基于CT图像多图像融合的肺炎诊断

A. R. Deepa, C. Sheela, S. Amutha, S. Joyal
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引用次数: 2

摘要

2020年初,2019冠状病毒病(COVID-19)的全球传播引发了一场生存健康危机。利用计算机断层扫描(CT)图像自动诊断肺部感染有可能显著改善当前抗击COVID-19的医疗保健方法。但由于感染特征的多样性和感染组织与健康组织之间的弱对比,从CT切片中分割感染区域是困难的。此外,快速收集大量数据是不切实际的,这阻碍了深度模型的训练。本研究提出了基于卷积的深度学习技术COVID-SegNet,用于从胸部CT图像中自动分割COVID-19感染区域和全肺。建议的深度CNN包括一个特征变化(FV)块,该块自适应地修改特征的全局属性,用于分割COVID-19感染。这可以提高其在各种情况下高效、自适应地表达特征的能力。为了应对COVID-19感染区复杂的形状变化,建议使用PASPP,一种渐进的空间金字塔池。经过简单的卷积模块后,PASPP使用多级并行融合分支生成最终特征。为了覆盖各种接受野,PASPP在每个亚张力卷积层中使用具有可接受扩张率的亚张力滤波器。对于COVID-19和肺的分割,骰子相似系数分别为0.987和0.726。在扫描中心收集的数据上进行的实验表明,该方法有效地产生了良好的性能。
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Detecting Pneumonia for COVID 19 Patients using Multi-Image Fusion for CT Images
Early in 2020, the global spread of Coronavirus Disease 2019 (COVID-19) triggered an existential health crisis. Automated lung infection diagnosis using Computed Tomography (CT) images has the potential to significantly improve the current healthcare approach to combat COVID-19. But segmenting infected regions from CT slices is difficult due to the wide variety in infection traits and the weak contrast between infected and healthy tissues. Additionally, gathering a lot of data quickly is impractical, which hinders the training of a deep model. This study proposes COVID-SegNet, a convolutional-based deep learning technique for automatically segmenting COVID-19 infection areas and the whole lungs from chest CT images. The suggested deep CNN includes a feature variation (FV) block that adaptively modifies the global properties of the features for segmenting COVID-19 infection. This can improve its capacity to express features in various situations efficiently and adaptively. To deal with the complex shape variations of COVID-19 infection zones, additionally recommend the use of PASPP, a progressive atrous spatial pyramid pooling. After a simple convolution module, PASPP generates the final features using multistage parallel fusion branches. In order to cover a variety of receptive fields, PASPP uses atrous filters with an acceptable dilation rate in each atrous convolutional layer. For the segmentation of COVID-19 and the lungs, the dice similarity coefficients are 0.987 as well as 0.726, respectively. Experiments carried out on data gathered in the scan centre demonstrate that effectively produce good performance.
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