Analysis of the COVID-19 pandemic using a compartmental model with time-varying parameters fitted by a genetic algorithm

被引:6
|
作者
Zelenkov, Yuri [1 ]
Reshettsov, Ivan [1 ]
机构
[1] HSE Univ, HSE Grad Sch Business, 11 Pokrovsky blv, Moscow 109028, Russia
关键词
COVID-19 pandemic modeling; Compartmental model; SEIR model extension; SEIR model with time-varying parameters; Actual number of infectious; Effectiveness of vaccines; EPIDEMICS; PREDICTION; SELECTION;
D O I
10.1016/j.eswa.2023.120034
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Analyzing the COVID-19 pandemic is a critical factor in developing effective policies to deal with similar challenges in the future. However, many parameters (e.g., the actual number of infected people, the effectiveness of vaccination) are still subject to considerable debate because they are unobservable. To model a pandemic and estimate unobserved parameters, researchers use compartmental models. Most often, in such models, the tran- sition rates are considered as constants, which allows simulating only one epidemiological wave. However, multiple waves have been reported for COVID-19 caused by different strains of the virus. This paper presents an approach based on the reconstruction of real distributions of transition rates using genetic algorithms, which makes it possible to create a model that describes several pandemic peaks. The model is fitted on registered COVID-19 cases in four countries with different pandemic control strategies (Germany, Sweden, UK, and US). Mean absolute percentage error (MAPE) was chosen as the objective function, the MAPE values of 2.168%, 2.096%, 1.208% and 1.703% were achieved for the listed countries, respectively. Simulation results are consistent with the empirical statistics of medical studies, which confirms the quality of the model. In addition to observables such as registered infected, the output of the model contains variables that cannot be measured directly. Among them are the proportion of the population protected by vaccines, the size of the exposed compartment, and the number of unregistered cases of COVID-19. According to the results, at the peak of the pandemic, between 14% (Sweden) and 25% (the UK) of the population were infected. At the same time, the number of unregistered cases exceeds the number of registered cases by 17 and 3.4 times, respectively. The average duration of the vaccine induced immune period is shorter than claimed by vaccine manufacturers, and the effectiveness of vaccination has declined sharply since the appearance of the Delta and Omicron strains. However, on average, vaccination reduces the risk of infection by about 65-70%.
引用
收藏
页数:16
相关论文
共 50 条
  • [21] Time-series Forecast of the COVID-19 Pandemic Using Auto Recurrent Linear Regression
    Joseph, Ferdin Joe John
    JOURNAL OF ENGINEERING RESEARCH, 2023, 11 (2B): : 49 - 58
  • [22] Analysis of COVID-19 Infections on a CT Image Using DeepSense Model
    Khadidos, Adil
    Khadidos, Alaa O.
    Kannan, Srihari
    Natarajan, Yuvaraj
    Mohanty, Sachi Nandan
    Tsaramirsis, Georgios
    FRONTIERS IN PUBLIC HEALTH, 2020, 8
  • [23] A time-dependent model of the transmission of COVID-19 variants dynamics using Hausdorff fractal derivative
    Nie, Shiqian
    Lei, Xiaochun
    PHYSICA A-STATISTICAL MECHANICS AND ITS APPLICATIONS, 2023, 629
  • [24] An Epidemiological Compartmental Model With Automated Parameter Estimation and Forecasting of the Spread of COVID-19 With Analysis of Data From Germany and Brazil
    Batista, Adriano A.
    da Silva, Severino Horacio
    FRONTIERS IN APPLIED MATHEMATICS AND STATISTICS, 2022, 8
  • [25] Reducing the uncertainty of time-varying hydrological model parameters using spatial coherence within a hierarchical Bayesian framework
    Pan, Zhengke
    Liu, Pan
    Gao, Shida
    Cheng, Lei
    Chen, Jie
    Zhang, Xiaojing
    JOURNAL OF HYDROLOGY, 2019, 577
  • [26] Accurate and Efficient Distributed COVID-19 Spread Prediction based on a Large-Scale Time-Varying People Mobility Graph
    Shubha, Sudipta Saha
    Mahmud, Shohaib
    Shen, Haiying
    Fox, Geoffrey C.
    Marathe, Madhav
    2023 IEEE INTERNATIONAL PARALLEL AND DISTRIBUTED PROCESSING SYMPOSIUM, IPDPS, 2023, : 58 - 68
  • [27] Pandemic model with data-driven phase detection, a study using COVID-19 data
    Liu, Yuansan
    Srivastava, Saransh
    Huang, Zuo
    Vazquez-Abad, Felisa J.
    JOURNAL OF THE OPERATIONAL RESEARCH SOCIETY, 2023, 74 (02) : 450 - 464
  • [28] Forecasting of COVID-19 Cases in INDIA Using AReIMA and AR Time-Series Algorithm
    Prajapati, Dilip
    Kanojia, Mahendra
    PROCEEDINGS OF THE 13TH INTERNATIONAL CONFERENCE ON SOFT COMPUTING AND PATTERN RECOGNITION (SOCPAR 2021), 2022, 417 : 361 - 370
  • [29] Epidemiological trend in scarlet fever incidence in China during the COVID-19 pandemic: A time series analysis
    Ma, Yunxia
    Gao, Shanshan
    Kang, Zheng
    Shan, Linghan
    Jiao, Mingli
    Li, Ye
    Liang, Libo
    Hao, Yanhua
    Zhao, Binyu
    Ning, Ning
    Gao, Lijun
    Cui, Yu
    Sun, Hong
    Wu, Qunhong
    Liu, Huan
    FRONTIERS IN PUBLIC HEALTH, 2022, 10
  • [30] Indian COVID-19 time series prediction using Facebook's Prophet model
    Garanayak, Mamata
    Sahu, Goutam
    Mohammad, Gouse Baig
    Chakravarty, Sujata
    INTERNATIONAL JOURNAL OF COMPUTER APPLICATIONS IN TECHNOLOGY, 2021, 66 (3-4) : 374 - 388