Am J Epidemiol. 2021 Sep 1;190(9):1867-1881. doi: 10.1093/aje/kwab064.
Two frequently encountered but underrecognized challenges for causal inference in studying the long-term health effects of disasters among survivors include 1) time-varying effects of disasters on a time-to-event outcome and 2) selection bias due to selective attrition. In this paper, we review approaches for overcoming these challenges and demonstrate application of the approaches to a real-world longitudinal data set of older adults who were directly affected by the 2011 Great East Japan Earthquake and Tsunami (n = 4,857). To illustrate the problem of time-varying effects of disasters, we examined the association between degree of damage due to the tsunami and all-cause mortality. We compared results from Cox regression analysis assuming proportional hazards with those derived using adjusted parametric survival curves allowing for time-varying hazard ratios. To illustrate the problem of selection bias, we examined the association between proximity to the coast (a proxy for housing damage from the tsunami) and depressive symptoms. We corrected for selection bias due to attrition in the 2 postdisaster follow-up surveys (conducted in 2013 and 2016) using multivariable adjustment, inverse probability of censoring weighting, and survivor average causal effect estimation. Our results demonstrate that analytical approaches which ignore time-varying effects on mortality and selection bias due to selective attrition may underestimate the long-term health effects of disasters.
在研究灾害幸存者长期健康影响的因果推断中,有两个经常遇到但未被充分认识的挑战,包括 1)灾害对事件发生时间结果的时变效应,以及 2)由于选择性缺失导致的选择偏差。本文回顾了克服这些挑战的方法,并展示了这些方法在一个真实的纵向老年人数据集(直接受 2011 年东日本大地震和海啸影响的 n=4857 人)中的应用。为了说明灾害时变效应的问题,我们检验了海啸造成的破坏程度与全因死亡率之间的关联。我们比较了假设比例风险的 Cox 回归分析结果和使用允许时变风险比的调整参数生存曲线得出的结果。为了说明选择偏差的问题,我们检验了靠近海岸(海啸造成住房破坏的代理变量)与抑郁症状之间的关联。我们使用多变量调整、逆概率 censoring 加权和幸存者平均因果效应估计,纠正了在 2013 年和 2016 年进行的两次灾后随访调查中因缺失造成的选择偏差。我们的结果表明,忽略死亡率的时变效应和因选择性缺失导致的选择偏差的分析方法可能会低估灾害的长期健康影响。