首页> 外文期刊>BMC Systems Biology >Novel semantic similarity measure improves an integrative approach to predicting gene functional associations
【24h】

Novel semantic similarity measure improves an integrative approach to predicting gene functional associations

机译:新颖的语义相似性度量改进了预测基因功能关联的综合方法

获取原文
获取外文期刊封面目录资料

摘要

Background Elucidation of the direct/indirect protein interactions and gene associations is required to fully understand the workings of the cell. This can be achieved through the use of both low- and high-throughput biological experiments and in silico methods. We present GAP (Gene functional Association Predictor), an integrative method for predicting and characterizing gene functional associations. GAP integrates different biological features using a novel taxonomy-based semantic similarity measure in predicting and prioritizing high-quality putative gene associations. The proposed similarity measure increases information gain from the available gene annotations. The annotation information is incorporated from several public pathway databases, Gene Ontology annotations as well as drug and disease associations from the scientific literature. Results We evaluated GAP by comparing its prediction performance with several other well-known functional interaction prediction tools over a comprehensive dataset of known direct and indirect interactions, and observed significantly better prediction performance. We also selected a small set of GAP’s highly-scored novel predicted pairs (i.e., currently not found in any known database or dataset), and by manually searching the literature for experimental evidence accessible in the public domain, we confirmed different categories of predicted functional associations with available evidence of interaction. We also provided extra supporting evidence for subset of the predicted functionally-associated pairs using an expert curated database of genes associated to autism spectrum disorders. Conclusions GAP’s predicted “functional interactome” contains ≈1M highly-scored predicted functional associations out of which about 90% are novel (i.e., not experimentally validated). GAP’s novel predictions connect disconnected components and singletons to the main connected component of the known interactome. It can, therefore, be a valuable resource for biologists by providing corroborating evidence for and facilitating the prioritization of potential direct or indirect interactions for experimental validation. GAP is freely accessible through a web portal: http://ophid.utoronto.ca/gap webcite .
机译:背景需要阐明直接/间接蛋白质相互作用和基因关联,以充分了解细胞的工作原理。这可以通过使用低通量和高通量生物学实验以及计算机方法来实现。我们提出了GAP(基因功能关联预测器),一种用于预测和表征基因功能关联的综合方法。 GAP使用一种新的基于分类法的语义相似性度量方法来整合不同的生物学特征,从而预测和推定高质量的推定基因关联。拟议的相似性度量可从可用的基因注释中增加信息获取。注释信息来自多个公共途径数据库,基因本体论注释以及科学文献中的药物和疾病关联。结果我们通过将GAP的预测性能与其他几种知名的功能相互作用预测工具进行比较,从而评估了GAP的直接和间接相互作用的综合数据集,并观察到了明显更好的预测性能。我们还选择了一小批GAP评分较高的新颖预测对(即,目前在任何已知数据库或数据集中均未找到),并且通过手动搜索文献以获取可在公共领域获得的实验证据,我们确认了不同类别的预测功能与可用的交互作用证据相关联。我们还使用与孤独症谱系障碍相关的专家精选数据库,为预测的功能相关对的子集提供了额外的支持证据。结论GAP预测的“功能性相互作用组”包含≈1M个高度评分的预测性功能关联,其中约90%是新颖的(即未经实验验证)。 GAP的新颖预测将断开的组件和单例连接到已知交互组的主要连接组件。因此,它可以为生物学家提供宝贵的证据,为实验验证提供确凿的证据并促进潜在的直接或间接相互作用的优先级排序。可通过以下门户网站免费访问GAP:http://ophid.utoronto.ca/gap webcite。

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