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Functional Validation of Candidate Genes Detected by Genomic Feature Models

机译:基因组特征模型检测候选基因的功能验证

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摘要

Understanding the genetic underpinnings of complex traits requires knowledge of the genetic variants that contribute to phenotypic variability. Reliable statistical approaches are needed to obtain such knowledge. In genome-wide association studies, variants are tested for association with trait variability to pinpoint loci that contribute to the quantitative trait. Because stringent genome-wide significance thresholds are applied to control the false positive rate, many true causal variants can remain undetected. To ameliorate this problem, many alternative approaches have been developed, such as genomic feature models (GFM). The GFM approach tests for association of set of genomic markers, and predicts genomic values from genomic data utilizing prior biological knowledge. We investigated to what degree the findings from GFM have biological relevance. We used the Drosophila Genetic Reference Panel to investigate locomotor activity, and applied genomic feature prediction models to identify gene ontology (GO) categories predictive of this phenotype. Next, we applied the covariance association test to partition the genomic variance of the predictive GO terms to the genes within these terms. We then functionally assessed whether the identified candidate genes affected locomotor activity by reducing gene expression using RNA interference. In five of the seven candidate genes tested, reduced gene expression altered the phenotype. The ranking of genes within the predictive GO term was highly correlated with the magnitude of the phenotypic consequence of gene knockdown. This study provides evidence for five new candidate genes for locomotor activity, and provides support for the reliability of the GFM approach.
机译:了解复杂性状的遗传基础需要了解有助于表型变异的遗传变异。需要可靠的统计方法来获得此类知识。在全基因组关联研究中,测试变体与性状变异性的关联,以查明有助于定量性状的基因座。由于严格的全基因组重要性阈值可用于控制假阳性率,因此许多真正的因果变异可能仍未被发现。为了改善这个问题,已经开发了许多替代方法,例如基因组特征模型(GFM)。 GFM方法测试一组基因组标记的关联,并利用先前的生物学知识根据基因组数据预测基因组值。我们调查了GFM的发现在多大程度上具有生物学意义。我们使用果蝇遗传参考小组调查运动活动,并应用基因组特征预测模型来鉴定可预测该表型的基因本体(GO)类别。接下来,我们应用协方差关联检验将预测GO项的基因组变异分配给这些项内的基因。然后,我们在功能上评估了鉴定出的候选基因是否通过使用RNA干扰降低基因表达来影响运动活性。在测试的七个候选基因中的五个中,减少的基因表达改变了表型。预测GO项内的基因排名与基因敲除的表型后果的幅度高度相关。这项研究提供了五个新的运动活动候选基因的证据,并为GFM方法的可靠性提供了支持。

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