The health and socioeconomic difficulties caused by the COVID-19 pandemic continues to cause enormous tensions around the world. In particular, this extraordinary surge in the number of cases has put considerable strain on health care systems around the world. A critical step in the treatment and management of COVID-19 positive patients is severity assessment, which is challenging even for expert radiologists given the subtleties at different stages of lung disease severity. Motivated by this challenge, we introduce COVID-Net CT-S, a suite of deep convolutional neural networks for predicting lung disease severity due to COVID-19 infection. More specifically, a 3D residual architecture design is leveraged to learn volumetric visual indicators characterizing the degree of COVID-19 lung disease severity. Experimental results using the patient cohort collected by the China National Center for Bioinformation (CNCB) showed that the proposed COVID-Net CT-S networks, by leveraging volumetric features, can achieve significantly improved severity assessment performance when compared to traditional severity assessment networks that learn and leverage 2D visual features to characterize COVID-19 severity.
翻译:由COVID-19大流行造成的健康和社会经济困难继续在世界各地造成巨大的紧张,特别是病例数量的突增给全世界保健系统造成了相当大的压力,治疗和管理COVID-19阳性病人的一个关键步骤是严重程度评估,考虑到肺病严重程度不同阶段的微妙因素,即使对专家放射科专家来说,这种评估也具有挑战性,由于这一挑战,我们引进了COVID-Net CT-S,这是一套用于预测COVID-19感染导致肺病严重程度的深层神经神经网络。更具体地说,3D残余结构设计被利用来学习量子视觉指标,以说明COVID-19肺病严重程度。中国国家生物信息中心收集的病人群的实验结果显示,拟议的COVID-Net-CTS网络,通过利用体积特征,与学习和利用2D视觉特征来说明COVID-19严重程度的传统严重程度的传统严重程度评估网络相比,可以大大改进严重程度评估业绩。