Towards functional phosphoproteomics by mapping differential phosphorylation events in signaling networks
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Heribert Hirt | Alberto de la Fuente | Wieslawa I. Mentzen | A. G. de la Fuente | H. Hirt | Sergio de la Fuente van Bentem | Sergio de la Fuente van Bentem | Wieslawa I. Mentzen
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