Predictive Modeling of Covid-19 Data in the US: Adaptive Phase-Space Approach

There are currently intensified efforts by the scientific community world-wide to analyze the dynamics of the Covid-19 pandemic in order to predict key epidemiological effects and assist the proper planning for its clinical management, as well as guide sociopolitical decision-making regarding proper...

Full description

Saved in:
Bibliographic Details
Main Author: Vasilis Z. Marmarelis
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Open Journal of Engineering in Medicine and Biology
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9137691/
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850092133515526144
author Vasilis Z. Marmarelis
author_facet Vasilis Z. Marmarelis
author_sort Vasilis Z. Marmarelis
collection DOAJ
description There are currently intensified efforts by the scientific community world-wide to analyze the dynamics of the Covid-19 pandemic in order to predict key epidemiological effects and assist the proper planning for its clinical management, as well as guide sociopolitical decision-making regarding proper mitigation measures. Most efforts follow variants of the established SIR methodological framework that divides a population into &#x201C;Susceptible&#x201D;, &#x201C;Infectious&#x201D; and &#x201C;Recovered/Removed&#x201D; fractions and defines their dynamic inter-relationships with first-order differential equations. <italic>Goal:</italic> This paper proposes a novel approach based on data-guided detection and concatenation of infection waves &#x2013; each of them described by a Riccati equation with adaptively estimated parameters. <italic>Methods:</italic> This approach was applied to Covid-19 daily time-series data of US confirmed cases, resulting in the decomposition of the epidemic time-course into five &#x201C;Riccati modules&#x201D; representing major infection waves to date (June 18th). <italic>Results:</italic> Four waves have passed the time-point of peak infection rate, with the fifth expected to peak on July 20th. The obtained parameter estimates indicate gradual reduction of infectivity rate, although the latest wave is expected to be the largest. <italic>Conclusions:</italic> This analysis suggests that, if no new waves of infection emerge, the Covid-19 epidemic will be controlled in the US (&lt;5000 new daily cases) by September 26th, and the maximum of confirmed cases will reach 4,160,000. Importantly, this approach can be used to detect (via rigorous statistical methods) the emergence of possible new waves of infections in the future. Analysis of data from individual states or countries may quantify the distinct effects of different mitigation measures.
format Article
id doaj-art-89c4f0ee61374200967215ef65e2219d
institution DOAJ
issn 2644-1276
language English
publishDate 2020-01-01
publisher IEEE
record_format Article
series IEEE Open Journal of Engineering in Medicine and Biology
spelling doaj-art-89c4f0ee61374200967215ef65e2219d2025-08-20T02:42:11ZengIEEEIEEE Open Journal of Engineering in Medicine and Biology2644-12762020-01-01120721310.1109/OJEMB.2020.30083139137691Predictive Modeling of Covid-19 Data in the US: Adaptive Phase-Space ApproachVasilis Z. Marmarelis0https://orcid.org/0000-0003-1457-813XDepartment of Biomedical Engineering, University of Southern California, Los Angeles, CA, USAThere are currently intensified efforts by the scientific community world-wide to analyze the dynamics of the Covid-19 pandemic in order to predict key epidemiological effects and assist the proper planning for its clinical management, as well as guide sociopolitical decision-making regarding proper mitigation measures. Most efforts follow variants of the established SIR methodological framework that divides a population into &#x201C;Susceptible&#x201D;, &#x201C;Infectious&#x201D; and &#x201C;Recovered/Removed&#x201D; fractions and defines their dynamic inter-relationships with first-order differential equations. <italic>Goal:</italic> This paper proposes a novel approach based on data-guided detection and concatenation of infection waves &#x2013; each of them described by a Riccati equation with adaptively estimated parameters. <italic>Methods:</italic> This approach was applied to Covid-19 daily time-series data of US confirmed cases, resulting in the decomposition of the epidemic time-course into five &#x201C;Riccati modules&#x201D; representing major infection waves to date (June 18th). <italic>Results:</italic> Four waves have passed the time-point of peak infection rate, with the fifth expected to peak on July 20th. The obtained parameter estimates indicate gradual reduction of infectivity rate, although the latest wave is expected to be the largest. <italic>Conclusions:</italic> This analysis suggests that, if no new waves of infection emerge, the Covid-19 epidemic will be controlled in the US (&lt;5000 new daily cases) by September 26th, and the maximum of confirmed cases will reach 4,160,000. Importantly, this approach can be used to detect (via rigorous statistical methods) the emergence of possible new waves of infections in the future. Analysis of data from individual states or countries may quantify the distinct effects of different mitigation measures.https://ieeexplore.ieee.org/document/9137691/Adaptive modeling of Covid-19 time-series dataepidemiological predictive modelingriccati-based phase-space modelingstatistical detection of Covid-19 infection waves
spellingShingle Vasilis Z. Marmarelis
Predictive Modeling of Covid-19 Data in the US: Adaptive Phase-Space Approach
IEEE Open Journal of Engineering in Medicine and Biology
Adaptive modeling of Covid-19 time-series data
epidemiological predictive modeling
riccati-based phase-space modeling
statistical detection of Covid-19 infection waves
title Predictive Modeling of Covid-19 Data in the US: Adaptive Phase-Space Approach
title_full Predictive Modeling of Covid-19 Data in the US: Adaptive Phase-Space Approach
title_fullStr Predictive Modeling of Covid-19 Data in the US: Adaptive Phase-Space Approach
title_full_unstemmed Predictive Modeling of Covid-19 Data in the US: Adaptive Phase-Space Approach
title_short Predictive Modeling of Covid-19 Data in the US: Adaptive Phase-Space Approach
title_sort predictive modeling of covid 19 data in the us adaptive phase space approach
topic Adaptive modeling of Covid-19 time-series data
epidemiological predictive modeling
riccati-based phase-space modeling
statistical detection of Covid-19 infection waves
url https://ieeexplore.ieee.org/document/9137691/
work_keys_str_mv AT vasiliszmarmarelis predictivemodelingofcovid19dataintheusadaptivephasespaceapproach