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NNAlign: A Web-Based Prediction Method Allowing Non-Expert End-User Discovery of Sequence Motifs in Quantitative Peptide Data

机译:NNAlign:一种基于Web的预测方法允许非专家最终用户发现定量肽数据中的序列基序

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摘要

Recent advances in high-throughput technologies have made it possible to generate both gene and protein sequence data at an unprecedented rate and scale thereby enabling entirely new “omics”-based approaches towards the analysis of complex biological processes. However, the amount and complexity of data that even a single experiment can produce seriously challenges researchers with limited bioinformatics expertise, who need to handle, analyze and interpret the data before it can be understood in a biological context. Thus, there is an unmet need for tools allowing non-bioinformatics users to interpret large data sets. We have recently developed a method, NNAlign, which is generally applicable to any biological problem where quantitative peptide data is available. This method efficiently identifies underlying sequence patterns by simultaneously aligning peptide sequences and identifying motifs associated with quantitative readouts. Here, we provide a web-based implementation of NNAlign allowing non-expert end-users to submit their data (optionally adjusting method parameters), and in return receive a trained method (including a visual representation of the identified motif) that subsequently can be used as prediction method and applied to unknown proteins/peptides. We have successfully applied this method to several different data sets including peptide microarray-derived sets containing more than 100,000 data points. NNAlign is available online at .
机译:高通量技术的最新进展使得以前所未有的速度和规模生成基因和蛋白质序列数据成为可能,从而使全新的基于“组学”的方法可用于复杂生物过程的分析。但是,即使是单个实验也可以产生的数据量和复杂性,对生物信息学专业知识有限的研究人员构成了挑战,他们需要处理,分析和解释数据,才能在生物学背景下理解数据。因此,对允许非生物信息学用户解释大型数据集的工具存在未满足的需求。我们最近开发了一种方法NNAlign,该方法通常适用于可获得定量肽段数据的任何生物学问题。该方法通过同时比对肽序列和鉴定与定量读数相关的基序,有效鉴定了潜在的序列模式。在这里,我们提供了NNAlign的基于网络的实现,允许非专业的最终用户提交其数据(可选地调整方法参数),然后接收经过训练的方法(包括所识别图案的视觉表示),随后可以用作预测方法,并应用于未知的蛋白质/肽。我们已成功地将此方法应用于几种不同的数据集,包括包含超过100,000个数据点的肽微阵列衍生集。 NNAlign可从以下网站在线获得。

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