Background: Access to healthcare is crucial for health equity and outcomes, especially in resource-limited rural areas. Despite expansion efforts, access disparities persist, impacting rural well-being. Assessing spatial accessibility to primary and secondary healthcare is essential for identifying underserved areas and guiding effective resource allocation and intervention strategies. Objective: This study aims to evaluate the geographic access to healthcare services in a rural district of Ghana using Geographic Information Systems (GIS) and spatial analysis techniques. Methods: Utilizing Geographic Information Systems (GIS) 3.28.6, spatial data including health facility locations, settlements, road networks, and population data were analysed. Buffer and distance to the nearest hub analyses were conducted to assess healthcare accessibility to all ten (10) healthcare facilities in the district. Travel time analysis was performed using specified travel speeds for various modes of transportation. Chi-square tests were employed to evaluate the associations between settlement characteristics and access to primary and secondary healthcare services. Results: Approximately 40% of the health facilities were located in Akumadan, the district capital. Primary healthcare accessibility within a 3km radius covered 35% of settlements and 59% of the population, while secondary healthcare, within a 5km radius, was accessible to only 11.3% of settlements and 27.2% of the population. The mean distance to health centres was 4.35±2.72 km and to hospitals was 10.35±5.77 km. Mean walking times were 87±54.6 minutes to health centres and 209.2±117.0 minutes to hospitals. By motorized transport, travel times were up to 24 minutes to health centres and 55 minutes to hospitals; by bicycle, up to 37 minutes to health centres and 190 minutes to hospitals. Chi-Square Tests revealed significant associations between settlement type and both primary (χ²(1, N=80) = 30.77, p <.001) and secondary (χ²(1, N=80) = 15.93, p <.001) healthcare access, as well as between population level and healthcare access. Proximity to health facilities (primary χ²(1, N=80) = 21.26, p <.001; secondary χ²(1, N=80) = 5.48, p =.019) and transportation accessibility (primary χ²(1, N=80) = 9.13, p =.003; secondary χ²(1, N=80) = 12.13, p <.001) were significantly associated with healthcare access. Conclusion: This study unveils substantial disparities in healthcare accessibility, characterized by uneven distribution of facilities and remote distances. Challenges include limited infrastructure and geographic isolation. Addressing these requires enhanced infrastructure, transport networks, expanding outreach services, and equitable policy reforms to promote health equity.
Published in | American Journal of Health Research (Volume 12, Issue 5) |
DOI | 10.11648/j.ajhr.20241205.11 |
Page(s) | 110-123 |
Creative Commons |
This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited. |
Copyright |
Copyright © The Author(s), 2024. Published by Science Publishing Group |
Healthcare Disparities, Primary Healthcare, Secondary Healthcare, Healthcare Access, Spatial Analysis, Outreach Services
List of settlements within 3km buffer zone | List of settlements within 5km buffer zone |
---|---|
Akumadan, Akumadan-Zongo, Amponsakrom, Asempanaye, Asuoso, Bredane, Caanan, Afrancho, Darso, Dwenedabi, Fante, Gyidi, Kobreso, Kobreso-Zongo, Kwaekesiem, Kwaaware, New Atwene, Bosomponso, Nkwaankwaa No. 2, Ampenkrom, Nkwankwaa No. 1, Nsenoafie, Old Atwene, Sraneso-Zongo, Sraneso No.2, Sraneso No.1, Srentiatia, Tadieso, Tanokwaem | Akumadan, Akumadan-Zongo, Bontenten, Caanan Afrancho, Gyidi, New Atwene, Nkenkaasu, Old Atwene |
Variable | Health Centres/CHPS Compound (km) | Hospital (km) |
---|---|---|
Distance to nearest health facility | ||
Minimum | 0.26 | 0.4 |
Maximum | 12.23 | 27.5 |
M (SD) | 4.35 (2.72) | 10.35 (5.77) |
Variable | Health Centre/CHPS Compound | Hospital | ||||
---|---|---|---|---|---|---|
Travel time to nearest health facility in minutes | ||||||
Means of travel | Min | Max | Mean (SD) | Min | Max | Mean (SD) |
Walking | 5 | 245 | 87.0 (54.6) | 8 | 550 | 209.2 (117.0) |
Car | 0 | 24 | 8.34 (5.46) | 0 | 55 | 19.87 (11.79) |
Motorbike | 1 | 24 | 8.69 (5.43) | 1 | 55 | 20.69 (11.52) |
Bicycle | 1 | 37 | 13.05 (8.15) | 1 | 90 | 34.4 (17.1) |
Variables/Categories | Access to Primary Healthcare Facilities | χ2 | p-value | |
---|---|---|---|---|
Settlement Type | No | Yes | ||
Small | 4 (56.2%) | 9 (11.2%) | 30.77 | P<.001** |
Large | 5 (6.2%) | 21 (26.2%) | ||
Population Type | ||||
Population ≤1,000 | 42 (52.5%) | 9 (11.2%) | 23.66 | P<.001** |
Population of 1,000 or more | 8 (10.0%) | 21 (26.2%) | ||
Proximity to Health Facility | ||||
Far | 50 (62.5%) | 0 (0.0%) | 80.00 | P<.001** |
Closed | 0 (0.0%) | 30 (37.5%) | ||
Availability of Health Facility | ||||
No | 50 (62.5%) | 19 (23.8%) | 21.26 | P<.001** |
Yes | 0 (0.0%) | 11 (13.8%) | ||
Transportation Accessibility | ||||
No | 37 (46.2%) | 12 (15.0%) | 9.13 | 0.003* |
Yes | 13 (16.2%) | 18 (22.5%) |
Variables/Categories | Access to Secondary Healthcare Facilities | χ2 | p-value | |
---|---|---|---|---|
Settlement Type | No | Yes | ||
Small | 54 (67.5%) | 0 (0.0%) | 15.93 | P<.001** |
Large | 19 (23.8%) | 7 (8.8%) | ||
Population Type | ||||
Population ≤1,000 | 51 (63.7%) | 0 (0.0%) | 13.49 | P<.001** |
Population of >1,000 or more | 22 (27.5%) | 7 (8.8%) | ||
Proximity to Health Facility | ||||
Far | 50 (62.5%) | 0 (0.0%) | 12.79 | P<.001** |
Closed | 23 (28.7%) | 7 (8.8%) | ||
Availability of Health Facility | ||||
No | 65 (81.2%) | 4 (5.0%) | 5.48 | 0.019* |
Yes | 8 (10.0%) | 3 (3.8%) | ||
Transportation Accessibility | ||||
No | 49 (61.3%) | 0 (0.0%) | 12.13 | P<.001** |
Yes | 24 (30.0%%) | 7 (8.8%) |
CRS | Coordinate Reference System |
CSV | Comma-Separated Values |
EPSG | European Petroleum Survey Group |
KM | Kilometres |
UTM | Universal Transverse Mercator |
WGS | World Geodetic System |
Below is the link to the supplementary material:
[1] | Mathew, S., Rekha, R. S., Wajid, S., & Radhakrishnan, N. (2017). ScienceDirect ScienceDirect Accessibility Analysis of Health care facility using Geospatial Techniques Accessibility Analysis of Health care facility using Geospatial Techniques. Transportation Research Procedia, 27(2017), 1163–1170. |
[2] | Ashiagbor, G., Ofori-asenso, R., Forkuo, E. K., & Agyei-frimpong, S. (2020). Measures of geographic accessibility to health care in the Ashanti Region of Ghana. Scientific African, 9, e00453. |
[3] | Lawan, T. B. (2022). Spatial Analysis of Spatio-Physical Accessibility to Rural Healthcare Facilities in Nangere Local Government Area of Yobe State, Nigeria. British Journal of Earth Sciences Research Vol.10, 10(4), 21–36. |
[4] | Wang, L. (2011). Analyzing spatial accessibility to health care: a case study of access by different immigrant groups to primary care physicians in Toronto. Annals of GIS, 17(4), 237–251. |
[5] | Godwin, M. D., Boniface, M., & Hieronimo, P. (2023). Assessment of spatial distribution and accessibility level of healthcare facilities for a period of 30 years from 1990 to 2020 the case of Morogoro municipality, Tanzania. Tanzania Journal of Health Research, 24(1), 1–15. |
[6] | Amoah-Nuamah, J., Agyemang-duah, W., & Prosper, G. (2023). Analysis of Spatial Distribution of Health Care Facilities and its Effects on Access to Primary Healthcare in Rural Communities in Kpandai Public Health Analysis of Spatial Distribution of Health Care Facilities and its Effects on Access to Primary Health. Cogent Public Health, 10(1), 1–20. |
[7] | Kuorah, P. I., Nunbogu, A. M., & Ahmed, A. (2023). Measuring access to health facilities in Ghana: Implications for implementation of health interventions and the Sustainable Development Goals 3. Science Direct, 158, 1–7. |
[8] | Offinso North District Health Directorate. Annual Health Report, 2023. Akumadan, Ashanti; 2023. |
[9] | Munoz, U. H., & Källestål, C. (2012). Geographical accessibility and spatial coverage modeling of the primary health care network in the Western Province of Rwanda. International Journal Of Health Geographics Research, 1–11. |
[10] | Manortey, S., & Acheampong, G. K. (2016). A Spatial Perspective to the Distribution of Healthcare Facilities and Health Personnel in the Eastern Region of Ghana. Science Research, 3, 1–13. |
[11] | Taran, A. (2023). Measuring Accessibility to Health Care Centers in the City of Al-Mafraq Using Geographic Information Systems. International Journal of Geoinformatics, 19(1), 43–55. |
[12] |
Ministry Of Transport Republic of Ghana. (2022). Ghana Driver’s Guide (pp. 2–55). Ministry Of Roads And Highways.
https://mrh.gov.gh/wp-content/uploads/2022/09/Ghana-Drivers-Guide-_Final_Signed.pdf |
[13] |
International Injury Research Unit. (2023). Status Summary Report 2023: Road Safety Risk Factors in Kumasi, Ghana (pp. 1–12). Johns Hopkins Bloomberg School of Public Health.
https://publichealth.jhu.edu/sites/default/files/2024-03/20240315bigrsaccra27pages.pdf |
[14] | Cycling Uphill. (2023). Average speeds cycling. Cycling Uphill Available from: |
[15] |
Cronkleton, E. (2019). Average walking speed by age. Healthline. Available from:
https://www.healthline.com/health/exercise-fitness/average-walking-speed |
[16] | Unacademy. (2024). Time Formula. Unacademy Available from: |
[17] | Benhlima, O., Riane, F., Puchinger, J., Bahi, H., Benhlima, O., Riane, F., Puchinger, J., & Bahi, H. (2023). Assessment of spatial accessibility to public hospitals in Casablanca by car. Transportation Research Procedia, 72, 2976–2983. |
[18] | Das, M., Dutta, B., & Roy, U. (2023). Spatial accessibility modeling to healthcare facilities in the case of health shocks of Midnapore municipality, India. GeoJournal, 0123456789, 1–24. |
[19] | Abdelkarim, A. (2019). Integration of Location-Allocation and Accessibility Models in GIS to Improve Urban Planning for Health Services in Al-Madinah Al-Munawwarah, Saudi Arabia. Journal of Geographic Information System, 633–662. |
[20] | A., Hong, I., Wilson, B., Gross, T., & Conley, J. (2023). Challenging terrains: socio-spatial analysis of Primary Health Care Access Disparities in West Virginia. Applied Spatial Analysis and Policy, 141–161. |
[21] | Safi, E., Amirfakhriyan, M., Ameri, H., Zare, H., Ranjbar, M., & Assefa, Y. (2023). Spatial Accessibility to Primary Healthcare Facilities in Iran: A GIS-Based Approach. Evidence Based Health Policy, Management & Economics, 7(1), 38–50. |
[22] | Shubayr, M. A., Kruger, E. & Tennant, M. Geographic accessibility to public dental practices in the Jazan region of Saudi Arabia. BMC Oral Health 22, 249 (2022). |
[23] | Jamtsho, S., Corner, R., & Dewan, A. (2015). Spatio-Temporal Analysis of Spatial Accessibility to Primary Health Care in Bhutan. International Journal of Geoinformatics, 1584–1604. |
[24] | Baazeem, M., Tennant, M., & Kruger, E. (2021). Determining Variations in Access to Public Hospitals in Makkah, Kingdom of Saudi Arabia: A GIS-Based Approach. Saudi Journal of Health Systems Research, 1–8. |
[25] | Obeidat, B., & Alourd, S. (2024). Healthcare equity in focus: bridging gaps through a spatial analysis of healthcare facilities in Irbid, Jordan. International Journal for Equity in Health, 1–18. |
[26] | Comber, A. J., Brunsdon, C., & Radburn, R. (2011). A spatial analysis of variations in health access : linking geography, socio-economic status and access perceptions. International Journal Of Health Geographics Research, 1–11. |
[27] | Chinyakata, R., Roman, N. V., & Msiza, F. B. (2021). Stakeholders’ Perspectives on the Barriers to Accessing Health Care Services in Rural Settings: A Human Capabilities Approach. The Open Public Health Journal, 14(1), 336–344. |
[28] | Weiss, D. J., Nelson, A., Vargas-Ruiz, C. A., Gligorić, K., Bavadekar, S., Gabrilovich, E., Bertozzi-Villa, A., Rozier, J., Gibson, H. S., Shekel, T., Kamath, C., Lieber, A., Schulman, K., Shao, Y., Qarkaxhija, V., Nandi, A. K., Keddie, S. H., Rumisha, S., Amratia, P., … Gething, P. W. (2020). Global maps of travel time to healthcare facilities. Nature Medicine, 26(12), 1835–1838. |
[29] | Moturi, A. K., Suiyanka, L., Mumo, E., Snow, R. W., Okiro, E. A., & Macharia, P. M. (2022). Geographic accessibility to public and private health facilities in Kenya in : An updated geocoded inventory and spatial analysis. Frontiers in Public Health. https://10.3389/fpubh.2022.1002975 |
[30] | Dassah, E., Aldersey, H., McColl, M. A., & Davison, C. (2018). Factors affecting access to primary health care services for persons with disabilities in rural areas: a “best-fit” framework synthesis. Global Health Research and Policy, 3(1), 1–13. |
[31] | Ying, M., Wang, S., Bai, C., & Li, Y. (2020). Rural-urban differences in health outcomes, healthcare use, and expenditures among older adults under universal health insurance in China. PLoS ONE, 15(10 October), 1–16. |
[32] | Gizaw, Z., Astale, T., & Kassie, G. M. (2022). What improves access to primary healthcare services in rural communities? A systematic review. BMC Primary Care, 23(1), 1–16. |
[33] | Kumar, D., Singh, T., Vaiyam, P., Banjare, P., & Saini, S. (2022). Identifying potential community barriers for accessing health care services context to health for all in rural-tribal geographical setting in India: A systematic review. The Journal of Community Health Management, 9(4), 169–177. |
[34] | Cochran, A. L., McDonald, N. C., Prunkl, L., Vinella-Brusher, E., Wang, J., Oluyede, L., & Wolfe, M. (2022). Transportation barriers to care among frequent health care users during the COVID pandemic. BMC Public Health, 22(1), 1–10. |
[35] | Teixeira de Siqueira Filha, N., J., Phillips-Howard, P. A., Quayyum, Z., Kibuchi, E., Mithu, M. I. H., Vidyasagaran, A., Sai, V., Manzoor, F., Karuga, R., Awal, A., Chumo, I., Rao, V., Mberu, B., Smith, J., Saidu, S., Tolhurst, R., Mazumdar, S., Rosu, L., Elsey, H. (2022). The economics of healthcare access: a scoping review on the economic impact of healthcare access for vulnerable urban populations in low- and middle-income countries. International Journal for Equity in Health, 21(1), 1–25. |
[36] | Kaiser, N., & Barstow, C. K. (2022). Rural Transportation Infrastructure in Low-and Middle-Income Countries: A Review of Impacts, Implications, and Interventions. Sustainability (Switzerland), 14(4). |
APA Style
Nsiah, R. B., Larbi-Debrah, P., Avagu, R., Yeboah, A. K., Anum-Doku, S., et al. (2024). Mapping Health Disparities: Spatial Accessibility to Healthcare Facilities in a Rural District of Ghana Using Geographic Information Systems Techniques. American Journal of Health Research, 12(5), 110-123. https://doi.org/10.11648/j.ajhr.20241205.11
ACS Style
Nsiah, R. B.; Larbi-Debrah, P.; Avagu, R.; Yeboah, A. K.; Anum-Doku, S., et al. Mapping Health Disparities: Spatial Accessibility to Healthcare Facilities in a Rural District of Ghana Using Geographic Information Systems Techniques. Am. J. Health Res. 2024, 12(5), 110-123. doi: 10.11648/j.ajhr.20241205.11
AMA Style
Nsiah RB, Larbi-Debrah P, Avagu R, Yeboah AK, Anum-Doku S, et al. Mapping Health Disparities: Spatial Accessibility to Healthcare Facilities in a Rural District of Ghana Using Geographic Information Systems Techniques. Am J Health Res. 2024;12(5):110-123. doi: 10.11648/j.ajhr.20241205.11
@article{10.11648/j.ajhr.20241205.11, author = {Richmond Bediako Nsiah and Patrick Larbi-Debrah and Richard Avagu and Akua Kumi Yeboah and Solomon Anum-Doku and Saida Abdul-Rahman Zakaria and Frank Prempeh and Phenihas Kwadwo Opoku and Amos Andoono and Gilbert Elara Dagoe and Jonathan Mawutor Gmanyami and Dominic Nyarko and Saviour Kofi Katamani and Mansurat Abdul Ganiyu and Wisdom Kwami Takramah}, title = {Mapping Health Disparities: Spatial Accessibility to Healthcare Facilities in a Rural District of Ghana Using Geographic Information Systems Techniques }, journal = {American Journal of Health Research}, volume = {12}, number = {5}, pages = {110-123}, doi = {10.11648/j.ajhr.20241205.11}, url = {https://doi.org/10.11648/j.ajhr.20241205.11}, eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.ajhr.20241205.11}, abstract = {Background: Access to healthcare is crucial for health equity and outcomes, especially in resource-limited rural areas. Despite expansion efforts, access disparities persist, impacting rural well-being. Assessing spatial accessibility to primary and secondary healthcare is essential for identifying underserved areas and guiding effective resource allocation and intervention strategies. Objective: This study aims to evaluate the geographic access to healthcare services in a rural district of Ghana using Geographic Information Systems (GIS) and spatial analysis techniques. Methods: Utilizing Geographic Information Systems (GIS) 3.28.6, spatial data including health facility locations, settlements, road networks, and population data were analysed. Buffer and distance to the nearest hub analyses were conducted to assess healthcare accessibility to all ten (10) healthcare facilities in the district. Travel time analysis was performed using specified travel speeds for various modes of transportation. Chi-square tests were employed to evaluate the associations between settlement characteristics and access to primary and secondary healthcare services. Results: Approximately 40% of the health facilities were located in Akumadan, the district capital. Primary healthcare accessibility within a 3km radius covered 35% of settlements and 59% of the population, while secondary healthcare, within a 5km radius, was accessible to only 11.3% of settlements and 27.2% of the population. The mean distance to health centres was 4.35±2.72 km and to hospitals was 10.35±5.77 km. Mean walking times were 87±54.6 minutes to health centres and 209.2±117.0 minutes to hospitals. By motorized transport, travel times were up to 24 minutes to health centres and 55 minutes to hospitals; by bicycle, up to 37 minutes to health centres and 190 minutes to hospitals. Chi-Square Tests revealed significant associations between settlement type and both primary (χ²(1, N=80) = 30.77, p Conclusion: This study unveils substantial disparities in healthcare accessibility, characterized by uneven distribution of facilities and remote distances. Challenges include limited infrastructure and geographic isolation. Addressing these requires enhanced infrastructure, transport networks, expanding outreach services, and equitable policy reforms to promote health equity. }, year = {2024} }
TY - JOUR T1 - Mapping Health Disparities: Spatial Accessibility to Healthcare Facilities in a Rural District of Ghana Using Geographic Information Systems Techniques AU - Richmond Bediako Nsiah AU - Patrick Larbi-Debrah AU - Richard Avagu AU - Akua Kumi Yeboah AU - Solomon Anum-Doku AU - Saida Abdul-Rahman Zakaria AU - Frank Prempeh AU - Phenihas Kwadwo Opoku AU - Amos Andoono AU - Gilbert Elara Dagoe AU - Jonathan Mawutor Gmanyami AU - Dominic Nyarko AU - Saviour Kofi Katamani AU - Mansurat Abdul Ganiyu AU - Wisdom Kwami Takramah Y1 - 2024/09/06 PY - 2024 N1 - https://doi.org/10.11648/j.ajhr.20241205.11 DO - 10.11648/j.ajhr.20241205.11 T2 - American Journal of Health Research JF - American Journal of Health Research JO - American Journal of Health Research SP - 110 EP - 123 PB - Science Publishing Group SN - 2330-8796 UR - https://doi.org/10.11648/j.ajhr.20241205.11 AB - Background: Access to healthcare is crucial for health equity and outcomes, especially in resource-limited rural areas. Despite expansion efforts, access disparities persist, impacting rural well-being. Assessing spatial accessibility to primary and secondary healthcare is essential for identifying underserved areas and guiding effective resource allocation and intervention strategies. Objective: This study aims to evaluate the geographic access to healthcare services in a rural district of Ghana using Geographic Information Systems (GIS) and spatial analysis techniques. Methods: Utilizing Geographic Information Systems (GIS) 3.28.6, spatial data including health facility locations, settlements, road networks, and population data were analysed. Buffer and distance to the nearest hub analyses were conducted to assess healthcare accessibility to all ten (10) healthcare facilities in the district. Travel time analysis was performed using specified travel speeds for various modes of transportation. Chi-square tests were employed to evaluate the associations between settlement characteristics and access to primary and secondary healthcare services. Results: Approximately 40% of the health facilities were located in Akumadan, the district capital. Primary healthcare accessibility within a 3km radius covered 35% of settlements and 59% of the population, while secondary healthcare, within a 5km radius, was accessible to only 11.3% of settlements and 27.2% of the population. The mean distance to health centres was 4.35±2.72 km and to hospitals was 10.35±5.77 km. Mean walking times were 87±54.6 minutes to health centres and 209.2±117.0 minutes to hospitals. By motorized transport, travel times were up to 24 minutes to health centres and 55 minutes to hospitals; by bicycle, up to 37 minutes to health centres and 190 minutes to hospitals. Chi-Square Tests revealed significant associations between settlement type and both primary (χ²(1, N=80) = 30.77, p Conclusion: This study unveils substantial disparities in healthcare accessibility, characterized by uneven distribution of facilities and remote distances. Challenges include limited infrastructure and geographic isolation. Addressing these requires enhanced infrastructure, transport networks, expanding outreach services, and equitable policy reforms to promote health equity. VL - 12 IS - 5 ER -