计算机科学
工作流程
水准点(测量)
数据挖掘
错误发现率
计算生物学
生物
数据库
大地测量学
生物化学
基因
地理
作者
Rainer Glauben,A Batra,Thomas Stroh,Ulrike Erben,I Fedke,Hans‐Anton Lehr,F. Leoni,Paolo Mascagni,Charles A. Dinarello,M Zeitz,Britta Siegmund
出处
期刊:Gut
[BMJ]
日期:2008-01-14
卷期号:57 (5): 613-622
被引量:99
标识
DOI:10.1136/gut.2007.134650
摘要
ABSTRACT
The field of cross-linking mass spectrometry has matured to a frequently used tool for the investigation of protein structures as well as interactome studies up to a system wide level. The growing community generated a broad spectrum of applications, linker types, acquisition strategies and specialized data analysis tools, which makes it challenging, especially for newcomers, to decide for an appropriate analysis workflow. Therefore, we here present a large and flexible synthetic peptide library as reliable instrument to benchmark crosslinkers with different reactive sites as well as acquisition techniques and data analysis algorithms. Additionally, we provide a tool, IMP-X-FDR, that calculates the real, experimentally validated, FDR, compares results across search engine platforms and analyses crosslink properties in an automated manner. The library was used with the reagents DSSO, DSBU, CDI, ADH, DHSO and azide-a-DSBSO and data were analysed using the algorithms MeroX, MS Annika, XlinkX, pLink 2, MaxLynx and xiSearch. We thereby show that the correct algorithm and search setting choice is highly important to improve ID rate and FDR in combination with software and sample-complexity specific score cut-offs. When analysing DSSO data with MS Annika, we reach high identification rates of up to ∼70 % of the theoretical maximum (i.e. 700 unique lysine-lysine cross-links) while maintaining a low real FDR of < 3 % at cross-link level and with high reproducibility, representatively showing that our test system delivers valuable and statistically solid results. Graphical abstract
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