Title
SAMPI: protein identification with mass spectra alignments.
Abstract
Mass spectrometry based peptide mass fingerprints (PMFs) offer a fast, efficient, and robust method for protein identification. A protein is digested (usually by trypsin) and its mass spectrum is compared to simulated spectra for protein sequences in a database. However, existing tools for analyzing PMFs often suffer from missing or heuristic analysis of the significance of search results and insufficient handling of missing and additional peaks.We present an unified framework for analyzing Peptide Mass Fingerprints that offers a number of advantages over existing methods: First, comparison of mass spectra is based on a scoring function that can be custom-designed for certain applications and explicitly takes missing and additional peaks into account. The method is able to simulate almost every additive scoring scheme. Second, we present an efficient deterministic method for assessing the significance of a protein hit, independent of the underlying scoring function and sequence database. We prove the applicability of our approach using biological mass spectrometry data and compare our results to the standard software Mascot.The proposed framework for analyzing Peptide Mass Fingerprints shows performance comparable to Mascot on small peak lists. Introducing more noise peaks, we are able to keep identification rates at a similar level by using the flexibility introduced by scoring schemes.
Year
DOI
Venue
2007
10.1186/1471-2105-8-102
BMC Bioinformatics
Keywords
Field
DocType
mass spectrometry,score function,microarrays,mass spectra,bioinformatics,peptide mass fingerprinting,protein sequence,algorithms,spectrum
Biology,Protein identification,Mass spectrum,Peptide mapping,Peptide-mass fingerprint,Mass spectrometry,Bioinformatics,Peptide mass fingerprinting
Journal
Volume
Issue
ISSN
8
1
1471-2105
Citations 
PageRank 
References 
14
0.35
6
Authors
3
Name
Order
Citations
PageRank
Hans-Michael Kaltenbach1241.99
Andreas Wilke231423.84
Sebastian Böcker333239.19