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Using DNA methylation to validate an electronic medical record phenotype for smoking

机译:使用DNA甲基化来验证吸烟的电子医疗记录表型

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Abstract A validated, scalable approach to characterizing (phenotyping) smoking status is needed to facilitate genetic discovery. Using established DNA methylation sites from blood samples as a criterion standard for smoking behavior, we compare three candidate electronic medical record (EMR) smoking metrics based on longitudinal EMR text notes. With data from the Veterans Aging Cohort Study (VACS), we employed a validated algorithm to translate each smoking‐related text note into current, past or never categories. We compared three alternative summary characterizations of smoking: most recent, modal and trajectories using descriptive statistics and Spearman's correlation coefficients. Logistic regression and area under the curve analyses were used to compare the associations of these phenotypes with the DNA methylation sites, cg05575921 and cg03636183, which are known to have strong associations with current smoking. DNA methylation data were available from the VACS Biomarker Cohort (VACS‐BC), a sub‐study of VACS. We also considered whether the associations differed by the certainty of trajectory group assignment (0.80/≥0.80). Among 140?152 VACS participants, EMR summary smoking phenotypes varied in frequency by the metric chosen: current from 33 to 53 percent; past from 16 to 24 percent and never from 24 to 33 percent. The association between the EMR smoking pairs was highest for modal and trajectories (rho?=?0.89). Among 728 individuals in the VACS‐BC, both DNA methylation sites were associated with all three EMR summary metrics ( p ??0.001), but the strongest association with both methylation sites was observed for trajectories ( p ??0.001). Longitudinal EMR smoking data support using a summary phenotype, the validity of which is enhanced when data are integrated into statistical trajectories.
机译:摘要需要验证,可扩展的表征方法(表型)吸烟状态,以促进遗传发现。使用已建立的DNA甲基化位点从血液样本作为吸烟行为的标准标准,我们基于纵向EMR文本笔记比较三个候选电子病历(EMR)吸烟指标。通过来自退伍军人老化队员的数据(VAC),我们使用经验证的算法将每个抽烟相关的文本记录转换为当前,过去或从不类别。我们比较了吸烟的三种替代摘要特征:使用描述性统计和Spearman的相关系数的最新,模态和轨迹。曲线分析下的逻辑回归和面积用于将这些表型与DNA甲基化位点的关联进行比较,CG05575921和CG03636183已知具有强烈的吸烟的强烈关联。 DNA甲基化数据可从VACS生物标志物队列(VACS-BC),是VAC的亚研究。我们还考虑了协会是否因轨迹组分配的确定性而不同(& 0.80 /≥0.80)。在140年?152 vack参与者中,EMR摘要吸烟表型在频率上变化,所选择的度量:电流从33到53%;过去从16%到24%,从未从24%到33%。 EMR吸烟对之间的关​​联对于模态和轨迹最高(RHO?= 0.89)。在VAC-BC中的728个个体中,DNA甲基化位点均与所有三个EMR摘要度量相关联(P?<0.001),但观察到与甲基化位点的最强关联进行轨迹(P≤≤0.001) 。纵向EMR吸烟数据支持使用摘要表型,当数据集成到统计轨迹中时,它的有效性得到了增强。

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