We present a novel deep learning approach to categorical segmentation of lung CTs of COVID-19 patients. Specifically, we partition the scans into healthy lung tissues, non-lung regions, and two different, yet visually similar, pathological lung tissues, namely, ground-glass opacity and consolidation. This is accomplished via a unique, end-to-end hierarchical network architecture and ensemble learning, which contribute to the segmentation and provide a measure for segmentation uncertainty. The proposed framework achieves competitive results and outstanding generalization capabilities for three COVID-19 datasets. Our method is ranked second in a public Kaggle competition for COVID-19 CT images segmentation. Moreover, segmentation uncertainty regions are shown to correspond to the disagreements between the manual annotations of two different radiologists. Finally, preliminary promising correspondence results are shown for our private dataset when comparing the patients' COVID-19 severity scores (based on clinical measures), and the segmented lung pathologies. Code and data are available at our repository: https://github.com/talbenha/covid-seg
翻译:具体地说,我们将扫描结果分解为健康的肺组织、非肺部区域以及两个不同但视觉相似的病理肺组织,即地面玻璃不透明与整合,这是通过独特的、端对端的等级网络架构和共同学习实现的,有助于分解,并为分解不确定性提供了一种衡量尺度。拟议框架为三个COVID-19数据集取得了竞争性结果和突出的概括能力。我们的方法在CVID-19图像分解的公开Kaggle竞赛中排名第二。此外,分解不确定区域显示与两个不同放射学家手写的说明之间的差异相对应。最后,在比较病人的COVID-19严重程度分数(以临床测量为基础)和分解肺病理学分数时,为我们的私人数据集展示了初步的、有希望的通信结果。我们的储存库提供了代码和数据:https://github.com/talbenha/covid-seg。