Classification of SARS Cov-2 and Non-SARS Cov-2 Pneumonia Using CNN

https://doi.org/10.55529/jpdmhd.36.32.40

Authors

  • Dr. Sarangam Kodati Department of Information Technology, CVR College of Engineering, Hyderabad, India.
  • Dr. M. Dhasaratham Department of Information Technology, TKR College of Engineering and Technology, Hyderabad, India.
  • Veldandi Srikanth Assistant Professor, SVS Engineering College, Hyderabad, India.
  • K. Meenendranath Reddy Assistant Professor, SVR Engineering College, Nandyal, India.

Keywords:

COVID, SARS, CNN, Cov2, X-Beam.

Abstract

Both patients and medical professionals will benefit from precise identification of the Covid responsible for the COVID-19 outbreak this year, which is the extreme intense respiratory condition CoV-2 (SARS CoV-2). In countries where diagnostic tools are not easily accessible, knowledge of the disease's impact on the lungs is of utmost importance. The goal of this research was to demonstrate that high-resolution chest X-ray images could be used in conjunction with extensive training data to reliably differentiate COVID-19. The evaluation included the training of deep learning and AI classifiers using publicly available X-beam images (1092 sound, 1345 pneumonia, and 3616 affirmed Covid). There were 38 tests driven using Convolutional Brain Organizations, 10 examinations utilizing 5 simulated intelligence models, and 14 tests utilizing top tier pre-arranged models for move learning. In the first stages, the presentation of the models was surveyed using an eightfold cross-approval system that disentangled visuals and data analysis. Area under the curve for collector performance is a typical 96.51%, with 93.84% responsiveness, 98.18% particularity, 98.50% accuracy, and 93.84% responsiveness. COVID-19 may be detected in a small number of skewed chest X-beam pictures using a convolutional frontal cortex network with not many layers and no pre -taking care of.

Published

2023-11-23

How to Cite

Kodati, D. S. ., Dhasaratham, D. M. ., Srikanth, V. ., & Reddy, K. M. . (2023). Classification of SARS Cov-2 and Non-SARS Cov-2 Pneumonia Using CNN. Journal of Prevention, Diagnosis and Management of Human Diseases , 3(06), 32–40. https://doi.org/10.55529/jpdmhd.36.32.40