
Fundamental limits on inferring epidemic resurgence in real time using effective reproduction numbers
Author(s) -
Kris V Parag,
Christl A. Donnelly
Publication year - 2022
Publication title -
plos computational biology/plos computational biology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 2.628
H-Index - 182
eISSN - 1553-7358
pISSN - 1553-734X
DOI - 10.1371/journal.pcbi.1010004
Subject(s) - incidence (geometry) , computer science , transmission (telecommunications) , basic reproduction number , reproduction , outbreak , diversity (politics) , statistics , quality (philosophy) , biology , demography , econometrics , medicine , environmental health , mathematics , telecommunications , ecology , virology , population , philosophy , geometry , epistemology , sociology , anthropology
We find that epidemic resurgence, defined as an upswing in the effective reproduction number ( R ) of the contagion from subcritical to supercritical values, is fundamentally difficult to detect in real time. Inherent latencies in pathogen transmission, coupled with smaller and intrinsically noisier case incidence across periods of subcritical spread, mean that resurgence cannot be reliably detected without significant delays of the order of the generation time of the disease, even when case reporting is perfect. In contrast, epidemic suppression (where R falls from supercritical to subcritical values) may be ascertained 5–10 times faster due to the naturally larger incidence at which control actions are generally applied. We prove that these innate limits on detecting resurgence only worsen when spatial or demographic heterogeneities are incorporated. Consequently, we argue that resurgence is more effectively handled proactively, potentially at the expense of false alarms. Timely responses to recrudescent infections or emerging variants of concern are more likely to be possible when policy is informed by a greater quality and diversity of surveillance data than by further optimisation of the statistical models used to process routine outbreak data.