Journal of Primary Care & Community Health (Jul 2022)

Accuracy of the Traditional COVID-19 Phone Triaging System and Phone Triage-Driven Deep Learning Model

  • Marwa M. Ahmed,
  • Amal M. Sayed,
  • Ghada M. Khafagy,
  • Inas T. El Sayed,
  • Yasmine S. Elkholy,
  • Ahmed H. Fares,
  • Marwa D. Hasan,
  • Heba G. El Nahas,
  • Mai D. Sarhan,
  • Eman I. Raslan,
  • Radwa M. Elsayed,
  • Asmaa A. Sayed,
  • Eman I. Elmeshmeshy,
  • Rehab M. Yassen,
  • Nadia M. Tawfik,
  • Hala A. Hussein,
  • Dalia M. Gaber,
  • Mervat M. Shehata,
  • Samar Fares

DOI
https://doi.org/10.1177/21501319221113544
Journal volume & issue
Vol. 13

Abstract

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Objectives: During the COVID-19 pandemic, a quick and reliable phone-triage system is critical for early care and efficient distribution of hospital resources. The study aimed to assess the accuracy of the traditional phone-triage system and phone triage-driven deep learning model in the prediction of positive COVID-19 patients. Setting: This is a retrospective study conducted at the family medicine department, Cairo University. Methods: The study included a dataset of 943 suspected COVID-19 patients from the phone triage during the first wave of the pandemic. The accuracy of the phone triaging system was assessed. PCR-dependent and phone triage-driven deep learning model for automated classifications of natural human responses was conducted. Results: Based on the RT-PCR results, we found that myalgia, fever, and contact with a case with respiratory symptoms had the highest sensitivity among the symptoms/ risk factors that were asked during the phone calls (86.3%, 77.5%, and 75.1%, respectively). While immunodeficiency, smoking, and loss of smell or taste had the highest specificity (96.9%, 83.6%, and 74.0%, respectively). The positive predictive value (PPV) of phone triage was 48.4%. The classification accuracy achieved by the deep learning model was 66%, while the PPV was 70.5%. Conclusion: Phone triage and deep learning models are feasible and convenient tools for screening COVID-19 patients. Using the deep learning models for symptoms screening will help to provide the proper medical care as early as possible for those at a higher risk of developing severe illness paving the way for a more efficient allocation of the scanty health resources.