论文标题
将社交接触矩阵投射到由二元属性分层的人口
Projecting social contact matrices to populations stratified by binary attributes with known homophily
论文作者
论文摘要
接触网络是异质的。具有相似特征的人更有可能相互作用,这种现象称为分类混合或同质性。 While age-assortativity is well-established and social contact matrices for populations stratified by age have been derived through extensive survey work, we lack empirical studies that describe contact patterns of a population stratified by other attributes such as gender, sexual orientation, ethnicity, etc. Accounting for heterogeneities with respect to these attributes can have a profound effect on the dynamics of epidemiological forecasting models. 在这里,我们介绍了一种扩展给定的新方法,例如基于年龄的接触矩阵与以已知水平同质水平的二进制属性分层的人群。我们描述了一组线性条件,任何有意义的社会接触矩阵都必须满足并通过解决非线性优化问题来找到最佳矩阵。我们显示了同质性对疾病动态的影响,并通过简要描述更复杂的扩展来结论。 可用的Python源代码使任何建模者都可以在接触模式中相对于二进制属性的同性化存在,最终产生更准确的预测模型。
Contact networks are heterogeneous. People with similar characteristics are more likely to interact, a phenomenon called assortative mixing or homophily. While age-assortativity is well-established and social contact matrices for populations stratified by age have been derived through extensive survey work, we lack empirical studies that describe contact patterns of a population stratified by other attributes such as gender, sexual orientation, ethnicity, etc. Accounting for heterogeneities with respect to these attributes can have a profound effect on the dynamics of epidemiological forecasting models. Here, we introduce a new methodology to expand a given e.g. age-based contact matrix to populations stratified by binary attributes with a known level of homophily. We describe a set of linear conditions any meaningful social contact matrix must satisfy and find the optimal matrix by solving a non-linear optimization problem. We show the effect homophily can have on disease dynamics and conclude by briefly describing more complicated extensions. The available Python source code enables any modeler to account for the presence of homophily with respect to binary attributes in contact patterns, ultimately yielding more accurate predictive models.