Predicting the risk of malaria importation into Jiangsu Province, China: a modeling study.

IF 5.9 2区 医学 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Globalization and Health Pub Date : 2024-11-26 DOI:10.1186/s12992-024-01090-4
Kaixuan Liu, Yuanyuan Cao, Enyu Xu, Zeyin Chong, Liying Chai, Yi Wang, Yuhui Xu, Yin Wang, Jun Zhang, Olaf Müller, Jun Cao, Guoding Zhu, Guangyu Lu
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Abstract

Background: The World Health Organization certified China malaria-free in 2021. Consequently, preventing the risk of malaria re-introduction caused by imported malaria has now become a major challenge. This study aims to characterize the dynamics and predict the risk of malaria importation in Jiangsu Province, where the number of imported malaria cases ranks among the highest in China.

Methods: The annual number of cases with imported malaria in Jiangsu Province, the annual number of travelers from sub-Saharan Africa (SSA) to Jiangsu Province (both Chinese and international travelers), and the annual number of Chinese migrant workers from Jiangsu Province who stayed abroad between 2013 and 2020 were assessed. The spatio-temporal dynamics of malaria importation was characterized with ArcGIS 10.8. A negative binomial model was applied to model malaria importation to Jiangsu Province, China.

Results: A total of 2,221 of imported malaria cases were reported from January 1, 2013, until December 31, 2020. Imported malaria cases into China were mainly from SSA (98%) and P. falciparum (78%), the most common species. A seasonal pattern was observed, with the most cases occurring from December to February. The negative binomial model, which incorporates the number of Chinese migrant workers from Jiangsu Province who stayed abroad as an independent variable, demonstrated better performance (AIC: 96.495, BIC: 94.230) compared to the model based solely on travelers from SSA to Jiangsu Province. The model indicated an estimated 139% increase in imported cases for a 10% increase in Chinese migrant workers from Jiangsu Province who stayed abroad.

Conclusion: In conclusion, our study underscores the importance of incorporating data on Chinese migrant workers who have stayed abroad when predicting malaria importation risks. By integrating both international travel patterns and migrant worker data, our findings offer a more robust framework for assessing and managing malaria risk in Jiangsu Province. This approach provides valuable insights for public health officials, enabling more effective resource allocation and targeted interventions to prevent the re-introduction of malaria and improve overall disease management.

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中国江苏省疟疾输入风险预测:一项模型研究。
背景:世界卫生组织于 2021 年认证中国为无疟疾国家。因此,预防输入性疟疾导致的疟疾再传播风险已成为一项重大挑战。江苏省是中国输入性疟疾病例数最多的省份之一,本研究旨在描述江苏省输入性疟疾的动态特征并预测其风险:方法:评估江苏省每年输入性疟疾病例数、每年从撒哈拉以南非洲地区(SSA)到江苏省的旅行者人数(包括中国旅行者和国际旅行者),以及 2013 年至 2020 年期间每年从江苏省出国停留的中国农民工人数。利用 ArcGIS 10.8 对疟疾输入的时空动态进行了描述。应用负二项模型对中国江苏省的疟疾输入进行建模:从 2013 年 1 月 1 日到 2020 年 12 月 31 日,共报告了 2221 例输入性疟疾病例。中国的输入性疟疾病例主要来自撒南非洲(98%),恶性疟原虫(78%)是最常见的病种。疟疾病例呈季节性分布,12 月至次年 2 月病例最多。负二项模型将江苏省在国外逗留的中国农民工人数作为自变量,与仅基于从 SSA 到江苏省的旅行者的模型相比,显示出更好的性能(AIC:96.495,BIC:94.230)。该模型表明,江苏省在国外逗留的中国农民工每增加 10%,估计输入病例就会增加 139%:总之,我们的研究强调了在预测疟疾输入风险时纳入留居国外的中国农民工数据的重要性。通过整合国际旅行模式和农民工数据,我们的研究结果为评估和管理江苏省的疟疾风险提供了一个更稳健的框架。这种方法为公共卫生官员提供了宝贵的见解,使他们能够更有效地分配资源和采取有针对性的干预措施,以防止疟疾的再次传播并改善整体疾病管理。
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来源期刊
Globalization and Health
Globalization and Health PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH-
CiteScore
18.40
自引率
1.90%
发文量
93
期刊介绍: "Globalization and Health" is a pioneering transdisciplinary journal dedicated to situating public health and well-being within the dynamic forces of global development. The journal is committed to publishing high-quality, original research that explores the impact of globalization processes on global public health. This includes examining how globalization influences health systems and the social, economic, commercial, and political determinants of health. The journal welcomes contributions from various disciplines, including policy, health systems, political economy, international relations, and community perspectives. While single-country studies are accepted, they must emphasize global/globalization mechanisms and their relevance to global-level policy discourse and decision-making.
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