加强越南湄公河三角洲地区登革热预测和控制的区级集合模型。

IF 3.4 2区 医学 Q1 PARASITOLOGY
PLoS Neglected Tropical Diseases Pub Date : 2025-09-29 eCollection Date: 2025-09-01 DOI:10.1371/journal.pntd.0013571
Wala Draidi Areed, Thi Thanh Thao Nguyen, Kien Quoc Do, Thinh Nguyen, Vinh Bui, Elisabeth Nelson, Joshua L Warren, Quang-Van Doan, Nam Vu Sinh, Nicholas John Osborne, Russell Richards, Nu Quy Linh Tran, Hong Le, Tuan Pham, Trinh Manh Hung, Son Nghiem, Hai Phung, Cordia Chu, Robert Dubrow, Daniel M Weinberger, Dung Phung
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引用次数: 0

摘要

由于城市化、全球化和气候变化,越南湄公河三角洲地区(MDR)越来越容易受到严重登革热疫情的影响,因此需要有效的早期预警系统来缓解疫情。本研究开发了一个概率预测模型,结合气象、社会人口、预防和流行病学数据,以1-3个月的提前期预测登革热发病率和疫情。总共评估了72个模型,其中表现最好的模型来自时空模型、监督PCA和半机械hhh4框架。使用2004-2011年的数据进行开发,2012-2016年的数据进行交叉验证,2017-2022年的数据进行评估,集合模型综合了五个单独的模型,以预测登革热的发病率,最多可提前三个月。使用Brier评分、连续排序概率评分(CRPS)、偏差和扩散来评估绩效,并通过地平线、地理和季节性来评估绩效。使用历史分布的第95个百分位数作为流行病阈值,在评估期间,集合模型在3个月的范围内达到了69%的准确率,超过了参考模型的58%,尽管在非典型季节性的年份,如2019年和2022年,可能是由于COVID-19的中断,它表现不佳。通过提供关键的前置时间,该模式使卫生系统能够分配资源、规划干预措施并使社区参与登革热预防和控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A district-level ensemble model to enhance dengue prediction and control for the Mekong Delta Region of Vietnam.

The Mekong Delta Region (MDR) of Vietnam faces increasing vulnerability to severe dengue outbreaks due to urbanization, globalization, and climate change, necessitating effective early warning systems for outbreak mitigation. This study developed a probabilistic forecasting model to predict dengue incidence and outbreaks with 1-3-month lead times, incorporating meteorological, sociodemographic, preventive, and epidemiological data. A total of 72 models were evaluated, with top performers from spatiotemporal models, supervised PCA, and semi-mechanistic hhh4 frameworks combined into an ensemble. Using data from 2004-2011 for development, 2012-2016 for cross-validation, and 2017-2022 for evaluation, the ensemble model integrated five individual models to forecast dengue incidence up to three months ahead. Performance was assessed using Brier Score, Continuous Ranked Probability Score, bias, and diffuseness, and we evaluated performance by horizon, geography, and seasonality. Using the 95th percentile of the historical distribution as the epidemic threshold, the ensemble model achieved 69% accuracy at a 3-month horizon during evaluation, surpassing the reference model's 58%, though it struggled in years with atypical seasonality, such as 2019 and 2022, possibly due to COVID-19 disruptions. By providing critical lead time, the model enables health systems to allocate resources, plan interventions, and engage communities in dengue prevention and control.

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来源期刊
PLoS Neglected Tropical Diseases
PLoS Neglected Tropical Diseases PARASITOLOGY-TROPICAL MEDICINE
自引率
10.50%
发文量
723
期刊介绍: PLOS Neglected Tropical Diseases publishes research devoted to the pathology, epidemiology, prevention, treatment and control of the neglected tropical diseases (NTDs), as well as relevant public policy. The NTDs are defined as a group of poverty-promoting chronic infectious diseases, which primarily occur in rural areas and poor urban areas of low-income and middle-income countries. Their impact on child health and development, pregnancy, and worker productivity, as well as their stigmatizing features limit economic stability. All aspects of these diseases are considered, including: Pathogenesis Clinical features Pharmacology and treatment Diagnosis Epidemiology Vector biology Vaccinology and prevention Demographic, ecological and social determinants Public health and policy aspects (including cost-effectiveness analyses).
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