首页> 外文期刊>Biology Direct >A computational approach to candidate gene prioritization for X-linked mental retardation using annotation-based binary filtering and motif-based linear discriminatory analysis
【24h】

A computational approach to candidate gene prioritization for X-linked mental retardation using annotation-based binary filtering and motif-based linear discriminatory analysis

机译:一种基于注释的二进制过滤和基于基元的线性判别分析的X连锁智力障碍候选基因优先级计算方法

获取原文
           

摘要

Background Several computational candidate gene selection and prioritization methods have recently been developed. These in silico selection and prioritization techniques are usually based on two central approaches - the examination of similarities to known disease genes and/or the evaluation of functional annotation of genes. Each of these approaches has its own caveats. Here we employ a previously described method of candidate gene prioritization based mainly on gene annotation, in accompaniment with a technique based on the evaluation of pertinent sequence motifs or signatures, in an attempt to refine the gene prioritization approach. We apply this approach to X-linked mental retardation (XLMR), a group of heterogeneous disorders for which some of the underlying genetics is known. Results The gene annotation-based binary filtering method yielded a ranked list of putative XLMR candidate genes with good plausibility of being associated with the development of mental retardation. In parallel, a motif finding approach based on linear discriminatory analysis (LDA) was employed to identify short sequence patterns that may discriminate XLMR from non-XLMR genes. High rates (>80%) of correct classification was achieved, suggesting that the identification of these motifs effectively captures genomic signals associated with XLMR vs. non-XLMR genes. The computational tools developed for the motif-based LDA is integrated into the freely available genomic analysis portal Galaxy ( http://main.g2.bx.psu.edu/ webcite ). Nine genes (APLN, ZC4H2, MAGED4, MAGED4B, RAP2C, FAM156A, FAM156B, TBL1X, and UXT) were highlighted as highly-ranked XLMR methods. Conclusions The combination of gene annotation information and sequence motif-orientated computational candidate gene prediction methods highlight an added benefit in generating a list of plausible candidate genes, as has been demonstrated for XLMR. Reviewers: This article was reviewed by Dr Barbara Bardoni (nominated by Prof Juergen Brosius); Prof Neil Smalheiser and Dr Dustin Holloway (nominated by Prof Charles DeLisi).
机译:背景技术最近已经开发了几种计算候选基因选择和优先级排序方法。这些计算机选择和优先排序技术通常基于两种主要方法-检查与已知疾病基因的相似性和/或评估基因的功能注释。这些方法中的每一个都有其自己的警告。在这里,我们采用一种主要基于基因注释的候选基因优先排序方法,并结合了一种基于相关序列基序或特征评估的技术,以试图完善基因优先排序方法。我们将这种方法应用于X连锁智力低下(XLMR),这是一组异质性疾病,其一些潜在的遗传学是已知的。结果基于基因注释的二元过滤方法产生了推定的XLMR候选基因的排名列表,该列表具有与智力障碍的发展相关的良好可信度。同时,采用基于线性判别分析(LDA)的基序发现方法来鉴定可将XLMR与非XLMR基因区分开的短序列模式。正确分类的比率很高(> 80%),这表明这些基序的鉴定有效捕获了与XLMR和非XLMR基因相关的基因组信号。为基于主题的LDA开发的计算工具已集成到免费的基因组分析门户Galaxy(http://main.g2.bx.psu.edu/ webcite)中。九种基因(APLN,ZC4H2,MAGED4,MAGED4B,RAP2C,FAM156A,FAM156B,TBL1X和UXT)被突出显示为高级XLMR方法。结论基因注释信息和面向序列基序的计算候选基因预测方法的结合,突出了在生成合理的候选基因列表方面的额外好处,正如XLMR所证明的那样。审稿人:本文由Barbara Bardoni博士(由Juergen Brosius教授提名)审阅; Neil Smalheiser教授和Dustin Holloway博士(由Charles DeLisi教授提名)。

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