Hamilton Mackenzie A, Knight Jesse, Mishra Sharmistha
Am J Epidemiol. 2024 Feb 5;193(2):339-347. doi: 10.1093/aje/kwad185.
Transmissible infections such as those caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) spread according to who contacts whom. Therefore, many epidemic models incorporate contact patterns through contact matrices. Contact matrices can be generated from social contact survey data. However, the resulting matrices are often imbalanced, such that the total number of contacts reported by group A with group B do not match those reported by group B with group A. We examined the theoretical influence of imbalanced contact matrices on the estimated basic reproduction number (R0). We then explored how imbalanced matrices may bias model-based epidemic projections using an illustrative simulation model of SARS-CoV-2 with 2 age groups (<15 and ≥15 years). Models with imbalanced matrices underestimated the initial spread of SARS-CoV-2, had later time to peak incidence, and had smaller peak incidence. Imbalanced matrices also influenced cumulative infections observed per age group, as well as the estimated impact of an age-specific vaccination strategy. Stratified transmission models that do not consider contact balancing may generate biased projections of epidemic trajectory and the impact of targeted public health interventions. Therefore, modeling studies should implement and report methods used to balance contact matrices for stratified transmission models.
诸如由严重急性呼吸综合征冠状病毒2(SARS-CoV-2)引起的可传播感染是根据谁与谁接触而传播的。因此,许多流行病模型通过接触矩阵纳入接触模式。接触矩阵可从社会接触调查数据生成。然而,所得矩阵往往不均衡,以至于A组报告的与B组的接触总数与B组报告的与A组的接触总数不匹配。我们研究了不均衡接触矩阵对估计的基本再生数(R0)的理论影响。然后,我们使用一个具有2个年龄组(<15岁和≥15岁)的SARS-CoV-2示例模拟模型,探讨了不均衡矩阵可能如何使基于模型的流行病预测产生偏差。具有不均衡矩阵的模型低估了SARS-CoV-2的初始传播,达到发病高峰的时间较晚,且发病高峰较小。不均衡矩阵还影响了每个年龄组观察到的累积感染,以及特定年龄疫苗接种策略的估计影响。不考虑接触平衡的分层传播模型可能会对流行轨迹和有针对性的公共卫生干预措施的影响产生有偏差的预测。因此,建模研究应实施并报告用于平衡分层传播模型接触矩阵的方法。