Phosphoproteomics toolbox: Computational biology, protein chemistry and mass spectrometry
- 4 August 2006
- journal article
- Published by Wiley in FEBS Letters
- Vol. 580 (20) , 4764-4770
- https://doi.org/10.1016/j.febslet.2006.07.068
Abstract
Protein phosphorylation is important for regulation of most biological functions and up to 50% of all proteins are thought to be modified by protein kinases. Increased knowledge about potential phosphorylation of a protein may increase our understanding of the molecular processes in which it takes part. Despite the importance of protein phosphorylation, identification of phosphoproteins and localization of phosphorylation sites is still a major challenge in proteomics. However, high-throughput methods for identification of phosphoproteins are being developed, in particular within the fields of bioinformatics and mass spectrometry. In this review, we present a toolbox of current technology applied in phosphoproteomics including computational prediction, chemical approaches and mass spectrometry-based analysis, and propose an integrated strategy for experimental phosphoproteomicsKeywords
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