Novel Coronavirus disease (COVID-19) is a highly contagious respiratory infection that has had devastating effects on the world. Recently, new COVID-19 variants are emerging making the situation more challenging and threatening. Evaluation and quantification of COVID-19 lung abnormalities based on chest Computed Tomography (CT) scans can help determining the disease stage, efficiently allocating limited healthcare resources, and making informed treatment decisions. During pandemic era, however, visual assessment and quantification of COVID-19 lung lesions by expert radiologists become expensive and prone to error, which raises an urgent quest to develop practical autonomous solutions. In this context, first, the paper introduces an open access COVID-19 CT segmentation dataset containing 433 CT images from 82 patients that have been annotated by an expert radiologist. Second, a Deep Neural Network (DNN)-based framework is proposed, referred to as the COVID-Rate, that autonomously segments lung abnormalities associated with COVID-19 from chest CT scans. Performance of the proposed COVID-Rate framework is evaluated through several experiments based on the introduced and external datasets. The results show a dice score of 0:802 and specificity and sensitivity of 0:997 and 0:832, respectively. Furthermore, the results indicate that the COVID-Rate model can efficiently segment COVID-19 lesions in both 2D CT images and whole lung volumes. Results on the external dataset illustrate generalization capabilities of the COVID-Rate model to CT images obtained from a different scanner.
翻译:科罗纳病毒(科罗纳病毒(科罗纳病毒19)是一种高度传染性的呼吸道感染(科罗纳病毒19),它给世界造成了毁灭性影响。最近,新的科罗纳病毒19变异体正在出现,使情况更具挑战性和威胁性。根据胸腔成像扫描对COVID-19肺部异常进行评估和量化可有助于确定疾病阶段,有效分配有限的保健资源,并作出知情的治疗决定。但在大流行病时代,专家放射科医生对COVID-19肺部损伤的视觉评估和量化变得昂贵,容易发生错误,这促使人们紧急寻求制定实际自主的解决办法。在这方面,首先,文件引入了开放访问COVID-19CT分解数据集,其中包含了82个病人的433个CT图像,这些图像得到了一位放射科专家的注解。第二,提出了深神经网络(DNNN)框架,称为COVID-Rate,与胸腔部的COVID-19有关的自主部分肺部模式异常。CVID-CT的运行情况通过若干次实验来评估拟议的CVI-Rate框架的运行情况。根据OVI-80年代一般图象的缩缩缩图解和Creality2,显示了OVI的成绩和外部数据。