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Robust accurate identification of peptides (RAId): deciphering MS~2 data using a structured library search with de novo based statistics

机译:可靠的肽段准确鉴定(RAId):使用结构化的库搜索和基于de novo的统计数据来解密MS〜2数据

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Motivation: The key to MS -based proteomics is peptide sequencing. The major challenge in peptide sequencing, whether library search or de novo, is to better infer statistical significance and better attain noise reduction. Since the noise in a spectrum depends on experimental conditions, the instrument used and many other factors, it cannot be predicted even if the peptide sequence is known. The characteristics of the noise can only be uncovered once a spectrum is given. We wish to overcome such issues. Results: We designed RAId to identify peptides from their associated tandem mass spectrometry data. RAId performs a novel de novo sequencing followed by a search in a peptide library that we created. Through de novo sequencing, we establish the spectrum-specific background score statistics for the library search. When the database search fails to return significant hits, the top-ranking de novo sequences become potential candidates for new peptides that are not yet in the database. The use of spectrum-specific background statistics seems to enable RAId to perform well even when the spectral quality is marginal. Other important features of RAId include its potential in de novo sequencing alone and the ease of incorporating post-translational modifications. Availability: Programs implementing the methods described are available from the authors on request.
机译:动机:基于MS的蛋白质组学的关键是肽测序。无论是从库检索还是从头检索,肽段测序的主要挑战是如何更好地推断统计意义并更好地降低噪音。由于频谱中的噪声取决于实验条件,所使用的仪器以及许多其他因素,因此即使已知肽序列也无法预测。噪声的特征只有在给出频谱后才能被发现。我们希望克服这些问题。结果:我们设计了RAId以从其相关的串联质谱数据中鉴定肽。 RAId执行新的从头测序,然后在我们创建的肽库中进行搜索。通过从头测序,我们为图书馆搜索建立了特定光谱的背景得分统计数据。当数据库搜索未能返回重要的结果时,排名最高的从头序列将成为数据库中尚未存在的新肽段的潜在候选者。使用频谱专用的背景统计数据似乎可以使RAId表现良好,即使频谱质量很差。 RAId的其他重要特征包括其单独进行从头测序的潜力以及易于整合翻译后修饰的潜力。可用性:作者可以根据要求提供实现所描述方法的程序。

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