论文标题

最佳COVID-19与先验信息的泳池测试

Optimal Covid-19 Pool Testing with a priori Information

论文作者

Beunardeau, Marc, Brier, Éric, Cartier, Noémie, Connolly, Aisling, Courant, Nathanaël, Géraud-Stewart, Rémi, Naccache, David, Yifrach-Stav, Ofer

论文摘要

随着人类努力遏制全球COVID-19的感染,预防作用会因测试套件的短缺而大大减慢。政府已经采取了多项措施来解决这一短缺:在美国的COVID-19测试批准下,FDA变得更加自由。在英国,紧急措施允许将本地生产的测试套件的日常数量增加到100,000。中国最近启动了一项大规模的测试制造计划。但是,所有这些努力都不足够,许多贫穷国家仍受到威胁。减少测试数量的一种流行方法包括在汇总样品中,即混合患者样品并一次测试混合样品。如果所有样本都是负面的,那么汇总将以统一的成本成功。但是,如果单个样本为正,则失败不会表明患者感染了哪个患者。本文介绍了如何在池中最佳检测受感染的患者,即使用最少数量的测试来精确识别它们,鉴于每个患者都健康的先验概率。可以使用问卷,监督机器学习或临床检查来估算这些概率。所得的算法可以解释为知情的分裂策略,是非直觉的,而且令人惊讶。他们没有专利。合着者按字母顺序列出。

As humanity struggles to contain the global Covid-19 infection, prophylactic actions are grandly slowed down by the shortage of testing kits. Governments have taken several measures to work around this shortage: the FDA has become more liberal on the approval of Covid-19 tests in the US. In the UK emergency measures allowed to increase the daily number of locally produced test kits to 100,000. China has recently launched a massive test manufacturing program. However, all those efforts are very insufficient and many poor countries are still under threat. A popular method for reducing the number of tests consists in pooling samples, i.e. mixing patient samples and testing the mixed samples once. If all the samples are negative, pooling succeeds at a unitary cost. However, if a single sample is positive, failure does not indicate which patient is infected. This paper describes how to optimally detect infected patients in pools, i.e. using a minimal number of tests to precisely identify them, given the a priori probabilities that each of the patients is healthy. Those probabilities can be estimated using questionnaires, supervised machine learning or clinical examinations. The resulting algorithms, which can be interpreted as informed divide-and-conquer strategies, are non-intuitive and quite surprising. They are patent-free. Co-authors are listed in alphabetical order.

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