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A Geospatial Model to Identify Areas Associated with Late-Stage Breast Cancer: A Spatial Epidemiology Approach

OBJECTIVE: The aim of this study was to show how a geospatial model can be used to identify areas with a higher probability for late-stage breast cancer (BC) diagnoses. METHODS: Our study considered an ecological design. Clinical records at a tertiary care hospital were reviewed in order to obtain t...

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Autores principales: Sevilla, Antonio Reyna, Castañeda, Miguel Ernesto González, Herrera, Igor Martin Ramos, Molina, Célida Duque, Sánchez, Gabriela Borrayo, Hernandez, Ricardo Aviles, Sánchez, Carlos Quezada, Morales, Abelardo Flores
Formato: Online Artículo Texto
Lenguaje:English
Publicado: West Asia Organization for Cancer Prevention 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10685234/
https://www.ncbi.nlm.nih.gov/pubmed/37642047
http://dx.doi.org/10.31557/APJCP.2023.24.8.2621
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author Sevilla, Antonio Reyna
Castañeda, Miguel Ernesto González
Herrera, Igor Martin Ramos
Molina, Célida Duque
Sánchez, Gabriela Borrayo
Hernandez, Ricardo Aviles
Sánchez, Carlos Quezada
Morales, Abelardo Flores
author_facet Sevilla, Antonio Reyna
Castañeda, Miguel Ernesto González
Herrera, Igor Martin Ramos
Molina, Célida Duque
Sánchez, Gabriela Borrayo
Hernandez, Ricardo Aviles
Sánchez, Carlos Quezada
Morales, Abelardo Flores
author_sort Sevilla, Antonio Reyna
collection PubMed
description OBJECTIVE: The aim of this study was to show how a geospatial model can be used to identify areas with a higher probability for late-stage breast cancer (BC) diagnoses. METHODS: Our study considered an ecological design. Clinical records at a tertiary care hospital were reviewed in order to obtain the place of residence and stage of the disease, which was classified as early (0-IIA) and late (IIB-IV) and whose diagnoses were made during the 2013-2017 period. Then, they were geolocated to identify the distribution and spatial trend. Subsequently, the pattern of location, i.e. scattered, random and concentrated, was statistically assessed and a geospatial model was elaborated to determine the probability of late diagnoses in the state of Jalisco, Mexico. RESULT: There were 1 954 (N) geolocated BC diagnoses: 58.3% were late. During the five-year period, a southwest-northeast trend was identified, nearly 9.5% of the surface of Jalisco, where 6 out of 10 (n= 751) late- stage diagnoses were concentrated. A concentrated and statistically significant pattern was identified in the southern, central and northern Pacific area of Jalisco, where the geospatial model delimited the places with the highest probability of late clinical stages (p <0.05). CONCLUSION: The geographical differences associated with the late diagnoses of BC suggest it is necessary to adapt and focus the strategies for early detection as an alternative to create a major impact on the population. Reproducible analysis tools were used in other contexts where geolocation data are available to complement public policies and strategies aimed to control BC.
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spelling pubmed-106852342023-11-30 A Geospatial Model to Identify Areas Associated with Late-Stage Breast Cancer: A Spatial Epidemiology Approach Sevilla, Antonio Reyna Castañeda, Miguel Ernesto González Herrera, Igor Martin Ramos Molina, Célida Duque Sánchez, Gabriela Borrayo Hernandez, Ricardo Aviles Sánchez, Carlos Quezada Morales, Abelardo Flores Asian Pac J Cancer Prev Research Article OBJECTIVE: The aim of this study was to show how a geospatial model can be used to identify areas with a higher probability for late-stage breast cancer (BC) diagnoses. METHODS: Our study considered an ecological design. Clinical records at a tertiary care hospital were reviewed in order to obtain the place of residence and stage of the disease, which was classified as early (0-IIA) and late (IIB-IV) and whose diagnoses were made during the 2013-2017 period. Then, they were geolocated to identify the distribution and spatial trend. Subsequently, the pattern of location, i.e. scattered, random and concentrated, was statistically assessed and a geospatial model was elaborated to determine the probability of late diagnoses in the state of Jalisco, Mexico. RESULT: There were 1 954 (N) geolocated BC diagnoses: 58.3% were late. During the five-year period, a southwest-northeast trend was identified, nearly 9.5% of the surface of Jalisco, where 6 out of 10 (n= 751) late- stage diagnoses were concentrated. A concentrated and statistically significant pattern was identified in the southern, central and northern Pacific area of Jalisco, where the geospatial model delimited the places with the highest probability of late clinical stages (p <0.05). CONCLUSION: The geographical differences associated with the late diagnoses of BC suggest it is necessary to adapt and focus the strategies for early detection as an alternative to create a major impact on the population. Reproducible analysis tools were used in other contexts where geolocation data are available to complement public policies and strategies aimed to control BC. West Asia Organization for Cancer Prevention 2023 /pmc/articles/PMC10685234/ /pubmed/37642047 http://dx.doi.org/10.31557/APJCP.2023.24.8.2621 Text en https://creativecommons.org/licenses/by-nc/4.0/This work is licensed under a Creative Commons Attribution-Non Commercial 4.0 International License. (https://creativecommons.org/licenses/by-nc/4.0/)
spellingShingle Research Article
Sevilla, Antonio Reyna
Castañeda, Miguel Ernesto González
Herrera, Igor Martin Ramos
Molina, Célida Duque
Sánchez, Gabriela Borrayo
Hernandez, Ricardo Aviles
Sánchez, Carlos Quezada
Morales, Abelardo Flores
A Geospatial Model to Identify Areas Associated with Late-Stage Breast Cancer: A Spatial Epidemiology Approach
title A Geospatial Model to Identify Areas Associated with Late-Stage Breast Cancer: A Spatial Epidemiology Approach
title_full A Geospatial Model to Identify Areas Associated with Late-Stage Breast Cancer: A Spatial Epidemiology Approach
title_fullStr A Geospatial Model to Identify Areas Associated with Late-Stage Breast Cancer: A Spatial Epidemiology Approach
title_full_unstemmed A Geospatial Model to Identify Areas Associated with Late-Stage Breast Cancer: A Spatial Epidemiology Approach
title_short A Geospatial Model to Identify Areas Associated with Late-Stage Breast Cancer: A Spatial Epidemiology Approach
title_sort geospatial model to identify areas associated with late-stage breast cancer: a spatial epidemiology approach
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10685234/
https://www.ncbi.nlm.nih.gov/pubmed/37642047
http://dx.doi.org/10.31557/APJCP.2023.24.8.2621
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