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Diagnosing COVID-19

Classification of Ground Glass Opacities in CT scans using CML


Summary

  1. Chest CT has a high sensitivity for diagnosis of COVID-19.
  2. Given the limitation in availability of PCR tests, CT scans represent a path to augmenting the existing diagnostic toolsets in the diagnosis of COVID-19
  3. However, accuracy and Specificity of CT scans is limited.
  4. To overcome this limitation, CT scans, can be augmented with patient chart data to validate
    • Acute viral symptomologies
    • Presentation absent non-COVID specific symptomologies

This repository demonstrates the use of Image classification to identify Ground Glass Opacities, in patients, for use in diagnosis.


References

https://pubs.rsna.org/doi/full/10.1148/radiol.2020200642

Setup

Follow the instructions below, for setup:

https://github.com/hortonworks-sk/CDSW-Melanoma2