| Literature DB >> 34322472 |
Qiyu Zhu1,2, Chunnong JiKe3, Chengdong Xu4, Shu Liang5, Gang Yu3, Ju Wang3, Lin Xiao3, Ping Liu1, Meibin Chen1, Peng Guan2, Zhongfu Liu1, Cong Jin1.
Abstract
Background: Previous geographic studies of HIV infection have usually used prevalence data, which cannot indicate the hot-spot areas of current transmission. To develop quantitative analytic measures for accurately identifying hot-spot areas in growth of new HIV infection, we investigated the geographic distribution features of recent HIV infection and long-term HIV infection using data from a whole-population physical examination in four key counties in Liangshan prefecture, which are most severely affected by HIV in China.Entities:
Keywords: HIV/AIDS; geographic distribution; geospatial analysis; quantitative study; recent HIV infection
Year: 2021 PMID: 34322472 PMCID: PMC8310914 DOI: 10.3389/fpubh.2021.680867
Source DB: PubMed Journal: Front Public Health ISSN: 2296-2565
Figure 1Principle of LAg-EIA. This graph indicates that after seroconvertion, the avidity of HIV-specific antibody increases along time and reaches a plateau after the mean duration time of recent infection. Enzyme immunoassay was performed to test the avidity of HIV-specific antibody, and the ODn value of test results can represent the avidity level. The recent infection is classified when ODn value is lower than the cut-off value, and the long-term infection is classified when ODn value is higher than the cut-off value.
Demographic characteristics of included individuals.
| Male | 92 (42.4%) | 2,864 (57.5%) | <0.001 |
| Female | 125 (57.6%) | 2,115 (42.5%) | |
| 1.5–14 | 15 (6.9%) | 743 (14.9%) | 0.006 |
| 15–29 | 69 (31.8%) | 1,452 (29.2%) | |
| 30–44 | 103 (47.5%) | 2,158 (43.3%) | |
| ≥45 | 30 (13.8%) | 626 (12.6%) | |
| Single | 56 (25.8%) | 1,427 (28.7%) | 0.318 |
| Married | 135 (62.2%) | 3,088 (62.0%) | |
| Divorced/widowed | 23 (10.6%) | 429 (8.6%) | |
| Unknown | 3 (1.4%) | 35 (0.7%) | |
| No schooling | 143 (65.9%) | 3,571 (71.7%) | 0.158 |
| Primary school | 66 (30.4%) | 1,241 (24.9%) | |
| Middle school and above | 8 (3.7%) | 167 (3.4%) | |
| Heterosexual contact | 166 (76.5%) | 2,913 (58.5%) | <0.001 |
| Intravenous drug injection | 36 (16.6%) | 1,207 (24.2%) | |
| Others | 15 (6.9%) | 859 (17.3%) |
Figure 2Geographic distribution of newly diagnosed HIV cases. The locations of newly diagnosed HIV cases were mapped onto the administrative map of the four key counties. The size of the circle indicates the number of cases, while red and gray indicate recently infected and long-term infected HIV cases, respectively. County borders are indicated by black lines. Town borders are indicated by gray lines, and main roads are indicated by blue lines. Purple rings 1–5 denote spatial clusters of recently infected HIV cases. Green rings denote clusters of long-term infected cases that overlap with only a few recently infected HIV cases.
Figure 3Difference in geographic distribution patterns of recent and long-term infection cases. Kernel density of recently infected HIV cases (A) and long-term infected HIV cases (B) was calculated and mapped on topographic maps. The value of density is displayed through a gradient colormap and the altitude terrain is shown through shading. Dashed red rings encircle the areas showing obviously higher kernel density of recent infection than long-tern infection. Dashed green rings encircle the areas showing obviously lower kernel density of recent infection than long-tern infection. The statistically calculated residuals from OLSR were mapped to visualize the spatial variation between recent and long-term infection (C). The areas indicated by red and orange have higher kernel density of recent infection, while the areas indicated by blue and green colors have lower kernel density of recent infection. The areas in gray have no difference in kernel density between recent and long-term infection. County borders are indicated by black lines. Town borders are indicated by gray lines, and main roads are indicated by blue lines.
Asymmetry of spatial distribution between recent and long-term infection cases.
| Geodetector | 0.31 | 0.47 | 0.39 | 0.20 | 0.24 |
| OLSR | 0.30 | 0.44 | 0.50 | 0.15 | 0.27 |
OLSR, Ordinary least squares regression.