Edge Rhiannon, Heath Joseph, Rowlingson Barry, Keegan Thomas J, Isba Rachel
Department of Health and Medicine, Lancaster University, Lancaster, Lancashire, United Kingdom.
PLoS One. 2015 Oct 9;10(10):e0140085. doi: 10.1371/journal.pone.0140085. eCollection 2015.
The Chief Medical Officer for England recommends that healthcare workers have a seasonal influenza vaccination in an attempt to protect both patients and NHS staff. Despite this, many healthcare workers do not have a seasonal influenza vaccination. Social network analysis is a well-established research approach that looks at individuals in the context of their social connections. We examine the effects of social networks on influenza vaccination decision and disease dynamics.
We used a social network analysis approach to look at vaccination distribution within the network of the Lancaster Medical School students and combined these data with the students' beliefs about vaccination behaviours. We then developed a model which simulated influenza outbreaks to study the effects of preferentially vaccinating individuals within this network.
Of the 253 eligible students, 217 (86%) provided relational data, and 65% of responders had received a seasonal influenza vaccination. Students who were vaccinated were more likely to think other medical students were vaccinated. However, there was no clustering of vaccinated individuals within the medical student social network. The influenza simulation model demonstrated that vaccination of well-connected individuals may have a disproportional effect on disease dynamics.
This medical student population exhibited vaccination coverage levels similar to those seen in other healthcare groups but below recommendations. However, in this population, a lack of vaccination clustering might provide natural protection from influenza outbreaks. An individual student's perception of the vaccination coverage amongst their peers appears to correlate with their own decision to vaccinate, but the directionality of this relationship is not clear. When looking at the spread of disease within a population it is important to include social structures alongside vaccination data. Social networks influence disease epidemiology and vaccination campaigns designed with information from social networks could be a future target for policy makers.
英国首席医疗官建议医护人员接种季节性流感疫苗,以保护患者和国民保健制度工作人员。尽管如此,许多医护人员并未接种季节性流感疫苗。社会网络分析是一种成熟的研究方法,它在个体的社会关系背景下审视个体。我们研究社会网络对流感疫苗接种决策和疾病动态的影响。
我们采用社会网络分析方法来观察兰卡斯特医学院学生网络内的疫苗接种分布情况,并将这些数据与学生对疫苗接种行为的看法相结合。然后我们开发了一个模拟流感爆发的模型,以研究在该网络内优先为个体接种疫苗的效果。
在253名符合条件的学生中,217名(86%)提供了关系数据,65%的受访者接种了季节性流感疫苗。接种疫苗的学生更有可能认为其他医学生也接种了疫苗。然而,在医学生社交网络中,接种疫苗的个体并没有聚集现象。流感模拟模型表明,为社交活跃的个体接种疫苗可能对疾病动态产生不成比例的影响。
该医学生群体的疫苗接种覆盖率与其他医护群体相似,但低于建议水平。然而,在这个群体中,缺乏疫苗接种聚集现象可能会自然地预防流感爆发。个体学生对同龄人疫苗接种覆盖率的认知似乎与他们自己的接种决定相关,但这种关系的方向性尚不清楚。在研究人群中的疾病传播时,将社会结构与疫苗接种数据一起考虑很重要。社会网络影响疾病流行病学,利用社会网络信息设计的疫苗接种运动可能是政策制定者未来的目标。