...
首页> 外文期刊>PLoS Genetics >Multivariable G-E interplay in the prediction of educational achievement
【24h】

Multivariable G-E interplay in the prediction of educational achievement

机译:教育成就预测中的多变量G-E相互作用

获取原文

摘要

Polygenic scores are increasingly powerful predictors of educational achievement. It is unclear, however, how sets of polygenic scores, which partly capture environmental effects, perform jointly with sets of environmental measures, which are themselves heritable, in prediction models of educational achievement. Here, for the first time, we systematically investigate gene-environment correlation (rGE) and interaction (GxE) in the joint analysis of multiple genome-wide polygenic scores (GPS) and multiple environmental measures as they predict tested educational achievement (EA). We predict EA in a representative sample of 7,026 16-year-olds, with 20 GPS for psychiatric, cognitive and anthropometric traits, and 13 environments (including life events, home environment, and SES) measured earlier in life. Environmental and GPS predictors were modelled, separately and jointly, in penalized regression models with out-of-sample comparisons of prediction accuracy, considering the implications that their interplay had on model performance. Jointly modelling multiple GPS and environmental factors significantly improved prediction of EA, with cognitive-related GPS adding unique independent information beyond SES, home environment and life events. We found evidence for rGE underlying variation in EA (rGE = .38; 95% CIs = .30, .45). We estimated that 40% (95% CIs = 31%, 50%) of the polygenic scores effects on EA were mediated by environmental effects, and in turn that 18% (95% CIs = 12%, 25%) of environmental effects were accounted for by the polygenic model, indicating genetic confounding. Lastly, we did not find evidence that GxE effects significantly contributed to multivariable prediction. Our multivariable polygenic and environmental prediction model suggests widespread rGE and unsystematic GxE contributions to EA in adolescence.
机译:多基因分数是教育成就的越来越强大的预测因子。然而,目前尚不清楚一套多种子学分数,这些分数部分地捕获了环境影响,与一套环境措施共同执行,这些措施本身就是遗传性的教育成就预测模型。在此,我们首次探讨基因环境相关(RGE)和相互作用(GXE)在多种基因组 - 宽的多基因分数(GPS)和多种环境措施中,因为它们预测了测试教育成就(EA)。我们在7,026名16岁的代表性样本中预测EA,具有20GPs的精神病学,认知和人类测量性状,以及在生活中早期衡量的13个环境(包括生命事件,家庭环境和SES)。在惩罚回归模型中,环境和GPS预测因子被建模,分别和共同,具有预测准确性的样本比较,考虑到其相互作用对模型性能的影响。联合建模多个GPS和环境因素显着提高了EA预测,具有认知相关的GPS,包括超出SES,家庭环境和生活事件的独特独立信息。我们发现RGE在EA(RGE = .38; 95%CIS = .30,0.45)中的依据潜在变化的证据。我们估计40%(95%CIS = 31%,50%)对EA的多基因分数效应被环境影响介导,反过来,18%(95%CIS = 12%,25%)的环境影响由多种子要素模型占,表明遗传混杂。最后,我们没有发现证据表明GXE效果显着促进了多变量预测。我们多变量的多种聚类和环境预测模型表明,在青春期的ea中广泛的RGE和不系统的GXE贡献。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号