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A semi-parametric approach to estimate risk functions associated with multi-dimensional exposure profiles: application to smoking and lung cancer

机译:一种半参数方法,用于估计与多维暴露档案有关的风险函数:在吸烟和肺癌中的应用

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Background A common characteristic of environmental epidemiology is the multi-dimensional aspect of exposure patterns, frequently reduced to a cumulative exposure for simplicity of analysis. By adopting a flexible Bayesian clustering approach, we explore the risk function linking exposure history to disease. This approach is applied here to study the relationship between different smoking characteristics and lung cancer in the framework of a population based case control study. Methods Our study includes 4658 males (1995 cases, 2663 controls) with full smoking history (intensity, duration, time since cessation, pack-years) from the ICARE multi-centre study conducted from 2001-2007. We extend Bayesian clustering techniques to explore predictive risk surfaces for covariate profiles of interest. Results We were able to partition the population into 12 clusters with different smoking profiles and lung cancer risk. Our results confirm that when compared to intensity, duration is the predominant driver of risk. On the other hand, using pack-years of cigarette smoking as a single summary leads to a considerable loss of information. Conclusions Our method estimates a disease risk associated to a specific exposure profile by robustly accounting for the different dimensions of exposure and will be helpful in general to give further insight into the effect of exposures that are accumulated through different time patterns.
机译:背景技术环境流行病学的一个共同特征是暴露模式的多维方面,为了简化分析,通常将其减少为累积暴露。通过采用灵活的贝叶斯聚类方法,我们探索了将暴露史与疾病联系起来的风险函数。在基于人群的病例对照研究的框架内,此方法用于研究不同吸烟特征与肺癌之间的关系。方法我们的研究包括2001年至2007年进行的ICARE多中心研究的4658例男性(1995例,2663例对照)具有完整的吸烟史(强度,持续时间,戒烟时间,包装年)。我们扩展了贝叶斯聚类技术,以探索预期的风险变量来关注感兴趣的协变量。结果我们能够将人群分为具有不同吸烟状况和肺癌风险的12个类群。我们的结果证实,与强度相比,持续时间是风险的主要驱动因素。另一方面,将吸烟的包年数作为一个摘要使用会导致大量信息丢失。结论我们的方法通过强有力地说明暴露的不同维度来估计与特定暴露谱相关的疾病风险,并且总体上将有助于进一步了解通过不同时间模式积累的暴露的影响。

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