Uncertainty quantification in mechanistic epidemic models via cross-entropy approximate Bayesian computation

07/13/2022
by   Americo Cunha Jr, et al.
0

This paper proposes a data-driven machine learning framework for parameter estimation and uncertainty quantification in epidemic models based on two key ingredients: (i) prior parameters learning via the cross-entropy method and (ii) update of the model calibration and uncertainty propagation through approximate Bayesian computation. The effectiveness of the new methodology is illustrated with the aid of actual data from COVID-19 epidemic at Rio de Janeiro city in Brazil, employing an ordinary differential equation-based model with a generalized SEIR-type mechanistic structure that includes time-dependent transmission rate, asymptomatics, and hospitalizations. A minimization problem with two cost terms (number of hospitalizations and deaths) is formulated, and twelve parameters are identified. The calibrated model provides a consistent description of the available data, able to extrapolate forecasts over a few weeks, which makes the proposed methodology very appealing for use in the context of real-time epidemic modeling.

READ FULL TEXT
research
10/22/2017

Bayesian uncertainty quantification for epidemic spread on networks

While there exist a number of mathematical approaches to modeling the sp...
research
11/24/2021

Maximum likelihood estimation for a stochastic SEIR system for COVID-19

The parameter estimation of epidemic data-driven models is a crucial tas...
research
09/10/2021

Efficient Uncertainty Quantification and Sensitivity Analysis in Epidemic Modelling using Polynomial Chaos

In the political decision process and control of COVID-19 (and other epi...
research
10/13/2020

Interpretable pathological test for Cardio-vascular disease: Approximate Bayesian computation with distance learning

Cardio/cerebrovascular diseases (CVD) have become one of the major healt...
research
09/12/2022

TEDL: A Two-stage Evidential Deep Learning Method for Classification Uncertainty Quantification

In this paper, we propose TEDL, a two-stage learning approach to quantif...
research
12/15/2020

Architectures of epidemic models: accommodating constraints from empirical and clinical data

Deterministic compartmental models have been used extensively in modelin...
research
03/04/2015

Quantifying Uncertainty in Stochastic Models with Parametric Variability

We present a method to quantify uncertainty in the predictions made by s...

Please sign up or login with your details

Forgot password? Click here to reset