Pinpointing Biomarkers in Proteomic LC/MS Data by Moving-Window Discriminant Analysis

The identification of differential patterns in data originating from combined measurement techniques such as LC/MS is pivotal to proteomics. Although “shotgun proteomics” has been employed successfully to this end, this method also has severe drawbacks, because of its dependence on largely untargete...

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Veröffentlicht in:Analytical chemistry (Washington) 2011-07, Vol.83 (13), p.5197-5206
Hauptverfasser: Bloemberg, Tom G, Wessels, Hans J. C. T, van Dael, Maurice, Gloerich, Jolein, van den Heuvel, Lambert P, Buydens, Lutgarde M. C, Wehrens, Ron
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Sprache:eng
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Zusammenfassung:The identification of differential patterns in data originating from combined measurement techniques such as LC/MS is pivotal to proteomics. Although “shotgun proteomics” has been employed successfully to this end, this method also has severe drawbacks, because of its dependence on largely untargeted MS/MS sequencing and databases for statistical analyses. Alternatively, several MS-signal-based (MS/MS-independent) methods have been published that are mainly based on (univariate) Student’s t-tests. Here, we present a more robust multivariate alternative employing linear discriminant analysis. Like the t-test-based methods, it is applied directly to LC/MS data, instead of using MS/MS measurements. We demonstrate the method on a number of simulated data sets, as well as on a spike-in LC/MS data set, and show its superior performance over t-tests.
ISSN:0003-2700
1520-6882
DOI:10.1021/ac200334s