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基于信息量模型和逻辑斯蒂回归模型预测湖南省肾综合征出血热热点地区。

Prediction of hot spot areas of hemorrhagic fever with renal syndrome in Hunan Province based on an information quantity model and logistical regression model.

机构信息

XiangYa School of Public Health, Central South University, Changsha, Hunan, China.

Key Laboratory of Medical Information Research(Central South University), Changsha, Hunan, China.

出版信息

PLoS Negl Trop Dis. 2020 Dec 21;14(12):e0008939. doi: 10.1371/journal.pntd.0008939. eCollection 2020 Dec.

Abstract

BACKGROUND

China's "13th 5-Year Plan" (2016-2020) for the prevention and control of sudden acute infectious diseases emphasizes that epidemic monitoring and epidemic focus surveys in key areas are crucial for strengthening national epidemic prevention and building control capacity. Establishing an epidemic hot spot areas and prediction model is an effective means of accurate epidemic monitoring and surveying. Objective: This study predicted hemorrhagic fever with renal syndrome (HFRS) epidemic hot spot areas, based on multi-source environmental variable factors. We calculated the contribution weight of each environmental factor to the morbidity risk, obtained the spatial probability distribution of HFRS risk areas within the study region, and detected and extracted epidemic hot spots, to guide accurate epidemic monitoring as well as prevention and control. Methods: We collected spatial HFRS data, as well as data on various types of natural and human social activity environments in Hunan Province from 2010 to 2014. Using the information quantity method and logistic regression modeling, we constructed a risk-area-prediction model reflecting the epidemic intensity and spatial distribution of HFRS. Results: The areas under the receiver operating characteristic curve of training samples and test samples were 0.840 and 0.816. From 2015 to 2019, HRFS case site verification showed that more than 82% of the cases occurred in high-risk areas.

DISCUSSION

This research method could accurately predict HFRS hot spot areas and provided an evaluation model for Hunan Province. Therefore, this method could accurately detect HFRS epidemic high-risk areas, and effectively guide epidemic monitoring and surveyance.

摘要

背景

中国“十三五”(2016-2020 年)突发急性传染病防控规划强调,对重点地区的疫情监测和疫情重点调查,对于加强国家疫情防控和建设控制能力至关重要。建立疫情热点地区和预测模型是准确疫情监测和调查的有效手段。目的:本研究基于多源环境变量因素,预测肾综合征出血热(HFRS)疫情热点地区。我们计算了每个环境因素对发病率风险的贡献权重,获得了研究区域内 HFRS 风险区域的空间概率分布,并检测和提取了疫情热点,以指导准确的疫情监测和防控。方法:我们收集了 2010 年至 2014 年湖南省空间 HFRS 数据以及各种类型的自然和人类社会活动环境数据。采用信息量法和逻辑回归建模,构建了反映 HFRS 疫情强度和空间分布的风险区预测模型。结果:训练样本和测试样本的受试者工作特征曲线下面积分别为 0.840 和 0.816。从 2015 年到 2019 年,HFRS 病例现场验证表明,超过 82%的病例发生在高风险地区。讨论:该研究方法可以准确预测 HFRS 热点地区,为湖南省提供了一种评价模型。因此,该方法能够准确检测 HFRS 疫情高风险地区,有效指导疫情监测和调查。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2d3f/7785239/995be2b25513/pntd.0008939.g001.jpg

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