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2014年埃博拉疫情期间地方卫生部门关于埃博拉的推文及在线搜索的地理空间分布

Geospatial Distribution of Local Health Department Tweets and Online Searches About Ebola During the 2014 Ebola Outbreak.

作者信息

Wong Roger, Harris Jenine K

机构信息

Brown School Public Health Program, Washington University in St. Louis, St. Louis, Missouri.

出版信息

Disaster Med Public Health Prep. 2018 Jun;12(3):287-290. doi: 10.1017/dmp.2017.69. Epub 2017 Aug 24.

DOI:10.1017/dmp.2017.69
PMID:28835312
Abstract

OBJECTIVE

This study compared the geospatial distribution of Ebola tweets from local health departments (LHDs) to online searches about Ebola across the United States during the 2014 Ebola outbreak.

METHODS

Between September and November 2014, we collected all tweets sent by 287 LHDs known to be using Twitter. Coordinates for each Ebola tweet were imported into ArcGIS 10.2.2 to display the distribution of tweets. Online searches with the search term "Ebola" were obtained from Google Trends. A Pearson's correlation test was performed to assess the relationship between online search activity and per capita number of LHD Ebola tweets by state.

RESULTS

Ebola tweets from LHDs were concentrated in cities across the northeast states, including Philadelphia and New York City. In contrast, states with the highest online search queries for Ebola were primarily in the south, particularly Oklahoma and Texas. A weak, negative, non-significant correlation (r=-0.03, P=0.83, 95% CI: -0.30, 0.25) was observed between online search activity and per capita number of LHD Ebola tweets by state.

CONCLUSIONS

We recommend that LHDs consider using social media to communicate possible disease outbreaks in a timely manner, and that they consider using online search data to tailor their messages to align with the public health interests of their constituents. (Disaster Med Public Health Preparedness. 2018; 12: 287-290).

摘要

目的

本研究比较了2014年埃博拉疫情期间美国各地地方卫生部门(LHD)发布的埃博拉相关推文的地理空间分布与关于埃博拉的在线搜索情况。

方法

2014年9月至11月期间,我们收集了已知在使用推特的287个LHD发送的所有推文。将每条埃博拉相关推文的坐标导入ArcGIS 10.2.2以显示推文的分布情况。使用搜索词“埃博拉”的在线搜索数据来自谷歌趋势。进行了皮尔逊相关性检验,以评估各州在线搜索活动与LHD埃博拉相关推文人均数量之间的关系。

结果

LHD发布的埃博拉相关推文集中在东北部各州的城市,包括费城和纽约市。相比之下,对埃博拉在线搜索查询量最高的州主要在南部,尤其是俄克拉荷马州和得克萨斯州。各州在线搜索活动与LHD埃博拉相关推文人均数量之间观察到微弱的负相关且不显著(r = -0.03,P = 0.83,95%可信区间:-0.30,0.25)。

结论

我们建议LHD考虑利用社交媒体及时通报可能的疾病爆发情况,并考虑利用在线搜索数据来调整其信息,使其与选民的公共卫生利益保持一致。(《灾难医学与公共卫生防范》。2018年;12:287 - 290)

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