We consider the problem of identifying infected individuals in a population of size N. We introduce a group testing approach that uses significantly fewer than N tests when infection prevalence is low. The most common approach to group testing, Dorfman testing, groups individuals randomly. However, as communicable diseases spread from individual to individual through underlying social networks, our approach utilizes network information to improve performance. Network grouping, which groups individuals by community, weakly dominates Dorfman testing in terms of the expected number of tests used. Network grouping's outperformance is determined by the strength of community structure in the network. When networks have strong community structure, network grouping achieves the lower bound for two-stage testing procedures. As an empirical example, we consider the scenario of a university testing its population for COVID-19. Using social network data from a Danish university, we demonstrate network grouping requires significantly fewer tests than Dorfman. In contrast to many proposed group testing approaches, network grouping is simple for practitioners to implement. In practice, individuals can be grouped by family unit, social group, or work group.
翻译:我们考虑在人口规模为N的人群中确定受感染者的问题。我们采用群体测试方法,在感染流行率低时使用比N低得多得多的测试。最常见的分组测试方法是Dorfman测试,将个人随机分组。然而,由于传染性疾病通过基本的社交网络从个人传播到个人,我们的方法利用网络信息来提高绩效。按社区划分的网络组别在所使用测试的预期数量方面对多夫曼测试控制不力。网络组别的表现取决于网络中社区结构的强弱。当网络有强大的社区结构时,网络组别达到两阶段测试程序的下限。作为一个经验性的例子,我们考虑了大学测试其人口COVID-19的情况。我们利用丹麦大学的社会网络数据表明,网络组别比多夫曼的测试要少得多。与许多拟议的群体测试方法相比,网络组别对于从业人员来说是简单的。在实践中,个人可以按家庭单位、社会团体或工作团体分组进行分组。