Department of Psychology, The University of Alabama, Tuscaloosa, AL, United States.
College of Media, Communication and Information, University of Colorado-Boulder, Boulder, CO, United States.
Soc Sci Med. 2017 Oct;191:168-175. doi: 10.1016/j.socscimed.2017.08.041. Epub 2017 Sep 4.
This study examines temporal trends, geographic distribution, and demographic correlates of anti-vaccine beliefs on Twitter, 2009-2015. A total of 549,972 tweets were downloaded and coded for the presence of anti-vaccine beliefs through a machine learning algorithm. Tweets with self-disclosed geographic information were resolved and United States Census data were collected for corresponding areas at the micropolitan/metropolitan level. Trends in number of anti-vaccine tweets were examined at the national and state levels over time. A least absolute shrinkage and selection operator regression model was used to determine census variables that were correlated with anti-vaccination tweet volume. Fifty percent of our sample of 549,972 tweets collected between 2009 and 2015 contained anti-vaccine beliefs. Anti-vaccine tweet volume increased after vaccine-related news coverage. California, Connecticut, Massachusetts, New York, and Pennsylvania had anti-vaccination tweet volume that deviated from the national average. Demographic characteristics explained 67% of variance in geographic clustering of anti-vaccine tweets, which were associated with a larger population and higher concentrations of women who recently gave birth, households with high income levels, men aged 40 to 44, and men with minimal college education. Monitoring anti-vaccination beliefs on Twitter can uncover vaccine-related concerns and misconceptions, serve as an indicator of shifts in public opinion, and equip pediatricians to refute anti-vaccine arguments. Real-time interventions are needed to counter anti-vaccination beliefs online. Identifying clusters of anti-vaccination beliefs can help public health professionals disseminate targeted/tailored interventions to geographic locations and demographic sectors of the population.
本研究考察了 2009 年至 2015 年期间推特上反疫苗信仰的时间趋势、地理分布和人口统计学相关性。通过机器学习算法共下载并编码了 549972 条推文,以确定是否存在反疫苗信仰。带有自我披露地理位置信息的推文被解析,并且针对相应的微观/大都市地区收集了美国人口普查数据。随着时间的推移,在国家和州级别上检查了反疫苗推文数量的趋势。使用最小绝对收缩和选择算子回归模型来确定与反疫苗接种推文量相关的人口普查变量。在 2009 年至 2015 年间收集的 549972 条推文中,有 50%包含反疫苗信仰。与疫苗相关的新闻报道后,反疫苗推文数量增加。加利福尼亚州、康涅狄格州、马萨诸塞州、纽约州和宾夕法尼亚州的反疫苗接种推文量与全国平均水平存在偏差。人口统计学特征解释了反疫苗推文地理聚类方差的 67%,这与人口较多、最近生育的女性比例较高、高收入家庭、40 至 44 岁的男性以及接受过最少大学教育的男性有关。在推特上监测反疫苗信仰可以发现与疫苗相关的担忧和误解,作为公众意见变化的指标,并使儿科医生能够反驳反疫苗论点。需要进行实时干预以对抗在线反疫苗信仰。识别反疫苗信仰的聚类可以帮助公共卫生专业人员向人口的地理位置和人口统计部分传播有针对性/定制的干预措施。