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基于公共卫生监测和气象数据的综合预测模型可预报北美的高危区域西尼罗河病毒的流行情况。

Integrated Forecasts Based on Public Health Surveillance and Meteorological Data Predict West Nile Virus in a High-Risk Region of North America.

机构信息

Department of Geography and Environmental Sustainability, University of Oklahoma, Norman, Oklahoma, USA.

Department of Biology and Microbiology, South Dakota State University, Brookings, South Dakota, USA.

出版信息

Environ Health Perspect. 2022 Aug;130(8):87006. doi: 10.1289/EHP10287. Epub 2022 Aug 16.

Abstract

BACKGROUND

West Nile virus (WNV), a global arbovirus, is the most prevalent mosquito-transmitted infection in the United States. Forecasts of WNV risk during the upcoming transmission season could provide the basis for targeted mosquito control and disease prevention efforts. We developed the Arbovirus Mapping and Prediction (ArboMAP) WNV forecasting system and used it in South Dakota from 2016 to 2019. This study reports a post hoc forecast validation and model comparison.

OBJECTIVES

Our objective was to validate historical predictions of WNV cases with independent data that were not used for model calibration. We tested the hypothesis that predictive models based on mosquito surveillance data combined with meteorological variables were more accurate than models based on mosquito or meteorological data alone.

METHODS

The ArboMAP system incorporated models that predicted the weekly probability of observing one or more human WNV cases in each county. We compared alternative models with different predictors including ) a baseline model based only on historical WNV cases, ) mosquito models based on seasonal patterns of infection rates, ) environmental models based on lagged meteorological variables, including temperature and vapor pressure deficit, ) combined models with mosquito infection rates and lagged meteorological variables, and ) ensembles of two or more combined models. During the WNV season, models were calibrated using data from previous years and weekly predictions were made using data from the current year. Forecasts were compared with observed cases to calculate the area under the receiver operating characteristic curve (AUC) and other metrics of spatial and temporal prediction error.

RESULTS

Mosquito and environmental models outperformed the baseline model that included county-level averages and seasonal trends of WNV cases. Combined models were more accurate than models based only on meteorological or mosquito infection variables. The most accurate model was a simple ensemble mean of the two best combined models. Forecast accuracy increased rapidly from early June through early July and was stable thereafter, with a maximum AUC of 0.85. The model predictions captured the seasonal pattern of WNV as well as year-to-year variation in case numbers and the geographic pattern of cases.

DISCUSSION

The predictions reached maximum accuracy early enough in the WNV season to allow public health responses before the peak of human cases in August. This early warning is necessary because other indicators of WNV risk, including early reports of human cases and mosquito abundance, are poor predictors of case numbers later in the season. https://doi.org/10.1289/EHP10287.

摘要

背景

西尼罗河病毒(WNV)是一种全球性的虫媒病毒,是美国最常见的蚊媒传染病。对即将到来的传播季节WNV 风险的预测,可以为有针对性的蚊虫控制和疾病预防工作提供依据。我们开发了虫媒病毒绘图和预测(ArboMAP)WNV 预测系统,并于 2016 年至 2019 年在南达科他州使用。本研究报告了事后预测验证和模型比较。

目的

我们的目的是用未用于模型校准的独立数据验证 WNV 病例的历史预测。我们检验了以下假设,即基于蚊虫监测数据和气象变量的预测模型比仅基于蚊虫或气象数据的模型更准确。

方法

ArboMAP 系统纳入了预测每个县每周出现一个或多个人类 WNV 病例概率的模型。我们比较了不同预测因子的替代模型,包括)仅基于历史 WNV 病例的基线模型,)基于感染率季节性模式的蚊虫模型,)基于滞后气象变量的环境模型,包括温度和蒸气压亏缺,)结合蚊虫感染率和滞后气象变量的综合模型,以及)两个或多个综合模型的集合。在 WNV 季节期间,使用前几年的数据对模型进行校准,并使用当年的数据进行每周预测。通过计算接收者操作特征曲线(ROC)下的面积(AUC)和空间和时间预测误差的其他度量来比较预测与观察到的病例。

结果

蚊虫和环境模型的表现优于包括 WNV 病例县一级平均值和季节性趋势的基线模型。综合模型比仅基于气象或蚊虫感染变量的模型更准确。最准确的模型是两个最佳综合模型的简单集合平均值。预测准确性从 6 月初到 7 月初迅速提高,并在此后保持稳定,最大 AUC 为 0.85。该模型预测捕捉到了 WNV 的季节性模式以及病例数量的年际变化和病例的地理模式。

讨论

预测在 WNV 季节达到最高精度的时间足够早,以便在 8 月人类病例高峰期之前采取公共卫生应对措施。这种早期预警是必要的,因为 WNV 风险的其他指标,包括早期的人类病例报告和蚊子丰度,是对季节后期病例数量的不良预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0578/9380861/177bfa30a0f6/ehp10287_f1.jpg

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