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Perspective A Cautionary Tale Regarding the Use of Causal Inference to Study How Environmental Change Influences Tropical Diseases

机译:观点是关于使用因果推断研究环境变化如何影响热带疾病的警示

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摘要

There has been substantial interest on the effect of large-scale environmental change, such as deforestation, on human health. An important and relatively recent development has been the use of causal-inference approaches (e.g., instrumental variables [IVs]) to more properly analyze this type of observational data. Here, we discuss an important study that attempted to disentangle the effect of malaria on deforestation from the effect of deforestation on malaria using an IV approach. The authors found that deforestation increases malaria (e.g., they estimate that a 10% increase in deforestation leads to a 3.3% increase in malaria incidence) through ecological mechanisms, whereas malaria reduces deforestation through socioeconomic mechanisms. An important characteristic of causal-inference approaches is that they are critically dependent on the plausibility of the underlying assumptions and that, differently from standard statistical models, many of these assumptions are not testable. In particular, we show how important assumptions of the IV approach adopted in the study described earlier were not met and that, as a result, it is possible that the correct conclusion could have been the opposite of that reported by the authors (e.g., deforestation decreases, rather than increasing, malaria through ecological mechanisms). Causal-inference approaches may be critical to characterize the relationship between environmental change and disease risk, but conclusions based on these methods can be even more unreliable than those from traditional methods if careful attention is not given to the plausibility of the underlying assumptions.
机译:人们对森林砍伐等大规模环境变化对人类健康的影响产生了极大的兴趣。一个重要且相对较新的发展是使用因果推理方法(例如工具变量[IVs])来更恰当地分析这类观测数据。在这里,我们讨论了一项重要的研究,该研究试图用IV方法将疟疾对森林砍伐的影响与森林砍伐对疟疾的影响分开。作者发现,毁林通过生态机制增加了疟疾(例如,他们估计毁林增加10%导致疟疾发病率增加3.3%),而疟疾通过社会经济机制减少了毁林。因果推理方法的一个重要特征是,它们严重依赖于基本假设的合理性,并且与标准统计模型不同,这些假设中的许多是不可测试的。特别是,我们展示了在前面描述的研究中采用的IV方法的重要假设没有得到满足,因此,正确的结论可能与作者报告的相反(例如,通过生态机制,砍伐森林减少而不是增加疟疾)。因果推理方法对于描述环境变化和疾病风险之间的关系可能至关重要,但如果不仔细注意基本假设的合理性,基于这些方法的结论可能比传统方法的结论更不可靠。

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