论文标题
COVID-19的自动深度学习系统胸部CT中的感染定量
Automatic Deep Learning System for COVID-19 Infection Quantification in chest CT
论文作者
论文摘要
冠状病毒疾病在全球范围内传播,并迅速感染了数百万人,导致健康系统设施的高压。 PCR筛选是用于COVID-19检测的采用诊断测试方法。但是,由于PCR的灵敏度比率低,因此受到批评,这是耗时且手动复杂的过程。 CT成像证明了即使对于渐近患者,也能够检测到该疾病的能力,这使其成为PCR的值得信赖的替代方案。此外,使用自动感染分割方法,CT切片中Covid-19感染的出现为疾病进化监测提供了很高的潜力。但是,COVID-19感染区域包括大小,形状,对比度和强度同质性的较高变化,这对分割过程构成了巨大的挑战。为了应对这些挑战,本文提出了一个自动深度学习系统,以用于19.19感染区域细分。该系统包括不同的步骤,以增强和改善CT切片中的感染区域外观,因此可以使用深层网络有效地学习它们。系统开始通过分割肺部器官来准备感兴趣的区域,然后进行边缘增强扩散滤波(EED)以改善感染区域的对比度和强度均匀性。提出的FCN使用具有连接连接的修改后的剩余块的U-NET体系结构实现。该块通过通过网络转发感染区域特征来改善梯度值的学习。为了证明所提出的系统的概括和有效性,使用从不同来源的不同数据集中提取的许多2D CT切片对其进行训练和测试。使用不同的措施评估所提出的系统,并分别为肺和感染区分割的骰子重叠分数和0.780。
Coronavirus Disease spread globally and infected millions of people quickly, causing high pressure on the health-system facilities. PCR screening is the adopted diagnostic testing method for COVID-19 detection. However, PCR is criticized due its low sensitivity ratios, also, it is time-consuming and manual complicated process. CT imaging proved its ability to detect the disease even for asymptotic patients, which make it a trustworthy alternative for PCR. In addition, the appearance of COVID-19 infections in CT slices, offers high potential to support in disease evolution monitoring using automated infection segmentation methods. However, COVID-19 infection areas include high variations in term of size, shape, contrast and intensity homogeneity, which impose a big challenge on segmentation process. To address these challenges, this paper proposed an automatic deep learning system for COVID-19 infection areas segmentation. The system include different steps to enhance and improve infection areas appearance in the CT slices so they can be learned efficiently using the deep network. The system start prepare the region of interest by segmenting the lung organ, which then undergo edge enhancing diffusion filtering (EED) to improve the infection areas contrast and intensity homogeneity. The proposed FCN is implemented using U-net architecture with modified residual block with concatenation skip connection. The block improves the learning of gradient values by forwarding the infection area features through the network. To demonstrate the generalization and effectiveness of the proposed system, it is trained and tested using many 2D CT slices extracted from diverse datasets from different sources. The proposed system is evaluated using different measures and achieved dice overlapping score of 0.961 and 0.780 for lung and infection areas segmentation, respectively.