Morfeld P
Institute for Occupational and Social Medicine, Cologne University Medical School, 50931 Cologne, Joseph-Stelzmann-Str, 9, Germany.
Epidemiol Perspect Innov. 2004 Dec 16;1(1):5. doi: 10.1186/1742-5573-1-5.
Excess Years of Life Lost due to exposure is an important measure of health impact complementary to rate or risk statistics. I show that the total excess Years of Life Lost due to exposure can be estimated unbiasedly by calculating the corresponding excess Years of Potential Life Lost given conditions that describe study validity (like exchangeability of exposed and unexposed) and assuming that exposure is never preventive. I further demonstrate that the excess Years of Life Lost conditional on age at death cannot be estimated unbiasedly by a calculation of conditional excess Years of Potential Life Lost without adopting speculative causal models that cannot be tested empirically. Furthermore, I point out by example that the excess Years of Life Lost for a specific cause of death, like lung cancer, cannot be identified from epidemiologic data without assuming non-testable assumptions about the causal mechanism as to how exposure produces death. Hence, excess Years of Life Lost estimated from life tables or regression models, as presented by some authors for lung cancer or after stratification for age, are potentially biased. These points were already made by Robins and Greenland 1991 reasoning on an abstract level. In addition, I demonstrate by adequate life table examples designed to critically discuss the Years of Potential Life Lost analysis published by Park et al. 2002 that the potential biases involved may be fairly extreme. Although statistics conveying information about the advancement of disease onset are helpful in exposure impact analysis and especially worthwhile in exposure impact communication, I believe that attention should be drawn to the difficulties involved and that epidemiologists should always be aware of these conceptual limits of the Years of Potential Life Lost method when applying it as a regular tool in cohort analysis.
因暴露导致的寿命损失年数是衡量健康影响的一项重要指标,它是对发病率或风险统计数据的补充。我指出,在描述研究有效性的条件(如暴露组与非暴露组的可交换性)下,并假设暴露永远不会起到预防作用,通过计算相应的潜在寿命损失年数,可以无偏估计因暴露导致的总寿命损失年数。我进一步证明,如果不采用无法通过实证检验的推测性因果模型,就无法通过计算有条件的潜在寿命损失年数来无偏估计基于死亡年龄的寿命损失年数。此外,我通过实例指出,对于特定死因(如肺癌)的寿命损失年数,如果不就暴露如何导致死亡的因果机制做出无法检验的假设,就无法从流行病学数据中识别出来。因此,一些作者针对肺癌或按年龄分层后从生命表或回归模型中估计出的寿命损失年数可能存在偏差。罗宾斯和格林兰在1991年就已经在抽象层面阐述了这些观点。此外,我通过精心设计的生命表实例,对帕克等人2002年发表的潜在寿命损失年数分析进行批判性讨论,结果表明其中涉及的潜在偏差可能相当严重。尽管传达疾病发病进展信息的统计数据在暴露影响分析中很有帮助,在暴露影响交流中尤其有价值,但我认为应该关注其中存在的困难,并且流行病学家在将潜在寿命损失年数方法作为队列分析的常规工具使用时,应该始终意识到该方法在概念上的这些局限性。