Discovering robust protein biomarkers for disease from relative expression reversals in 2-D DIGE data

This study assesses the ability of a novel family of machine learning algorithms to identify changes in relative protein expression levels, measured using 2‐D DIGE data, which support accurate class prediction. The analysis was done using a training set of 36 total cellular lysates comprised of six...

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Veröffentlicht in:Proteomics (Weinheim) 2007-04, Vol.7 (8), p.1197-1207
Hauptverfasser: Anderson, Troy J., Tchernyshyov, Irina, Diez, Roberto, Cole, Robert N., Geman, Donald, Dang, Chi V., Winslow, Raimond L.
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Sprache:eng
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Zusammenfassung:This study assesses the ability of a novel family of machine learning algorithms to identify changes in relative protein expression levels, measured using 2‐D DIGE data, which support accurate class prediction. The analysis was done using a training set of 36 total cellular lysates comprised of six normal and three cancer biological replicates (the remaining are technical replicates) and a validation set of four normal and two cancer samples. Protein samples were separated by 2‐D DIGE and expression was quantified using DeCyder‐2D Differential Analysis Software. The relative expression reversal (RER) classifier correctly classified 9/9 training biological samples (p
ISSN:1615-9853
1615-9861
DOI:10.1002/pmic.200600374