论文标题
COVID-19从胸部CT图像进行基于规模不确定性的胸部CT图像的感染分割
COVID-19 Infection Segmentation from Chest CT Images Based on Scale Uncertainty
论文作者
论文摘要
本文提出了一种从199例患者CT体积的肺中感染区域的分割方法。 COVID-19在全球范围内传播,导致许多受感染的患者和死亡。基于CT图像的COVID-19诊断可以提供快速准确的诊断结果。肺部感染区域的一种自动分割方法为诊断提供了定量标准。以前的方法采用整个2D图像或基于3D卷的过程。感染区域的大小有很大差异。这样的过程很容易错过小型感染区域。基于补丁的过程可有效分割小目标。但是,在感染区域分割中选择适当的斑块大小很难。我们利用分割FCN的各种接受场大小之间的规模不确定性来获得感染区域。接收场大小可以定义为贴片大小和分辨率的分辨率。本文提出了一个感染分割网络(ISNET),该网络(ISNET)执行基于补丁的分割和一种不确定性意识的预测聚合方法,以完善分割结果。我们将ISNET设计到具有各种强度值的细分感染区域。 ISNET具有多个编码路径,可以处理通过多个强度范围归一化的斑块量。我们收集具有各种接受场大小的ISNET产生的预测结果。预测结果之间的比例不确定性是通过预测聚合方法提取的。我们使用聚合FCN来产生精致的分割结果,考虑到预测之间的规模不确定性。在我们使用199例COVID-19病例的199个胸部CT体积的实验中,预测聚合方法将骰子相似性评分从47.6%提高到62.1%。
This paper proposes a segmentation method of infection regions in the lung from CT volumes of COVID-19 patients. COVID-19 spread worldwide, causing many infected patients and deaths. CT image-based diagnosis of COVID-19 can provide quick and accurate diagnosis results. An automated segmentation method of infection regions in the lung provides a quantitative criterion for diagnosis. Previous methods employ whole 2D image or 3D volume-based processes. Infection regions have a considerable variation in their sizes. Such processes easily miss small infection regions. Patch-based process is effective for segmenting small targets. However, selecting the appropriate patch size is difficult in infection region segmentation. We utilize the scale uncertainty among various receptive field sizes of a segmentation FCN to obtain infection regions. The receptive field sizes can be defined as the patch size and the resolution of volumes where patches are clipped from. This paper proposes an infection segmentation network (ISNet) that performs patch-based segmentation and a scale uncertainty-aware prediction aggregation method that refines the segmentation result. We design ISNet to segment infection regions that have various intensity values. ISNet has multiple encoding paths to process patch volumes normalized by multiple intensity ranges. We collect prediction results generated by ISNets having various receptive field sizes. Scale uncertainty among the prediction results is extracted by the prediction aggregation method. We use an aggregation FCN to generate a refined segmentation result considering scale uncertainty among the predictions. In our experiments using 199 chest CT volumes of COVID-19 cases, the prediction aggregation method improved the dice similarity score from 47.6% to 62.1%.