Cargando…

An Agent-Based Digital Twin for Exploring Localized Non-pharmaceutical Interventions to Control COVID-19 Pandemic

The COVID-19 epidemic created, at the time of writing the paper, highly unusual and uncertain socio-economic conditions. The world economy was severely impacted and business-as-usual activities severely disrupted. The situation presented the necessity to make a trade-off between individual health an...

Descripción completa

Detalles Bibliográficos
Autores principales: Barat, Souvik, Parchure, Ritu, Darak, Shrinivas, Kulkarni, Vinay, Paranjape, Aditya, Gajrani, Monika, Yadav, Abhishek
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Singapore 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7845792/
https://www.ncbi.nlm.nih.gov/pubmed/35837574
http://dx.doi.org/10.1007/s41403-020-00197-5
_version_ 1783644618270703616
author Barat, Souvik
Parchure, Ritu
Darak, Shrinivas
Kulkarni, Vinay
Paranjape, Aditya
Gajrani, Monika
Yadav, Abhishek
Kulkarni, Vinay
author_facet Barat, Souvik
Parchure, Ritu
Darak, Shrinivas
Kulkarni, Vinay
Paranjape, Aditya
Gajrani, Monika
Yadav, Abhishek
Kulkarni, Vinay
author_sort Barat, Souvik
collection PubMed
description The COVID-19 epidemic created, at the time of writing the paper, highly unusual and uncertain socio-economic conditions. The world economy was severely impacted and business-as-usual activities severely disrupted. The situation presented the necessity to make a trade-off between individual health and safety on one hand and socio-economic progress on the other. Based on the current understanding of the epidemiological characteristics of COVID-19, a broad set of control measures has emerged along dimensions such as restricting people’s movements, high-volume testing, contract tracing, use of face masks, and enforcement of social-distancing. However, these interventions have their own limitations and varying level of efficacy depending on factors such as the population density and the socio-economic characteristics of the area. To help tailor the intervention, we develop a configurable, fine-grained agent-based simulation model that serves as a virtual representation, i.e., a digital twin of a diverse and heterogeneous area such as a city. In this paper, to illustrate our techniques, we focus our attention on the Indian city of Pune in the western state of Maharashtra. We use the digital twin to simulate various what-if scenarios of interest to (1) predict the spread of the virus; (2) understand the effectiveness of candidate interventions; and (3) predict the consequences of introduction of interventions possibly leading to trade-offs between public health, citizen comfort, and economy. Our model is configured for the specific city of interest and used as an in-silico experimentation aid to predict the trajectory of active infections, mortality rate, load on hospital, and quarantine facility centers for the candidate interventions. The key contributions of this paper are: (1) a novel agent-based model that seamlessly captures people, place, and movement characteristics of the city, COVID-19 virus characteristics, and primitive set of candidate interventions, and (2) a simulation-driven approach to determine the exact intervention that needs to be applied under a given set of circumstances. Although the analysis presented in the paper is highly specific to COVID-19, our tools are generic enough to serve as a template for modeling the impact of future pandemics and formulating bespoke intervention strategies.
format Online
Article
Text
id pubmed-7845792
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Springer Singapore
record_format MEDLINE/PubMed
spelling pubmed-78457922021-02-01 An Agent-Based Digital Twin for Exploring Localized Non-pharmaceutical Interventions to Control COVID-19 Pandemic Barat, Souvik Parchure, Ritu Darak, Shrinivas Kulkarni, Vinay Paranjape, Aditya Gajrani, Monika Yadav, Abhishek Kulkarni, Vinay Trans Indian Natl. Acad. Eng. Original Article The COVID-19 epidemic created, at the time of writing the paper, highly unusual and uncertain socio-economic conditions. The world economy was severely impacted and business-as-usual activities severely disrupted. The situation presented the necessity to make a trade-off between individual health and safety on one hand and socio-economic progress on the other. Based on the current understanding of the epidemiological characteristics of COVID-19, a broad set of control measures has emerged along dimensions such as restricting people’s movements, high-volume testing, contract tracing, use of face masks, and enforcement of social-distancing. However, these interventions have their own limitations and varying level of efficacy depending on factors such as the population density and the socio-economic characteristics of the area. To help tailor the intervention, we develop a configurable, fine-grained agent-based simulation model that serves as a virtual representation, i.e., a digital twin of a diverse and heterogeneous area such as a city. In this paper, to illustrate our techniques, we focus our attention on the Indian city of Pune in the western state of Maharashtra. We use the digital twin to simulate various what-if scenarios of interest to (1) predict the spread of the virus; (2) understand the effectiveness of candidate interventions; and (3) predict the consequences of introduction of interventions possibly leading to trade-offs between public health, citizen comfort, and economy. Our model is configured for the specific city of interest and used as an in-silico experimentation aid to predict the trajectory of active infections, mortality rate, load on hospital, and quarantine facility centers for the candidate interventions. The key contributions of this paper are: (1) a novel agent-based model that seamlessly captures people, place, and movement characteristics of the city, COVID-19 virus characteristics, and primitive set of candidate interventions, and (2) a simulation-driven approach to determine the exact intervention that needs to be applied under a given set of circumstances. Although the analysis presented in the paper is highly specific to COVID-19, our tools are generic enough to serve as a template for modeling the impact of future pandemics and formulating bespoke intervention strategies. Springer Singapore 2021-01-29 2021 /pmc/articles/PMC7845792/ /pubmed/35837574 http://dx.doi.org/10.1007/s41403-020-00197-5 Text en © Indian National Academy of Engineering 2021 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Original Article
Barat, Souvik
Parchure, Ritu
Darak, Shrinivas
Kulkarni, Vinay
Paranjape, Aditya
Gajrani, Monika
Yadav, Abhishek
Kulkarni, Vinay
An Agent-Based Digital Twin for Exploring Localized Non-pharmaceutical Interventions to Control COVID-19 Pandemic
title An Agent-Based Digital Twin for Exploring Localized Non-pharmaceutical Interventions to Control COVID-19 Pandemic
title_full An Agent-Based Digital Twin for Exploring Localized Non-pharmaceutical Interventions to Control COVID-19 Pandemic
title_fullStr An Agent-Based Digital Twin for Exploring Localized Non-pharmaceutical Interventions to Control COVID-19 Pandemic
title_full_unstemmed An Agent-Based Digital Twin for Exploring Localized Non-pharmaceutical Interventions to Control COVID-19 Pandemic
title_short An Agent-Based Digital Twin for Exploring Localized Non-pharmaceutical Interventions to Control COVID-19 Pandemic
title_sort agent-based digital twin for exploring localized non-pharmaceutical interventions to control covid-19 pandemic
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7845792/
https://www.ncbi.nlm.nih.gov/pubmed/35837574
http://dx.doi.org/10.1007/s41403-020-00197-5
work_keys_str_mv AT baratsouvik anagentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT parchureritu anagentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT darakshrinivas anagentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT kulkarnivinay anagentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT paranjapeaditya anagentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT gajranimonika anagentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT yadavabhishek anagentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT kulkarnivinay anagentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT baratsouvik agentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT parchureritu agentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT darakshrinivas agentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT kulkarnivinay agentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT paranjapeaditya agentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT gajranimonika agentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT yadavabhishek agentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic
AT kulkarnivinay agentbaseddigitaltwinforexploringlocalizednonpharmaceuticalinterventionstocontrolcovid19pandemic