Bu Yilei, Gregory Steve, Mills Harriet L
Department of Computer Science, University of Bristol, Bristol BS8 1UB, United Kingdom.
Phys Rev E Stat Nonlin Soft Matter Phys. 2013 Oct;88(4):042801. doi: 10.1103/PhysRevE.88.042801. Epub 2013 Oct 3.
It has recently become established that the spread of infectious diseases between humans is affected not only by the pathogen itself but also by changes in behavior as the population becomes aware of the epidemic, for example, social distancing. It is also well known that community structure (the existence of relatively densely connected groups of vertices) in contact networks influences the spread of disease. We propose a set of local strategies for social distancing, based on community structure, that can be employed in the event of an epidemic to reduce the epidemic size. Unlike most social distancing methods, ours do not require individuals to know the disease state (infected or susceptible, etc.) of others, and we do not make the unrealistic assumption that the structure of the entire contact network is known. Instead, the recommended behavior change is based only on an individual's local view of the network. Each individual avoids contact with a fraction of his/her contacts, using knowledge of his/her local network to decide which contacts should be avoided. If the behavior change occurs only when an individual becomes ill or aware of the disease, these strategies can substantially reduce epidemic size with a relatively small cost, measured by the number of contacts avoided.
最近已经确定,人类之间传染病的传播不仅受到病原体本身的影响,还受到随着人群意识到疫情而产生的行为变化的影响,例如社交距离。众所周知,接触网络中的社区结构(存在相对紧密连接的顶点组)会影响疾病的传播。我们基于社区结构提出了一套社交距离的局部策略,在疫情发生时可以用来减少疫情规模。与大多数社交距离方法不同,我们的方法不要求个体知道他人的疾病状态(感染或易感等),并且我们没有做出整个接触网络结构已知这一不切实际的假设。相反,推荐的行为改变仅基于个体对网络的局部视角。每个人利用其对本地网络的了解,避免与一部分他/她的联系人接触,以此决定应避免哪些联系人。如果行为改变仅在个体生病或意识到疾病时才发生,那么这些策略能够以相对较小的成本(以避免接触的联系人数量来衡量)大幅减少疫情规模。