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首页> 外文期刊>Genetic epidemiology. >Effect of including environmental data in investigations of gene-disease associations in the presence of qualitative interactions.
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Effect of including environmental data in investigations of gene-disease associations in the presence of qualitative interactions.

机译:在存在定性相互作用的情况下,将环境数据纳入基因-疾病关联研究中的影响。

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摘要

Complex diseases are likely to be caused by the interplay of genetic and environmental factors. Despite this, gene-disease associations are frequently investigated using models that focus solely on a marginal gene effect, ignoring environmental factors entirely. Failing to take into account a gene-environment interaction can weaken the apparent gene-disease association, leading to loss in statistical power and, potentially, inability to identify genuine risk factors. If a gene-environment interaction exists, therefore, a joint analysis allowing the effect of the gene to differ between groups defined by the environmental exposure can have greater statistical power than a marginal gene-disease model. However, environmental data are subject to measurement error. Substantial losses in statistical power for detecting gene-environment interactions can arise from measurement error in the environmental exposure. It is unclear, however, what effect measurement error may have on the power of the joint analysis. We consider the potential benefits, in terms of statistical power, of collecting concurrent environmental data within large cohorts in order to enhance gene detection. We further consider whether these benefits remain in the presence of misclassification in both the gene and the environmental exposure. We find that when an effect of the gene is apparent only in the presence of the environmental exposure, the joint analysis has greater power than a marginal gene-disease analysis. This comparative increase in power remains in the presence of likely levels of misclassification of either the gene or environmental exposure.
机译:复杂疾病很可能是由遗传和环境因素的相互作用引起的。尽管如此,经常使用仅关注边缘基因效应的模型来研究基因-疾病关联,而完全忽略了环境因素。不考虑基因与环境的相互作用会削弱表观的基因-疾病关联,从而导致统计能力的丧失,并可能导致无法确定真正的危险因素。因此,如果存在基因与环境的相互作用,则与边缘基因疾病模型相比,允许基因效应在环境暴露定义的各组之间不同的联合分析可以具有更大的统计能力。但是,环境数据容易出现测量误差。用于检测基因-环境相互作用的统计能力的重大损失可能来自环境暴露中的测量误差。但是,尚不清楚测量误差可能对联合分析的功效产生什么影响。我们考虑在统计能力方面的潜在好处,即在大型队列中收集并发环境数据以增强基因检测。我们进一步考虑在基因和环境暴露均存在错误分类的情况下,这些益处是否仍然存在。我们发现,当仅在环境暴露的情况下该基因的作用才明显时,联合分析比边缘基因疾病分析具有更大的功效。在存在基因或环境暴露的可能错误分类的情况下,这种能力的相对增加仍然存在。

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