Geospatial approach to accessibility of referral hospitals using geometric network analysts and spatial distribution models of covid-19 spread cases based on gis in bekasi city, west java

Q3 Social Sciences
Ruki Ardiyanto, S. Supriatna, T. L. Indra, Masita Dwi Mandini Manesa
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引用次数: 1

Abstract

Bekasi City has a high population density, as seen from its growth rate in 2020. Therefore, geospatial analysis is required to support and provide effective and efficient health services, evaluate the need for referral hospital capacity, and minimize the spread of COVID-19 cases in this city. The geospatial methods used in this study are Geometric Network Analyst and Geographic Weighted Regression (GWR), with Service Area (SA) used for analysis. The results based on the distance between the referral hospitals and settlements in Bekasi City showed that more than 2.201 million people, or 90%, have been well covered. Meanwhile, regarding travel time, 1.792 million people or 73% in eight sub-districts are in well-served areas. Conversely, referral hospitals do not cover four sub-districts, namely Bantar Gebang, Jati Sampurna, Medan Satria, and Jati Asih. The spatial modeling analysis results using GWR with spatial-temporal data recapitulation of data reports for eight months showed predictions for the spread of confirmed cases in six sub-districts, namely West Bekasi, North Bekasi, East Bekasi, Medan Satria, Mustika Jaya, and Rawalumbu. This implies that local governments need to suggest more referral hospitals serving people who live far from the existing referral hospitals.
基于地理信息系统的新冠肺炎传播病例几何网络分析和空间分布模型在西爪哇省贝卡西市转诊医院可达性的地理空间方法
从2020年的增长率来看,贝卡西市人口密度很高。因此,需要进行地理空间分析,以支持和提供有效和高效的卫生服务,评估转诊医院能力的需求,并最大限度地减少新冠肺炎病例在该市的传播。本研究中使用的地理空间方法是几何网络分析和地理加权回归(GWR),其中服务区(SA)用于分析。根据贝卡西市转诊医院和定居点之间的距离得出的结果显示,超过220.1万人,即90%,得到了很好的覆盖。同时,在出行时间方面,有179.2万人(占8个分区的73%)在服务良好的地区。相反,转诊医院不包括四个分区,即Bantar Gebang、Jati Samburna、Medan Satria和Jati Asih。使用GWR的空间建模分析结果与八个月数据报告的时空数据重述显示了对六个分区确诊病例传播的预测,即西贝卡西、北贝卡西、东贝卡西、棉兰萨特里亚、Mustika Jaya和Rawalumbu。这意味着地方政府需要建议更多的转诊医院,为居住在远离现有转诊医院的人提供服务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Indonesian Journal of Geography
Indonesian Journal of Geography Social Sciences-Geography, Planning and Development
CiteScore
1.30
自引率
0.00%
发文量
32
审稿时长
8 weeks
期刊介绍: Indonesian Journal of Geography ISSN 2354-9114 (online), ISSN 0024-9521 (print) is an international journal published by the Faculty of Geography, Universitas Gadjah Mada in collaboration with The Indonesian Geographers Association. Our scope of publications include physical geography, human geography, regional planning and development, cartography, remote sensing, geographic information system, environmental science, and social science. IJG publishes its issues three times a year in April, August, and December. Indonesian Journal of Geography welcomes high-quality original and well-written manuscripts on any of the following topics: 1. Geomorphology 2. Climatology 3. Biogeography 4. Soils Geography 5. Population Geography 6. Behavioral Geography 7. Economic Geography 8. Political Geography 9. Historical Geography 10. Geographic Information Systems 11. Cartography 12. Quantification Methods in Geography 13. Remote Sensing 14. Regional development and planning 15. Disaster The Journal publishes Research Articles, Review Article, Short Communications, Comments/Responses and Corrections
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