Larson Richard C, Nigmatulina Karima R
Department of Civil and Environmental Engineering, MIT, USA.
Stud Health Technol Inform. 2010;153:311-39.
Focusing on pandemic influenza, this chapter approaches the planning for and response to such a major worldwide health event as a complex engineering systems problem. Action-oriented analysis of pandemics requires a broad inclusion of academic disciplines since no one domain can cover a significant fraction of the problem. Numerous research papers and action plans have treated pandemics as purely medical happenings, focusing on hospitals, health care professionals, creation and distribution of vaccines and anti-virals, etc. But human behavior with regard to hygiene and social distancing constitutes a first-order partial brake or control of the spread and intensity of infection. Such behavioral options are "non-pharmaceutical interventions." (NPIs) The chapter employs simple mathematical models to study alternative controls of infection, addressing a well-known parameter in epidemiology, R0, the "reproductive number," defined as the mean number of new infections generated by an index case. Values of R0 greater than 1.0 usually indicate that the infection begins with exponential growth, the generation-to-generation growth rate being R0. R0 is broken down into constituent parts related to the frequency and intensity of human contacts, both partially under our control. It is suggested that any numerical value for R0 has little meaning outside the social context to which it pertains. Difference equation models are then employed to study the effects of heterogeneity of population social contact rates, the analysis showing that the disease tends to be driven by high frequency individuals. Related analyses show the futility of trying geographically to isolate the disease. Finally, the models are operated under a variety of assumptions related to social distancing and changes in hygienic behavior. The results are promising in terms of potentially reducing the total impact of the pandemic.
本章聚焦大流行性流感,将针对这一重大全球卫生事件的规划与应对视为一个复杂的工程系统问题。对大流行进行面向行动的分析需要广泛纳入多学科知识,因为没有一个领域能够涵盖该问题的很大一部分。众多研究论文和行动计划将大流行仅仅视为医疗事件,重点关注医院、医护人员、疫苗和抗病毒药物的研发与分发等。但是人类在卫生和社交距离方面的行为构成了对感染传播和强度的一级部分制动或控制。这些行为选择就是“非药物干预措施”(NPIs)。本章运用简单的数学模型来研究感染的替代控制方法,探讨流行病学中的一个著名参数R0,即“繁殖数”,其定义为一个指示病例产生的新感染病例的平均数。R0大于1.0的值通常表明感染开始呈指数增长,代际增长率为R0。R0被分解为与人类接触频率和强度相关的组成部分,这两者部分在我们的控制之下。有人提出,R0的任何数值在其所属的社会背景之外几乎没有意义。然后使用差分方程模型来研究人群社会接触率异质性的影响,分析表明疾病往往由高频接触者驱动。相关分析表明试图在地理上隔离该疾病是徒劳的。最后,这些模型在与社交距离和卫生行为变化相关的各种假设下运行。就潜在降低大流行的总体影响而言,结果很有前景。