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Genomic Risk Models Improve Prediction of Longitudinal Lipid Levels in Children and Young Adults

机译:基因组风险模型改善了儿童和青年人纵向脂质水平的预测

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摘要

In clinical medicine, lipids are commonly measured biomarkers used to assess an individual’s risk for cardiovascular disease, heart attack, and stroke. Accurately predicting longitudinal lipid levels based on genomic information can inform therapeutic practices and decrease cardiovascular risk by identifying high-risk patients prior to onset. Using genotyped and imputed genetic data from 523 unrelated Caucasian Americans from the Bogalusa Heart Study, surveyed on 4,026 occasions from 4 to 48 years of age, we generated various lipid genomic risk models based on previously reported markers. We observed a significant improvement in prediction over non-genetic risk models in high density lipoprotein cholesterol (increase in the squared correlation between observed and predicted values, ΔR2 = 0.032), low density lipoprotein cholesterol (ΔR2 = 0.053), total cholesterol (ΔR2 = 0.043), and triglycerides (ΔR2 = 0.031). Many of our approaches are based on an n-fold cross-validation procedure that are, by design, adaptable to a clinical environment.
机译:在临床医学中,脂质是常用的生物标志物,用于评估个人患心血管疾病,心脏病和中风的风险。根据基因组信息准确预测纵向脂质水平可以通过在发病前识别高危患者来指导治疗实践并降低心血管风险。使用来自Bogalusa心脏研究的523个无关的白种人的基因分型和估算的遗传数据,对4到48岁的4,026次进行了调查,我们基于先前报道的标记物生成了多种脂质基因组风险模型。我们观察到高密度脂蛋白胆固醇的预测比非遗传风险模型有显着改善(观察值和预测值的平方相关性增加,ΔR 2 = 0.032),低密度脂蛋白胆固醇(ΔR< sup> 2 = 0.053),总胆固醇(ΔR 2 = 0.043)和甘油三酸酯(ΔR 2 = 0.031)。我们的许多方法都基于n折交叉验证程序,该程序经设计可适应临床环境。

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