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使用串联质谱结合蛋白质组数据库和统计评分法鉴定细菌。

Identification of bacteria using tandem mass spectrometry combined with a proteome database and statistical scoring.

作者信息

Dworzanski Jacek P, Snyder A Peter, Chen Rui, Zhang Haiyan, Wishart David, Li Liang

机构信息

Geo-Centers, Inc., Aberdeen Proving Ground, Maryland 21010-0068, USA.

出版信息

Anal Chem. 2004 Apr 15;76(8):2355-66. doi: 10.1021/ac0349781.

Abstract

Detection and identification of pathogenic bacteria and their protein toxins play a crucial role in a proper response to natural or terrorist-caused outbreaks of infectious diseases. The recent availability of whole genome sequences of priority bacterial pathogens opens new diagnostic possibilities for identification of bacteria by retrieving their genomic or proteomic information. We describe a method for identification of bacteria based on tandem mass spectrometric (MS/MS) analysis of peptides derived from bacterial proteins. This method involves bacterial cell protein extraction, trypsin digestion, liquid chromatography MS/MS analysis of the resulting peptides, and a statistical scoring algorithm to rank MS/MS spectral matching results for bacterial identification. To facilitate spectral data searching, a proteome database was constructed by translating genomes of bacteria of interest with fully or partially determined sequences. In this work, a prototype database was constructed by the automated analysis of 87 publicly available, fully sequenced bacterial genomes with the GLIMMER gene finding software. MS/MS peptide spectral matching for peptide sequence assignment against this proteome database was done by SEQUEST. To gauge the relative significance of the SEQUEST-generated matching parameters for correct peptide assignment, discriminant function (DF) analysis of these parameters was applied and DF scores were used to calculate probabilities of correct MS/MS spectra assignment to peptide sequences in the database. The peptides with DF scores exceeding a threshold value determined by the probability of correct peptide assignment were accepted and matched to the bacterial proteomes represented in the database. Sequence filtering or removal of degenerate peptides matched with multiple bacteria was then performed to further improve identification. It is demonstrated that using a preset criterion with known distributions of discriminant function scores and probabilities of correct peptide sequence assignments, a test bacterium within the 87 database microorganisms can be unambiguously identified.

摘要

病原菌及其蛋白质毒素的检测与鉴定对于妥善应对自然或恐怖主义引发的传染病疫情至关重要。近期,重点细菌病原体全基因组序列的可得性为通过检索其基因组或蛋白质组信息来鉴定细菌开辟了新的诊断可能性。我们描述了一种基于对源自细菌蛋白质的肽段进行串联质谱(MS/MS)分析来鉴定细菌的方法。该方法包括细菌细胞蛋白质提取、胰蛋白酶消化、对所得肽段进行液相色谱MS/MS分析,以及一种统计评分算法,用于对MS/MS谱匹配结果进行排序以鉴定细菌。为便于谱数据搜索,通过翻译具有完全或部分确定序列的目标细菌基因组构建了一个蛋白质组数据库。在这项工作中,使用GLIMMER基因发现软件对87个公开可得的全测序细菌基因组进行自动分析,构建了一个原型数据库。通过SEQUEST针对该蛋白质组数据库进行MS/MS肽谱匹配以进行肽序列分配。为评估SEQUEST生成的匹配参数对于正确肽段分配的相对重要性,对这些参数进行判别函数(DF)分析,并使用DF分数来计算将正确的MS/MS谱分配给数据库中肽序列的概率。接受DF分数超过由正确肽段分配概率确定的阈值的肽段,并将其与数据库中代表的细菌蛋白质组进行匹配。然后进行序列过滤或去除与多种细菌匹配的简并肽段,以进一步提高鉴定准确性。结果表明,使用具有判别函数分数和正确肽序列分配概率的已知分布的预设标准,可以明确鉴定87个数据库微生物中的测试细菌。

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