The central role of kinases in virtually all signal transduction networks is the driving motivation for the development of compounds modulating their activity. ATP-mimetic inhibitors are essential tools for elucidating signaling pathways and are emerging as promising therapeutic agents. However, off-target ligand binding and complex and sometimes unexpected kinase/inhibitor relationships can occur for seemingly unrelated kinases, stressing that computational approaches are needed for learning the interaction determinants and for the inference of the effect of small compounds on a given kinase. Recently published high-throughput profiling studies assessed the effects of thousands of small compound inhibitors, covering a substantial portion of the kinome. This wealth of data paved the road for computational resources and methods that can offer a major contribution in understanding the reasons of the inhibition, helping in the rational design of more specific molecules, in the in silico prediction of inhibition for those neglected kinases for which no systematic analysis has been carried yet, in the selection of novel inhibitors with desired selectivity, and offering novel avenues of personalized therapies.

Ferrè, F., Palmeri, A., HELMER CITTERICH, M. (2014). Computational methods for analysis and inference of kinase/inhibitor relationships. FRONTIERS IN GENETICS, 5, 196-196 [10.3389/fgene.2014.00196].

Computational methods for analysis and inference of kinase/inhibitor relationships

HELMER CITTERICH, MANUELA
2014-01-01

Abstract

The central role of kinases in virtually all signal transduction networks is the driving motivation for the development of compounds modulating their activity. ATP-mimetic inhibitors are essential tools for elucidating signaling pathways and are emerging as promising therapeutic agents. However, off-target ligand binding and complex and sometimes unexpected kinase/inhibitor relationships can occur for seemingly unrelated kinases, stressing that computational approaches are needed for learning the interaction determinants and for the inference of the effect of small compounds on a given kinase. Recently published high-throughput profiling studies assessed the effects of thousands of small compound inhibitors, covering a substantial portion of the kinome. This wealth of data paved the road for computational resources and methods that can offer a major contribution in understanding the reasons of the inhibition, helping in the rational design of more specific molecules, in the in silico prediction of inhibition for those neglected kinases for which no systematic analysis has been carried yet, in the selection of novel inhibitors with desired selectivity, and offering novel avenues of personalized therapies.
2014
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore BIO/11 - BIOLOGIA MOLECOLARE
English
Con Impact Factor ISI
kinase inhibitors; drug design and development; chemogenomics; kinase/inhibitor inference; kinase activity modulation
http://journal.frontiersin.org/Journal/10.3389/fgene.2014.00196/full
Ferrè, F., Palmeri, A., HELMER CITTERICH, M. (2014). Computational methods for analysis and inference of kinase/inhibitor relationships. FRONTIERS IN GENETICS, 5, 196-196 [10.3389/fgene.2014.00196].
Ferrè, F; Palmeri, A; HELMER CITTERICH, M
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/87934
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