Departamento de Informática, Universidade Estadual de Maringá, Maringá 87020-900, Brazil.
Instituto Federal do Paraná, Pinhais 83330-200, Brazil.
Sensors (Basel). 2022 Sep 26;22(19):7303. doi: 10.3390/s22197303.
Since the beginning of the COVID-19 pandemic, many works have been published proposing solutions to the problems that arose in this scenario. In this vein, one of the topics that attracted the most attention is the development of computer-based strategies to detect COVID-19 from thoracic medical imaging, such as chest X-ray (CXR) and computerized tomography scan (CT scan). By searching for works already published on this theme, we can easily find thousands of them. This is partly explained by the fact that the most severe worldwide pandemic emerged amid the technological advances recently achieved, and also considering the technical facilities to deal with the large amount of data produced in this context. Even though several of these works describe important advances, we cannot overlook the fact that others only use well-known methods and techniques without a more relevant and critical contribution. Hence, differentiating the works with the most relevant contributions is not a trivial task. The number of citations obtained by a paper is probably the most straightforward and intuitive way to verify its impact on the research community. Aiming to help researchers in this scenario, we present a review of the top-100 most cited papers in this field of investigation according to the Google Scholar search engine. We evaluate the distribution of the top-100 papers taking into account some important aspects, such as the type of medical imaging explored, learning settings, segmentation strategy, explainable artificial intelligence (XAI), and finally, the dataset and code availability.
自 COVID-19 大流行开始以来,已经发表了许多工作,提出了解决这一情况下出现的问题的解决方案。在这方面,最受关注的主题之一是开发基于计算机的策略,从胸部医学成像(如 X 射线(CXR)和计算机断层扫描(CT 扫描))中检测 COVID-19。通过搜索已经发表的关于这个主题的工作,我们可以轻松地找到数千篇。这部分是由于这样一个事实,即全球最严重的大流行是在最近取得的技术进步中出现的,同时也考虑到了处理在这种情况下产生的大量数据的技术设施。尽管其中一些工作描述了重要的进展,但我们不能忽视其他工作仅使用知名方法和技术而没有更相关和批判性贡献的事实。因此,区分具有最相关贡献的工作并不是一项简单的任务。一篇论文获得的引用数量可能是验证其对研究界的影响的最直接和直观的方法。为了帮助研究人员在这种情况下,我们根据 Google Scholar 搜索引擎对该领域的前 100 篇最具引用价值的论文进行了综述。我们评估了前 100 篇论文的分布,考虑了一些重要方面,如探索的医学成像类型、学习设置、分割策略、可解释人工智能(XAI),最后是数据集和代码可用性。