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is-rSNP: a novel technique for in silico regulatory SNP detection

机译:is-rSNP:用于计算机调节SNP检测的新技术

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摘要

>Motivation: Determining the functional impact of non-coding disease-associated single nucleotide polymorphisms (SNPs) identified by genome-wide association studies (GWAS) is challenging. Many of these SNPs are likely to be regulatory SNPs (rSNPs): variations which affect the ability of a transcription factor (TF) to bind to DNA. However, experimental procedures for identifying rSNPs are expensive and labour intensive. Therefore, in silico methods are required for rSNP prediction. By scoring two alleles with a TF position weight matrix (PWM), it can be determined which SNPs are likely rSNPs. However, predictions in this manner are noisy and no method exists that determines the statistical significance of a nucleotide variation on a PWM score.>Results: We have designed an algorithm for in silico rSNP detection called is-rSNP. We employ novel convolution methods to determine the complete distributions of PWM scores and ratios between allele scores, facilitating assignment of statistical significance to rSNP effects. We have tested our method on 41 experimentally verified rSNPs, correctly predicting the disrupted TF in 28 cases. We also analysed 146 disease-associated SNPs with no known functional impact in an attempt to identify candidate rSNPs. Of the 11 significantly predicted disrupted TFs, 9 had previous evidence of being associated with the disease in the literature. These results demonstrate that is-rSNP is suitable for high-throughput screening of SNPs for potential regulatory function. This is a useful and important tool in the interpretation of GWAS.>Availability: is-rSNP software is available for use at: >Contact: ; >Supplementary information: are available at Bioinformatics online.
机译:>动机:确定通过全基因组关联研究(GWAS)识别的非编码疾病相关单核苷酸多态性(SNP)的功能影响具有挑战性。这些SNP中的许多很可能是调节性SNP(rSNP):影响转录因子(TF)与DNA结合能力的变异。然而,用于鉴定rSNP的实验程序昂贵且劳动强度大。因此,rSNP预测需要计算机方法。通过使用TF位置权重矩阵(PWM)对两个等位基因评分,可以确定哪些SNP可能是rSNP。但是,以这种方式进行的预测很杂乱,还没有确定核苷酸分数对PWM得分的统计意义的统计方法。>结果:我们设计了一种用于计算机rSNP检测的算法,称为is-rSNP。我们采用新颖的卷积方法来确定PWM分数和等位基因分数之间的比率的完整分布,以利于分配具有统计学意义的rSNP效应。我们在41个经过实验验证的rSNP上测试了我们的方法,正确预测了28例TF的破坏。我们还分析了146种与疾病相关的SNP,没有已知的功能影响,试图鉴定候选rSNP。在11个明显预测的破坏性TF中,有9个以前的证据表明与该疾病有关。这些结果表明,is-rSNP适用于SNP高通量筛选潜在的调节功能。这是解释GWAS的有用且重要的工具。>可用性: is-rSNP软件可用于:>联系人:; >补充信息:可在线访问生物信息学。

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