1,029 results on '"SEIR model"'
Search Results
2. Research on Early Warning of Transmission of Tuberculosis Infectious Diseases from the Perspective of Social Factors.
- Author
-
Zhu, Miao, Li, Xiyi, Zhang, Xingyue, and Dong, Xiaoyu
- Subjects
- *
TUBERCULOSIS , *INFECTIOUS disease transmission , *SOCIAL factors , *PUBLIC hospitals , *PERCOLATION - Abstract
In this study, the infiltration model was established to study the early warning of pulmonary tuberculosis data in Xiamen public hospitals. Based on the gender characteristics of residents in Xiamen, a percolation model was established to analyze the transmission rates of diseases under different contact types. In addition, the calculation method of the percolation threshold is discussed, and the model is verified by a simulation experiment. The results show that the model can predict the spread of epidemic situations well. The early warning value and relevant preventive measures were obtained by simulating the spread of tuberculosis under different exposure numbers. Bond percolation analysis was used to predict the proportion of the eventually infected population, this threshold of percolation was the basic regeneration number of tuberculosis, and the tuberculosis infection situation was effectively predicted. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
3. Utilizing direct and indirect information to improve the COVID-19 vaccination booster scheduling.
- Author
-
Dery, Yotam, Yechezkel, Matan, Ben-Gal, Irad, and Yamin, Dan
- Subjects
- *
BOOSTER vaccines , *COVID-19 vaccines , *COMMUNICABLE diseases , *COVID-19 pandemic , *INFECTIOUS disease transmission , *DISEASE incidence - Abstract
Current global COVID-19 booster scheduling strategies mainly focus on vaccinating high-risk populations at predetermined intervals. However, these strategies overlook key data: the direct insights into individual immunity levels from active serological testing and the indirect information available either through sample-based sero-surveillance, or vital demographic, location, and epidemiological factors. Our research, employing an age-, risk-, and region-structured mathematical model of disease transmission—based on COVID-19 incidence and vaccination data from Israel between 15 May 2020 and 25 October 2021—reveals that a more comprehensive strategy integrating these elements can significantly reduce COVID-19 hospitalizations without increasing existing booster coverage. Notably, the effective use of indirect information alone can considerably decrease COVID-19 cases and hospitalizations, without the need for additional vaccine doses. This approach may also be applicable in optimizing vaccination strategies for other infectious diseases, including influenza. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
4. A Quasilinearization Approach for Identification Control Vectors in Fractional-Order Nonlinear Systems.
- Author
-
Koleva, Miglena N. and Vulkov, Lubin G.
- Subjects
- *
NONLINEAR systems , *VECTOR control , *QUASILINEARIZATION , *ORDINARY differential equations , *NONLINEAR differential equations , *TIKHONOV regularization - Abstract
This paper is concerned with solving the problem of identifying the control vector problem for a fractional multi-order system of nonlinear ordinary differential equations (ODEs). We describe a quasilinearization approach, based on minimization of a quadratic functional, to compute the values of the unknown parameter vector. Numerical algorithm combining the method with appropriate fractional derivative approximation on graded mesh is applied to SIS and SEIR problems to illustrate the efficiency and accuracy. Tikhonov regularization is implemented to improve the convergence. Results from computations, both with noisy-free and noisy data, are provided and discussed. Simulations with real data are also performed. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
5. Decision-dependent distributionally robust Markov decision process method in dynamic epidemic control.
- Author
-
Song, Jun, Yang, William, and Zhao, Chaoyue
- Subjects
- *
MARKOV processes , *REAL-time programming , *EPIDEMICS , *DYNAMIC programming , *INFECTIOUS disease transmission , *COMPUTATIONAL neuroscience - Abstract
In this article, we present a Distributionally Robust Markov Decision Process (DRMDP) approach for addressing the dynamic epidemic control problem. The Susceptible-Exposed-Infectious-Recovered (SEIR) model is widely used to represent the stochastic spread of infectious diseases, such as COVID-19. Although the Markov Decision Process (MDP) offers a mathematical framework for identifying optimal actions, such as vaccination and transmission-reducing intervention, to combat disease spread calculated using the SEIR model. However, uncertainties in these scenarios demand a more robust approach that is less reliant on error-prone assumptions. The primary objective of our study is to introduce a new DRMDP framework that allows for an ambiguous distribution of transition dynamics. Specifically, we consider the worst-case distribution of these transition probabilities within a decision-dependent ambiguity set. To overcome the computational complexities associated with policy determination, we propose an efficient Real-Time Dynamic Programming (RTDP) algorithm that is capable of computing optimal policies based on the reformulated DRMDP model in an accurate, timely, and scalable manner. Comparative analysis against the classic MDP model demonstrates that the DRMDP achieves a lower proportion of infections and susceptibilities at a reduced cost. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
6. Studying the Epidemiological Model for the Infection by Spiral Gastric Bacteria.
- Author
-
Jaafar, Mohanad N., Shraida, Shaymaa Mukhlif, and Huisen, Reem Waleed
- Subjects
- *
HELICOBACTER pylori , *EPIDEMIOLOGICAL models , *PEPTIC ulcer , *STOMACH ulcers , *BACTERIA ,DEVELOPED countries - Abstract
Helicobacter pylori (H. pylori), a bacterium that has captured the attention of researchers for over a century, is well-known for its association with peptic ulcer and gastric cancer. Despite a decline in its prevalence to improved hygienic conditions and effective curative and preventive measures, H. pylori still persists in various communities and continues to spread, maintaining its global presence in both developing and developed nations. Persistent efforts in scientific research have led to the discovery of diverse management options to combat this pathogen. In this article, we direct our attention to the global prevalence of H. pylori infection, delve into the factors contributing to its transmission, and explore prevention methods. Through the study's findings, we gain valuable insights into how these factors influence H. pylori infection rates. In addition, we study the local and global stability and the numerical solution for the models. [ABSTRACT FROM AUTHOR]
- Published
- 2024
7. Dynamic Mechanism of Destination Brand Diffusion: Agent-Based Modeling and Simulation.
- Author
-
Deng, Lihui, Tan, Jin, He, Danyang, Zhao, Hong, and Wang, Zongshui
- Subjects
PLACE marketing ,SOCIAL media ,INFORMATION dissemination ,SIMULATION methods & models - Abstract
In recent years, social media has emerged as an important channel for the dissemination of destination branding. Despite the fact that the dissemination of information through social media enables a broader audience to become acquainted with destinations, the dissemination process of trending events exhibits variances. Consequently, the precise impact of the underlying mechanisms that govern the spread of information on the efficacy of disseminating destination brand trending events remains ambiguous. In an endeavor to bridge this gap, an improved SEIR model was developed in this research to investigate the dynamic dissemination mechanisms and influencing factors of destination trending events within social media. The model was applied to simulate the diffusion mechanism of destinations' trending events. The results show that during the dissemination process of destination trending events on social media, the proportion of users affected at different stages influences the ultimate effectiveness of information propagation. In light of these insights, this research proposes a social media trending event dissemination strategy to aid in enhancing the propagation efficiency of destination brands through existing resources. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
8. Reverse Logistics Network Design for Medical Waste Disposal under the Scenario of Uncertain Proposal Demand.
- Author
-
Zhu, Lan, Ding, Tao, and Liu, Zhuofan
- Abstract
With the development of the healthcare industry, the demand for medical services and protective equipment is boosted, causing the generation rate of infectious medical waste to increase rapidly. Therefore, it is of utmost importance for decision makers to effectively predict the potential risks and propose corresponding solutions. This paper investigates the reverse logistics network optimization for medical waste under the conditions of an uncertain proposal demand. Firstly, a prediction model of medical waste based on the SEIR epidemiological dynamics is constructed, in which both routine and public health emergency scenarios are simultaneously considered. Secondly, a bi-objective location-routing optimization model for a medical waste reverse logistics network is proposed, by simultaneously optimizing the total economic cost and potential risk throughout the entire logistics process. Subsequently, an NSGA-II algorithm is designed for a model solution in response to the model's characteristics. The epidemiological dynamics-based prediction model is validated by the real case to be scientifically effective in predicting the amount of generated medical waste with a mean absolute percentage error (MAPE) of 18.08%. The constructed reverse logistics network model and the NSGA II algorithm provide a medical waste process center location, transportation routing, and vehicle selection solutions for both routine and emergency public health cases of Xi'an city with large, medium, and small scales. The above results indicate that the research scheme proposed in this paper could significantly reduce the medical waste logistics-related risks and costs and provide decision makers with more safe and reliable logistical solutions. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
9. An Agent-Based Model for Disease Epidemics in Greece.
- Author
-
Thomopoulos, Vasileios and Tsichlas, Kostas
- Subjects
- *
INFECTIOUS disease transmission , *CONTACT tracing , *EPIDEMICS , *COMMUNICABLE diseases , *COVID-19 pandemic - Abstract
In this research, we present the first steps toward developing a data-driven agent-based model (ABM) specifically designed for simulating infectious disease dynamics in Greece. Amidst the ongoing COVID-19 pandemic caused by SARS-CoV-2, this research holds significant importance as it can offer valuable insights into disease transmission patterns and assist in devising effective intervention strategies. To the best of our knowledge, no similar study has been conducted in Greece. We constructed a prototype ABM that utilizes publicly accessible data to accurately represent the complex interactions and dynamics of disease spread in the Greek population. By incorporating demographic information and behavioral patterns, our model captures the specific characteristics of Greece, enabling accurate and context-specific simulations. By using our proposed ABM, we aim to assist policymakers in making informed decisions regarding disease control and prevention. Through the use of simulations, policymakers have the opportunity to explore different scenarios and predict the possible results of various intervention measures. These may include strategies like testing approaches, contact tracing, vaccination campaigns, and social distancing measures. Through these simulations, policymakers can assess the effectiveness and feasibility of these interventions, leading to the development of well-informed strategies aimed at reducing the impact of infectious diseases on the Greek population. This study is an initial exploration toward understanding disease transmission patterns and a first step towards formulating effective intervention strategies for Greece. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
10. Dynamics of an SEIR epidemic model with saturated incidence rate including stochastic influence.
- Author
-
Kumar, G., Ramesh, K., and Nisar, Kottakkaran Sooppy
- Subjects
EPIDEMIOLOGICAL models ,DISEASE incidence ,STOCHASTIC differential equations ,RANDOM noise theory ,BASIC reproduction number - Abstract
This paper aims to develop a stochastic perturbation into SEIR (Susceptible-Exposed-Infected-Removed) epidemic model including a saturated estimated incidence. A set of stochastic differential equations is used to study its behavior, with the assumption that each population's exposure to environmental unpredictability is represented by noise terms. This kind of randomness is considerably more reasonable and realistic in the proposed model. The current study has been viewed as strengthening the body of literature because there is less research on the dynamics of this kind of model. We discussed the structure of all equilibriums' existence and the dynamical behavior of all the steady states. The fundamental replication number for the proposed method was used to discuss the stability of every equilibrium point; if R
0 < 1, the infected free equilibrium is resilient, and if R0 < 1, the endemic equilibrium is resilient. The system's value is primarily described by its ambient stochasticity, which takes the form of Gaussian white noise. Additionally, the suggested model can offer helpful data for comprehending, forecasting, and controlling the spread of various epidemics globally. Numerical simulations are run for a hypothetical set of parameter values to back up our analytical conclusions. [ABSTRACT FROM AUTHOR]- Published
- 2024
- Full Text
- View/download PDF
11. Utilizing direct and indirect information to improve the COVID-19 vaccination booster scheduling
- Author
-
Yotam Dery, Matan Yechezkel, Irad Ben-Gal, and Dan Yamin
- Subjects
Value of information ,Vaccination ,COVID-19 ,Transmission model ,SEIR model ,Medicine ,Science - Abstract
Abstract Current global COVID-19 booster scheduling strategies mainly focus on vaccinating high-risk populations at predetermined intervals. However, these strategies overlook key data: the direct insights into individual immunity levels from active serological testing and the indirect information available either through sample-based sero-surveillance, or vital demographic, location, and epidemiological factors. Our research, employing an age-, risk-, and region-structured mathematical model of disease transmission—based on COVID-19 incidence and vaccination data from Israel between 15 May 2020 and 25 October 2021—reveals that a more comprehensive strategy integrating these elements can significantly reduce COVID-19 hospitalizations without increasing existing booster coverage. Notably, the effective use of indirect information alone can considerably decrease COVID-19 cases and hospitalizations, without the need for additional vaccine doses. This approach may also be applicable in optimizing vaccination strategies for other infectious diseases, including influenza.
- Published
- 2024
- Full Text
- View/download PDF
12. Simulations for the Susceptible-Exposed-Infected-Recovered (SEIR) Model in the Forecast of Epidemic Outbreak
- Author
-
Mei Feng Liu and Boo Hui Ling
- Subjects
epidemic outbreak ,seir model ,complete graph ,steady erdos-renyi graph ,varying erdos-renyi graph ,Mechanics of engineering. Applied mechanics ,TA349-359 ,Technology - Abstract
Mathematical modelling based on the compartmental Susceptible – Exposed – Infected - Recovered (SEIR) model is proposed in this paper to study the pandemic outbreak. In addition, simulations from both the deterministic approach as well as the stochastic approach are implemented to validate the present study. Among each state, the transitions between different categories are simulated by using various graph models including the complete graph, the steady Erdos-Renyi graph, as well as the varying Erdos-Renyi graph. The related parameters for the SEIR model are chosen from available literature and the effect of some other factors such as the inflow or outflow of travellers in a city as well as the impact of vaccination rate is explored. Furthermore, the difference between the simulation results coming from the deterministic SEIR model and the stochastic SEIR one is examined to check the availability of the present simulation. It is found that, the stochastic simulation based on the complete graph is more consistent with the deterministic SEIR model.
- Published
- 2024
- Full Text
- View/download PDF
13. Managing two‐dose COVID‐19 vaccine rollouts with limited supply: Operations strategies for distributing time‐sensitive resources
- Author
-
Mak, Ho‐Yin, Dai, Tinglong, and Tang, Christopher S
- Subjects
Transportation ,Logistics and Supply Chains ,Commerce ,Management ,Tourism and Services ,Emerging Infectious Diseases ,Immunization ,Vaccine Related ,Infectious Diseases ,Prevention ,Prevention of disease and conditions ,and promotion of well-being ,3.4 Vaccines ,Infection ,Good Health and Well Being ,COVID-19 vaccine rollout ,healthcare operations management ,public health operations ,SEIR model ,vaccine inventory ,COVID‐19 vaccine rollout ,Applied Mathematics ,Business and Management ,Operations Research ,Transportation ,logistics and supply chains ,Applied mathematics - Abstract
Distributing scarce resources such as COVID-19 vaccines is often a highly time-sensitive and mission-critical operation. Our research was prompted by a significant obstacle that the United States and other nations encountered during the early months of the COVID-19 vaccination campaign: Most COVID-19 vaccines require two doses given 3 or 4 weeks apart. Given the severely limited supply and mounting pressure on many countries to reduce hospitalizations and mortality, how to effectively roll out two-dose vaccines was a critical policy decision. In this paper, we first model and analyze inventory dynamics of the rollout process under three rollout strategies: (1) holding back second doses, (2) releasing second doses, and (3) stretching the lead time between doses. Then we develop an SEIR (susceptible, exposed, infectious, recovered) model that incorporates COVID-19 asymptomatic and symptomatic infections to evaluate these strategies in terms of infections, hospitalizations, and mortality. Among our findings, we show releasing second doses reduces infections but creates uneven vaccination patterns. In addition, to ensure second doses are given on time without holding back inventory, strictly less than half of the supply can be allocated to first-dose appointments. Stretching the between-dose lead time flattens the infection curve and reduces both hospitalizations and mortality compared with the strategy of releasing second doses. We also consider an alternative single-dose vaccine with lower efficacy and show that the vaccine can be more effective than its two-dose counterparts in reducing infections and mortality. We conduct extensive sensitivity analyses related to age composition, risk-based prioritization, supply disruptions, and disease transmissibility. Our paper provides important implications for policymakers to develop effective vaccine rollout strategies in developed and developing countries alike. More broadly, our paper sheds light on how to develop effective operations strategies for distributing time-sensitive resources in times of crisis.
- Published
- 2022
14. Boundedness and non‐existence of traveling wave solutions for a four‐compartment lattice epidemic system with exposed class and standard incidence.
- Author
-
Wu, Xin and Ma, Zhaohai
- Subjects
- *
EPIDEMICS , *WAVE analysis , *PROBLEM solving - Abstract
A recent paper (Zhang R, Yu X. Traveling waves for a four‐compartment lattice epidemic system with exposed class and standard incidence. Math Meth Appl Sci. 2022; 45: 113‐136) presented a four‐compartment lattice epidemic system with exposed class and standard incidence. The authors studied the existence and non‐existence of traveling wave solutions of this system. However, the limit behavior of R$$ R $$‐component of traveling wave solutions is still open. In this paper, we solve this open problem and establish the boundedness of traveling wave solutions by analysis technique. Meanwhile, we study the non‐existence of traveling wave solutions with non‐positive wave velocity. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
15. A Third-order Two Stage Numerical Scheme and Neural Network Simulations for SEIR Epidemic Model: A Numerical Study
- Author
-
Muhammad Shoaib Arif, Kamaleldin Abodayeh, and Yasir Nawaz
- Subjects
explicit scheme ,stability ,consistency ,seir model ,matlab ode45 ,neural network. ,Technology (General) ,T1-995 ,Social sciences (General) ,H1-99 - Abstract
This study focuses on the cutting-edge field of epidemic modeling, providing a comprehensive investigation of a third-order two-stage numerical approach combined with neural network simulations for the SEIR (Susceptible-Exposed-Infectious-Removed) epidemic model. An explicit numerical scheme is proposed in this work for dealing with both linear and nonlinear boundary value problems. The scheme is built on two grid points, or two time levels, and is third-order. The main advantage of the scheme is its order of accuracy in two stages. Third-order precision is not only not provided by most existing explicit numerical approaches in two phases, but it also necessitates the computation of an additional derivative of the dependent variable. The proposed scheme's consistency and stability are also examined and presented. Nonlinear SEIR (susceptible-exposed-infected-recovered) models are used to implement the scheme. The scheme is compared with the non-standard finite difference and forward Euler methods that are already in use. The graph shows that the plan is more accurate than non-standard finite difference and forward Euler methods that are already in use. The solution obtained is then looked at through the lens of the neural network. The neural network is trained using an optimization approach known as the Levenberg-Marquardt backpropagation (LMB) algorithm. The mean square error across the total number of iterations, error histograms, and regression plots are the various graphs that can be created from this process. This work conducts thorough evaluations to not only identify the strengths and weaknesses of the suggested approach but also to examine its implications for public health intervention. The results of this study make a valuable contribution to the continuously developing field of epidemic modeling. They emphasize the importance of employing modern numerical techniques and machine learning algorithms to enhance our capacity to predict and effectively control infectious diseases. Doi: 10.28991/ESJ-2024-08-01-023 Full Text: PDF
- Published
- 2024
- Full Text
- View/download PDF
16. Modeling the impact of distancing measures on infectious disease spread: a case study of COVID-19 in the Moroccan population
- Author
-
Abdelkarim Lamghari, Dramane Sam Idris Kanté, Aissam Jebrane, and Abdelilah Hakim
- Subjects
covid-19 ,contact matrices ,inter-social context flows ,moroccan social contact patterns ,distancing measures ,social force model ,seir model ,infectious disease spread ,Biotechnology ,TP248.13-248.65 ,Mathematics ,QA1-939 - Abstract
This paper explores the impact of various distancing measures on the spread of infectious diseases, focusing on the spread of COVID-19 in the Moroccan population as a case study. Contact matrices, generated through a social force model, capture population interactions within distinct activity locations and age groups. These matrices, tailored for each distancing scenario, have been incorporated into an SEIR model. The study models the region as a network of interconnected activity locations, enabling flexible analysis of the effects of different distancing measures within social contexts and between age groups. Additionally, the method assesses the influence of measures targeting potential superspreaders (i.e., agents with a very high contact rate) and explores the impact of inter-activity location flows, providing insights beyond scalar contact rates or survey-based contact matrices. The results suggest that implementing intra-activity location distancing measures significantly reduces in the number of infected individuals relative to the act of imposing restrictions on individuals with a high contact rate in each activity location. The combination of both measures proves more advantageous. On a regional scale, characterized as a network of interconnected activity locations, restrictions on the movement of individuals with high contact rates was found to result in a $ 2 \% $ reduction, while intra-activity location-based distancing measures was found to achieve a $ 44 \% $ reduction. The combination of these two measures yielded a $ 48\% $ reduction.
- Published
- 2024
- Full Text
- View/download PDF
17. On the date of the epidemic peak
- Author
-
Ali Moussaoui and Mohammed Meziane
- Subjects
seir model ,disease-age structure ,final size ,Biotechnology ,TP248.13-248.65 ,Mathematics ,QA1-939 - Abstract
Epidemiologists have used the timing of the peak of an epidemic to guide public health interventions. By determining the expected peak time, they can allocate resources effectively and implement measures such as quarantine, vaccination, and treatment at the right time to mitigate the spread of the disease. The peak time also provides valuable information for those modeling the spread of the epidemic and making predictions about its future trajectory. In this study, we analyze the time needed for an epidemic to reach its peak by presenting a straightforward analytical expression. Utilizing two epidemiological models, the first is a generalized $ SEIR $ model with two classes of latent individuals, while the second incorporates a continuous age structure for latent infections. We confirm the conjecture that the peak occurs at approximately $ T\sim(\ln N)/\lambda $, where $ N $ is the population size and $ \lambda $ is the largest eigenvalue of the linearized system in the first model or the unique positive root of the characteristic equation in the second model. Our analytical results are compared to numerical solutions and shown to be in good agreement.
- Published
- 2024
- Full Text
- View/download PDF
18. A nonstandard finite difference scheme for a time-fractional model of Zika virus transmission
- Author
-
Maghnia Hamou Maamar, Matthias Ehrhardt, and Louiza Tabharit
- Subjects
nonstandard finite difference scheme ,positivity ,zika virus ,compartment models ,time-fractional models ,epidemiology ,seir model ,human-vector models ,Biotechnology ,TP248.13-248.65 ,Mathematics ,QA1-939 - Abstract
In this work, we investigate the transmission dynamics of the Zika virus, considering both a compartmental model involving humans and mosquitoes and an extended model that introduces a non-human primate (monkey) as a second reservoir host. The novelty of our approach lies in the later generalization of the model using a fractional time derivative. The significance of this study is underscored by its contribution to understanding the complex dynamics of Zika virus transmission. Unlike previous studies, we incorporate a non-human primate reservoir host into the model, providing a more comprehensive representation of the disease spread. Our results reveal the importance of utilizing a nonstandard finite difference (NSFD) scheme to simulate the disease's dynamics accurately. This NSFD scheme ensures the positivity of the solution and captures the correct asymptotic behavior, addressing a crucial limitation of standard solvers like the Runge-Kutta Fehlberg method (ode45). The numerical simulations vividly demonstrate the advantages of our approach, particularly in terms of positivity preservation, offering a more reliable depiction of Zika virus transmission dynamics. From these findings, we draw the conclusion that considering a non-human primate reservoir host and employing an NSFD scheme significantly enhances the accuracy and reliability of modeling Zika virus transmission. Researchers and policymakers can use these insights to develop more effective strategies for disease control and prevention.
- Published
- 2024
- Full Text
- View/download PDF
19. Modeling the role of information and optimal control on an SEIR epidemic model with infectivity in latent period.
- Author
-
Guo, Yuhong, Liu, Zhijun, Wang, Lianwen, and Tan, Ronghua
- Subjects
- *
BASIC reproduction number , *DISEASE prevalence , *INFORMATION resources management , *INFECTIOUS disease transmission , *DISEASE outbreaks - Abstract
The outbreak of a disease can lead to behavioral changes in the healthy to avert infection. We first establish a nonlinear SEIR epidemic model that incorporates the impact of individuals' behavioral response owe to information of the disease prevalence. Both the existence of equilibria and sharp sufficient conditions on stable equilibria are verified. Whereafter, the local and global sensitivity analyses are carried out to assess the relative effects of parameters on the basic reproduction number. Therewith the optimal control problem is considered to provide a theoretical basis for disease prevention and control, and the existence and uniqueness consequences for optimal control paths are demonstrated. Some numerical examples and discussions are given to support and visualize our analytical results, which can be derived that the combined use of three control measures is more effective than any single adopted control strategy to curb the spread of diseases. We also find that the information plays a crucial role in controlling infection. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
20. Mathematical approach for impact of media awareness on measles disease.
- Author
-
Kavya, K N and Veeresha, Pundikala
- Subjects
- *
BASIC reproduction number , *MEASLES , *INFECTIOUS disease transmission , *AWARENESS , *DISEASE eradication - Abstract
During the recent pandemic caused by COVID‐19, media awareness played a crucial role in educating people about social distancing, wearing masks, quarantine, vaccination, and medication. Media awareness brought individual behavioral changes among the people, which in turn helped reduce the infection rate. Motivated by this, we have formulated a mathematical model introducing a media compartment to mitigate measles disease transmission. In this paper, the SEIR model is used to study measles disease in three cases: one with a delay in vaccination, the second with regular vaccination, and the third with the impact of media awareness on the spreading of measles disease. Further, the dynamical behavior of the models is studied in terms of positivity, boundedness, equilibrium, and basic reproduction number (BRN). The sensitivity analysis of the models is conducted, which verifies the importance of the BRN (R0$$ {R}_0 $$) to be less than one for disease eradication. The numerical study confirms the impact of media awareness on exposed and infected populations. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
21. Study on intentional control strategy of COVID-19.
- Author
-
Wang, Kejun and Zhang, Hebing
- Subjects
- *
COVID-19 , *SARS-CoV-2 , *CORONAVIRUSES , *ADAPTIVE control systems , *INFECTIOUS disease transmission , *DEATH rate - Abstract
With the ongoing evolution of the novel coronavirus pathogen and continuous improvements in our social environment, the mortality rate of COVID-19 is on a decline. In response to this, we introduce an adaptive control strategy known as intentional control, which offers cost-efficiency and superior control effectiveness. The classical SEIR model faces limitations in accurately representing close contacts and sub-close contacts and fails to distinguish their varying levels of infectivity. To address this, our study modifies the classical model by incorporating close contact (E) and a sub-close contact (E2) while reworking the infectious mechanism. Once the model is formulated, we employ various statistical methods to identify crucial parameters, including R2, adjusted R2, and standard deviation. For disease control, we implement an intentional control program with four distinct grades. We develop and apply a scheme in MATLAB for our proposed model, generating diverse simulation results based on realistic parameter values for discussion. Additionally, we explore a range of strategy combinations to differentiate their effectiveness under various social conditions, aiming to identify an optimal approach. Comparing the intentional control strategy to random control, our findings consistently demonstrate the superiority of intentional control across all scenarios. Furthermore, the results indicate that our approach better aligns with the characteristics of the novel coronavirus, characterized by an "extremely low fatality rate and strong infectivity," while offering detailed insights into the transmission dynamics among different compartments. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
22. Optimal control of the SEIR epidemic model using a dynamical systems approach.
- Author
-
Takeguchi, Yoshiki and Yagasaki, Kazuyuki
- Abstract
We consider the susceptible-exposed-infected-removed (SEIR) epidemic model and apply optimal control to it successfully. Here three control inputs are considered, so that the infection rate is decreased and exposed or infected individuals are removed. Our approach is to reduce the computation of the optimal control input to that of the stable manifold of an invariant manifold in a Hamiltonian system. Some numerical examples in which the computer software AUTO is used to numerically compute the stable manifold are given to demonstrate the usefulness of our approach for the optimal control in the SEIR model. Our study suggests how we can decrease the number of infected individuals quickly before a critical situation occurs while keeping social and economic burdens small. Our results for the SEIR model are very different from the previous one for the SIR model, which is similar but simpler than the present one. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
23. An analytical framework for understanding infection progression under social mitigation measures.
- Author
-
Ilic, Bojana, Salom, Igor, Djordjevic, Marko, and Djordjevic, Magdalena
- Abstract
While there has been much computational work on the effect of intervention measures, such as vaccination or quarantine, the influence of social distancing on the epidemics' outbursts is not well understood. We present a realistic, analytically solvable, framework for COVID-19 dynamics in the presence of social distancing measures. The model is a generalization of the compartmental SEIR model that accounts for the effects of these measures. We derive a closed-form mathematical expressions for the time dependence of epidemiological observables, in particular, the detected cases and fatalities. These analytical solutions indicate simple quantitative relations between the model variables and epidemiological observables, which give insights into cause-effect connections that underlie the outburst dynamics but are obscured in more standard (numerical) approaches. While the obtained results and conclusions are based on the study of the COVID-19 pandemic, the presented analysis has general applicability to infection outbursts. Our findings are particularly important in the emergence of new pandemics when effective pharmaceutical treatments are unavailable, and one must rely on well-timed and appropriately chosen social mitigation measures. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
24. COVID-19 transmission between the community and meat processing plants in Ireland: A retrospective modelling study
- Author
-
Rita Howe, Charlene Grice, Fintan Costello, Vicky Downey, Donal Sammin, Carla Perrotta, Grace Mulcahy, and Nicola Walshe
- Subjects
COVID-19 ,Meat processing plant ,Community ,Infection ,SEIR model ,Science (General) ,Q1-390 ,Social sciences (General) ,H1-99 - Abstract
Outbreaks of COVID-19 in meat processing plants (MPPs) were recorded globally throughout the pandemic. There was speculation these outbreaks resulted in dissemination of COVID-19 throughout the surrounding county leading to high incidence rates. We aimed to investigate the dynamics of spread between MPPs and their surrounding counties. In this retrospective longitudinal study, data were collected on the number and size of outbreaks in 33 MPPs and county infections in Ireland between March 2020 and May 2021. These data were used to investigate the relationship between outbreaks in MPPs and county infection rates through statistical analysis, and the development of a novel SEIR model. We found an association between the number of MPPs present in a county and county incidence rates, however, incidence rates in the counties did not increase as a consequence of an outbreak in an MPP. The model results indicate that county incidence rates in the weeks prior to an MPP outbreak could reliably predict the size of that outbreak in a plant, r(49) = 0·62, p
- Published
- 2024
- Full Text
- View/download PDF
25. Measuring the worldwide spread of COVID-19 using a comprehensive modeling method
- Author
-
Xiang Zhou, Xudong Ma, Sifa Gao, Yingying Ma, Jianwei Gao, Huizhen Jiang, Weiguo Zhu, Na Hong, Yun Long, and Longxiang Su
- Subjects
COVID-19 ,Group-based trajectory model ,Logistic growth model ,SEIR model ,Trends prediction ,Decision-making support ,Computer applications to medicine. Medical informatics ,R858-859.7 - Abstract
Abstract Background With the global spread of COVID-19, detecting high-risk countries/regions timely and dynamically is essential; therefore, we sought to develop automatic, quantitative and scalable analysis methods to observe and estimate COVID-19 spread worldwide and further generate reliable and timely decision-making support for public health management using a comprehensive modeling method based on multiple mathematical models. Methods We collected global COVID-19 epidemic data reported from January 23 to September 30, 2020, to observe and estimate its possible spread trends. Countries were divided into three outbreak levels: high, middle, and low. Trends analysis was performed by calculating the growth rate, and then country grouping was implemented using group-based trajectory modeling on the three levels. Individual countries from each group were also chosen to further disclose the outbreak situations using two predicting models: the logistic growth model and the SEIR model. Results All 187 observed countries' trajectory subgroups were identified using two grouping strategies: with and without population consideration. By measuring epidemic trends and predicting the epidemic size and peak of individual countries, our study found that the logistic growth model generally estimated a smaller epidemic size than the SEIR model. According to SEIR modeling, confirmed cases in each country would take an average of 9–12 months to reach the outbreak peak from the day the first case occurred. Additionally, the average number of cases at the peak time will reach approximately 10–20% of the countries’ populations, and the countries with high trends and a high predicted size must pay special attention and implement public health interventions in a timely manner. Conclusions We demonstrated comprehensive observations and predictions of the COVID-19 outbreak in 187 countries using a comprehensive modeling method. The methods proposed in this study can measure COVID-19 development from multiple perspectives and are generalizable to other epidemic diseases. Furthermore, the methods also provide reliable and timely decision-making support for public health management.
- Published
- 2023
- Full Text
- View/download PDF
26. Modeling and analysis of a fractional order spatio-temporal SEIR model: Stability and prediction
- Author
-
El Mehdi Moumine, Sofiane Khassal, Omar Balatif, and Mostafa Rachik
- Subjects
SEIR model ,Lyapunov function ,Stability ,Fractional order model ,Spatio-temporal model ,Applied mathematics. Quantitative methods ,T57-57.97 - Abstract
This study introduces a novel fractional-order spatio-temporal SEIR model for epidemic modeling, providing an advanced approach to understanding disease dynamics. Our model, categorizing the population into Susceptible (S), Exposed (E), Infected (I), and Recovered (R), incorporates fractional calculus to accurately reflect the complex, non-linear nature of infectious diseases. Key findings include the confirmation of the existence and uniqueness of the model’s solutions, ensuring reliability for epidemiological predictions. Through rigorous stability analysis at both disease-free and endemic equilibrium points, we identified critical parameters influencing epidemic outcomes. Numerical simulations reveal that the fractional order significantly impacts disease progression, offering valuable insights for intervention strategies.
- Published
- 2024
- Full Text
- View/download PDF
27. Evolutionary-Game-Theory-Based Epidemiological Model for Prediction of Infections with Application to Demand Forecasting in Pharmaceutical Inventory Management Problems.
- Author
-
Nishihata, Yu, Liu, Ziang, and Nishi, Tatsushi
- Subjects
INVENTORY control ,DEMAND forecasting ,EPIDEMIOLOGICAL models ,MEDICAL personnel ,PREDICTION models ,VIRAL mutation - Abstract
Pharmaceuticals play a critical role in the eradication of infectious diseases. Effective pharmaceutical inventory management is important for controlling epidemics since medical resources such as pharmaceuticals, medical staff, and hospitals are limited. In this study, a novel epidemiological model is proposed to evaluate the resource requirements for pharmaceuticals and is applied to analyze different pharmaceutical inventory management strategies. We formulate the relationship between the number of infected individuals and the risk of infection to account for virus mutation. Evolutionary game theory is integrated into an epidemiological model to represent human behavioral choices. The proposed model can be developed to forecast the demand for pharmaceuticals and analyze how human behavior affects the demand of pharmaceuticals. This study found that making people aware of the risk of disease has a positive impact on both reducing the number of infections and managing the pharmaceutical inventory. The main contribution of this study is to enhance areas of research in pharmaceutical inventory management. This study revealed that the correct recognition of the risk of disease leads to appropriate pharmaceutical management. There are a few studies on the application of infectious disease models to inventory control problems. This study provides clues toward proper pharmaceutical management. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
28. Research on the Application of Heterogeneous Cellular Automata in the Safety Control and Detection System of Construction Project Implementation Phase.
- Author
-
Chen, Zeyou, Zhang, Zheyuan, Xiang, Yong, and Wei, Yao
- Subjects
CELLULAR automata ,CONSTRUCTION projects ,CONSTRUCTION workers ,INDUSTRIAL safety ,ENGINEERING management ,ONLINE monitoring systems - Abstract
In construction engineering safety management, the problem of construction workers' unsafe behavior (CWUB) has always been a focus for researchers as well as practice managers. Currently, most studies focus on the influencing factors and mechanisms of (CWUB), with less attention given to the dissemination process and control effects of CWUB. Therefore, this paper aims to investigate a safety control detection system for the transmission process. The heterogeneous cellular automaton (CA) has advantages in constructing such a system as it can reflect the interactive processes of construction workers from micro to macro, local to global, and consider the heterogeneity of individuals and space, satisfying unequal interaction probabilities between individuals and spatial variations in characteristics. The SEIR model accurately categorizes construction workers and visually represents the changing quantities of different state groups at each stage. It effectively describes the process of CWUB transmission among construction workers. Based on the aforementioned foundation, a safety control and monitoring system was proposed for the implementation stages of the project. Finally, the control detection system is simulated to assess its effectiveness. Simulation results closely align with reality, showing a continuous decrease in susceptible individuals, a peak followed by a rapid decline in latent and infected individuals, and a steady increase in immune individuals. To control CWUB transmission, it is crucial to enhance immunity against unsafe behaviors, reduce the rate of immunity conversion, and shorten the disease cycle caused by such behaviors. This research has practical implications for construction projects. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
29. A sequential Monte Carlo approach to estimate a time-varying reproduction number in infectious disease models: the Covid-19 case*.
- Author
-
Storvik, Geir, Diz-Lois Palomares, Alfonso, Engebretsen, Solveig, Rø, Gunnar Øyvind Isaksson, Engø-Monsen, Kenth, Kristoffersen, Anja Bråthen, de Blasio, Birgitte Freiesleben, and Frigessi, Arnoldo
- Subjects
COMMUNICABLE diseases ,VIRAL transmission ,COVID-19 pandemic ,EPIDEMIOLOGICAL models ,TIME series analysis ,BASIC reproduction number - Abstract
The Covid-19 pandemic has required most countries to implement complex sequences of non-pharmaceutical interventions, with the aim of controlling the transmission of the virus in the population. To be able to take rapid decisions, a detailed understanding of the current situation is necessary. Estimates of time-varying, instantaneous reproduction numbers represent a way to quantify the viral transmission in real time. They are often defined through a mathematical compartmental model of the epidemic, like a stochastic SEIR model, whose parameters must be estimated from multiple time series of epidemiological data. Because of very high dimensional parameter spaces (partly due to the stochasticity in the spread models) and incomplete and delayed data, inference is very challenging. We propose a state-space formalization of the model and a sequential Monte Carlo approach which allow to estimate a daily-varying reproduction number for the Covid-19 epidemic in Norway with sufficient precision, on the basis of daily hospitalization and positive test incidences. The method was in regular use in Norway during the pandemics and appears to be a powerful instrument for epidemic monitoring and management. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
30. Measuring the worldwide spread of COVID-19 using a comprehensive modeling method.
- Author
-
Zhou, Xiang, Ma, Xudong, Gao, Sifa, Ma, Yingying, Gao, Jianwei, Jiang, Huizhen, Zhu, Weiguo, Hong, Na, Long, Yun, and Su, Longxiang
- Subjects
- *
COVID-19 pandemic , *TREND analysis , *PUBLIC administration , *TRENDS - Abstract
Background: With the global spread of COVID-19, detecting high-risk countries/regions timely and dynamically is essential; therefore, we sought to develop automatic, quantitative and scalable analysis methods to observe and estimate COVID-19 spread worldwide and further generate reliable and timely decision-making support for public health management using a comprehensive modeling method based on multiple mathematical models. Methods: We collected global COVID-19 epidemic data reported from January 23 to September 30, 2020, to observe and estimate its possible spread trends. Countries were divided into three outbreak levels: high, middle, and low. Trends analysis was performed by calculating the growth rate, and then country grouping was implemented using group-based trajectory modeling on the three levels. Individual countries from each group were also chosen to further disclose the outbreak situations using two predicting models: the logistic growth model and the SEIR model. Results: All 187 observed countries' trajectory subgroups were identified using two grouping strategies: with and without population consideration. By measuring epidemic trends and predicting the epidemic size and peak of individual countries, our study found that the logistic growth model generally estimated a smaller epidemic size than the SEIR model. According to SEIR modeling, confirmed cases in each country would take an average of 9–12 months to reach the outbreak peak from the day the first case occurred. Additionally, the average number of cases at the peak time will reach approximately 10–20% of the countries' populations, and the countries with high trends and a high predicted size must pay special attention and implement public health interventions in a timely manner. Conclusions: We demonstrated comprehensive observations and predictions of the COVID-19 outbreak in 187 countries using a comprehensive modeling method. The methods proposed in this study can measure COVID-19 development from multiple perspectives and are generalizable to other epidemic diseases. Furthermore, the methods also provide reliable and timely decision-making support for public health management. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
31. A Mathematical Study on a Fractional-Order SEIR Mpox Model: Analysis and Vaccination Influence.
- Author
-
Batiha, Iqbal M., Abubaker, Ahmad A., Jebril, Iqbal H., Al-Shaikh, Suha B., Matarneh, Khaled, and Almuzini, Manal
- Subjects
- *
MONKEYPOX , *EULER method , *VACCINATION , *VACCINE effectiveness , *MEDICAL model - Abstract
This paper establishes a novel fractional-order version of a recently expanded form of the Susceptible-Exposed-Infectious-Recovery (SEIR) Mpox model. This model is investigated by means of demonstrating some significant findings connected with the stability analysis and the vaccination impact, as well. In particular, we analyze the fractional-order Mpox model in terms of its invariant region, boundedness of solution, equilibria, basic reproductive number, and its elasticity. In accordance with an effective vaccine, we study the progression and dynamics of the Mpox disease in compliance with various scenarios of the vaccination ratio through the proposed fractional-order Mpox model. Accordingly, several numerical findings of the proposed model are depicted with the use of two numerical methods; the Fractional Euler Method (FEM) and Modified Fractional Euler Method (MFEM). Such findings demonstrate the influence of the fractional-order values coupled with the vaccination rate on the dynamics of the established disease model. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
32. Balancing health and economic impacts from targeted pandemic restrictions.
- Author
-
Bonaccorsi, Giovanni, Scotti, Francesco, Flori, Andrea, and Pammolli, Fabio
- Subjects
ECONOMIC impact ,COVID-19 pandemic ,PANDEMICS ,VALUE (Economics) ,ECONOMIC activity - Abstract
The COVID-19 pandemic has highlighted the necessity for policymakers to design interventions that allow to promptly resume economic activities while taking control of the healthcare emergency. We analyze the response of differentiated policy measures by exploiting a meta-population SEIR model based on transaction data that map human mobility through daily physical transactions performed by cardholders of a major Italian bank. We calibrate multiple counterfactual scenarios and study the impact of alternative combinations of tailored mobility restrictions with different intensity across sectors. Although the Retail sector accounts for the largest portion of mobility and drive results in terms of infections and consumption dynamics, other economic activities, such as those related to Restaurants, have a relevant role in the design of the optimal policy. Finally, we show how the proposed approach can be used by policymakers to evaluate the trade-off between economic and healthcare impacts by identifying the alternative policy restrictions that minimize either the economic impact given a certain level of infections or the spread of contagion for a target value of economic impact. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
33. Extended Runge-Kutta Scheme and Neural Network Approach for SEIR Epidemic Model with Convex Incidence Rate.
- Author
-
Al Ghafli, Ahmed A., Nawaz, Yasir, Al Salman, Hassan J., and Mansoor, Muavia
- Subjects
LINEAR differential equations ,FINITE difference method ,NONLINEAR differential equations ,EPIDEMICS - Abstract
For solving first-order linear and nonlinear differential equations, a new two-stage implicit–explicit approach is given. The scheme's first stage, or predictor stage, is implicit, while the scheme's second stage is explicit. The first stage of the proposed scheme is an extended form of the existing Runge–Kutta scheme. The scheme's stability and consistency are also offered. In two phases, the technique achieves third-order accuracy. The method is applied to the SEIR epidemic model with a convex incidence rate. The local stability is also examined. The technique is evaluated compared to existing Euler and nonstandard finite difference methods. In terms of accuracy, the produced plots show that the suggested scheme outperforms the existing Euler and nonstandard finite difference methods. Furthermore, a neural network technique is being considered to map the relationship between time and the amount of susceptible, exposed, and infected people. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
34. Spatial epidemiology model can explain the seasonal dynamics of infectious disease Cyprinid herpesvirus 3 (CyHV-3) by thermoregulation behavior of the host, common carp (Cyprinus carpio).
- Author
-
Miki, Takeshi, Yamanaka, Hiroki, Sogabe, Atsushi, Omori, Koji, Saito, Yasuhisa, Minamoto, Toshifumi, Uchii, Kimiko, Honjo, Mie N., Suzuki, Alata A., Kohmatsu, Yukihiro, and Kawabata, Zen'ichiro
- Subjects
CARP ,COMMUNICABLE diseases ,COLD-blooded animals ,HABITAT selection ,BODY temperature regulation ,INFECTIOUS disease transmission ,HERPESVIRUS diseases - Abstract
For ectotherms, habitat temperature is one of the most fundamental factors responsible for disease dynamics. Therefore, temperature-dependent habitat selection of hosts could alter their susceptibility to pathogens. Here, we examined the effect of host behavior in the fluctuating thermal regime on disease dynamics, by a dynamical modeling with field surveys. Cyprinid herpesvirus 3 (CyHV-3) was used as a model disease, which is a mass mortality agent of common carp (Cyprinus carpio). Telemetry analysis revealed that carp shifted their location according to the temporal fluctuations of the thermal regime in the habitat, suggesting a preference for specific temperatures. Numerical simulation using a disease transmission model reproduced the characteristic bimodal seasonal trends of infection rate to CyHV-3. The simulation demonstrated that the temperature preference of individual carp was central in determining whether the temperature-dependent behavior ameliorates or exacerbates disease severity. Moreover, it also demonstrated that increases in the fraction of warmer coastal areas can mitigate the impact of CyHV-3 on the carp population by promoting the acquisition of immunity. Our findings suggest that the prevalence of infectious disease in poikilothermic animals can be regulated by the combined effects of the thermal regime of their habitat and the host's thermally induced behavior. [ABSTRACT FROM AUTHOR]
- Published
- 2023
- Full Text
- View/download PDF
35. Dynamical behavior of fractional order SEIR epidemic model with multiple time delays and its stability analysis
- Author
-
Subrata Paul, Animesh Mahata, Supriya Mukherjee, Prakash Chandra Mali, and Banamali Roy
- Subjects
Seir model ,Stability analysis ,Hopf bifurcation ,Adam-bashforth-moulton predictor-corrector scheme ,Numerical Simulation ,Mathematics ,QA1-939 - Abstract
With multiple time delays, we investigated a Caputo fractional order dynamical system involving susceptible, exposed, infected, and recovered individuals. Positivity and boundedness are also theoretically demonstrated using Laplace transform and Mittag-Leffler function. The stability of the disease-free and epidemic equilibrium points has been studied for both delayed and non-delayed model. For generating numerical solutions to the model system, we used the Adam-Bashforth-Moulton predictor-corrector technique. With the help of MATLAB (2018a), we were able to conduct graphical demonstrations and numerical simulations. The system displays Hopf bifurcation and the solutions are no longer periodic beyond a certain threshold value of the time delay parameters.
- Published
- 2023
- Full Text
- View/download PDF
36. Dynamics of an SEIR model with media coverage mediated nonlinear infectious force
- Author
-
Jingli Xie, Hongli Guo, and Meiyang Zhang
- Subjects
media influence ,seir model ,incubation period ,sensitivity analysis ,stability ,Biotechnology ,TP248.13-248.65 ,Mathematics ,QA1-939 - Abstract
Media coverage can greatly impact the spread of infectious diseases. Taking into consideration the impacts of media coverage, we propose an SEIR model with a media coverage mediated nonlinear infection force. For this novel disease model, we identify the basic reproduction number using the next generation matrix method and establish the global threshold results: If the basic reproduction number $ \mathcal{R}_{0} < 1 $, then the disease-free equilibrium $ P_{0} $ is stable, and the disease dies out. If $ \mathcal{R}_{0} > 1 $, then the endemic equilibrium $ P^{*} $ is stable, and the disease persists. Sensitivity analysis indicates that the basic reproduction number $ \mathcal{R}_{0} $ is most sensitive to the population recruitment rate $ \Lambda $ and the disease transmission rate $ \beta _{1} $.
- Published
- 2023
- Full Text
- View/download PDF
37. The lockdown and vaccination distribution in Thailand's COVID-19 epidemic: A model study
- Author
-
Sittisede Polwiang
- Subjects
COVID-19 ,SEIR model ,Lockdown ,Google community mobility reports ,Vaccination ,Infectious and parasitic diseases ,RC109-216 - Abstract
Background: Several countries used varied degrees of social isolation measures in response to the COVID-19 outbreak. In 2021, the lockdown in Thailand began on July 20 and lasted for the following six weeks. The lockdown has extremely detrimental effects on the economy and society, even though it may reduce the number of COVID-19 instances. Our goals are to assess the impact of the lockdown policy, the commencement time of lockdown, and the vaccination rate on the number of COVID-19 cases in Thailand in 2021. Methods: We modeled the dynamics of COVID-19 in Thailand throughout 2021 using the SEIR model. The Google Mobility Index, vaccine distribution rate, and lockdown were added to the model. The Google Mobility Index represents the movement of individuals during a pandemic and shows how people react to lockdown. The model also examines the effect of vaccination rate on the incidence of COVID-19. Results: The modeling approach demonstrates that a 6-week lockdown decreases the incidence number of COVID-19 by approximately 15.49–18.17%, depending on the timing of the lockdown compared to a non-lockdown scenario. An increasing vaccination rate potentially reduce the incidence number of COVID-19 by 5.12–18.35% without launching a lockdown. Conclusion: Lockdowns can be an effective method to slow down the spread of COVID-19 when the vaccination program is not fully functional. When the vaccines are easily accessible on a large scale, the lockdown may terminated.
- Published
- 2023
- Full Text
- View/download PDF
38. Dynamic Mechanism of Destination Brand Diffusion: Agent-Based Modeling and Simulation
- Author
-
Lihui Deng, Jin Tan, Danyang He, Hong Zhao, and Zongshui Wang
- Subjects
social media ,SEIR model ,hot events ,destination brand diffusion ,simulation ,Systems engineering ,TA168 ,Technology (General) ,T1-995 - Abstract
In recent years, social media has emerged as an important channel for the dissemination of destination branding. Despite the fact that the dissemination of information through social media enables a broader audience to become acquainted with destinations, the dissemination process of trending events exhibits variances. Consequently, the precise impact of the underlying mechanisms that govern the spread of information on the efficacy of disseminating destination brand trending events remains ambiguous. In an endeavor to bridge this gap, an improved SEIR model was developed in this research to investigate the dynamic dissemination mechanisms and influencing factors of destination trending events within social media. The model was applied to simulate the diffusion mechanism of destinations’ trending events. The results show that during the dissemination process of destination trending events on social media, the proportion of users affected at different stages influences the ultimate effectiveness of information propagation. In light of these insights, this research proposes a social media trending event dissemination strategy to aid in enhancing the propagation efficiency of destination brands through existing resources.
- Published
- 2024
- Full Text
- View/download PDF
39. An Agent-Based Model for Disease Epidemics in Greece
- Author
-
Vasileios Thomopoulos and Kostas Tsichlas
- Subjects
agent-based modeling ,COVID-19 ,SEIR model ,synthetic population ,disease dynamics ,Information technology ,T58.5-58.64 - Abstract
In this research, we present the first steps toward developing a data-driven agent-based model (ABM) specifically designed for simulating infectious disease dynamics in Greece. Amidst the ongoing COVID-19 pandemic caused by SARS-CoV-2, this research holds significant importance as it can offer valuable insights into disease transmission patterns and assist in devising effective intervention strategies. To the best of our knowledge, no similar study has been conducted in Greece. We constructed a prototype ABM that utilizes publicly accessible data to accurately represent the complex interactions and dynamics of disease spread in the Greek population. By incorporating demographic information and behavioral patterns, our model captures the specific characteristics of Greece, enabling accurate and context-specific simulations. By using our proposed ABM, we aim to assist policymakers in making informed decisions regarding disease control and prevention. Through the use of simulations, policymakers have the opportunity to explore different scenarios and predict the possible results of various intervention measures. These may include strategies like testing approaches, contact tracing, vaccination campaigns, and social distancing measures. Through these simulations, policymakers can assess the effectiveness and feasibility of these interventions, leading to the development of well-informed strategies aimed at reducing the impact of infectious diseases on the Greek population. This study is an initial exploration toward understanding disease transmission patterns and a first step towards formulating effective intervention strategies for Greece.
- Published
- 2024
- Full Text
- View/download PDF
40. Towards Security Enhancement for NFV-Based IoT Networks Using Machine Learning
- Author
-
Gite, Sandeep N., Kasar, Smita L., Chan, Albert P. C., Series Editor, Hong, Wei-Chiang, Series Editor, Mellal, Mohamed Arezki, Series Editor, Narayanan, Ramadas, Series Editor, Nguyen, Quang Ngoc, Series Editor, Ong, Hwai Chyuan, Series Editor, Sachsenmeier, Peter, Series Editor, Sun, Zaicheng, Series Editor, Ullah, Sharif, Series Editor, Wu, Junwei, Series Editor, Zhang, Wei, Series Editor, Raj, Bhiksha, editor, Gill, Steve, editor, Calderon, Carlos A.Gonzalez, editor, Cihan, Onur, editor, Tukkaraja, Purushotham, editor, Venkatesh, Sriram, editor, M. S., Venkataramayya, editor, Mudigonda, Malini, editor, Gaddam, Mallesham, editor, and Dasari, Rama Krishna, editor
- Published
- 2023
- Full Text
- View/download PDF
41. The Scenario of COVID-19 Pandemic in Brazil Using SEIR Epidemic Model
- Author
-
Paul, Subrata, Acharya, Ashish, Biswas, Manajat Ali, Mahata, Animesh, Mukherjee, Supriya, Mali, Prakash Chandra, Roy, Banamali, Kacprzyk, Janusz, Series Editor, Pal, Nikhil R., Advisory Editor, Bello Perez, Rafael, Advisory Editor, Corchado, Emilio S., Advisory Editor, Hagras, Hani, Advisory Editor, Kóczy, László T., Advisory Editor, Kreinovich, Vladik, Advisory Editor, Lin, Chin-Teng, Advisory Editor, Lu, Jie, Advisory Editor, Melin, Patricia, Advisory Editor, Nedjah, Nadia, Advisory Editor, Nguyen, Ngoc Thanh, Advisory Editor, Wang, Jun, Advisory Editor, Peng, Sheng-Lung, editor, Jhanjhi, Noor Zaman, editor, Pal, Souvik, editor, and Amsaad, Fathi, editor
- Published
- 2023
- Full Text
- View/download PDF
42. Assessment of the Impact of COVID-19 Infections Considering Risk of Infected People Inflow to the Region
- Author
-
Kurahashi, Setsuya, Goos, Gerhard, Founding Editor, Hartmanis, Juris, Founding Editor, Bertino, Elisa, Editorial Board Member, Gao, Wen, Editorial Board Member, Steffen, Bernhard, Editorial Board Member, Yung, Moti, Editorial Board Member, Yada, Katsutoshi, editor, Takama, Yasufumi, editor, Mineshima, Koji, editor, and Satoh, Ken, editor
- Published
- 2023
- Full Text
- View/download PDF
43. Numerical Simulation of Covid-19 Mathematical Modelling with Optimal Control in Indonesia
- Author
-
Ilmayasinta, Nur, Asmianto, Chan, Albert P. C., Series Editor, Hong, Wei-Chiang, Series Editor, Mellal, Mohamed Arezki, Series Editor, Narayanan, Ramadas, Series Editor, Nguyen, Quang Ngoc, Series Editor, Ong, Hwai Chyuan, Series Editor, Sachsenmeier, Peter, Series Editor, Sun, Zaicheng, Series Editor, Ullah, Sharif, Series Editor, Wu, Junwei, Series Editor, Zhang, Wei, Series Editor, Susanti, Elly, editor, Juhari, Juhari, editor, and Jauhari, Mohammad Nafie, editor
- Published
- 2023
- Full Text
- View/download PDF
44. A Time-Dependent Mathematical Model for COVID-19 Transmission Dynamics and Analysis of Critical and Hospitalized Cases with Bed Requirements
- Author
-
Singh, Avaneesh, Bajpai, Manish Kumar, Gupta, Shyam Lal, Angrisani, Leopoldo, Series Editor, Arteaga, Marco, Series Editor, Panigrahi, Bijaya Ketan, Series Editor, Chakraborty, Samarjit, Series Editor, Chen, Jiming, Series Editor, Chen, Shanben, Series Editor, Chen, Tan Kay, Series Editor, Dillmann, Rüdiger, Series Editor, Duan, Haibin, Series Editor, Ferrari, Gianluigi, Series Editor, Ferre, Manuel, Series Editor, Hirche, Sandra, Series Editor, Jabbari, Faryar, Series Editor, Jia, Limin, Series Editor, Kacprzyk, Janusz, Series Editor, Khamis, Alaa, Series Editor, Kroeger, Torsten, Series Editor, Li, Yong, Series Editor, Liang, Qilian, Series Editor, Martín, Ferran, Series Editor, Ming, Tan Cher, Series Editor, Minker, Wolfgang, Series Editor, Misra, Pradeep, Series Editor, Möller, Sebastian, Series Editor, Mukhopadhyay, Subhas, Series Editor, Ning, Cun-Zheng, Series Editor, Nishida, Toyoaki, Series Editor, Oneto, Luca, Series Editor, Pascucci, Federica, Series Editor, Qin, Yong, Series Editor, Seng, Gan Woon, Series Editor, Speidel, Joachim, Series Editor, Veiga, Germano, Series Editor, Wu, Haitao, Series Editor, Zamboni, Walter, Series Editor, Zhang, Junjie James, Series Editor, Kumar Singh, Koushlendra, editor, Bajpai, Manish Kumar, editor, and Sheikh Akbari, Akbar, editor
- Published
- 2023
- Full Text
- View/download PDF
45. Mathematical Study on Corona-Virus (COVID-19) Disease Transmission and Its Stability Through SEIR Epidemic Model
- Author
-
Das, Krishna Pada, Pramanik, Sanjukta, Karmakar, Partha, Mondal, Seema Sarkar, Kacprzyk, Janusz, Series Editor, Gomide, Fernando, Advisory Editor, Kaynak, Okyay, Advisory Editor, Liu, Derong, Advisory Editor, Pedrycz, Witold, Advisory Editor, Polycarpou, Marios M., Advisory Editor, Rudas, Imre J., Advisory Editor, Wang, Jun, Advisory Editor, Singh, Jagdev, editor, Anastassiou, George A., editor, Baleanu, Dumitru, editor, and Kumar, Devendra, editor
- Published
- 2023
- Full Text
- View/download PDF
46. Modeling for Implications of COVID-19 Pandemic on Healthcare System in India
- Author
-
Sasikumar, R., Arriyamuthu, P., Sharma, Rajesh Kumar, editor, Pareschi, Lorenzo, editor, Atangana, Abdon, editor, Sahoo, Bikash, editor, and Kukreja, Vijay Kumar, editor
- Published
- 2023
- Full Text
- View/download PDF
47. Inter-firm knowledge dissemination model that considers knowledge innovation and the willingness to disseminate knowledge
- Author
-
Lian, Zhuoyi, Li, Kan, Editor-in-Chief, Li, Qingyong, Associate Editor, Fournier-Viger, Philippe, Series Editor, Hong, Wei-Chiang, Series Editor, Liang, Xun, Series Editor, Wang, Long, Series Editor, Xu, Xuesong, Series Editor, Khan, Syed Abdul Rehman, editor, Jhanjhi, Noor Zaman, editor, and Li, Hongbo, editor
- Published
- 2023
- Full Text
- View/download PDF
48. Propagation Analysis of Internet Opinion Based on Improved SEIR Model
- Author
-
Chu, Yongjie, Liu, Cengceng, Zhu, Yuan, Li, Kan, Editor-in-Chief, Li, Qingyong, Associate Editor, Fournier-Viger, Philippe, Series Editor, Hong, Wei-Chiang, Series Editor, Liang, Xun, Series Editor, Wang, Long, Series Editor, Xu, Xuesong, Series Editor, Fox, Bob, editor, Zhao, Chuan, editor, and Anthony, Marcus T., editor
- Published
- 2023
- Full Text
- View/download PDF
49. Prediction of Epidemic Disease Model and Analysis of Prevention and Control Countermeasures of COVID-19
- Author
-
Du, Moyun, Fournier-Viger, Philippe, Series Editor, Vilas Bhau, Gaikar, editor, Shvets, Yuriy, editor, and Mallick, Hrushikesh, editor
- Published
- 2023
- Full Text
- View/download PDF
50. Solving SEIR Model Using Symmetrized Runge Kutta Methods
- Author
-
Bakar, Siti Solehah, Razali, Noorhelyna, Fournier-Viger, Philippe, Series Editor, Wahi, Nadihah, editor, Mohd Safari, Muhammad Aslam, editor, Hasni, Roslan, editor, Abdul Razak, Fatimah, editor, Gafurjan, Ibragimov, editor, and Fitrianto, Anwar, editor
- Published
- 2023
- Full Text
- View/download PDF
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.