| Literature DB >> 28000753 |
Shengjie Lai1,2,3, Nicola A Wardrop1,3, Zhuojie Huang2, Claudio Bosco1,3, Junling Sun2, Tomas Bird1,3, Amy Wesolowski4,5, Sheng Zhou2, Qian Zhang2, Canjun Zheng2, Zhongjie Li2, Andrew J Tatem1,3, Hongjie Yu6.
Abstract
Plasmodium falciparum malaria importation from Africa to China is rising with increasing Chinese overseas investment and international travel. Identifying networks and drivers of this phenomenon as well as the contributors to high case-fatality rate is a growing public health concern to enable efficient response. From 2011-2015, 8653 P. falciparum cases leading to 98 deaths (11.3 per 1000 cases) were imported from 41 sub-Saharan countries into China, with most cases (91.3%) occurring in labour-related Chinese travellers. Four strongly connected groupings of origin African countries with destination Chinese provinces were identified, and the number of imported cases was significantly associated with the volume of air passengers to China (P = 0.006), parasite prevalence in Africa (P < 0.001), and the amount of official development assistance from China (P < 0.001) with investment in resource extraction having the strongest relationship with parasite importation. Risk factors for deaths from imported cases were related to the capacity of malaria diagnosis and diverse socioeconomic factors. The spatial heterogeneity uncovered, principal drivers explored, and risk factors for mortality found in the rising rates of P. falciparum malaria importation to China can serve to refine malaria elimination strategies and the management of cases, and high risk groups and regions should be targeted.Entities:
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Year: 2016 PMID: 28000753 PMCID: PMC5175130 DOI: 10.1038/srep39524
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1The distribution of imported P. falciparum malaria cases by county in mainland China, 2011–2015.
(A) Number of cases in mainland China (31 provinces). (B) Overall 5-year incidence rate per one million persons by county. The map was created using ArcGIS 10.3 (www.esri.com/software/arcgis).
Figure 2Four communities of origin-destination networks of P. falciparum malaria importation from SSA to mainland China.
(A) Origins (41 countries) in sub-Saharan Africa. (B) Destinations (31 provinces) in mainland China. The origin countries linked to a median of 18 provinces (IQR 8–23) in mainland China, with Angola was the most connective country linking to 30 provinces. Conversely, destination provinces in mainland China linked to a median of 21 countries (IQR 13–26), with Guangdong province was the most connective destination receiving cases from 34 countries. The score of modularity is 0.219 with a resolution of 0.9, and the list of origin-destination communities is provided in Supplementary Table S2. The map was created using ArcGIS 10.3 (www.esri.com/software/arcgis).
Figure 3The distribution of air travellers from sub-Saharan Africa to China, malaria risk in Africa, and official development assistance from China by country.
(A) Number of air passengers from sub-Saharan countries to China. (B) Mean of P. falciparum malaria prevalence (PfPR) by country from 2010 to 2015. (C) The total amount of official development assistance (ODA) from China into sub-Saharan countries in 2006–2013. The monetary amount was deflated from reported currency to US. Dollars in 2011. (D) The numbers of projects of ODA from China into sub-Saharan countries in 2006–2013. The map was created using ArcGIS 10.3 (www.esri.com/software/arcgis).
Factors associated with risk of death in P. falciparum malaria cases imported from sub-Saharan countries to mainland China, 2011–2015.
| Factor | OR (95% CI) | P value |
|---|---|---|
| Gender - Male | 2.1 (0.4, 37.4) | 0.469 |
| Age >50 years | 2.4 (1.2, 4.4) | 0.009 |
| Nationality - Chinese | 1.5 (0.3, 27.8) | 0.675 |
| Education - Primary or lower | 1.8 (1.0, 3.3) | 0.055 |
| Community 2nd of origin-destination | 6.2 (1.5, 41.2) | 0.022 |
| Community 3rd of origin-destination | 3.8 (1.1, 24.6) | 0.072 |
| Community 4th of origin-destination | 5.7 (1.6, 35.7) | 0.020 |
| GDP per capita by province < = 12000 US$ | 1.9 (1.0, 3.9) | 0.048 |
| Onset in January and February | 2.3 (1.4, 3.7) | 0.001 |
| Duration from onset to diagnosis > 3 days | 2.2 (1.3, 4.0) | 0.006 |
| 1.5 (0.9, 2.4) | 0.140 | |
| First-visit health institution at township level or lower | 2.6 (1.5, 4.2) | <0.001 |
Note: OR: odds ratio; CI: confidence interval. All potential risk factors (Supplementary Table S5) statistically associated with mortality (P < 0.05) found in univariate analysis and potential confounders (factors age, sex, and nationality) were introduced into multivariable logistic regression model to explore the significant risk factors. A total of 7,025 cases (81.2% of 8,653 cases) with complete data were included in this model. Communities of origin-destination were identified by network modularity analysis.