RESUMEN
Cystic fibrosis (CF) is mainly caused by the deletion of Phe 508 (ΔF508) in the cystic fibrosis transmembrane conductance regulator (CFTR) protein that is thus withheld in the endoplasmic reticulum and rapidly degraded by the ubiquitin/proteasome system. New drugs able to rescue ΔF508-CFTR trafficking are eagerly awaited. An integrated bioinformatics and surface plasmon resonance (SPR) approach was here applied to investigate the rescue mechanism(s) of a series of CFTR-ligands including VX809, VX770 and some aminoarylthiazole derivatives (AAT). Computational studies tentatively identified a large binding pocket in the ΔF508-CFTR nucleotide binding domain-1 (NBD1) and predicted all the tested compounds to bind to three sub-regions of this main pocket. Noticeably, the known CFTR chaperone keratin-8 (K8) seems to interact with some residues located in one of these sub-pockets, potentially interfering with the binding of some ligands. SPR results corroborated all these computational findings. Moreover, for all the considered ligands, a statistically significant correlation was determined between their binding capability to ΔF508-NBD1 measured by SPR and the pockets availability measured by computational studies. Taken together, these results demonstrate a strong agreement between the in silico prediction and the SPR-generated binding data, suggesting a path to speed up the identification of new drugs for the treatment of cystic fibrosis.
Asunto(s)
Regulador de Conductancia de Transmembrana de Fibrosis Quística/química , Tiazoles/química , Sitios de Unión , Biología Computacional , Fibrosis Quística/tratamiento farmacológico , Evaluación Preclínica de Medicamentos , Humanos , Simulación de Dinámica Molecular , Unión Proteica , Resonancia por Plasmón de SuperficieRESUMEN
The search for inhibitors of galactokinase (GALK) enzyme is interesting for their possible therapeutic application capable to alleviate symptoms in people with classic galactosemia. Several high-throughput screenings in the past have found candidate ligands showing a moderate affinity for GALK. Computational analysis of the binding mode of these compounds in comparison to their target protein has been performed only on crystallographic static structures, therefore missing the evolution of the complex during time. In this work, we applied static and dynamics simulations to analyze the interactions between GALK and its potential inhibitors, while taking into account the temporal evolution of the complexes. The collected data allowed us to identify the most important and persistent anchoring points of the known active site and of the newly identified secondary cavity. These data will be of use to increase the specificity and the affinity of a new generation of GALK inhibitors.
Asunto(s)
Inhibidores Enzimáticos/química , Galactoquinasa/química , Galactosemias/enzimología , Sitios de Unión , Unión Competitiva , Cristalografía por Rayos X , Diseño de Fármacos , Evaluación Preclínica de Medicamentos , Inhibidores Enzimáticos/metabolismo , Inhibidores Enzimáticos/farmacología , Galactoquinasa/antagonistas & inhibidores , Galactoquinasa/metabolismo , Galactosa/química , Galactosa/metabolismo , Galactosemias/prevención & control , Humanos , Modelos Moleculares , Conformación Molecular , Simulación de Dinámica Molecular , Unión Proteica , Estructura Terciaria de Proteína , Electricidad Estática , Especificidad por Sustrato , TermodinámicaRESUMEN
Encouraged by the success of the first EGEE biomedical data challenge against malaria (WISDOM), the second data challenge battling avian flu was kicked off in April 2006 to identify new drugs for the potential variants of the influenza A virus. Mobilizing thousands of CPUs on the Grid, the six-week-long high-throughput screening activity has fulfilled over 100 CPU years of computing power and produced around 600 gigabytes of results on the Grid for further biological analysis and testing. In the paper, we demonstrate the impact of a worldwide Grid infrastructure to efficiently deploy large-scale virtual screening to speed up the drug design process. Lessons learned through the data challenge activity are also discussed.