Diagnosis of COVID-19 is necessary to prevent and control the disease. Deep learning methods have been considered a fast and accurate method. In this paper, by the parallel combination of three well-known pre-trained networks, we attempted to distinguish coronavirus-infected samples from healthy samples. The negative log-likelihood loss function has been used for model training. CT scan images in the SARS-CoV-2 dataset were used for diagnosis. The SARS-CoV-2 dataset contains 2482 images of lung CT scans, of which 1252 images belong to COVID-19-infected samples. The proposed model was close to 97% accurate.
翻译:对COVID-19的诊断对于预防和控制这一疾病是必要的。深层学习方法被认为是一种快速和准确的方法。在本文中,通过三个众所周知的预先培训的网络的平行组合,我们试图将冠状病毒感染样品与健康样品区分开来。模型培训使用了负对数损失功能。SARS-COV-2数据集中的CT扫描图像用于诊断。SARS-COV-2数据集包含2 482个肺部CT扫描图像,其中1 252个图像属于COVID-19感染样品。提议的模型接近97%的准确度。