temporal spread
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2022 ◽  
Vol 12 (1) ◽  
Author(s):  
Dimitrios Tsiotas ◽  
Vassilis Tselios

AbstractThe worldwide spread of the COVID-19 pandemic is a complex and multivariate process differentiated across countries, and geographical distance is acceptable as a critical determinant of the uneven spreading. Although social connectivity is a defining condition for virus transmission, the network paradigm in the study of the COVID-19 spatio-temporal spread has not been used accordingly. Toward contributing to this demand, this paper uses network analysis to develop a multidimensional methodological framework for understanding the uneven (cross-country) spread of COVID-19 in the context of the globally interconnected economy. The globally interconnected system of tourism mobility is modeled as a complex network and studied within the context of a three-dimensional (3D) conceptual model composed of network connectivity, economic openness, and spatial impedance variables. The analysis reveals two main stages in the temporal spread of COVID-19, defined by the cutting-point of the 44th day from Wuhan. The first describes the outbreak in Asia and North America, the second stage in Europe, South America, and Africa, while the outbreak in Oceania intermediates. The analysis also illustrates that the average node degree exponentially decays as a function of COVID-19 emergence time. This finding implies that the highly connected nodes, in the Global Tourism Network (GTN), are disproportionally earlier infected by the pandemic than the other nodes. Moreover, countries with the same network centrality as China are early infected on average by COVID-19. The paper also finds that network interconnectedness, economic openness, and transport integration are critical determinants in the early global spread of the pandemic, and it reveals that the spatio-temporal patterns of the worldwide spreading of COVID-19 are more a matter of network interconnectivity than of spatial proximity.


Acta Tropica ◽  
2022 ◽  
pp. 106302
Author(s):  
Francisco Alyson Silva Oliveira ◽  
Rivanni Jeniffer Souza Castro ◽  
Juliana Ferreira de Oliveira ◽  
Flávia Melo Barreto ◽  
Márcia Paula Oliveira Farias ◽  
...  
Keyword(s):  

2021 ◽  
Vol 21 (5) ◽  
pp. 99-106
Author(s):  
Chan Wook Lee ◽  
Gihoon Moon ◽  
Sungjin Hong ◽  
Do Guen Yoo

In South Korea, drought disasters frequently occur due to the narrow area of the river basin and the concentration of rainfall in summer. In addition, climate change caused extreme droughts in 2015, levels that had never been experienced before. Thus, more severe droughts are expected in the future. To date, however, no countermeasures, such as preliminary warning standards for severe drought, have been prepared. In this study, we analyzed the degree of spatio-temporal spread of mega-drought entry situations and prepared the criteria for warnings based on the results. The results of the study can be used as basic data to prepare standards for responding to possible extreme droughts in the future.


Mathematics ◽  
2021 ◽  
Vol 9 (19) ◽  
pp. 2454
Author(s):  
Nicoletta D’Angelo ◽  
Antonino Abbruzzo ◽  
Giada Adelfio

This paper investigates the spatio-temporal spread pattern of COVID-19 in Italy, during the first wave of infections, from February to October 2020. Disease mappings of the virus infections by using the Besag–York–Mollié model and some spatio-temporal extensions are provided. This modeling framework, which includes a temporal component, allows the studying of the time evolution of the spread pattern among the 107 Italian provinces. The focus is on the effect of citizens’ mobility patterns, represented here by the three distinct phases of the Italian virus first wave, identified by the Italian government, also characterized by the lockdown period. Results show the effectiveness of the lockdown action and an inhomogeneous spatial trend that characterizes the virus spread during the first wave. Furthermore, the results suggest that the temporal evolution of each province’s cases is independent of the temporal evolution of the other ones, meaning that the contagions and temporal trend may be caused by some province-specific aspects rather than by the subjects’ spatial movements.


Author(s):  
Jonas Michel Wolf ◽  
Diéssy Kipper ◽  
Gabriela Ribeiro Borges ◽  
André Felipe Streck ◽  
Vagner Ricardo Lunge

2021 ◽  
Vol 9 ◽  
Author(s):  
Nils Chr. Stenseth ◽  
Guha Dharmarajan ◽  
Ruiyun Li ◽  
Zheng-Li Shi ◽  
Ruifu Yang ◽  
...  

The COVID-19 pandemic, caused by the novel coronavirus SARS-CoV-2, has been characterized by unprecedented rates of spatio-temporal spread. Here, we summarize the main events in the pandemic's timeline and evaluate what has been learnt by the public health community. We also discuss the implications for future public health policy and, specifically, the practice of epidemic control. We critically analyze this ongoing pandemic's timeline and contrast it with the 2002–2003 SARS outbreak. We identify specific areas (e.g., pathogen identification and initial reporting) wherein the international community learnt valuable lessons from the SARS outbreak. However, we also identify the key areas where international public health policy failed leading to the exponential spread of the pandemic. We outline a clear agenda for improved pandemic control in the future.


Author(s):  
Malú Grave ◽  
Alex Viguerie ◽  
Gabriel F. Barros ◽  
Alessandro Reali ◽  
Alvaro L. G. A. Coutinho

AbstractThe outbreak of COVID-19 in 2020 has led to a surge in interest in the mathematical modeling of infectious diseases. Such models are usually defined as compartmental models, in which the population under study is divided into compartments based on qualitative characteristics, with different assumptions about the nature and rate of transfer across compartments. Though most commonly formulated as ordinary differential equation models, in which the compartments depend only on time, recent works have also focused on partial differential equation (PDE) models, incorporating the variation of an epidemic in space. Such research on PDE models within a Susceptible, Infected, Exposed, Recovered, and Deceased framework has led to promising results in reproducing COVID-19 contagion dynamics. In this paper, we assess the robustness of this modeling framework by considering different geometries over more extended periods than in other similar studies. We first validate our code by reproducing previously shown results for Lombardy, Italy. We then focus on the U.S. state of Georgia and on the Brazilian state of Rio de Janeiro, one of the most impacted areas in the world. Our results show good agreement with real-world epidemiological data in both time and space for all regions across major areas and across three different continents, suggesting that the modeling approach is both valid and robust.


2021 ◽  
Vol 17 (7) ◽  
pp. e1009090
Author(s):  
Andrea Parisi ◽  
Samuel P. C. Brand ◽  
Joe Hilton ◽  
Rabia Aziza ◽  
Matt J. Keeling ◽  
...  

We explore the spatial and temporal spread of the novel SARS-CoV-2 virus under containment measures in three European countries based on fits to data of the early outbreak. Using data from Spain and Italy, we estimate an age dependent infection fatality ratio for SARS-CoV-2, as well as risks of hospitalization and intensive care admission. We use them in a model that simulates the dynamics of the virus using an age structured, spatially detailed agent based approach, that explicitly incorporates governmental interventions and changes in mobility and contact patterns occurred during the COVID-19 outbreak in each country. Our simulations reproduce several of the features of its spatio-temporal spread in the three countries studied. They show that containment measures combined with high density are responsible for the containment of cases within densely populated areas, and that spread to less densely populated areas occurred during the late stages of the first wave. The capability to reproduce observed features of the spatio-temporal dynamics of SARS-CoV-2 makes this model a potential candidate for forecasting the dynamics of SARS-CoV-2 in other settings, and we recommend its application in low and lower-middle income countries which remain understudied.


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