Spatial and Spatiotemporal Analysis of Infectious Diseases

A special issue of Tropical Medicine and Infectious Disease (ISSN 2414-6366). This special issue belongs to the section "Infectious Diseases".

Deadline for manuscript submissions: closed (28 August 2023) | Viewed by 17364

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UQ Centre for Clinical Research (UQCCR), Faculty of Medicine, The University of Queensland, Brisbane 4006, Australia
Interests: medical (health) geography; medical informatics; spatial epidemiology; public health; digital health
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Department of Public Health and Prevention Sciences, School of Health Sciences, Baldwin Wallace University, Berea, OH 44017, USA
Interests: machine learning in public health; spatial statistics; geographic information systems
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Special Issue Information

Dear Colleagues,

Spatial epidemiology is an interdisciplinary field that incorporates geospatial components in addressing public health problems. Due to the dynamic nature of infectious diseases, the analysis requires a spatio-temporal approach to monitor, manage, and control the diseases. The integration of spatio-temporal, machine learning, and spatial statistics makes it possible to track infectious disease risk and occurrence associated with environmental factors, urban health, and social sciences. Thus, we are delighted to announce our Special Issue, is accepting submissions in the following areas:

  • Spatiotemporal analysis of any kinds of infectious diseases across the world;
  • Machine learning approaches to investigate the geographical pattern of infectious diseases;
  • The effects of climate change on re-emerging infectious diseases;
  • The effects of urban environment on transmission of infectious diseases;
  • The effects of immigration on infectious disease transmission;
  • Interdisciplinary collaboration: connectivity, cross-linkage of public health, urban health, social science and infectious diseases.

Dr. Behzad Kiani
Dr. Abolfazl Mollalo
Guest Editors

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Keywords

  • infectious diseases
  • spatiotemporal analysis 
  • health/medical geography
  • spatial statistics
  • machine learning

Published Papers (9 papers)

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13 pages, 3642 KiB  
Article
Cluster Analysis of Factors Associated with Leishmaniasis in Peru
by Irma Luz Yupari-Azabache, Jorge Luis Díaz-Ortega, Lucía Beatriz Bardales-Aguirre, Shamir Barros-Sevillano and Susana Edita Paredes-Díaz
Trop. Med. Infect. Dis. 2023, 8(11), 484; https://doi.org/10.3390/tropicalmed8110484 - 26 Oct 2023
Viewed by 1545
Abstract
Objective: To analyze the factors associated with leishmaniasis in Peru, according to the cluster classification in the period 2017–2021. Methods: Quantitative approach, with an ecological, descriptive correlational, and cross-sectional design. The population was from the geographical region of Peru, where a total of [...] Read more.
Objective: To analyze the factors associated with leishmaniasis in Peru, according to the cluster classification in the period 2017–2021. Methods: Quantitative approach, with an ecological, descriptive correlational, and cross-sectional design. The population was from the geographical region of Peru, where a total of 26,956 cases of leishmaniasis were registered by the Peruvian Ministry of Health from 2017 to 2021. Spearman’s Rho statistic was used to analyze the variables that are most associated with the cases of leishmaniasis reported per year, and, in addition, the multivariate technique of cluster analysis was applied. Results: Annual rainfall and areas with humid forest (climatic factors) and mortality from transmissible diseases (health factor) are directly associated with reported cases of leishmaniasis. Households with basic access to infrastructure, drinking water, drainage, and electric lighting; illiteracy, regional social progress, and unsatisfied basic needs (social factors); and percentage of urban population (demographic factor) are inversely and significantly associated with cases of leishmaniasis. Conclusions: Climatic and environmental factors contribute to the multiplication of the leishmaniasis disease vector. The incidence of leishmaniasis adds up to the mortality rates for transmissible diseases in Peru. As living conditions improve, the incidence of this pathology decreases. Full article
(This article belongs to the Special Issue Spatial and Spatiotemporal Analysis of Infectious Diseases)
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11 pages, 2747 KiB  
Article
Bridging the Gaps: Investigating the Complex Impact of the COVID-19 Pandemic on Tuberculosis Records in Brazil
by Carlos Dornels Freire de Souza, Epaminondas Ribeiro Dias Neto, Thais Silva Matos, Ana Carolina Furtado Ferreira, Márcio Bezerra-Santos, Adeilton Gonçalves da Silva Junior and Rodrigo Feliciano do Carmo
Trop. Med. Infect. Dis. 2023, 8(9), 454; https://doi.org/10.3390/tropicalmed8090454 - 20 Sep 2023
Viewed by 1240
Abstract
Background: This study aimed to analyze the temporal evolution, spatial distribution, and impact of the COVID-19 pandemic on tuberculosis records in a northeastern state of Brazil. Methods: This is an ecological study involving all diagnoses of Tuberculosis (TB) in residents of the state [...] Read more.
Background: This study aimed to analyze the temporal evolution, spatial distribution, and impact of the COVID-19 pandemic on tuberculosis records in a northeastern state of Brazil. Methods: This is an ecological study involving all diagnoses of Tuberculosis (TB) in residents of the state of Pernambuco/Brazil. Data were extracted from the National System of Notifiable Diseases. A pre-pandemic COVID-19 temporal analysis (2001–2019), a spatial analysis before (2015–2019) and during the first two pandemic years (2020–2021), and the impact of the COVID-19 pandemic on cases of TB diagnoses in Pernambuco in the years 2020 and 2021 were performed. Inflection point regression models, Global and Local Moran’s statistics, and spatial scan statistics were used. Results: In the period from 2001 to 2019, 91,225 cases of TB were registered in Pernambuco (48.40/100,000 inhabitants), with a tendency of growth starting in 2007 (0.7% per year; p = 0.005). In the pre-pandemic period (2015–2019), 10.8% (n = 20) of Pernambuco municipalities had TB incidence rates below 10/100,000. In 2020, this percentage reached 27.0% (n = 50) and in 2021 it was 17.8% (n = 33). Risk clusters were identified in the eastern region of the state, with five clusters in the pre-pandemic period and in 2021 and six in 2020. In the first year of the pandemic, an 8.5% reduction in the number of new TB cases was observed. In 2021, the state showed a slight increase (1.1%) in the number of new TB cases. Conclusions: The data indicate that the COVID-19 pandemic may have caused a reduction in the number of new TB case reports in the state of Pernambuco, Brazil. Full article
(This article belongs to the Special Issue Spatial and Spatiotemporal Analysis of Infectious Diseases)
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14 pages, 3017 KiB  
Article
Spatiotemporal Distribution of Tuberculosis in the Oromia Region of Ethiopia: A Hotspot Analysis
by Dereje Bekele, Solomon Aragie, Kefyalew Addis Alene, Tariku Dejene, Samson Warkaye, Melat Mezemir, Dereje Abdena, Tesfaye Kebebew, Abera Botore, Geremew Mekonen, Gadissa Gutema, Boja Dufera, Kolato Gemede, Birhanu Kenate, Dabesa Gobena, Bizuneh Alemu, Dagnachew Hailemariam, Daba Muleta, Gilman Kit Hang Siu and Ketema Tafess
Trop. Med. Infect. Dis. 2023, 8(9), 437; https://doi.org/10.3390/tropicalmed8090437 - 07 Sep 2023
Viewed by 3054
Abstract
Tuberculosis (TB) is a major public health concern in low- and middle-income countries including Ethiopia. This study aimed to assess the spatiotemporal distribution of TB and identify TB risk factors in Ethiopia’s Oromia region. Descriptive and spatiotemporal analyses were conducted. Bayesian spatiotemporal modeling [...] Read more.
Tuberculosis (TB) is a major public health concern in low- and middle-income countries including Ethiopia. This study aimed to assess the spatiotemporal distribution of TB and identify TB risk factors in Ethiopia’s Oromia region. Descriptive and spatiotemporal analyses were conducted. Bayesian spatiotemporal modeling was used to identify covariates that accounted for variability in TB and its spatiotemporal distribution. A total of 206,278 new pulmonary TB cases were reported in the Oromia region between 2018 and 2022, with the lowest annual TB case notification (96.93 per 100,000 population) reported in 2020 (i.e., during the COVID-19 pandemic) and the highest TB case notification (106.19 per 100,000 population) reported in 2019. Substantial spatiotemporal variations in the distribution of notified TB case notifications were observed at zonal and district levels with most of the hotspot areas detected in the northern and southern parts of the region. The spatiotemporal distribution of notified TB incidence was positively associated with different ecological variables including temperature (β = 0.142; 95% credible interval (CrI): 0.070, 0.215), wind speed (β = −0.140; 95% CrI: −0.212, −0.068), health service coverage (β = 0.426; 95% CrI: 0.347, 0.505), and population density (β = 0.491; 95% CrI: 0.390, 0.594). The findings of this study indicated that preventive measures considering socio-demographic and health system factors can be targeted to high-risk areas for effective control of TB in the Oromia region. Further studies are needed to develop effective strategies for reducing the burden of TB in hotspot areas. Full article
(This article belongs to the Special Issue Spatial and Spatiotemporal Analysis of Infectious Diseases)
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12 pages, 3889 KiB  
Article
Spatiotemporal Patterns of the Omicron Wave of COVID-19 in the United States
by Siyuan Zhang, Liran Liu, Qingxiang Meng, Yixuan Zhang, He Yang and Gang Xu
Trop. Med. Infect. Dis. 2023, 8(7), 349; https://doi.org/10.3390/tropicalmed8070349 - 30 Jun 2023
Cited by 1 | Viewed by 1113
Abstract
COVID-19 has undergone multiple mutations, with the Omicron variant proving to be highly contagious and rapidly spreading across many countries. The United States was severely hit by the Omicron variant. However, it was still unclear how Omicron transferred across the United States. Here, [...] Read more.
COVID-19 has undergone multiple mutations, with the Omicron variant proving to be highly contagious and rapidly spreading across many countries. The United States was severely hit by the Omicron variant. However, it was still unclear how Omicron transferred across the United States. Here, we collected daily COVID-19 cases and deaths in each county from 1 December 2021 to 28 February 2022 as the Omicron wave. We adopted space-time scan statistics, the Hoover index, and trajectories of the epicenter to quantify spatiotemporal patterns of the Omicron wave of COVID-19. The results showed that the highest and earliest cluster was located in the Northeast. The Hoover index for both cases and deaths exhibited phases of rapid decline, slow decline, and relative stability, indicating a rapid spread of the Omicron wave across the country. The Hoover index for deaths was consistently higher than that for cases. The epicenter of cases and deaths shifted from the west to the east, then southwest. Nevertheless, cases were more widespread than deaths, with a lag in mortality data. This study uncovers the spatiotemporal patterns of Omicron transmission in the United States, and its underlying mechanisms deserve further exploration. Full article
(This article belongs to the Special Issue Spatial and Spatiotemporal Analysis of Infectious Diseases)
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29 pages, 13496 KiB  
Article
Bias-Corrected CMIP5 Projections for Climate Change and Assessments of Impact on Malaria in Senegal under the VECTRI Model
by Papa Fall, Ibrahima Diouf, Abdoulaye Deme, Semou Diouf, Doudou Sene, Benjamin Sultan, Adjoua Moïse Famien and Serge Janicot
Trop. Med. Infect. Dis. 2023, 8(6), 310; https://doi.org/10.3390/tropicalmed8060310 - 06 Jun 2023
Cited by 2 | Viewed by 2095
Abstract
On the climate-health issue, studies have already attempted to understand the influence of climate change on the transmission of malaria. Extreme weather events such as floods, droughts, or heat waves can alter the course and distribution of malaria. This study aims to understand [...] Read more.
On the climate-health issue, studies have already attempted to understand the influence of climate change on the transmission of malaria. Extreme weather events such as floods, droughts, or heat waves can alter the course and distribution of malaria. This study aims to understand the impact of future climate change on malaria transmission using, for the first time in Senegal, the ICTP’s community-based vector-borne disease model, TRIeste (VECTRI). This biological model is a dynamic mathematical model for the study of malaria transmission that considers the impact of climate and population variability. A new approach for VECTRI input parameters was also used. A bias correction technique, the cumulative distribution function transform (CDF-t) method, was applied to climate simulations to remove systematic biases in the Coupled Model Intercomparison Project Phase 5 (CMIP5) global climate models (GCMs) that could alter impact predictions. Beforehand, we use reference data for validation such as CPC global unified gauge-based analysis of daily precipitation (CPC for Climate Prediction Center), ERA5-land reanalysis, Climate Hazards InfraRed Precipitation with Station data (CHIRPS), and African Rainfall Climatology 2.0 (ARC2). The results were analyzed for two CMIP5 scenarios for the different time periods: assessment: 1983–2005; near future: 2006–2028; medium term: 2030–2052; and far future: 2077–2099). The validation results show that the models reproduce the annual cycle well. Except for the IPSL-CM5B model, which gives a peak in August, all the other models (ACCESS1–3, CanESM2, CSIRO, CMCC-CM, CMCC-CMS, CNRM-CM5, GFDL-CM3, GFDL-ESM2G, GFDL-ESM2M, inmcm4, and IPSL-CM5B) agree with the validation data on a maximum peak in September with a period of strong transmission in August–October. With spatial variation, the CMIP5 model simulations show more of a difference in the number of malaria cases between the south and the north. Malaria transmission is much higher in the south than in the north. However, the results predicted by the models on the occurrence of malaria by 2100 show differences between the RCP8.5 scenario, considered a high emission scenario, and the RCP4.5 scenario, considered an intermediate mitigation scenario. The CanESM2, CMCC-CM, CMCC-CMS, inmcm4, and IPSL-CM5B models predict decreases with the RCP4.5 scenario. However, ACCESS1–3, CSIRO, NRCM-CM5, GFDL-CM3, GFDL-ESM2G, and GFDL-ESM2M predict increases in malaria under all scenarios (RCP4.5 and RCP8.5). The projected decrease in malaria in the future with these models is much more visible in the RCP8.5 scenario. The results of this study are of paramount importance in the climate-health field. These results will assist in decision-making and will allow for the establishment of preventive surveillance systems for local climate-sensitive diseases, including malaria, in the targeted regions of Senegal. Full article
(This article belongs to the Special Issue Spatial and Spatiotemporal Analysis of Infectious Diseases)
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15 pages, 6824 KiB  
Article
Spatial Autocorrelation of COVID-19 in Slovakia
by Katarína Vilinová and Lucia Petrikovičová
Trop. Med. Infect. Dis. 2023, 8(6), 298; https://doi.org/10.3390/tropicalmed8060298 - 30 May 2023
Cited by 2 | Viewed by 1433
Abstract
The pandemic situation of COVID-19, which affected almost the entire civilized world with its consequences, offered a unique opportunity for analysis of geographical space. In a relatively short period of time, the COVID-19 pandemic became a truly global event with consequences affecting all [...] Read more.
The pandemic situation of COVID-19, which affected almost the entire civilized world with its consequences, offered a unique opportunity for analysis of geographical space. In a relatively short period of time, the COVID-19 pandemic became a truly global event with consequences affecting all areas of life. Circumstances with COVID-19, which affected the territory of Slovakia and its regions, represent a sufficient premise for analysis three years after the registration of the first case in Slovakia. The study presents the results of a detailed spatiotemporal analysis of the course of registered cases of COVID-19 in six periods in Slovakia. The aim of the paper was to analyze the development of the number of people infected with the disease COVID-19 in Slovakia. At the level of the districts of Slovakia, using spatial autocorrelation, we identified spatial differences in the disease of COVID-19. Moran’s global autocorrelation index and Moran’s local index were used in the synthesis of knowledge. Spatial analysis of data on the number of infected in the form of spatial autocorrelation analysis was used as a practical sustainable approach to localizing statistically significant areas with high and low positivity. This manifested itself in the monitored area mainly in the form of positive spatial autocorrelation. The selection of data and methods used in this study together with the achieved and presented results can serve as a suitable tool to support decisions in further measures for the future. Full article
(This article belongs to the Special Issue Spatial and Spatiotemporal Analysis of Infectious Diseases)
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12 pages, 6829 KiB  
Article
Modeling the Climatic Suitability of COVID-19 Cases in Brazil
by Jéssica Milena Moura Neves, Vinicius Silva Belo, Cristina Maria Souza Catita, Beatriz Fátima Alves de Oliveira and Marco Aurelio Pereira Horta
Trop. Med. Infect. Dis. 2023, 8(4), 198; https://doi.org/10.3390/tropicalmed8040198 - 29 Mar 2023
Viewed by 1389
Abstract
Studies have shown that climate may affect the distribution of coronavirus disease (COVID-19) and its incidence and fatality rates. Here, we applied an ensemble niche modeling approach to project the climatic suitability of COVID-19 cases in Brazil. We estimated the cumulative incidence, mortality [...] Read more.
Studies have shown that climate may affect the distribution of coronavirus disease (COVID-19) and its incidence and fatality rates. Here, we applied an ensemble niche modeling approach to project the climatic suitability of COVID-19 cases in Brazil. We estimated the cumulative incidence, mortality rate, and fatality rate of COVID-19 between 2020 and 2021. Seven statistical algorithms (MAXENT, MARS, RF, FDA, CTA, GAM, and GLM) were selected to model the climate suitability for COVID-19 cases from diverse climate data, including temperature, precipitation, and humidity. The annual temperature range and precipitation seasonality showed a relatively high contribution to the models, partially explaining the distribution of COVID-19 cases in Brazil based on the climatic suitability of the territory. We observed a high probability of climatic suitability for high incidence in the North and South regions and a high probability of mortality and fatality rates in the Midwest and Southeast regions. Despite the social, viral, and human aspects regulating COVID-19 cases and death distribution, we suggest that climate may play an important role as a co-factor in the spread of cases. In Brazil, there are regions with a high probability that climatic suitability will contribute to the high incidence and fatality rates of COVID-19 in 2020 and 2021. Full article
(This article belongs to the Special Issue Spatial and Spatiotemporal Analysis of Infectious Diseases)
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29 pages, 12168 KiB  
Article
The COVID-19 Mortality Rate Is Associated with Illiteracy, Age, and Air Pollution in Urban Neighborhoods: A Spatiotemporal Cross-Sectional Analysis
by Alireza Mohammadi, Elahe Pishgar, Munazza Fatima, Aynaz Lotfata, Zohreh Fanni, Robert Bergquist and Behzad Kiani
Trop. Med. Infect. Dis. 2023, 8(2), 85; https://doi.org/10.3390/tropicalmed8020085 - 26 Jan 2023
Cited by 5 | Viewed by 2270
Abstract
There are different area-based factors affecting the COVID-19 mortality rate in urban areas. This research aims to examine COVID-19 mortality rates and their geographical association with various socioeconomic and ecological determinants in 350 of Tehran’s neighborhoods as a big city. All deaths related [...] Read more.
There are different area-based factors affecting the COVID-19 mortality rate in urban areas. This research aims to examine COVID-19 mortality rates and their geographical association with various socioeconomic and ecological determinants in 350 of Tehran’s neighborhoods as a big city. All deaths related to COVID-19 are included from December 2019 to July 2021. Spatial techniques, such as Kulldorff’s SatScan, geographically weighted regression (GWR), and multi-scale GWR (MGWR), were used to investigate the spatially varying correlations between COVID-19 mortality rates and predictors, including air pollutant factors, socioeconomic status, built environment factors, and public transportation infrastructure. The city’s downtown and northern areas were found to be significantly clustered in terms of spatial and temporal high-risk areas for COVID-19 mortality. The MGWR regression model outperformed the OLS and GWR regression models with an adjusted R2 of 0.67. Furthermore, the mortality rate was found to be associated with air quality (e.g., NO2, PM10, and O3); as air pollution increased, so did mortality. Additionally, the aging and illiteracy rates of urban neighborhoods were positively associated with COVID-19 mortality rates. Our approach in this study could be implemented to study potential associations of area-based factors with other emerging infectious diseases worldwide. Full article
(This article belongs to the Special Issue Spatial and Spatiotemporal Analysis of Infectious Diseases)
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9 pages, 1023 KiB  
Brief Report
One Health Approach on Dog Bites: Demographic and Associated Socioeconomic Factors in Southern Brazil
by Caroline Constantino, Evelyn Cristine Da Silva, Danieli Muchalak Dos Santos, Igor Adolfo Dexheimer Paploski, Marcia Oliveira Lopes, Vivien Midori Morikawa and Alexander Welker Biondo
Trop. Med. Infect. Dis. 2023, 8(4), 189; https://doi.org/10.3390/tropicalmed8040189 - 25 Mar 2023
Cited by 1 | Viewed by 1602
Abstract
Despite being an important public health issue, particularly due to rabies, dog bites and associated risk factors have rarely been assessed by health services from a One Health perspective. Accordingly, the present study aimed to assess dog biting and associated demographic and socioeconomic [...] Read more.
Despite being an important public health issue, particularly due to rabies, dog bites and associated risk factors have rarely been assessed by health services from a One Health perspective. Accordingly, the present study aimed to assess dog biting and associated demographic and socioeconomic risk factors in Curitiba, the eighth-largest Brazilian city with approximately 1.87 million people, based on the post-exposure prophylaxis (PEP) rabies reports between January/2010 and December/2015. The total of 45,392 PEP reports corresponded to an average annual incidence of 4.17/1000 habitants, mainly affecting white (79.9%, 4.38/1000 population), males (53.1%, 4.81/1000 population), and children aged 0–9 years (20.1%, 6.9/1000 population), with severe accidents associated with older victims (p < 0.001) and mainly caused by dogs known to the victims. An increase of USD 100.00 in the median neighborhood income was associated with a 4.9% (95% CI: 3.8–6.1; p < 0.001) reduction in dog bites. In summary, dog biting occurrence was associated with victims’ low income, gender, race/color, and age; severe accidents were associated with elderly victims. As dog bites have been described as multifactorial events involving human, animal, and environmental factors, the characteristics presented herein should be used as a basis to define mitigation, control, and prevention strategies from a One Health perspective. Full article
(This article belongs to the Special Issue Spatial and Spatiotemporal Analysis of Infectious Diseases)
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