• Corpus ID: 231985694

Classification of COVID-19 via Homology of CT-SCAN

  title={Classification of COVID-19 via Homology of CT-SCAN},
  author={Sohail Iqbal and H. Fareed Ahmed and Talha Qaiser and Muhammad Imran Qureshi and Nasir M. Rajpoot},
In this worldwide spread of SARS-CoV-2 (COVID-19) infection, it is of utmost importance to detect the disease at an early stage especially in the hot spots of this epidemic. There are more than 110 Million infected cases on the globe, sofar. Due to its promptness and effective results computed tomography (CT)-scan image is preferred to the reverse-transcription polymerase chain reaction (RT-PCR). Early detection and isolation of the patient is the only possible way of controlling the spread of… 




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