Distribution pattern and spatial analysis of factors for tuberculosis (TB) cases in Bandar Lampung City in 2022

IF 0.9 Q3 MEDICINE, GENERAL & INTERNAL
Maria Tuntun, S. Aminah, Yusrizal CH
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引用次数: 0

Abstract

Background: Indonesia will be free of TB (Tuberculosis) in 2050, and elimination will begin in 2030. TB cases are still high in Bandar Lampung City, so efforts are needed to solve the problem. Mapping of TB cases using a Geographic Information Spatial (GIS) approach was performed in this study to evaluate the spreading patterns of TB patients so that policies can be taken to deal with TB cases in an epidemiological manner. Methods: The research was conducted in 31 public health centers in Bandar Lampung City. The number of TB patients in this study was 879 people. Making maps for visualizing the spread of TB patients using Archgis software, data were analyzed with Geoda and Moran's Index to see the spatial relationship between variables. Results: The spatial analysis using Geoda found a spatial relationship between TB patients and population density (p=0.00079) and the distance between the TB patient's house and the health center (p=0.00000). However, there was a significant relationship between the underprivileged group (p=0.21682) and topography (p= 0.29139). The Z score for the 4 variables is quite large and >Z0.95, so the distribution pattern of TB patients is stated to be clustered (cluster). Conclusion: Based on the TB patients mapping and the spatial analysis, it is known that the distribution pattern of TB patients in Bandar Lampung City forms a clusters pattern, and there is an autocorrelation relationship between population density, underprivileged groups, height and distance from the TB patient's house to the health center.
班达尔-楠榜市2022年结核病病例分布格局及影响因素空间分析
背景:印度尼西亚将在2050年消除结核病,并将在2030年开始消除结核病。班达尔楠榜市的结核病病例仍然很高,因此需要努力解决这个问题。本研究采用地理信息空间(GIS)方法绘制结核病病例地图,以评估结核病患者的传播模式,从而采取政策以流行病学方式处理结核病病例。方法:本研究在班达尔-楠榜市的31个公共卫生中心进行。本研究中的结核病患者人数为879人。使用Archgis软件制作用于可视化结核病患者传播的地图,使用Geoda和Moran指数对数据进行分析,以了解变量之间的空间关系。结果:使用Geoda的空间分析发现,结核病患者与人口密度(p=0.00079)和结核病患者家与卫生中心的距离(p=0.000000)之间存在空间关系。然而,贫困群体(p=0.21682)与地形(p=0.29139)之间存在显著关系。4个变量的Z分相当大,>Z0.95,结论:基于结核病患者分布图和空间分析,班达尔-楠榜市结核病患者分布格局形成集群格局,人口密度、贫困群体、,结核病患者家到卫生中心的高度和距离。
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来源期刊
Bali Medical Journal
Bali Medical Journal MEDICINE, GENERAL & INTERNAL-
自引率
50.00%
发文量
8
审稿时长
3 weeks
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