Besides vaccination, as an effective way to mitigate the further spread of COVID-19, fast and accurate screening of individuals to test for the disease is yet necessary to ensure public health safety. We propose COVID-Net UV, an end-to-end hybrid spatio-temporal deep neural network architecture, to detect COVID-19 infection from lung point-of-care ultrasound videos captured by convex transducers. COVID-Net UV comprises a convolutional neural network that extracts spatial features and a recurrent neural network that learns temporal dependence. After careful hyperparameter tuning, the network achieves an average accuracy of 94.44% with no false-negative cases for COVID-19 cases. The goal with COVID-Net UV is to assist front-line clinicians in the fight against COVID-19 via accelerating the screening of lung point-of-care ultrasound videos and automatic detection of COVID-19 positive cases.
翻译:除了疫苗接种之外,作为减少COVID-19进一步传播的有效方法,还需要对个人进行快速和准确的检测,以测试该疾病,以确保公共卫生安全;我们提议COVID-NetUV,即一个端到端混合孔状时深神经网络结构,以检测由康韦克斯携带者捕获的肺部点护理超声波视频造成的COVID-19感染;COVID-NetUV包括一个综合神经网络,它提取空间特征和经常神经网络,学习时间依赖性;经过仔细的超光计调整,该网络平均达到94.44%的精确度,没有COVID-19病例的假负值病例;与COVID-NetUV的目标是通过加速筛查肺点护理超声波视频和自动检测COVID-19阳性病例,协助第一线临床医生打击COVID-19。