MLLGPEMar 6, 2022

Compartmental Models for COVID-19 and Control via Policy Interventions

arXiv:2203.02860v1h-index: 3
Originality Synthesis-oriented
AI Analysis

This work provides a modular framework for researchers to study policy interventions in infectious disease modeling, but it is incremental as it builds on existing compartmental models without claiming real-world impact.

The authors tackled the problem of modeling COVID-19 spread by using probabilistic programming languages to replicate and forecast the pandemic, improving existing compartmental models to account for under-reporting and designing a reusable SEI3RD template with a greedy algorithm for selecting optimal policy interventions to control infections.

We demonstrate an approach to replicate and forecast the spread of the SARS-CoV-2 (COVID-19) pandemic using the toolkit of probabilistic programming languages (PPLs). Our goal is to study the impact of various modeling assumptions and motivate policy interventions enacted to limit the spread of infectious diseases. Using existing compartmental models we show how to use inference in PPLs to obtain posterior estimates for disease parameters. We improve popular existing models to reflect practical considerations such as the under-reporting of the true number of COVID-19 cases and motivate the need to model policy interventions for real-world data. We design an SEI3RD model as a reusable template and demonstrate its flexibility in comparison to other models. We also provide a greedy algorithm that selects the optimal series of policy interventions that are likely to control the infected population subject to provided constraints. We work within a simple, modular, and reproducible framework to enable immediate cross-domain access to the state-of-the-art in probabilistic inference with emphasis on policy interventions. We are not epidemiologists; the sole aim of this study is to serve as an exposition of methods, not to directly infer the real-world impact of policy-making for COVID-19.

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