Significance of genetic information in risk assessment and individual classification using silicosis as a case model.

E. McCanlies, D. Landsittel, B. Yucesoy, V. Vallyathan, Michael Luster, D. Sharp
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引用次数: 13

Abstract

Over the last decade the role of genetic data in epidemiological research has expanded considerably. We recently published a case-control study that evaluated the interaction between silica exposure and minor variants in the genes coding for interleukin-1alpha (IL-1alpha), interleukin-1 receptor antagonist (IL-1RA) and tumor necrosis factor alpha (TNFalpha) as risk factors associated with silicosis, a fibrotic lung disease. In contrast, this report uses data generated from these studies to illustrate the utility of genetic information for the purposes of risk assessment and clinical prediction. Specifically, this study will address how, given a known exposure, genetic information affects the characterization of risk groups. Relative operating characteristic (ROC) curves were then used to determine the impact of genetic information on individual classification. Logistic regression modeling procedures were used to estimate the predicted probability of developing silicosis. This probability was then used to construct predicted risk deciles, first for a model with occupational exposure only and then for a model containing occupational exposure and genetic main effects and interactions. Results indicate that the exposure-only model effectively captures an increasing relationship between predicted risk deciles and prevalence of observed silicosis cases. Individuals comprising the highest risk decile were almost four times as likely to have silicosis as opposed to the lowest risk decile. The addition of genetic data, however, substantially improved characterization of risk categories; the proportion of cases in the highest risk decile was almost eight times that in the lowest risk decile. However, the ROC curve and classification analysis demonstrated that the addition of genetic main effects and interactions did not significantly impact on prediction of the individual's case status. These results indicate that genetic information plays a valuable role in effectively characterizing risk groups and mechanisms of disease operating in a substantial proportion of the population. However, in the case of fibrotic lung disease caused by silica exposure, information about the presence or absence of the minor variants of IL-1alpha, IL-1RA and TNFalpha is unlikely to be a useful tool for individual classification.
遗传信息在矽肺病风险评估和个体分类中的意义。
在过去十年中,遗传数据在流行病学研究中的作用已大大扩大。我们最近发表了一项病例对照研究,评估了二氧化硅暴露与白细胞介素-1 α (il -1 α)、白细胞介素-1受体拮拮剂(IL-1RA)和肿瘤坏死因子α (TNFalpha)编码基因的微小变异之间的相互作用,这些基因是与矽肺(一种纤维化肺部疾病)相关的危险因素。相比之下,本报告使用这些研究产生的数据来说明遗传信息在风险评估和临床预测方面的效用。具体来说,本研究将探讨在已知暴露的情况下,遗传信息如何影响风险群体的特征。然后使用相对工作特征(ROC)曲线来确定遗传信息对个体分类的影响。采用Logistic回归模型程序估计矽肺病的预测概率。然后,这个概率被用来构建预测的风险十分位数,首先是一个只有职业暴露的模型,然后是一个包含职业暴露和遗传主要影响和相互作用的模型。结果表明,仅暴露模型有效地捕获了预测风险十分位数与观察到的矽肺病例患病率之间日益增加的关系。最高风险十分位数的个体患矽肺病的可能性几乎是最低风险十分位数的四倍。然而,遗传数据的增加大大改善了危险类别的特征;最高风险十分位数的病例比例几乎是最低风险十分位数的八倍。然而,ROC曲线和分类分析表明,遗传主效应和相互作用的加入对个体病例状态的预测没有显著影响。这些结果表明,遗传信息在有效表征风险群体和在相当大比例人口中运作的疾病机制方面起着宝贵的作用。然而,在由二氧化硅暴露引起的纤维化肺病的情况下,关于IL-1alpha、IL-1RA和TNFalpha的微小变异是否存在的信息不太可能成为个体分类的有用工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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