Abstract

Inferring the transmission potential of an infectious disease during low-incidence periods following epidemic waves is crucial for preparedness. In such periods, scarce data may hinder existing inference methods, blurring early-warning signals essential for discriminating between the likelihoods of resurgence versus elimination. Advanced insight into whether elevating caseloads (requiring swift community-wide interventions) or local elimination (allowing controls to be relaxed or refocussed on case-importation) might occur can separate decisive from ineffective policy. By generalizing and fusing recent approaches, we propose a novel early-warning framework that maximizes the information extracted from low-incidence data to robustly infer the chances of sustained local transmission or elimination in real time, at any scale of investigation (assuming sufficiently good surveillance). Applying this framework, we decipher hidden disease-transmission signals in prolonged low-incidence COVID-19 data from New Zealand, Hong Kong and Victoria, Australia. We uncover how timely interventions associate with averting resurgent waves, support official elimination declarations and evidence the effectiveness of the rapid, adaptive COVID-19 responses employed in these regions.

Highlights

  • The timeliness of the application and relaxation of non-pharmaceutical interventions (NPIs) has been a polarizing and pressing topic of global debate throughout the COVID-19 pandemic

  • We examine three case-studies involving local COVID-19 dynamics for New Zealand, Hong Kong and Victoria state, Australia

  • We provide corresponding realtime R-estimates in the electronic supplementary material, which only process portions of the incidence curve up to key intervention time-points. These analyses largely correspond with figures 1–3 and underscore the benefit of our framework for deciphering key early-warning signals of transmission dynamics

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Summary

Introduction

The timeliness of the application and relaxation of non-pharmaceutical interventions (NPIs) (e.g. border closures, quarantines or social distancing mandates) has been a polarizing and pressing topic of global debate throughout the COVID-19 pandemic. Among the most widely used early-warning analytics informing NPI policy is the effective reproduction number (R) [1,2], popularly displayed on numerous COVID-19-related websites and dashboards [3,4,5]. Trustworthy disease-transmission estimates during those periods, which are characteristic of the lull between potential epidemic waves for example, are crucial for informing decision-making, providing early indicators for discriminating between the starkly different possibilities of elimination (i.e. no future local cases [2,11]) and resurgence. Inferring transmission dynamics at low incidence has been highlighted as a key challenge to designing safe protocols for NPI relaxation across the pandemic [10]

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