Automated and accurate segmentation of the infected regions in computed tomography (CT) images is critical for the prediction of the pathological stage and treatment response of COVID-19. Several deep convolutional neural networks (DCNNs) have been designed for this task, whose performance, however, tends to be suppressed by their limited local receptive fields and insufficient global reasoning ability. In this paper, we propose a pixel-wise sparse graph reasoning (PSGR) module and insert it into a segmentation network to enhance the modeling of long-range dependencies for COVID-19 infected region segmentation in CT images. In the PSGR module, a graph is first constructed by projecting each pixel on a node based on the features produced by the segmentation backbone, and then converted into a sparsely-connected graph by keeping only K strongest connections to each uncertain pixel. The long-range information reasoning is performed on the sparsely-connected graph to generate enhanced features. The advantages of this module are two-fold: (1) the pixel-wise mapping strategy not only avoids imprecise pixel-to-node projections but also preserves the inherent information of each pixel for global reasoning; and (2) the sparsely-connected graph construction results in effective information retrieval and reduction of the noise propagation. The proposed solution has been evaluated against four widely-used segmentation models on three public datasets. The results show that the segmentation model equipped with our PSGR module can effectively segment COVID-19 infected regions in CT images, outperforming all other competing models.
翻译:在计算断层成像(CT)图像中,对受感染区域进行自动和准确的分解对于预测COVID-19的病理阶段和治疗反应至关重要。在PSGR模块中,为这项任务设计了若干深层的神经神经网络(DCNN),但这种网络的性能往往被其有限的局部可接收字段和不充分的全球推理能力所抑制。在本文件中,我们提出了一个像素稀释图推理模块,并将其插入一个分解网络,以加强COVID-19受感染区域在CT图像中的远距离依赖性模型的建模。在PSGR模块中,首先通过根据分层主干线生成的特性在节点上投射每个像素像素,然后通过仅保持K最强的连接到每个不确定的像素的像素。远程信息推理是在连接的模型上进行,以产生强化的特征。这个模块的优点是两重:(1) Pixel-19受感染区域的绘图战略不仅避免不精确的Pix-十九-十九分解区域图,而且通过不断的分解的分路路路图图,还保留了全球数据结构的精分析结果。