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首页> 外文期刊>Critical reviews in toxicology >A cautionary tale: The characteristics of two-dimensional distributions and their effects on epidemiological studies employing an ecological design
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A cautionary tale: The characteristics of two-dimensional distributions and their effects on epidemiological studies employing an ecological design

机译:告诫故事:采用生态设计的二维分布特征及其对流行病学研究的影响

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In recent years, many spatial epidemiological studies that use proximity of subjects to putative sources as a surrogate for exposure have been published and are increasingly cited as evidence of environmental problems requiring public health interventions. In these studies, the simple finding of a significant, positive association between proximity and disease incidence has been interpreted as evidence of causality. However, numerous authors have pointed out limitations to such interpretations. This, the first of two companion studies, examines the effects of analyzing (real and simulated) spatial data using logistic regression. Simulation is also employed to explore the statistical power of such analyses to detect true effects, quantify the probabilities of Type I and Type II errors, and to evaluate a proposed mechanism that explains the observed effects. Results indicate that, even when the odds ratios of cases and controls are regressed against random or nonsense sources, significant, positive associations are observed at frequencies substantially greater than chance. These frequencies increase when targets are highly non-uniformly distributed such that, for example, false-positive associations are more likely than not when odds ratios are regressed against the actual distribution of ultramafic rocks in California. The coefficients of true, causal associations are substantially attenuated under realistic conditions so that, absent corroborating analyses, there is no non-arbitrary means of distinguishing causal from spurious or real but non-causal associations. Factors affecting where people choose to live act as powerful confounders, creating spurious or real but non-causal associations between exposure and response variables (as well as between other pairs of variables). Consequently, future epidemiological studies that use proximity as a surrogate for exposure should be required to include adequate negative control analyses and/or other kinds of corroborating analyses before they are accepted for publication.
机译:近年来,已经发表了许多使用流行病学方法进行研究的空间流行病学研究,该研究将受检者与假定来源的接近程度作为暴露的替代指标,并被越来越多地引用为需要公共卫生干预的环境问题的证据。在这些研究中,将邻近性与疾病发生率之间的显着正相关的简单发现解释为因果关系的证据。但是,许多作者指出了这种解释的局限性。这是两项伴随研究中的第一项,研究了使用逻辑回归分析(实际和模拟)空间数据的效果。仿真还用于探索此类分析的统计能力,以检测出真实的影响,量化I型和II型错误的概率,并评估提出的解释所观察到的影响的机制。结果表明,即使案例和对照的比值比值相对于随机或无意义的源进行了回归,也可以观察到显着的正关联,且频率远高于偶然。当目标高度不均匀分布时,这些频率会增加,例如,当比值比率相对于加利福尼亚州超镁铁质岩石的实际分布进行回归时,假阳性关联的可能性就更大。真实的因果关联系数在现实条件下会大大衰减,因此,在缺乏确证分析的情况下,没有非随意的方法将因果关联与虚假关联或真实但非因果关联区分开。影响人们选择居住的地方的因素充当强大的混杂因素,在暴露和反应变量之间(以及其他变量对之间)造成虚假或真实但非因果的联系。因此,在被接受发表之前,应要求将来使用接近度作为暴露替代物的流行病学研究包括足够的阴性对照分析和/或其他类型的确证分析。

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