论文标题
携带耐药细菌的医院患者运动中的网络记忆
Network memory in the movement of hospital patients carrying drug-resistant bacteria
论文作者
论文摘要
医院构成了高度相互联系的系统,可以接触大量的感染性病原体和易感人群,从而使感染爆发既常见又具有挑战性。近年来,在医疗保健相关的感染中,抗菌抗性的发生率很高,这种情况在许多国家中现在被认为是流行的。在这里,我们介绍了基于网络的数据集,该数据集捕获了在三家伦敦大型医院中携带耐药细菌的患者的运动。我们表明,用耐药细菌殖民的医院患者的运动有很大的记忆影响。这种记忆效应打破了一阶的马尔可夫传递假设,并大大改变了分析的结论,特别是在节点排名和扩散过程的演变上。我们通过构建总状态内存网络来捕获可变长度的内存效果,然后我们使用该网络来识别重叠的病房社区。我们发现,这些病房社区在不同水平的粒度上显示出准层次结构,这与与医院位置和医疗专业有关的患者流量的不同方面一致。
Hospitals constitute highly interconnected systems that bring into contact an abundance of infectious pathogens and susceptible individuals, thus making infection outbreaks both common and challenging. In recent years, there has been a sharp incidence of antimicrobial-resistance amongst healthcare-associated infections, a situation now considered endemic in many countries. Here we present network-based analyses of a data set capturing the movement of patients harbouring drug-resistant bacteria across three large London hospitals. We show that there are substantial memory effects in the movement of hospital patients colonised with drug-resistant bacteria. Such memory effects break first-order Markovian transitive assumptions and substantially alter the conclusions from the analysis, specifically on node rankings and the evolution of diffusive processes. We capture variable length memory effects by constructing a lumped-state memory network, which we then use to identify overlapping communities of wards. We find that these communities of wards display a quasi-hierarchical structure at different levels of granularity which is consistent with different aspects of patient flows related to hospital locations and medical specialties.