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Bayesian Modeling of COVID-19 to Classify the Infection and Death Rates in a Specific Duration: The Case of Algerian Provinces

COVID-19 causes acute respiratory illness in humans. The direct consequence of the spread of the virus is the need to find appropriate and effective solutions to reduce its spread. Similar to other countries, the pandemic has spread in Algeria, with noticeable variation in mortality and infection ra...

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Autores principales: Aouissi, Hani Amir, Hamimes, Ahmed, Ababsa, Mostefa, Bianco, Lavinia, Napoli, Christian, Kebaili, Feriel Kheira, Krauklis, Andrey E., Bouzekri, Hafid, Dhama, Kuldeep
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9368112/
https://www.ncbi.nlm.nih.gov/pubmed/35954953
http://dx.doi.org/10.3390/ijerph19159586
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author Aouissi, Hani Amir
Hamimes, Ahmed
Ababsa, Mostefa
Bianco, Lavinia
Napoli, Christian
Kebaili, Feriel Kheira
Krauklis, Andrey E.
Bouzekri, Hafid
Dhama, Kuldeep
author_facet Aouissi, Hani Amir
Hamimes, Ahmed
Ababsa, Mostefa
Bianco, Lavinia
Napoli, Christian
Kebaili, Feriel Kheira
Krauklis, Andrey E.
Bouzekri, Hafid
Dhama, Kuldeep
author_sort Aouissi, Hani Amir
collection PubMed
description COVID-19 causes acute respiratory illness in humans. The direct consequence of the spread of the virus is the need to find appropriate and effective solutions to reduce its spread. Similar to other countries, the pandemic has spread in Algeria, with noticeable variation in mortality and infection rates between regions. We aimed to estimate the proportion of people who died or became infected with SARS-CoV-2 in each provinces using a Bayesian approach. The estimation parameters were determined using a binomial distribution along with an a priori distribution, and the results had a high degree of accuracy. The Bayesian model was applied during the third wave (1 January–15 August 2021), in all Algerian’s provinces. For spatial analysis of duration, geographical maps were used. Our findings show that Tissemsilt, Ain Defla, Illizi, El Taref, and Ghardaia (Mean = 0.001) are the least affected provinces in terms of COVID-19 mortality. The results also indicate that Tizi Ouzou (Mean = 0.0694), Boumerdes (Mean = 0.0520), Annaba (Mean = 0.0483), Tipaza (Mean = 0.0524), and Tebessa (Mean = 0.0264) are more susceptible to infection, as they were ranked in terms of the level of corona infections among the 48 provinces of the country. Their susceptibility seems mainly due to the population density in these provinces. Additionally, it was observed that northeast Algeria, where the population is concentrated, has the highest infection rate. Factors affecting mortality due to COVID-19 do not necessarily depend on the spread of the pandemic. The proposed Bayesian model resulted in being useful for monitoring the pandemic to estimate and compare the risks between provinces. This statistical inference can provide a reasonable basis for describing future pandemics in other world geographical areas.
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spelling pubmed-93681122022-08-12 Bayesian Modeling of COVID-19 to Classify the Infection and Death Rates in a Specific Duration: The Case of Algerian Provinces Aouissi, Hani Amir Hamimes, Ahmed Ababsa, Mostefa Bianco, Lavinia Napoli, Christian Kebaili, Feriel Kheira Krauklis, Andrey E. Bouzekri, Hafid Dhama, Kuldeep Int J Environ Res Public Health Article COVID-19 causes acute respiratory illness in humans. The direct consequence of the spread of the virus is the need to find appropriate and effective solutions to reduce its spread. Similar to other countries, the pandemic has spread in Algeria, with noticeable variation in mortality and infection rates between regions. We aimed to estimate the proportion of people who died or became infected with SARS-CoV-2 in each provinces using a Bayesian approach. The estimation parameters were determined using a binomial distribution along with an a priori distribution, and the results had a high degree of accuracy. The Bayesian model was applied during the third wave (1 January–15 August 2021), in all Algerian’s provinces. For spatial analysis of duration, geographical maps were used. Our findings show that Tissemsilt, Ain Defla, Illizi, El Taref, and Ghardaia (Mean = 0.001) are the least affected provinces in terms of COVID-19 mortality. The results also indicate that Tizi Ouzou (Mean = 0.0694), Boumerdes (Mean = 0.0520), Annaba (Mean = 0.0483), Tipaza (Mean = 0.0524), and Tebessa (Mean = 0.0264) are more susceptible to infection, as they were ranked in terms of the level of corona infections among the 48 provinces of the country. Their susceptibility seems mainly due to the population density in these provinces. Additionally, it was observed that northeast Algeria, where the population is concentrated, has the highest infection rate. Factors affecting mortality due to COVID-19 do not necessarily depend on the spread of the pandemic. The proposed Bayesian model resulted in being useful for monitoring the pandemic to estimate and compare the risks between provinces. This statistical inference can provide a reasonable basis for describing future pandemics in other world geographical areas. MDPI 2022-08-04 /pmc/articles/PMC9368112/ /pubmed/35954953 http://dx.doi.org/10.3390/ijerph19159586 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Aouissi, Hani Amir
Hamimes, Ahmed
Ababsa, Mostefa
Bianco, Lavinia
Napoli, Christian
Kebaili, Feriel Kheira
Krauklis, Andrey E.
Bouzekri, Hafid
Dhama, Kuldeep
Bayesian Modeling of COVID-19 to Classify the Infection and Death Rates in a Specific Duration: The Case of Algerian Provinces
title Bayesian Modeling of COVID-19 to Classify the Infection and Death Rates in a Specific Duration: The Case of Algerian Provinces
title_full Bayesian Modeling of COVID-19 to Classify the Infection and Death Rates in a Specific Duration: The Case of Algerian Provinces
title_fullStr Bayesian Modeling of COVID-19 to Classify the Infection and Death Rates in a Specific Duration: The Case of Algerian Provinces
title_full_unstemmed Bayesian Modeling of COVID-19 to Classify the Infection and Death Rates in a Specific Duration: The Case of Algerian Provinces
title_short Bayesian Modeling of COVID-19 to Classify the Infection and Death Rates in a Specific Duration: The Case of Algerian Provinces
title_sort bayesian modeling of covid-19 to classify the infection and death rates in a specific duration: the case of algerian provinces
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9368112/
https://www.ncbi.nlm.nih.gov/pubmed/35954953
http://dx.doi.org/10.3390/ijerph19159586
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