The world is currently experiencing an ongoing pandemic of an infectious disease named coronavirus disease 2019 (i.e., COVID-19), which is caused by the severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2). Computed Tomography (CT) plays an important role in assessing the severity of the infection and can also be used to identify those symptomatic and asymptomatic COVID-19 carriers. With a surge of the cumulative number of COVID-19 patients, radiologists are increasingly stressed to examine the CT scans manually. Therefore, an automated 3D CT scan recognition tool is highly in demand since the manual analysis is time-consuming for radiologists and their fatigue can cause possible misjudgment. However, due to various technical specifications of CT scanners located in different hospitals, the appearance of CT images can be significantly different leading to the failure of many automated image recognition approaches. The multi-domain shift problem for the multi-center and multi-scanner studies is therefore nontrivial that is also crucial for a dependable recognition and critical for reproducible and objective diagnosis and prognosis. In this paper, we proposed a COVID-19 CT scan recognition model namely coronavirus information fusion and diagnosis network (CIFD-Net) that can efficiently handle the multi-domain shift problem via a new robust weakly supervised learning paradigm. Our model can resolve the problem of different appearance in CT scan images reliably and efficiently while attaining higher accuracy compared to other state-of-the-art methods.
翻译:目前,世界正在经历一种被称为2019年冠状病毒疾病(即COVID-19)的传染性疾病流行,这种疾病是由严重急性呼吸系统综合症冠状病毒2 (SARS-COV-2)造成的。光谱成像(CT)在评估感染严重程度方面起着重要作用,还可用于识别这些症状和无症状的COVID-19携带者。随着COVID-19病人的累积数量激增,放射科医生越来越需要人工检查CT扫描。因此,对自动3DCT扫描识别工具的需求很高,因为人工分析对放射科医生来说耗时性较高,他们的疲劳可能导致错误判断。然而,由于位于不同医院的CT扫描仪的各种技术规格,CT图像的外观可能大大不同,导致许多自动图像识别方法的失败。多中枢和多扫描员研究的多位化模式转换问题因此,对于可靠的识别和关键性的3DCT扫描识别工具对辐射科专家的准确性准确性分析,同时对扫描网络的精确性、客观诊断和预测性诊断方法提出。