de Carvalho Brito Vitória, Dos Santos Patrick Ryan Sales, de Sales Carvalho Nonato Rodrigues, de Carvalho Filho Antonio Oseas
Department of Information Systems, Federal University of Piauí R. Cícero Duarte, 905, Junco, Picos 64607-670, PI, Brazil.
Department of Electrical Engineering, Federal University of Piauí - PI, Teresina, Brazil.
Pattern Recognit. 2021 Nov;119:108083. doi: 10.1016/j.patcog.2021.108083. Epub 2021 Jun 6.
COVID-19 is an infectious disease caused by a newly discovered type of coronavirus called SARS-CoV-2. Since the discovery of this disease in late 2019, COVID-19 has become a worldwide concern, mainly due to its high degree of contagion. As of April 2021, the number of confirmed cases of COVID-19 reported to the World Health Organization has already exceeded 135 million worldwide, while the number of deaths exceeds 2.9 million. Due to the impacts of the disease, efforts in the literature have intensified in terms of studying approaches aiming to detect COVID-19, with a focus on supporting and facilitating the process of disease diagnosis. This work proposes the application of texture descriptors based on phylogenetic relationships between species to characterize segmented CT volumes, and the subsequent classification of regions into COVID-19, solid lesion or healthy tissue. To evaluate our method, we use images from three different datasets. The results are promising, with an accuracy of 99.93%, a recall of 99.93%, a precision of 99.93%, an F1-score of 99.93%, and an AUC of 0.997. We present a robust, simple, and efficient method that can be easily applied to 2D and/or 3D images without limitations on their dimensionality.
COVID-19是一种由新发现的名为SARS-CoV-2的冠状病毒引起的传染病。自2019年末发现这种疾病以来,COVID-19已成为全球关注的问题,主要是由于其高度传染性。截至2021年4月,向世界卫生组织报告的COVID-19确诊病例数在全球已超过1.35亿例,死亡人数超过290万。由于该疾病的影响,文献中针对旨在检测COVID-19的研究方法的努力有所加强,重点是支持和促进疾病诊断过程。这项工作提出应用基于物种间系统发育关系的纹理描述符来表征分割后的CT体积,并随后将区域分类为COVID-19、实性病变或健康组织。为了评估我们的方法,我们使用了来自三个不同数据集的图像。结果很有前景,准确率为99.93%,召回率为99.93%,精确率为99.93%,F1分数为99.93%,曲线下面积为0.997。我们提出了一种强大、简单且高效的方法,该方法可以轻松应用于2D和/或3D图像,且不受其维度限制。