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Mapping and Spatial Pattern Analysis of COVID-19 in Central Iran Using the Local Indicators of Spatial Association (LISA)

Nahid Jesri, Abedin Saghafipour, Alireza Koohpaei, Babak Farzinnia, Moharram Karami Jooshin, Samaneh Abolkheirian, Mahsa Sarvi

2021BMC Public Health33 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Using geographical analysis to identify geographical factors related to the prevalence of COVID-19 infection can affect public health policies aiming at controlling the virus. This study aimed to determine the spatial analysis of COVID-19 in Qom Province, using the local indicators of spatial association (LISA). METHODS: , 2020 were identified and included in the study. The spatial distribution in urban areas was determined using the Moran coefficient in geographic information systems (GIS); in addition, the spatial autocorrelation of the coronavirus in different urban districts of the province was calculated using the LISA method. RESULTS: The prevalence of COVID-19 in Qom Province was estimated to be 356.75 per 100,000 populations. The pattern of spatial distribution of the prevalence of COVID-19 in Qom was clustered. District 3 (Imam Khomeini St.) and District 6 (Imamzadeh Ebrahim St.) were set in the High-High category of LISA: a high-value area surrounded by high-value areas as the two foci of COVID-19 in Qom Province. District 1 (Bajak) of urban districts was set in the Low-High category: a low-value area surrounded by high values. This district is located in a low-value area surrounded by high values. CONCLUSIONS: According to the results, district 3 (Imam Khomeini St.) and district 6 (Imamzadeh Ebrahim St.) areas are key areas for preventing and controlling interventional measures. In addition, considering the location of District 1 (Bajak) as an urban district in the Low-High category surrounded by high values, it seems that distance and spatial proximity play a major role in the spread of the disease.

Topics & Concepts

BiostatisticsMedicineCoronavirus disease 2019 (COVID-19)Public healthEpidemiology2019-20 coronavirus outbreakSpatial epidemiologySevere acute respiratory syndrome coronavirus 2 (SARS-CoV-2)CartographyEnvironmental healthGeographyVirologyOutbreakPathologyInfectious disease (medical specialty)DiseaseCOVID-19 epidemiological studiesSpatial and Panel Data AnalysisData-Driven Disease Surveillance