Abstract

During the COVID-19 pandemic, governments globally had to impose severe contact restriction measures and social mobility limitations in order to limit the exposure of the population to COVID-19. These public health policy decisions were informed by statistical models for infection rates in national populations. In this work, we are interested in modelling the temporal evolution of national-level infection counts for the United Kingdom (UK-Wales, England, Scotland), Germany (GM), Italy (IT), Spain (SP), Japan (JP), Australia (AU) and the United States (US). We model the national-level infection counts for the period January 2020 to January 2021, thus covering both the pre- and post-vaccine roll-out periods, in order to better understand the most reliable model structure for the COVID-19 epidemic growth curve. We achieve this by exploring a variety of stochastic population growth models and comparing their calibration, with respect to in-sample fitting and out-of-sample forecasting, both with and without exposure adjustment, to the most widely used and reported growth model, the Gompertz population model, often referred to in the public health policy discourse during the COVID-19 pandemic. Model risk as we explore it in this work manifests in the inability to adequately capture the behaviour of the disease progression growth rate curve. Therefore, our concept of model risk is formed relative to the standard reference Gompertz model used by decision-makers, and then we can characterise model risk mathematically as having two components: the dispersion of the observation distribution, and the structure of the intensity function over time for cumulative counts of new infections daily (i.e. the force of infection) attributed directly to the COVID-19 pandemic. We also explore how to incorporate in these population models the effect that governmental interventions have had on the number of infected cases. This is achieved through the development of an exposure adjustment to the force of infection comprised of a purpose-built sentiment index, which we construct from various authoritative public health news reporting. The news reporting media we employed were the New York Times, the Guardian, the Telegraph, Reuters global blog, as well as national and international health authorities: the European Centre for Disease Prevention and Control, the United Nations Economic Commission for Europe, the United States Centres for Disease Control and Prevention, and the World Health Organisation. We find that exposure adjustments that incorporate sentiment are better able to calibrate to early stages of infection spread in all countries under study.

Highlights

  • At the end of 2019, a new coronavirus strain led to the onset of a global pandemic that has ravaged the world throughout 2020 and continues into 2021, termed generically the COVID-19 respiratory disease

  • We developed a novel Natural Language Processing (NLP) sentiment index that we extracted over time via text mining from a variety of press releases and news articles that we extracted from authoritative news agencies and public health authorities that included the New York Times (NYT), the Guardian, the Telegraph, Reuters global blog, the European Centre for Disease Prevention and Control (ECDC), the United States (US) Centre for Disease Control and Prevention (USCDC), the World Health Organisation (WHO) and the UN Economic Commission for Europe (UNECE)

  • We include the results for the UK, Germany, the US and Australia and the results for Spain, Italy and Japan are included in the (Sections C—F in S1 Appendix)

Read more

Summary

Introduction

At the end of 2019, a new coronavirus strain led to the onset of a global pandemic that has ravaged the world throughout 2020 and continues into 2021, termed generically the COVID-19 respiratory disease. We seek a partial answer to this question from a statistical perspective based on an analysis of model risk In addressing this question, we gain insight on two additional questions, namely “What is the most reliable and accurate way to build an epidemic growth model for this disease?” and “Can one assess the influence of public policy and public health reporting on the dynamics of the COVID-19 pandemic spread over time?”.

Objectives
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call