Social, Genetic and Developmental Psychiatry Centre, Institute of Psychiatry, Psychology and Neuroscience, King's College London, London SE5 8AF, UK.
NIHR Maudsley Biomedical Research Centre, South London and Maudsley NHS Trust, London SE5 8AF, UK.
Hum Mol Genet. 2021 May 17;30(8):727-738. doi: 10.1093/hmg/ddab053.
Integration of functional genomic annotations when estimating polygenic risk scores (PRS) can provide insight into aetiology and improve risk prediction. This study explores the predictive utility of gene expression risk scores (GeRS), calculated using imputed gene expression and transcriptome-wide association study (TWAS) results. The predictive utility of GeRS was evaluated using 12 neuropsychiatric and anthropometric outcomes measured in two target samples: UK Biobank and the Twins Early Development Study. GeRS were calculated based on imputed gene expression levels and TWAS results, using 53 gene expression-genotype panels, termed single nucleotide polymorphism (SNP)-weight sets, capturing expression across a range of tissues. We compare the predictive utility of elastic net models containing GeRS within and across SNP-weight sets, and models containing both GeRS and PRS. We estimate the proportion of SNP-based heritability attributable to cis-regulated gene expression. GeRS significantly predicted a range of outcomes, with elastic net models combining GeRS across SNP-weight sets improving prediction. GeRS were less predictive than PRS, but models combining GeRS and PRS improved prediction for several outcomes, with relative improvements ranging from 0.3% for height (P = 0.023) to 4% for rheumatoid arthritis (P = 5.9 × 10-8). The proportion of SNP-based heritability attributable to cis-regulated expression was modest for most outcomes, even when restricting GeRS to colocalized genes. GeRS represent a component of PRS and could be useful for functional stratification of genetic risk. Only in specific circumstances can GeRS substantially improve prediction over PRS alone. Future research considering functional genomic annotations when estimating genetic risk is warranted.
整合功能基因组注释来估计多基因风险评分(PRS)可以深入了解病因并提高风险预测能力。本研究探讨了基于基因表达风险评分(GeRS)的预测效用,该评分是使用推断的基因表达和全基因组关联研究(TWAS)结果计算得出的。使用两个目标样本(英国生物库和双胞胎早期发展研究)中测量的 12 种神经精神和人体测量学结果来评估 GeRS 的预测效用。根据推断的基因表达水平和 TWAS 结果,使用 53 个基因表达-基因型面板(称为单核苷酸多态性(SNP)-加权集),计算基于 imputed 基因表达水平和 TWAS 结果的 GeRS,这些 SNP 加权集捕获了广泛的组织中的表达。我们比较了包含 GeRS 的弹性网络模型在 SNP 加权集内和跨 SNP 加权集的预测效用,以及包含 GeRS 和 PRS 的模型。我们估计了基于 SNP 的遗传力中归因于顺式调控基因表达的比例。GeRS 显著预测了一系列结果,跨 SNP 加权集组合 GeRS 的弹性网络模型提高了预测能力。GeRS 的预测能力不如 PRS,但组合了 GeRS 和 PRS 的模型改善了多个结果的预测,相对改善幅度从身高的 0.3%(P=0.023)到类风湿关节炎的 4%(P=5.9×10-8)不等。即使将 GeRS 限制为共定位基因,大多数结果归因于顺式调控表达的 SNP 基于遗传力的比例也不大。GeRS 代表 PRS 的一个组成部分,可用于遗传风险的功能分层。仅在特定情况下,GeRS 才能在单独使用 PRS 的基础上显著提高预测能力。未来研究在估计遗传风险时考虑功能基因组注释是有必要的。