CoVid-19 Pandemic Trend Modeling and Analysis to Support Resilience Decision-Making

Biology (Basel). 2020 Jul 7;9(7):156. doi: 10.3390/biology9070156.

Abstract

Policy decision-making for system resilience to a hazard requires the estimation and prediction of the trends of growth and decline of the impacts of the hazard. With focus on the recent worldwide spread of CoVid-19, we take the infection rate as the relevant metric whose trend of evolution to follow for verifying the effectiveness of the countermeasures applied. By comparison with the theories of growth and recovery in coupled socio-medical systems, we find that the data for many countries show infection rate trends that are exponential in form. In particular, the recovery trajectory is universal in trend and consistent with the learning theory, which allows for predictions useful in the assistance of decision-making of emergency recovery actions. The findings are validated by extensive data and comparison to medical pandemic models.

Keywords: CoVid-19; growth; incubation; infection rates; predictions; recovery; theory; transmission.