Institute for Disease Modeling, Global Health Division, Bill and Melinda Gates Foundation, Seattle, WA, USA.
Laboratory for the Modeling of Biological and Socio-technical Systems, Northeastern University, Boston, MA, USA.
Nat Commun. 2021 Jan 12;12(1):323. doi: 10.1038/s41467-020-20544-y.
Mathematical and computational modeling approaches are increasingly used as quantitative tools in the analysis and forecasting of infectious disease epidemics. The growing need for realism in addressing complex public health questions is, however, calling for accurate models of the human contact patterns that govern the disease transmission processes. Here we present a data-driven approach to generate effective population-level contact matrices by using highly detailed macro (census) and micro (survey) data on key socio-demographic features. We produce age-stratified contact matrices for 35 countries, including 277 sub-national administratvie regions of 8 of those countries, covering approximately 3.5 billion people and reflecting the high degree of cultural and societal diversity of the focus countries. We use the derived contact matrices to model the spread of airborne infectious diseases and show that sub-national heterogeneities in human mixing patterns have a marked impact on epidemic indicators such as the reproduction number and overall attack rate of epidemics of the same etiology. The contact patterns derived here are made publicly available as a modeling tool to study the impact of socio-economic differences and demographic heterogeneities across populations on the epidemiology of infectious diseases.
数学和计算建模方法越来越多地被用作传染病分析和预测的定量工具。然而,为了解决复杂的公共卫生问题,越来越需要真实的人类接触模式来模拟疾病传播过程。在这里,我们提出了一种数据驱动的方法,通过使用关键社会人口特征的高度详细的宏观(人口普查)和微观(调查)数据来生成有效的人群水平接触矩阵。我们为 35 个国家生成了年龄分层的接触矩阵,其中包括 8 个国家的 277 个次国家行政区域,覆盖了大约 35 亿人口,反映了关注国家高度的文化和社会多样性。我们使用得出的接触矩阵来模拟空气传播传染病的传播,并表明人群中人类混合模式的次国家异质性对传染病的传播指标(如繁殖数和总体发病率)有显著影响。这里得出的接触模式作为一种建模工具被公开提供,以研究社会经济差异和人口内的人口异质性对传染病流行病学的影响。