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Automatic Epicardial Fat Segmentation in Cardiac CT Imaging Using 3D Deep Attention U-Net

机译:使用3D深度注意U-Net的心脏CT成像中的自动心外膜脂肪分割

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Epicardial fat is a visceral fat deposit, located between the heart and the pericardium, which shares many of the pathophysiological properties of other visceral fat deposits, it may also potentially cause local inflammation and likely has direct effects on coronary atherosclerosis, epicardial fat is also associated with other known factors, such as obesity, diabetes mellitus, age, and hypertension, which interprets its role as an independent risk marker intricate. For the investigation of the relationship between epicardial fat and various diseases, it is important to segment the epicardial fat in a fast and reproducible way. However, epicardial fat has a variable distribution, and multiple conditions may affect the volume of the EF, which can increase the complexity of the already time-consuming manual segmentation work. In this study, we propose to use a 3D deep attention U-Net method to segment the epicardial fat for cardiac CT image automatically. To test the proposed method, we applied it to 40 patients' cardiac CT images. Five-fold cross-validation experiments were used to evaluate the proposed method. We calculated the Dice similarity coefficient (DSC), precision, and recall (MSD) indices between the ground truth and our segmentation to quantify the segmentation accuracy of the proposed method. Overall, the DSC, precision, and recall were 85% ± 5%, 86% ± 4%, and 89% ± 5%, which demonstrated the detection and segmentation accuracy of the proposed method.
机译:心外膜脂肪是位于心脏和心包之间的内脏脂肪沉积物,具有其他内脏脂肪沉积物的许多病理生理特性,它还可能潜在地引起局部炎症,并且可能对冠状动脉粥样硬化有直接影响,心外膜脂肪也相关以及其他已知因素,例如肥胖,糖尿病,年龄和高血压,这些因素将其解释为一个独立的复杂风险标志物。为了研究心外膜脂肪与各种疾病之间的关系,以快速且可重复的方式分割心外膜脂肪非常重要。但是,心外膜脂肪的分布是可变的,多种情况可能会影响EF的体积,这会增加已经很费时的手动分割工作的复杂性。在这项研究中,我们建议使用3D深度注意U-Net方法自动对心外膜脂肪进行分割,以获取心脏CT图像。为了测试该方法,我们将其应用于40例患者的心脏CT图像。五倍交叉验证实验用于评估该方法。我们计算了真实情况与我们的细分之间的Dice相似度系数(DSC),精度和召回率(MSD)指标,以量化该方法的细分精度。总体而言,DSC,准确度和召回率分别为85%±5%,86%±4%和89%±5%,证明了该方法的检测和分割准确性。

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