Nobles Jenna, Hamoudi Amar
University of Wisconsin, Madison, 1180 Observatory Drive Madison, Wisconsin 53706.
Popul Res Policy Rev. 2019 Dec;38(6):783-809. doi: 10.1007/s11113-019-09562-x. Epub 2019 Nov 26.
Prenatal exposures have meaningful effects on health across the lifecourse. Innovations in causal inference have shed new light on these effects. Here, we motivate the importance of innovation in the characterization of fecundity, and prenatal selection in particular. We argue that such innovation is crucial for expanding knowledge of the fetal origins of later life health. Pregnancy loss is common, responsive to environmental factors, and closely related to maternal and fetal health outcomes. As a result, selection into live birth is driven by many of the same exposures that shape the health trajectories of survivors. Lifecourse effects that are inferred without accounting for these dynamics may be significantly distorted by survival bias. We use a set of Monte Carlo simulations with realistic parameters to examine the implications of prenatal survival bias. We find that even in conservatively specified scenarios, true fetal origin effects can be underestimated by 50% or more. In contrast, effects of exposures that reduce the probability of prenatal survival but improve the health of survivors will be overestimated. The absolute magnitude of survival bias can even exceed small effect sizes, resulting in inferences that beneficial exposures are harmful or vice-versa. We also find reason for concern that moderately sized true effects, underestimated due to failure to account for selective survival, are missing from scientific knowledge because they do not clear statistical significance filters. This bias has potential real-world costs; policy decisions about interventions to improve maternal and infant health will be affected by underestimated program impact.
产前暴露对整个生命历程中的健康有着重要影响。因果推断方面的创新为这些影响带来了新的认识。在此,我们阐述了在生育力特征描述,尤其是产前选择方面创新的重要性。我们认为,此类创新对于拓展对晚年健康胎儿起源的认识至关重要。妊娠丢失很常见,对环境因素有反应,且与母婴健康结局密切相关。因此,活产的选择受到许多塑造存活者健康轨迹的相同暴露因素驱动。在不考虑这些动态因素的情况下推断生命历程效应可能会因生存偏差而显著扭曲。我们使用一组具有现实参数的蒙特卡罗模拟来研究产前生存偏差的影响。我们发现,即使在保守设定的情景中,真实的胎儿起源效应可能会被低估50%或更多。相比之下,那些降低产前生存概率但改善存活者健康的暴露因素的效应会被高估。生存偏差的绝对幅度甚至可能超过小效应量,导致得出有益暴露有害或反之亦然的推断。我们还发现有理由担心,由于未考虑选择性生存而被低估的中等大小的真实效应,因未通过统计显著性筛选而未被科学知识所涵盖。这种偏差可能会带来实际的现实成本;关于改善母婴健康干预措施的政策决策将受到被低估的项目影响的影响。