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在 品系面板中进行表型推断。

Phenotype inference in an strain panel.

机构信息

European Molecular Biology Laboratory, European Bioinformatics Institute (EMBL-EBI), Hinxton, United Kingdom.

Genome Biology Unit, European Molecular Biology Laboratory (EMBL), Heidelberg, Germany.

出版信息

Elife. 2017 Dec 27;6:e31035. doi: 10.7554/eLife.31035.

Abstract

Understanding how genetic variation contributes to phenotypic differences is a fundamental question in biology. Combining high-throughput gene function assays with mechanistic models of the impact of genetic variants is a promising alternative to genome-wide association studies. Here we have assembled a large panel of 696 strains, which we have genotyped and measured their phenotypic profile across 214 growth conditions. We integrated variant effect predictors to derive gene-level probabilities of loss of function for every gene across all strains. Finally, we combined these probabilities with information on conditional gene essentiality in the reference K-12 strain to compute the growth defects of each strain. Not only could we reliably predict these defects in up to 38% of tested conditions, but we could also directly identify the causal variants that were validated through complementation assays. Our work demonstrates the power of forward predictive models and the possibility of precision genetic interventions.

摘要

理解遗传变异如何导致表型差异是生物学中的一个基本问题。将高通量基因功能测定与遗传变异影响的机制模型相结合,是对全基因组关联研究的一种很有前途的替代方法。在这里,我们组装了一个包含 696 个菌株的大型面板,对其进行了基因分型,并在 214 种生长条件下测量了它们的表型谱。我们整合了变体效应预测因子,以推导出所有菌株中每个基因发生功能丧失的基因水平概率。最后,我们将这些概率与参考 K-12 菌株中条件基因必需性的信息相结合,计算每个菌株的生长缺陷。我们不仅可以在高达 38%的测试条件下可靠地预测这些缺陷,还可以直接识别通过互补测定验证的因果变体。我们的工作证明了正向预测模型的强大功能和精确遗传干预的可能性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/38b0/5745082/4c2e80f2b931/elife-31035-fig1.jpg

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