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利用无偏基因组特征对因果疾病基因进行优先级排序。

Prioritizing causal disease genes using unbiased genomic features.

作者信息

Deo Rahul C, Musso Gabriel, Tasan Murat, Tang Paul, Poon Annie, Yuan Christiana, Felix Janine F, Vasan Ramachandran S, Beroukhim Rameen, De Marco Teresa, Kwok Pui-Yan, MacRae Calum A, Roth Frederick P

出版信息

Genome Biol. 2014 Dec 3;15(12):534. doi: 10.1186/s13059-014-0534-8.

Abstract

BACKGROUND

Cardiovascular disease (CVD) is the leading cause of death in the developed world. Human genetic studies, including genome-wide sequencing and SNP-array approaches, promise to reveal disease genes and mechanisms representing new therapeutic targets. In practice, however, identification of the actual genes contributing to disease pathogenesis has lagged behind identification of associated loci, thus limiting the clinical benefits.

RESULTS

To aid in localizing causal genes, we develop a machine learning approach, Objective Prioritization for Enhanced Novelty (OPEN), which quantitatively prioritizes gene-disease associations based on a diverse group of genomic features. This approach uses only unbiased predictive features and thus is not hampered by a preference towards previously well-characterized genes. We demonstrate success in identifying genetic determinants for CVD-related traits, including cholesterol levels, blood pressure, and conduction system and cardiomyopathy phenotypes. Using OPEN, we prioritize genes, including FLNC, for association with increased left ventricular diameter, which is a defining feature of a prevalent cardiovascular disorder, dilated cardiomyopathy or DCM. Using a zebrafish model, we experimentally validate FLNC and identify a novel FLNC splice-site mutation in a patient with severe DCM.

CONCLUSION

Our approach stands to assist interpretation of large-scale genetic studies without compromising their fundamentally unbiased nature.

摘要

背景

心血管疾病(CVD)是发达国家的主要死因。包括全基因组测序和单核苷酸多态性阵列方法在内的人类遗传学研究有望揭示代表新治疗靶点的疾病基因和机制。然而,在实际应用中,对疾病发病机制有实际贡献的基因的鉴定落后于相关基因座的鉴定,从而限制了临床获益。

结果

为了帮助定位致病基因,我们开发了一种机器学习方法,即增强新颖性的客观优先级排序(OPEN),该方法基于多种基因组特征对基因与疾病的关联进行定量排序。这种方法仅使用无偏预测特征,因此不会受到对先前已充分表征基因的偏好的阻碍。我们在识别CVD相关性状的遗传决定因素方面取得了成功,这些性状包括胆固醇水平、血压以及传导系统和心肌病表型。使用OPEN,我们对包括FLNC在内的与左心室直径增加相关的基因进行了优先级排序,左心室直径增加是一种常见的心血管疾病——扩张型心肌病(DCM)的一个决定性特征。使用斑马鱼模型,我们通过实验验证了FLNC,并在一名重症DCM患者中鉴定出一种新的FLNC剪接位点突变。

结论

我们的方法有助于解释大规模遗传学研究,同时又不损害其根本的无偏性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3e7a/4279789/8505c2efd789/13059_2014_534_Fig1_HTML.jpg

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