In this paper, we propose algorithms that leverage a known community structure to make group testing more efficient. We consider a population organized in disjoint communities: each individual participates in a community, and its infection probability depends on the community (s)he participates in. Use cases include families, students who participate in several classes, and workers who share common spaces. Group testing reduces the number of tests needed to identify the infected individuals by pooling diagnostic samples and testing them together. We show that if we design the testing strategy taking into account the community structure, we can significantly reduce the number of tests needed for adaptive and non-adaptive group testing, and can improve the reliability in cases where tests are noisy.
翻译:在本文中,我们提出了利用已知社区结构提高群体测试效率的算法。我们认为,在一个不相连的社区里,每个个人都参加一个社区,其感染概率取决于参与的社区。使用案例包括家庭、参加几个班级的学生和拥有共同空间的工人。群体测试通过汇集诊断样本和共同测试,减少了识别受感染者所需的测试数量。我们表明,如果我们在设计测试战略时考虑到社区结构,我们可以大大减少适应性和非适应性群体测试所需的测试数量,并且可以提高测试噪音情况下的可靠性。