Reliably estimating the dynamics of transmissible diseases from noisy surveillance data is an enduring problem in modern epidemiology. Key parameters are often inferred from incident time series, with the aim of informing policy-makers on the growth rate of outbreaks or testing hypotheses about the effectiveness of public health interventions. However, the reliability of these inferences depends critically on reporting errors and latencies innate to the time series. Here, we develop an analytical framework to quantify the uncertainty induced by under-reporting and delays in reporting infections, as well as a metric for ranking surveillance data informativeness. We apply this metric to two primary data sources for inferring the instantaneous...
This thesis explores the joint estimation of transmission and severity of infectious diseases, focus...
At the outset of an epidemic, available case data typically underestimate the total number of infect...
The COVID-19 pandemic has highlighted delayed reporting as a significant impediment to effective dis...
Accurate estimation of the parameters characterising infectious disease transmission is vital for op...
Funder: Christ Church University of Oxford Junior Research FellowshipWe derive and validate a novel ...
International audienceDespite the importance of having robust estimates of the time-asymptotic total...
BACKGROUND: Fast changes in human demographics worldwide, coupled with increased mobility, and modif...
Fast changes in human demographics worldwide, coupled with increased mobility, and modified land use...
Abstract The time-varying reproduction number (Rt: the average number secondary infections caused b...
Epidemic transitions are an important feature of infectious disease systems. As the transmissibility...
Containment strategies to combat epidemics such as SARS-CoV-2/COVID-19 require the availability of e...
This thesis explores the joint estimation of transmission and severity of infectious diseases, focus...
At the outset of an epidemic, available case data typically underestimate the total number of infect...
The COVID-19 pandemic has highlighted delayed reporting as a significant impediment to effective dis...
Accurate estimation of the parameters characterising infectious disease transmission is vital for op...
Funder: Christ Church University of Oxford Junior Research FellowshipWe derive and validate a novel ...
International audienceDespite the importance of having robust estimates of the time-asymptotic total...
BACKGROUND: Fast changes in human demographics worldwide, coupled with increased mobility, and modif...
Fast changes in human demographics worldwide, coupled with increased mobility, and modified land use...
Abstract The time-varying reproduction number (Rt: the average number secondary infections caused b...
Epidemic transitions are an important feature of infectious disease systems. As the transmissibility...
Containment strategies to combat epidemics such as SARS-CoV-2/COVID-19 require the availability of e...
This thesis explores the joint estimation of transmission and severity of infectious diseases, focus...
At the outset of an epidemic, available case data typically underestimate the total number of infect...
The COVID-19 pandemic has highlighted delayed reporting as a significant impediment to effective dis...