4.3 Article

Role of Hybrid Deep Neural Networks (HDNNs), Computed Tomography, and Chest X-rays for the Detection of COVID-19

出版社

MDPI
DOI: 10.3390/ijerph18063056

关键词

hybrid deep neural network (HDNNs); computed tomography (CT-scan); long short-term memory (LSTM); COVID-19

资金

  1. Ministry of Education
  2. Deanship of Scientific Research, Najran University Kingdom of Saudi Arabia [NU/ESCI/18/006]

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This study developed a hybrid deep neural network (HDNNs) using CT and X-ray imaging to predict the onset risk of disease in patients with COVID-19, achieving a high classification accuracy.
COVID-19 syndrome has extensively escalated worldwide with the induction of the year 2020 and has resulted in the illness of millions of people. COVID-19 patients bear an elevated risk once the symptoms deteriorate. Hence, early recognition of diseased patients can facilitate early intervention and avoid disease succession. This article intends to develop a hybrid deep neural networks (HDNNs), using computed tomography (CT) and X-ray imaging, to predict the risk of the onset of disease in patients suffering from COVID-19. To be precise, the subjects were classified into 3 categories namely normal, Pneumonia, and COVID-19. Initially, the CT and chest X-ray images, denoted as 'hybrid images' (with resolution 1080 x 1080) were collected from different sources, including GitHub, COVID-19 radiography database, Kaggle, COVID-19 image data collection, and Actual Med COVID-19 Chest X-ray Dataset, which are open source and publicly available data repositories. The 80% hybrid images were used to train the hybrid deep neural network model and the remaining 20% were used for the testing purpose. The capability and prediction accuracy of the HDNNs were calculated using the confusion matrix. The hybrid deep neural network showed a 99% classification accuracy on the test set data.

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