Combining a convolutional neural network with autoencoders to predict the survival chance of COVID-19 patients.

Journal: Scientific reports
Published Date:

Abstract

COVID-19 has caused many deaths worldwide. The automation of the diagnosis of this virus is highly desired. Convolutional neural networks (CNNs) have shown outstanding classification performance on image datasets. To date, it appears that COVID computer-aided diagnosis systems based on CNNs and clinical information have not yet been analysed or explored. We propose a novel method, named the CNN-AE, to predict the survival chance of COVID-19 patients using a CNN trained with clinical information. Notably, the required resources to prepare CT images are expensive and limited compared to those required to collect clinical data, such as blood pressure, liver disease, etc. We evaluated our method using a publicly available clinical dataset that we collected. The dataset properties were carefully analysed to extract important features and compute the correlations of features. A data augmentation procedure based on autoencoders (AEs) was proposed to balance the dataset. The experimental results revealed that the average accuracy of the CNN-AE (96.05%) was higher than that of the CNN (92.49%). To demonstrate the generality of our augmentation method, we trained some existing mortality risk prediction methods on our dataset (with and without data augmentation) and compared their performances. We also evaluated our method using another dataset for further generality verification. To show that clinical data can be used for COVID-19 survival chance prediction, the CNN-AE was compared with multiple pre-trained deep models that were tuned based on CT images.

Authors

  • Fahime Khozeimeh
    Faculty of Medicine, Mashhad University of Medical Sciences, Mashhad, Iran.
  • Danial Sharifrazi
    Department of Computer Engineering, School of Technical and Engineering, Shiraz Branch, Islamic Azad University, Shiraz, Iran.
  • Navid Hoseini Izadi
    Department of Electrical and Computer Engineering, Isfahan University of Technology, Isfahan, 84156-83111, Iran.
  • Javad Hassannataj Joloudari
    Department of Computer Engineering, Faculty of Engineering, University of Birjand, Birjand, Iran.
  • Afshin Shoeibi
    Faculty of Electrical Engineering, Biomedical Data Acquisition Lab (BDAL), K. N. Toosi University of Technology, Tehran 1631714191, Iran.
  • Roohallah Alizadehsani
    Institute for Intelligent Systems Research and Innovation (IISRI), Deakin University, Geelong, Australia.
  • Juan M Górriz
    1Department of Signal Theory, Networking and Communications, University of Granada, Granada 18071, Spain.
  • Sadiq Hussain
    Dibrugarh University, Dibrugarh, Assam, India.
  • Zahra Alizadeh Sani
    Omid Hospital, Iran University of Medical Sciences, Tehran, Iran.
  • Hossein Moosaei
    Department of Mathematics, Faculty of Science, University of Bojnord, Iran.
  • Abbas Khosravi
  • Saeid Nahavandi
  • Sheikh Mohammed Shariful Islam
    Institute for Physical Activity and Nutrition, School of Exercise and Nutrition Sciences, Deakin University, Geelong, VIC, 3220, Australia.