Proteomic data analysis of glioma cancer stem-cell lines based on novel nonlinear dimensional data reduction techniques
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Anke Meyer-Bäse | Georg Wengert | Katja Pinker-Domenig | Andreas Stadlbauer | Marc Lobbes | Sylvain Lespinats | Ivo Houben | A. Meyer-Bäse | A. Stadlbauer | G. Wengert | M. Lobbes | S. Lespinats | K. Pinker-Domenig | I. Houben
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