Robins J
Harvard School of Public Health, Occupational Health Program, Boston, MA 02115.
J Chronic Dis. 1987;40 Suppl 2:139S-161S. doi: 10.1016/s0021-9681(87)80018-8.
In observational cohort mortality studies with prolonged periods of exposure to the agent under study, independent risk factors for death commonly determine subsequent exposure to the study agent. For example, in occupational mortality studies, date of termination of employment is both a determinant of subsequent exposure to the chemical agent under study (since terminated individuals receive no further exposure) and an independent risk factor for death (since disabled individuals tend to leave employment). When a risk factor determines subsequent exposure and is determined by previous exposure, standard analyses that estimate age-specific mortality rates as a function of cumulative exposure can underestimate the true effect of exposure on mortality, whether or not one adjusts for the risk factor in the analysis. This observation raises the question, "Which, if any, empirical population parameter can be causally interpreted as the true effect of exposure in observational mortality studies?" In answer, we offer a graphical approach to the identification and estimation of causal parameters in mortality studies with sustained exposure periods. We reanalyze the mortality experience of a cohort of arsenic-exposed copper smelter workers using our approach and compare our results with those obtained using standard methods. We find an adverse effect of arsenic exposure on all cause and lung cancer mortality, which standard methods failed to detect. The analytic approach introduced in this paper may be necessary to control bias in any epidemiologic study in which there exists a risk factor which both determines subsequent exposure and is determined by previous exposure to the agent under study.
在对研究对象长时间暴露于所研究因素的观察性队列死亡率研究中,死亡的独立危险因素通常决定了后续对研究因素的暴露情况。例如,在职业死亡率研究中,就业终止日期既是后续暴露于所研究化学物质的决定因素(因为已终止就业的个体不再接触),也是死亡的独立危险因素(因为残疾个体往往会离开工作岗位)。当一个危险因素决定后续暴露且由先前暴露所决定时,将年龄特异性死亡率估计为累积暴露函数的标准分析可能会低估暴露对死亡率的真实影响,无论在分析中是否对该危险因素进行了调整。这一观察结果提出了一个问题:“在观察性死亡率研究中,哪些(如果有的话)经验性总体参数可以被因果解释为暴露的真实影响?”作为回答,我们提供了一种图形化方法,用于识别和估计具有持续暴露期的死亡率研究中的因果参数。我们使用我们的方法重新分析了一组砷暴露铜冶炼工人的死亡经历,并将我们的结果与使用标准方法获得的结果进行了比较。我们发现砷暴露对全因死亡率和肺癌死亡率有不良影响,而标准方法未能检测到这一点。本文介绍的分析方法可能是控制任何流行病学研究中偏差所必需的,在这些研究中存在一个既决定后续暴露又由先前暴露于所研究因素所决定的危险因素。