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Published in: Journal of Reliable Intelligent Environments 1/2023

01-09-2022 | Original Article

Machine-learning method for analyzing and predicting the number of hospitalizations of children during the fourth wave of the COVID-19 pandemic in the Lviv region

Authors: Olena Pavliuk, Halyna Kolesnyk

Published in: Journal of Reliable Intelligent Environments | Issue 1/2023

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Abstract

The purpose of this paper is to develop a machine-learning model for analyzing and predicting the number of hospitalizations of children in the Lviv region during the fourth wave of the COVID-19 pandemic. This wave is characterized by dominance of a new strain of the virus—Omicron—that spreads faster than previous ones and often affects children. Their high sociability and a low level of vaccination in Ukraine resulted in a sharp increase in the number of hospitalizations. The complexity of the research is also related to the geolocation of the Lviv region. This article analyzes and predicts the number of hospitalizations of children during the fourth wave of the COVID-19 pandemic for the first time for the Lviv region. Data were obtained from publicly available resources. Public Domain Software—the Python programming language and the Pandas library—was used for software implementation of the machine-learning method: the developed model consists of two components—analysis and prediction. The analysis of the number of hospitalized children was performed using the Pearson correlation coefficient. Short- and medium-term predictions were made with the use of non-iterative SGTM neural-like structures that were taught in supervised mode and tested in online mode. The RMS and maximum ones that were reduced to the range of error values of short-term (up to a week) and medium-term (up to 2 weeks) predictions did not exceed 0.48% and 0.61% and 1.81% and 2.83%, respectively. The developed model can also be used for predicting other COVID-19 parameters.

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Literature
8.
go back to reference Mania A, Pokorska-Śpiewak M, Figlerowicz M, Pawłowska M, Mazur-Melewska K, Faltin K et al (2022) Pneumonia, gastrointestinal symptoms, comorbidities, and coinfections as factors related to a lengthier hospital stay in children with COVID-19—analysis of a paediatric part of Polish register SARSTer. Infect Dis 54(3):196–204. https://doi.org/10.1080/23744235.2021.1995628CrossRef Mania A, Pokorska-Śpiewak M, Figlerowicz M, Pawłowska M, Mazur-Melewska K, Faltin K et al (2022) Pneumonia, gastrointestinal symptoms, comorbidities, and coinfections as factors related to a lengthier hospital stay in children with COVID-19—analysis of a paediatric part of Polish register SARSTer. Infect Dis 54(3):196–204. https://​doi.​org/​10.​1080/​23744235.​2021.​1995628CrossRef
13.
go back to reference Mohammadi A, Chumachenko T, Makhota L, Chumachenko D (2021) Compartment model of COVID-19 epidemic process in Ukraine. In: CEUR Workshop Proceedings, 2824: 100–109 Mohammadi A, Chumachenko T, Makhota L, Chumachenko D (2021) Compartment model of COVID-19 epidemic process in Ukraine. In: CEUR Workshop Proceedings, 2824: 100–109
14.
go back to reference Yaroslav L, Veres M, Kuzminova K (2021) Modeling and prediction of COVID-19 using hybrid dynamic model based on SEIRD with ARIMA corrections. In: CEUR Workshop Proceedings, 2845: 204–216 Yaroslav L, Veres M, Kuzminova K (2021) Modeling and prediction of COVID-19 using hybrid dynamic model based on SEIRD with ARIMA corrections. In: CEUR Workshop Proceedings, 2845: 204–216
16.
go back to reference Zaliskyi M, Odarchenko R, Petrova Y, Iavich M, Pirtskhalava I (2020) Mathematical model building for COVID-19 diseases data in European countries. In: CEUR Workshop Proceedings, 2753: 197–208 Zaliskyi M, Odarchenko R, Petrova Y, Iavich M, Pirtskhalava I (2020) Mathematical model building for COVID-19 diseases data in European countries. In: CEUR Workshop Proceedings, 2753: 197–208
18.
22.
go back to reference Maslii N, Demianchuk M, Britchenko I, Bezpartochnyi M (2022) Modeling migration changes according to alternative scenarios in the context of the global COVID-19 pandemic: the example of Ukraine. Ikonomicheski Izsledvania 31(1):58–71 Maslii N, Demianchuk M, Britchenko I, Bezpartochnyi M (2022) Modeling migration changes according to alternative scenarios in the context of the global COVID-19 pandemic: the example of Ukraine. Ikonomicheski Izsledvania 31(1):58–71
23.
go back to reference Kapusta D, Krivtsov S, Chumachenko D (2021) Holt’s linear model of COVID-19 morbidity forecasting in Ukraine. In: CEUR Workshop Proceedings, 2917: 16–25 Kapusta D, Krivtsov S, Chumachenko D (2021) Holt’s linear model of COVID-19 morbidity forecasting in Ukraine. In: CEUR Workshop Proceedings, 2917: 16–25
25.
go back to reference Chumachenko D, Yakovlev S (2021) Intelligent system of epidemic situation monitoring and control. In: CEUR Workshop Proceedings, 2870: 46–55 Chumachenko D, Yakovlev S (2021) Intelligent system of epidemic situation monitoring and control. In: CEUR Workshop Proceedings, 2870: 46–55
32.
go back to reference Izonin I, Tkachenko R, Vitynskyi P, Zub K, Tkachenko P, Dronyuk I (2020) Stacking-based GRNN-SGTM ensemble model for prediction tasks. In: Proceedings of the International Conference on decision aid sciences and applications, 8–9 November 2020, Kingdom of Bahrain, pp 326–330. doi:https://doi.org/10.1109/DASA51403.2020.9317124 Izonin I, Tkachenko R, Vitynskyi P, Zub K, Tkachenko P, Dronyuk I (2020) Stacking-based GRNN-SGTM ensemble model for prediction tasks. In: Proceedings of the International Conference on decision aid sciences and applications, 8–9 November 2020, Kingdom of Bahrain, pp 326–330. doi:https://​doi.​org/​10.​1109/​DASA51403.​2020.​9317124
Metadata
Title
Machine-learning method for analyzing and predicting the number of hospitalizations of children during the fourth wave of the COVID-19 pandemic in the Lviv region
Authors
Olena Pavliuk
Halyna Kolesnyk
Publication date
01-09-2022
Publisher
Springer International Publishing
Published in
Journal of Reliable Intelligent Environments / Issue 1/2023
Print ISSN: 2199-4668
Electronic ISSN: 2199-4676
DOI
https://doi.org/10.1007/s40860-022-00188-z

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