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Controlling nosocomial infection based on structure of hospital social networks

机译:基于医院社交网络结构的医院感染控制

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摘要

Nosocomial infection (i.e. infection in healthcare facilities) raises a serious public health problem, as implied by the existence of pathogens characteristic to healthcare facilities such as methicillin-resistant and hospital-mediated outbreaks of influenza and severe acute respiratory syndrome. For general communities, epidemic modeling based on social networks is being recognized as a useful tool. However, disease propagation may occur in a healthcare facility in a manner different from that in a urban community setting due to different network architecture. We simulate stochastic susceptible-infected-recovered dynamics on social networks, which are based on observations in a hospital in Tokyo, to explore effective containment strategies against nosocomial infection. The observed social networks in the hospital have hierarchical and modular structure in which dense substructure such as departments, wards, and rooms, are globally but only loosely connected, and do not reveal extremely right-skewed distributions of the number of contacts per individual. We show that healthcare workers, particularly medical doctors, are main vectors (i.e. transmitters) of diseases on these networks. Intervention methods that restrict interaction between medical doctors and their visits to different wards shrink the final epidemic size more than intervention methods that directly protect patients, such as isolating patients in single rooms. By the same token, vaccinating doctors with priority rather than patients or nurses is more effective. Finally, vaccinating individuals with large betweenness centrality (frequency of mediating connection between pairs of individuals along the shortest paths) is superior to vaccinating ones with large connectedness to others or randomly chosen individuals, which was suggested by previous model studies.
机译:医院感染(即医疗机构中的感染)引起了严重的公共卫生问题,这暗示着医疗机构所特有的病原体的存在,例如耐甲氧西林和医院介导的流感和严重急性呼吸系统综合症的暴发。对于一般社区,基于社交网络的流行病建模被认为是有用的工具。然而,由于网络架构的不同,疾病的传播可能以与城市社区不同的方式在医疗机构中发生。我们在社交网络上模拟随机易感感染的恢复动态,该动态基于东京一家医院的观察结果,以探索针对医院感染的有效遏制策略。医院中观察到的社交网络具有分层和模块化的结构,其中密集的子结构(例如部门,病房和病房)在全球范围内,但只是松散连接,并且没有揭示每个人的联系人数量的极右偏分布。我们表明,医护人员,尤其是医生,是这些网络上疾病的主要媒介(即传播者)。与直接保护患者的干预方法(例如将患者隔离在单个房间中)相比,限制医生与他们在不同病房就诊之间相互作用的干预方法会缩小最终的流行病规模。同样,优先为医生接种疫苗而不是患者或护士。最后,接种具有较大中间性的个体(沿最短路径的成对个体之间的中介连接的中介频率)优于接种与他人具有较大关联性的个体或随机选择的个体,这是先前模型研究所建议的。

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