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Spatial Context Learning Approach to Automatic Segmentation of Pleural Effusion in Chest Computed Tomography Images

机译:空间上下文学习方法在胸部计算机断层扫描图像中自动分割胸腔积液

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Pleural effusion is an abnormal collection of fluid within the pleural cavity. Excessive accumulation of pleural fluid is an important bio-marker for various illnesses, including congestive heart failure, pneumonia, metastatic cancer, and pulmonary embolism. Quantification of pleural effusion can be indicative of the progression of disease as well as the effectiveness of any treatment being administered. Quantification, however, is challenging due to unpredictable amounts and density of fluid, complex topology of the pleural cavity, and the similarity in texture and intensity of pleural fluid to the surrounding tissues in computed tomography (CT) scans. Herein, we present an automated method for the segmentation of pleural effusion in CT scans based on spatial context information. The method consists of two stages: first, a probabilistic pleural effusion map is created using multi-atlas segmentation. The probabilistic map assigns a priori probabilities to the presence of pleural fluid at every location in the CT scan. Second, a statistical pattern classification approach is designed to annotate pleural regions using local descriptors based on a priori probabilities, geometrical, and spatial features. Thirty seven CT scans from a diverse patient population containing confirmed cases of minimal to severe amounts of pleural effusion were used to validate the proposed segmentation method. An average Dice coefficient of 0.82685 and Hausdorff distance of 16.2155 mm was obtained.
机译:胸腔积液是胸膜腔内液体的异常收集。胸膜液过多积聚是多种疾病的重要生物标志,包括充血性心力衰竭,肺炎,转移性癌症和肺栓塞。胸腔积液的量化可以指示疾病的进展以及所给予的任何治疗的有效性。但是,由于流体的数量和密度不可预测,胸膜腔的复杂拓扑结构以及在计算机断层扫描(CT)扫描中胸膜流体与周围组织的质地和强度相似,因此量化工作具有挑战性。在这里,我们提出了一种基于空间背景信息的CT扫描中胸腔积液分割的自动方法。该方法包括两个阶段:首先,使用多图谱分割创建概率性胸腔积液图。概率图将先验概率分配给CT扫描中每个位置的胸膜积液。其次,一种统计模式分类方法被设计为基于先验概率,几何和空间特征使用局部描述符对胸膜区域进行注释。来自不同患者群体的37例CT扫描被用于验证所建议的分割方法,该患者包含已确诊的少量至严重胸腔积液。获得的平均骰子系数为0.82685,Hausdorff距离为16.2155 mm。

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