Infectious disease forecasting is of great interest to the public health community and policymakers, since forecasts can provide insight into disease dynamics in the near future and inform interventions. Due to delays in case reporting, however, forecasting models may often underestimate the current and future disease burden. In this paper, we propose a general framework for addressing reporting delay in disease forecasting efforts with the goal of improving forecasts. We propose strategies for leveraging either historical data on case reporting or external internet-based data to estimate the amount of reporting error. We then describe several approaches for adapting general forecasting pipelines to account for under- or over-reporting of...
Dengue viruses, which infect millions of people per year worldwide, cause large epidemics that strai...
Epidemics of communicable diseases place a huge burden on public health infrastructures across the w...
International audienceModel-based epidemiological assessment is useful to support decision-making at...
Infectious disease forecasting is of great interest to the public health community and policymakers,...
This is the final version. Available on open access from Wiley via the DOI in this recordOne difficu...
One difficulty for real-time tracking of epidemics is related to reporting delay. The reporting dela...
The COVID-19 pandemic has highlighted delayed reporting as a significant impediment to effective dis...
In many fields and applications, count data can be subject to delayed reporting. This is where the t...
During an infectious disease outbreak, timely information on the number of new symptomatic cases is ...
This is the final version. Available on open access from Wiley via the DOI in this recordIn many fie...
Objective: Recent studies have used Bayesian methods to predict timing of influenza epidemics many w...
BackgroundInfectious disease forecasting aims to predict characteristics of both seasonal epidemics ...
Abstract Background During a fast-moving epidemic,...
Updating observations of a signal due to the delays in the measurement process is a common problem i...
Model-based epidemiological assessment is useful to support decision-making at the beginning of an e...
Dengue viruses, which infect millions of people per year worldwide, cause large epidemics that strai...
Epidemics of communicable diseases place a huge burden on public health infrastructures across the w...
International audienceModel-based epidemiological assessment is useful to support decision-making at...
Infectious disease forecasting is of great interest to the public health community and policymakers,...
This is the final version. Available on open access from Wiley via the DOI in this recordOne difficu...
One difficulty for real-time tracking of epidemics is related to reporting delay. The reporting dela...
The COVID-19 pandemic has highlighted delayed reporting as a significant impediment to effective dis...
In many fields and applications, count data can be subject to delayed reporting. This is where the t...
During an infectious disease outbreak, timely information on the number of new symptomatic cases is ...
This is the final version. Available on open access from Wiley via the DOI in this recordIn many fie...
Objective: Recent studies have used Bayesian methods to predict timing of influenza epidemics many w...
BackgroundInfectious disease forecasting aims to predict characteristics of both seasonal epidemics ...
Abstract Background During a fast-moving epidemic,...
Updating observations of a signal due to the delays in the measurement process is a common problem i...
Model-based epidemiological assessment is useful to support decision-making at the beginning of an e...
Dengue viruses, which infect millions of people per year worldwide, cause large epidemics that strai...
Epidemics of communicable diseases place a huge burden on public health infrastructures across the w...
International audienceModel-based epidemiological assessment is useful to support decision-making at...