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Title

An Enhanced SEIR Model for Prediction of COVID-19 with Vaccination Effect.

Authors

Poonia, Ramesh Chandra; Saudagar, Abdul Khader Jilani; Altameem, Abdullah; Alkhathami, Mohammed; Khan, Muhammad Badruddin; Hasanat, Mozaherul Hoque Abul

Abstract

Currently, the spread of COVID-19 is running at a constant pace. The current situation is not so alarming, but every pandemic has a history of three waves. Two waves have been seen, and now expecting the third wave. Compartmental models are one of the methods that predict the severity of a pandemic. An enhanced SEIR model is expected to predict the new cases of COVID-19. The proposed model has an additional compartment of vaccination. This proposed model is the SEIRV model that predicts the severity of COVID-19 when the population is vaccinated. The proposed model is simulated with three conditions. The first condition is when social distancing is not incorporated, while the second condition is when social distancing is included. The third one condition is when social distancing is combined when the population is vaccinated. The result shows an epidemic growth rate of about 0.06 per day, and the number of infected people doubles every 10.7 days. Still, with imparting social distancing, the proposed model obtained the value of R0 is 1.3. Vaccination of infants and kids will be considered as future work.

Subjects

COVID-19 vaccines; PREDICTION models; SOCIAL distancing; COVID-19 pandemic; COVID-19

Publication

Life (2075-1729), 2022, Vol 12, Issue 5, p647

ISSN

2075-1729

Publication type

Academic Journal

DOI

10.3390/life12050647

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