割方法。基于头部计算机断层扫描(CT)图像提取来自颅内区域的样品点的质地,统计和几何特征。然后,实施树袋堆积器分类器以将每个像素分类为血肿或无血肿。我们的方法分别产生85.02%,73.74%和0.87的接收器操作曲线(AUC)下的敏感性,特异性和面积。

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