The Analysis of Mass Spectrometry Data to Resolve and Quantify Peptide Peaks in Cerebral Stroke Samples: An Evolutionary Computation Approach

Download
  1. (PDF, 343 KB)
AuthorSearch for: ; Search for: ; Search for:
TypeArticle
ConferenceMedical Applications of Genetic and Evolutionary Computation Workshop (MedGEC) as part of Genetic and Evolutionary Computation Conference (GECCO), July 8-12, 2006., Seattle, Washington, USA
Subjectmass spectroscopy; proteomics; medicine; genetic algorithms; differential evolution; evolutionary computation; model fitting
AbstractA preliminary investigation of cerebral stroke samples injected into a mass spectrometer is performed from an evolutionary computation perspective. The detection and resolution of peptide peaks is pursued for the purpose of automatically and accurately determining unlabeled peptide quantities. A theoretical peptide peak model is proposed and a series of experiments are then pursued (most within a distributed computing environment) along with a data preprocessing strategy that includes i) a deisotoping step followed by ii) a peak picking procedure, followed by iii) a series of evolutionary computation experiments oriented towards the investigation of their capability for achieving the aforementioned goal. Results from four different genetic algorithms and one differential evolution algorithm are reported with respect to their ability to find solutions that fit within the framework of the presented theoretical peptide peak model. Both unconstrained and constrained (as determined by a course grained preprocessing stage) solution space experiments are performed for both types of evolutionary algorithms. Good preliminary results are obtained.
Publication date
LanguageEnglish
AffiliationNRC Institute for Information Technology; National Research Council Canada
Peer reviewedNo
NRC number48505
NPARC number5763478
Export citationExport as RIS
Report a correctionReport a correction
Record identifierff1b9bac-4e90-438c-b0dc-777f8b7387db
Record created2009-03-29
Record modified2016-05-09
Bookmark and share
  • Share this page with Facebook (Opens in a new window)
  • Share this page with Twitter (Opens in a new window)
  • Share this page with Google+ (Opens in a new window)
  • Share this page with Delicious (Opens in a new window)