Since being first detected in China, coronavirus disease 2019 (COVID-19) has spread rapidly across the world, triggering a global pandemic with no viable cure in sight. As a result, national responses have focused on the effective minimization of the spread. Border control measures and travel restrictions have been implemented in a number of countries to limit the import and export of the virus. The detection of COVID-19 is a key task for physicians. The erroneous results of early laboratory tests and their delays led researchers to focus on different options. Information obtained from computed tomography (CT) and radiological images is important for clinical diagnosis. Therefore, it is worth developing a rapid method of detection of viral diseases through the analysis of radiographic images. We propose a novel method of detection of COVID-19. The purpose is to provide clinical decision support to healthcare workers and researchers. The article is to support researchers working on early detection of COVID-19 as well as similar viral diseases.
【저자키워드】 COVID-19, deep learning, Diagnosis, CNN, Convolutional neural network, 【초록키워드】 coronavirus disease, Coronavirus disease 2019, Healthcare workers, Laboratory tests, virus, healthcare worker, global pandemic, Spread, China, Computed tomography, Viral, response, Early detection, Travel, Physicians, viral disease, Clinical diagnosis, Viral diseases, Analysis, border control, Laboratory test, focus, in sight, Support, measure, clinical decision, Radiographic, article, National, import, export, sight, researcher, triggering, country, effective, limit, radiological, researchers, 【제목키워드】 detection,