| Literature DB >> 36185998 |
Yuehui Jia1, Shan Han1,2, Jie Hou1, Ruixiang Wang1, Guijin Li1, Shengqi Su1, Lei Qi1, Yuanyuan Wang1, Linlin Du1, Huixin Sun1, Shuxiu Hao1, Chen Feng1, Yanan Wang1,3, Xu Liu4, Yuanjie Zou1,5, Yiyi Zhang1,6, Dandan Li1, Tong Wang1.
Abstract
Objectives: Few researchers have studied the national prevalence of Keshan disease (KD) in China using spatial epidemiological methods. This study aimed to provide geographically precise and visualized evidence for the strategies for KD prevention and control.Entities:
Keywords: Keshan disease; precision prevention and control; spatial autocorrelation; spatial epidemiology; spatial regression
Mesh:
Year: 2022 PMID: 36185998 PMCID: PMC9479656 DOI: 10.5334/aogh.3836
Source DB: PubMed Journal: Ann Glob Health ISSN: 2214-9996 Impact factor: 3.640
Figure 1The spatial distribution of KD endemic areas.
Figure 2The spatial distribution of the study population in KD endemic areas.
Figure 3Global spatial autocorrelation analysis of CKD and LKD prevalence in China. A) CKD prevalence; B) LKD prevalence. The left side of the figure represents dispersed areas, the right side represents clustered areas, and the middle represents random areas.
Clusters identified by local Moran’s I analysis for LKD prevalence by county in China.
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| TYPE OF CLUSTERING | PROVINCE | COUNTY |
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| H-H clustering | Shaanxi | Long, Baota, Zhidan, Fu, Luochuan, Yichuan, Huangling |
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| Shanxi | Pu | |
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| Inner Mongolia | Ningcheng | |
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| Jilin | Huadian, Shulan | |
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| Gansu | Kongtong, Li | |
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| H-L clustering | Sichuan | Renhe, Hanyuan, Butuo |
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| Yunnan | Yongshan, Lianghe | |
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| Shaanxi | Qishan | |
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| L-H clustering | Gansu | Qinzhou, Zhuanglang, Qingcheng, Huachi, Wudu, Cheng |
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| Shanxi | Daning | |
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| Shaanxi | Wangyi | |
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| L-L clustering | Sichuan | Zhaojue, Yuexi |
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| Chongqing | Dianjiang | |
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Figure 4Clusters identified by local Moran’s Red borders in the spatial thematic map represent KD-endemic areas.
Clusters identified by Local Getis-Ord Gi* analysis for LKD prevalence by county in China.
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| TYPE OF CLUSTERING | PROVINCE | COUNTY |
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| Hot spot 99% CI | Shaanxi | Long, Zhidan, Fu, Yichuan |
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| Gansu | Qinzhou, Kongtong, Zhuanglang, Huating, Qingcheng, Huachi, Heshui, Wudu, Cheng, Xihe, Li | |
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| Shanxi | Ji, Daning, Pu | |
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| Inner Mongolia | Ningcheng, | |
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| Jilin | Huadian | |
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| Hot spot 95% CI | Shaanxi | Changwu, Bin, Baota, Luochuan, Huangling |
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| Gansu | Zhengning | |
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| Jilin | Shulan | |
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| Hot spot 90% CI | Shaanxi | Wangyi, Xunyi, Hua, Ansai, Ganquan, Huanglong |
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| Jilin | Jiaohe, Panshi | |
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| Inner Mongolia | Kelaqinqi | |
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Figure 5Clusters identified by Local Getis-Ord Gi Red borders in the spatial thematic map represent KD-endemic areas. Colors in the spatial thematic map represent hot spots and cold spots of spatial clustering with 90% CI, 95% CI, and 99% CI.
Figure 6Spatial interpolation analysis of LKD prevalence in China. Red borders in the spatial thematic map represent KD-endemic areas. The blue to red colors in the spatial thematic map indicate gradual increases in LKD prevalence.
Spatial regression analysis of LKD and CKD prevalence.
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| CHARACTERISTIC | REGRESSION COEFFICIENTS | STANDARD DEVIATION |
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| LKD | ||||
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| Per capita disposable income | –0.0099 | 0.0023 | –4.36 | 0.0001 |
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| CKD | ||||
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| Per capita disposable income | –0.0006 | 0.0004 | –1.58 | 0.1170 |
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Note: LKD: R2 = 0.1205, Radj2 = 0.1085; CKD: R2 = 0.0252, Radj2 = 0.0118.