Department of Biostatistics, University of Iowa, Iowa City, IA, United States of America.
Department of Epidemiology, University of Iowa, Iowa City, IA, United States of America.
PLoS One. 2020 Nov 10;15(11):e0241949. doi: 10.1371/journal.pone.0241949. eCollection 2020.
The ongoing COVID-19 pandemic has overwhelmingly demonstrated the need to accurately evaluate the effects of implementing new or altering existing nonpharmaceutical interventions. Since these interventions applied at the societal level cannot be evaluated through traditional experimental means, public health officials and other decision makers must rely on statistical and mathematical epidemiological models. Nonpharmaceutical interventions are typically focused on contacts between members of a population, and yet most epidemiological models rely on homogeneous mixing which has repeatedly been shown to be an unrealistic representation of contact patterns. An alternative approach is individual based models (IBMs), but these are often time intensive and computationally expensive to implement, requiring a high degree of expertise and computational resources. More often, decision makers need to know the effects of potential public policy decisions in a very short time window using limited resources. This paper presents a computation algorithm for an IBM designed to evaluate nonpharmaceutical interventions. By utilizing recursive relationships, our method can quickly compute the expected epidemiological outcomes even for large populations based on any arbitrary contact network. We utilize our methods to evaluate the effects of various mitigation measures in the District of Columbia, USA, at various times and to various degrees. Rcode for our method is provided in the supplementry material, thereby allowing others to utilize our approach for other regions.
正在进行的 COVID-19 大流行已经充分证明,需要准确评估实施新的或改变现有的非药物干预措施的效果。由于这些在社会层面实施的干预措施不能通过传统的实验手段来评估,公共卫生官员和其他决策者必须依赖统计和数学流行病学模型。非药物干预措施通常侧重于人群成员之间的接触,但大多数流行病学模型依赖于同质混合,这一再被证明是接触模式的不现实表示。另一种方法是基于个体的模型(IBMs),但这些模型通常实施起来耗时且计算成本高,需要高度的专业知识和计算资源。决策者通常需要在非常短的时间窗口内使用有限的资源了解潜在公共政策决策的影响。本文提出了一种用于评估非药物干预措施的 IBM 计算算法。通过利用递归关系,我们的方法可以根据任意接触网络快速计算出大人群的预期流行病学结果。我们利用我们的方法在美国哥伦比亚特区的不同时间和不同程度评估了各种缓解措施的效果。我们方法的 R 代码在补充材料中提供,从而允许其他人在其他地区使用我们的方法。