Coronavirus disease (COVID-19) is highly contagious and pathogenic. Currently, the diagnosis of COVID-19 is based on nucleic acid testing, but it has false negatives and hysteresis. The use of lung CT scans can help screen and effectively monitor diagnosed cases. The application of computer-aided diagnosis technology can reduce the burden on doctors, which is conducive to rapid and large-scale diagnostic screening. In this paper, we proposed an automatic detection method for COVID-19 based on spatiotemporal information fusion. Using the segmentation network in the deep learning method to segment the lung area and the lesion area, the spatiotemporal information features of multiple CT scans are extracted to perform auxiliary diagnosis analysis. The performance of this method was verified on the collected dataset. We achieved the classification of COVID-19 CT scans and non-COVID-19 CT scans and analyzed the development of the patients’ condition through the CT scans. The average accuracy rate is 96.7%, sensitivity is 95.2%, and F1 score is 95.9%. Each scan takes about 30 seconds for detection.
【초록키워드】 COVID-19, coronavirus disease, coronavirus, diagnostic, Diagnosis, lung, classification, nucleic acid, sensitivity, nucleic acid testing, Screen, Accuracy, false negatives, CT scan, dataset, CT scans, automatic detection, information, disease, False negative, Analysis, Lung CT scans, lung CT scan, Non-COVID-19, average, help, pathogenic, contagious, MONITOR, Deep Learning Method, hysteresis, spatiotemporal, feature, analyzed, collected, the patient, diagnosed, reduce, auxiliary, diagnosis of COVID-19, 【제목키워드】 COVID-19, fusion,