Chest computed tomography (CT) has played an essential diagnostic role in assessing patients with COVID-19 by showing disease-specific image features such as ground-glass opacity and consolidation. Image segmentation methods have proven to help quantify the disease burden and even help predict the outcome. The availability of longitudinal CT series may also result in an efficient and effective method to reliably assess the progression of COVID-19, monitor the healing process and the response to different therapeutic strategies. In this paper, we propose a new framework to identify infection at a voxel level (identification of healthy lung, consolidation, and ground-glass opacity) and visualize the progression of COVID-19 using sequential low-dose non-contrast CT scans. In particular, we devise a longitudinal segmentation network that utilizes the reference scan information to improve the performance of disease identification. Experimental results on a clinical longitudinal dataset collected in our institution show the effectiveness of the proposed method compared to the static deep neural networks for disease quantification.
翻译:在评估COVID-19患者时,通过展示地面玻璃不透明与整合等特定疾病图像特征,切片断层方法在评估COVID-19患者方面发挥了重要的诊断作用。图像分割方法已证明有助于量化疾病负担,甚至有助于预测结果。纵向切片序列的可用性还可能导致一种高效和有效的方法,以便可靠地评估COVID-19的进展,监测愈合过程和对不同治疗战略的反应。在本文件中,我们提议一个新的框架,用以在 voxel 一级确定感染情况(确定健康的肺部,整合和地面玻璃不透明),并用连续低剂量非多剂量CT扫描来直观COVID-19的进展。特别是,我们设计了一个长距离分离网络,利用参考扫描信息改进疾病识别的性能。我们机构所收集的临床长距离数据集的实验结果显示,与静态的深神经网络相比,拟议的方法与静态的疾病定量神经网络相比,我们所拟议的方法的有效性。