Title of article :
Comparison of metaheuristic strategies for peakbin selection in proteomic mass spectrometry data
Author/Authors :
Miguel Garc?a-Torres، نويسنده , , Rubén Arma?anzas، نويسنده , ,
Concha Bielza ، نويسنده , , Pedro Larra?aga، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
Mass spectrometry (MS) data provide a promising strategy for biomarker discovery. For this purpose, the detection of relevant peakbins in MS data is currently under intense research. Data from mass spectrometry are challenging to analyze because of their high dimensionality and the generally low number of samples available. To tackle this problem, the scientific community is becoming increasingly interested in applying feature subset selection techniques based on specialized machine learning algorithms. In this paper, we present a performance comparison of some metaheuristics: best first (BF), genetic algorithm (GA), scatter search (SS) and variable neighborhood search (VNS). Up to now, all the algorithms, except for GA, have been first applied to detect relevant peakbins in MS data. All these metaheuristic searches are embedded in two different filter and wrapper schemes coupled with Naive Bayes and SVM classifiers.
Keywords :
Metaheuristics , Feature subset selection , mass spectrometry
Journal title :
Information Sciences
Journal title :
Information Sciences