LGOCSOC-PHDec 5, 2023

Neural parameter calibration and uncertainty quantification for epidemic forecasting

arXiv:2312.03147v14 citationsh-index: 34PLoS ONE
Originality Incremental advance
AI Analysis

This work addresses the need for fast and accurate epidemic forecasting with uncertainty estimates to inform policy-making, representing an incremental improvement over existing methods.

The authors tackled the problem of forecasting epidemic dynamics with uncertainty quantification by applying a neural network to calibrate an ODE model to COVID-19 data from Berlin in 2020, achieving significantly more accurate calibration and predictions than MCMC methods while reducing computation time from hours to minutes.

The recent COVID-19 pandemic has thrown the importance of accurately forecasting contagion dynamics and learning infection parameters into sharp focus. At the same time, effective policy-making requires knowledge of the uncertainty on such predictions, in order, for instance, to be able to ready hospitals and intensive care units for a worst-case scenario without needlessly wasting resources. In this work, we apply a novel and powerful computational method to the problem of learning probability densities on contagion parameters and providing uncertainty quantification for pandemic projections. Using a neural network, we calibrate an ODE model to data of the spread of COVID-19 in Berlin in 2020, achieving both a significantly more accurate calibration and prediction than Markov-Chain Monte Carlo (MCMC)-based sampling schemes. The uncertainties on our predictions provide meaningful confidence intervals e.g. on infection figures and hospitalisation rates, while training and running the neural scheme takes minutes where MCMC takes hours. We show convergence of our method to the true posterior on a simplified SIR model of epidemics, and also demonstrate our method's learning capabilities on a reduced dataset, where a complex model is learned from a small number of compartments for which data is available.

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