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Prediction of hypertension based on the genetic analysis of longitudinal phenotypes: a comparison of different modeling approaches for the binary trait of hypertension

机译:基于纵向表型的遗传分析预测高血压:高血压二元性状不同建模方法的比较

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摘要

For the analysis of the longitudinal hypertension family data, we focused on modeling binary traits of hypertension measured repeatedly over time. Our primary objective is to examine predictive abilities of longitudinal models for genetic associations. We first identified single-nucleotide polymorphisms (SNPs) associated with any occurrence of hypertension over the study period to set up covariates for the longitudinal analysis. Then, we proceeded to the longitudinal analysis of the repeated measures of binary hypertension with covariates including SNPs by accounting for correlations arising from repeated outcomes and among family members.We examined two popular models for longitudinal binary outcomes: (a) a marginal model based on the generalized estimating equations, and (b) a conditional model based on the logistic random effect model. The effects of risk factors associated with repeated hypertensions were compared for these two models and their prediction abilities were assessed with and without genetic information.Based on both approaches, we found a significant interaction effect between age and gender where males were at higher risk of hypertension before age 35 years, but after age 35 years, women were at higher risk. Moreover, the SNPs were significantly associated with hypertension after adjusting for age, gender, and smoking status. The SNPs contributed more to predict hypertension in the marginal model than in the conditional model. There was substantial correlation among repeated measures of hypertension, implying that hypertension was considerably correlated with previous experience of hypertension. The conditional model performed better for predicting the future hypertension status of individuals.
机译:对于纵向高血压家族数据的分析,我们集中于对随时间反复测量的高血压二元性状进行建模。我们的主要目标是检验纵向模型对遗传关联的预测能力。我们首先确定了在研究期内与任何高血压发生相关的单核苷酸多态性(SNP),以建立纵向分析的协变量。然后,我们通过考虑重复结局和家庭成员之间的相关性,对包括SNPs在内的协变量进行二值高血压的重复测量的纵向分析。我们研究了两种流行的纵向二元结局模型:(a)基于(b)基于逻辑随机效应模型的条件模型。比较了这两种模型与反复高血压相关的危险因素的影响,并评估了有无遗传信息时其预测能力。基于这两种方法,我们发现年龄较高和性别较高的男性有较高的高血压危险。在35岁之前,但在35岁之后,女性处于较高的风险中。此外,在调整了年龄,性别和吸烟状况之后,SNPs与高血压显着相关。与条件模型相比,SNP对边缘模型预测高血压的贡献更大。重复测量的高血压之间存在显着的相关性,这表明高血压与以前的高血压经验存在显着相关性。条件模型在预测个人将来的高血压状态方面表现更好。

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