...
首页> 外文期刊>BMC Medical Genomics >Phenotype-driven gene prioritization for rare diseases using graph convolution on heterogeneous networks
【24h】

Phenotype-driven gene prioritization for rare diseases using graph convolution on heterogeneous networks

机译:在异构网络上使用图卷积对表型驱动的基因进行优先级排序

获取原文
           

摘要

One of the major goals of genomic medicine is the identification of causal genomic variants in a patient and their relation to the observed clinical phenotypes. Prioritizing the genomic variants by considering only the genotype information usually identifies a few hundred potential variants. Narrowing it down further to find the causal disease genes and relating them to the observed clinical phenotypes remains a significant challenge, especially for rare diseases. We propose a phenotype-driven gene prioritization approach using heterogeneous networks in the context of rare diseases. Towards this, we first built a heterogeneous network consisting of ontological associations as well as curated associations involving genes, diseases, phenotypes and pathways from multiple sources. Motivated by the recent progress in spectral graph convolutions, we developed a graph convolution based technique to infer new phenotype-gene associations from this initial set of associations. We included these inferred associations in the initial network and termed this integrated network HANRD (Heterogeneous Association Network for Rare Diseases). We validated this approach on 230 recently published rare disease clinical cases using the case phenotypes as input. When HANRD was queried with the case phenotypes as input, the causal genes were captured within Top-50 for more than 31% of the cases and within Top-200 for more than 56% of the cases. The results showed improved performance when compared to other state-of-the-art tools. In this study, we showed that the heterogeneous network HANRD, consisting of curated, ontological and inferred associations, helped improve causal gene identification in rare diseases. HANRD allows future enhancements by supporting incorporation of new entity types and additional information sources.
机译:基因组医学的主要目标之一是鉴定患者中的因果基因组变异及其与观察到的临床表型的关系。仅考虑基因型信息来对基因组变异进行优先排序通常可以识别出数百种潜在变异。进一步缩小范围以找到因果疾病基因并将它们与观察到的临床表型相关仍然是一项重大挑战,尤其是对于罕见疾病。我们提出了在罕见疾病的背景下使用异构网络的表型驱动基因优先排序方法。为此,我们首先构建了一个异构网络,该网络由本体关联以及策展的关联组成,涉及基因,疾病,表型和多种来源的途径。受频谱图卷积的最新进展的启发,我们开发了一种基于图卷积的技术,可以从这种初始的关联集中推断出新的表型-基因关联。我们将这些推断的关联包括在初始网络中,并称为此综合网络HANRD(罕见病异质关联网络)。我们使用病例表型作为输入,对230个最近发表的罕见疾病临床病例进行了验证。当以病例表型作为输入查询HANRD时,原因基因在Top-50内捕获的病例超过31%,在Top-200内捕获的病例超过56%。与其他最新工具相比,结果表明性能得到了改善。在这项研究中,我们表明,由精心策划的,本体的和推断的关联组成的异构网络HANRD有助于改善罕见病中的因果基因识别。 HANRD通过支持合并新的实体类型和其他信息源来允许将来的增强。

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