论文标题
COVID-19的诊断/预后图像:挑战,机遇和应用
Diagnosis/Prognosis of COVID-19 Images: Challenges, Opportunities, and Applications
论文作者
论文摘要
这种新型的冠状病毒病Covid-19,正如我们在2020年所知道的那样,迅速而突然改变了世界。它成为一般分析流行病学的最前瞻性挑战,并且特定于特定的信号处理理论。鉴于其在全球范围内的高偶性性质和不利影响,开发有效的加工/学习模型以克服这一大流行并为潜在的未来做好准备非常重要。在这方面,医学成像对于Covid-19的管理起着重要作用。但是,以人为本的医学图像解释是乏味的,并且可能是主观的。这引起了人们的兴趣,开发了用于分析和解释医学图像的放射学模型。信号处理(SP)和深度学习(DL)模型可以帮助开发可靠的放射线解决方案,以进行诊断/预后,严重程度评估,治疗反应以及对COVID-199患者的监测。在本文中,我们旨在概述COVID-19感染的当前状态,挑战和机会的诊断(筛查/监测)和预后(筛查/监测)和预后(结果预测和严重性评估)的概述。更具体地说,本文首先要详细阐述Covid-19的分析流行病学和超信号处理的理论框架的最新发展。之后,讨论了COVID-19的成像方式和放射学特征。然后描述了基于SL/DL的基于SL/DL的放射线模型,以涵盖以下四个域:COVID-19病变的分割;结果预测的预测模型;严重性评估,并且;诊断/分类模型。最后,详细提出了开放问题和机会。
The novel Coronavirus disease, COVID-19, has rapidly and abruptly changed the world as we knew in 2020. It becomes the most unprecedent challenge to analytic epidemiology in general and signal processing theories in specific. Given its high contingency nature and adverse effects across the world, it is important to develop efficient processing/learning models to overcome this pandemic and be prepared for potential future ones. In this regard, medical imaging plays an important role for the management of COVID-19. Human-centered interpretation of medical images is, however, tedious and can be subjective. This has resulted in a surge of interest to develop Radiomics models for analysis and interpretation of medical images. Signal Processing (SP) and Deep Learning (DL) models can assist in development of robust Radiomics solutions for diagnosis/prognosis, severity assessment, treatment response, and monitoring of COVID-19 patients. In this article, we aim to present an overview of the current state, challenges, and opportunities of developing SP/DL-empowered models for diagnosis (screening/monitoring) and prognosis (outcome prediction and severity assessment) of COVID-19 infection. More specifically, the article starts by elaborating the latest development on the theoretical framework of analytic epidemiology and hypersignal processing for COVID-19. Afterwards, imaging modalities and Radiological characteristics of COVID-19 are discussed. SL/DL-based Radiomic models specific to the analysis of COVID-19 infection are then described covering the following four domains: Segmentation of COVID-19 lesions; Predictive models for outcome prediction; Severity assessment, and; Diagnosis/classification models. Finally, open problems and opportunities are presented in detail.