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Modeling the effective factors on road traffic deaths in Iran

BACKGROUND: The highest Road Traffic Deaths (RTDs) are related to Low and Middle-Income Countries (LMIC). The efforts for decreasing the incidence and deaths of RTDs can be successful if there is precise information about its related risk factors. This study is aimed at modeling the effective factor...

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Autores principales: Razzaghi, Alireza, Soori, Hamid, Kavousi Dolanghar, Amir, Abadi, Alireza, Khosravi, Ardeshir
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Kermanshah University of Medical Sciences 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7186995/
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author Razzaghi, Alireza
Soori, Hamid
Kavousi Dolanghar, Amir
Abadi, Alireza
Khosravi, Ardeshir
author_facet Razzaghi, Alireza
Soori, Hamid
Kavousi Dolanghar, Amir
Abadi, Alireza
Khosravi, Ardeshir
author_sort Razzaghi, Alireza
collection PubMed
description BACKGROUND: The highest Road Traffic Deaths (RTDs) are related to Low and Middle-Income Countries (LMIC). The efforts for decreasing the incidence and deaths of RTDs can be successful if there is precise information about its related risk factors. This study is aimed at modeling the effective factors of economic, population, road, and vehicles on road traffic deaths in Iran. METHODS: This is an ecologic study which has been done using the covariates of; the proportion of the population, economic growth, urbanization, distance traveled (km) in 100 thousand people, the length of urban roads, the length of rural roads and the number of vehicles for each province in 2015. The regression model of Negative Binomial (NB) was used to modeling these covariates on the deaths of RTDs. The statistical software of STATA edition 14. Was used. RESULTS: The average of road traffic deaths was 474 (SD= 70.59) in 2015. The result of the multivariate negative binomial model showed that the covariates of the proportion of the population and Gross Domestic Production (GDP) were statistically significant on the number of RTDs. CONCLUSIONS: The covariates of the proportion of population and GDP were effective on the RTDs with the direct and indirect relationship respectively. KEYWORDS: Death, Road traffic crash, Modeling, Iran
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spelling pubmed-71869952020-05-01 Modeling the effective factors on road traffic deaths in Iran Razzaghi, Alireza Soori, Hamid Kavousi Dolanghar, Amir Abadi, Alireza Khosravi, Ardeshir J Inj Violence Res Poster Presentation BACKGROUND: The highest Road Traffic Deaths (RTDs) are related to Low and Middle-Income Countries (LMIC). The efforts for decreasing the incidence and deaths of RTDs can be successful if there is precise information about its related risk factors. This study is aimed at modeling the effective factors of economic, population, road, and vehicles on road traffic deaths in Iran. METHODS: This is an ecologic study which has been done using the covariates of; the proportion of the population, economic growth, urbanization, distance traveled (km) in 100 thousand people, the length of urban roads, the length of rural roads and the number of vehicles for each province in 2015. The regression model of Negative Binomial (NB) was used to modeling these covariates on the deaths of RTDs. The statistical software of STATA edition 14. Was used. RESULTS: The average of road traffic deaths was 474 (SD= 70.59) in 2015. The result of the multivariate negative binomial model showed that the covariates of the proportion of the population and Gross Domestic Production (GDP) were statistically significant on the number of RTDs. CONCLUSIONS: The covariates of the proportion of population and GDP were effective on the RTDs with the direct and indirect relationship respectively. KEYWORDS: Death, Road traffic crash, Modeling, Iran Kermanshah University of Medical Sciences 2019-08 /pmc/articles/PMC7186995/ Text en Copyright © 2019, KUMS http://creativecommons.org/licenses/by/3/ This is an open-access article distributed under the terms of the Creative Commons Attribution 3.0 License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Poster Presentation
Razzaghi, Alireza
Soori, Hamid
Kavousi Dolanghar, Amir
Abadi, Alireza
Khosravi, Ardeshir
Modeling the effective factors on road traffic deaths in Iran
title Modeling the effective factors on road traffic deaths in Iran
title_full Modeling the effective factors on road traffic deaths in Iran
title_fullStr Modeling the effective factors on road traffic deaths in Iran
title_full_unstemmed Modeling the effective factors on road traffic deaths in Iran
title_short Modeling the effective factors on road traffic deaths in Iran
title_sort modeling the effective factors on road traffic deaths in iran
topic Poster Presentation
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7186995/
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