论文标题
COVID-19和从临床数据推断流行病学参数的难度
COVID-19 and the difficulty of inferring epidemiological parameters from clinical data
论文作者
论文摘要
了解感染率(IFR)对于基于证据的流行管理至关重要:即时计划;由于管理的后果,为了平衡救生的生命与损失的生命;并评估与默契相关的道德问题,即愿意为流行病而付出更多的终身付款,而不是其他疾病。与这种背景Verity等人。 (2020年,柳叶刀感染疾病)具有迅速组装的病例数据,并使用统计模型来推断IFR的IFR,以供COVID-19。我们已经尝试对其方法进行深入的统计审查,以确定数据在多大程度上足够有用的IFR来发挥比建模假设更大的作用,并试图确定那些似乎起着关键作用的假设。鉴于其他数据源的困难,我们基于钻石公主巡航船数据和来自中国的案例数据提供了粗略的替代分析,并认为鉴于数据问题,对临床数据进行建模以获取IFR只能是一项停留间隙量度。需要的是,通过PCR和/或抗体测试对AT风险种群的随机样品进行直接测量。
Knowing the infection fatality ratio (IFR) is of crucial importance for evidence-based epidemic management: for immediate planning; for balancing the life years saved against the life years lost due to the consequences of management; and for evaluating the ethical issues associated with the tacit willingness to pay substantially more for life years lost to the epidemic, than for those to other diseases. Against this background Verity et al. (2020, Lancet Infections Diseases) have rapidly assembled case data and used statistical modelling to infer the IFR for COVID-19. We have attempted an in-depth statistical review of their approach, to identify to what extent the data are sufficiently informative about the IFR to play a greater role than the modelling assumptions, and have tried to identify those assumptions that appear to play a key role. Given the difficulties with other data sources, we provide a crude alternative analysis based on the Diamond Princess Cruise ship data and case data from China, and argue that, given the data problems, modelling of clinical data to obtain the IFR can only be a stop-gap measure. What is needed is near direct measurement of epidemic size by PCR and/or antibody testing of random samples of the at risk population.