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一种贝叶斯方法来研究涉及连续暴露的生命历程假设。

A Bayesian approach to investigate life course hypotheses involving continuous exposures.

机构信息

Faculty of Dentistry, McGill University, Montreal, QC, Canada.

Epidemiology and Biostatistics Unit, Institut Armand-Frappier, INRS, Laval, QC, Canada.

出版信息

Int J Epidemiol. 2018 Oct 1;47(5):1623-1635. doi: 10.1093/ije/dyy107.

Abstract

BACKGROUND

Different hypotheses have been proposed in life course epidemiology on how a time-varying exposure can affect health or disease later in life. Researchers are often interested in investigating the probability of these hypotheses based on observed life course data. However, current techniques based on model/variable selection do not provide a direct estimate of this probability. We propose an alternative technique for a continuous exposure, using a Bayesian approach that has specific advantages, to investigate which life course hypotheses are supported by the observed data.

METHODS

We demonstrate the technique, the relevant life course exposure model (RLM), using simulations. We also analyse data from a case-control study on risk factors of oral cancer, with repeated measurements of betel quid chewing across life. We investigate the relative importance of chewing one quid of betel per day, at three life periods: ≤20 years, 21-40 years and above 40 years of age, on the risk of developing oral cancer.

RESULTS

RLM was able to correctly identify the life course hypothesis under which the data were simulated. Results from the case-control study showed that there was 74.3% probability that betel quid exposure earlier in life, compared with later, results in higher odds of developing oral cancer later in life.

CONCLUSIONS

RLM is a useful option to identify the life course hypothesis supported by the observed data prior to the estimation of a causal effect.

摘要

背景

在生命历程流行病学中,有不同的假设提出了一个时变暴露如何影响生命后期的健康或疾病。研究人员通常有兴趣根据观察到的生命历程数据来研究这些假设的可能性。然而,目前基于模型/变量选择的技术并不能直接估计这种可能性。我们提出了一种针对连续暴露的替代技术,使用贝叶斯方法,该方法具有特定的优势,可以调查观察数据支持哪些生命历程假设。

方法

我们使用模拟演示了该技术,即相关生命历程暴露模型(RLM)。我们还分析了一项口腔癌危险因素病例对照研究的数据,该研究在整个生命过程中对咀嚼槟榔进行了重复测量。我们调查了每天咀嚼一个槟榔的量在三个生命阶段(≤20 岁、21-40 岁和 40 岁以上)对患口腔癌风险的相对重要性。

结果

RLM 能够正确识别数据模拟所依据的生命历程假设。病例对照研究的结果表明,与晚接触相比,生命早期接触槟榔的可能性增加 74.3%,这会导致生命后期患口腔癌的几率更高。

结论

RLM 是一种有用的选择,可以在估计因果效应之前,确定观察数据所支持的生命历程假设。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4aeb/6208282/fe4261ef6784/dyy107f1.jpg

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