4 research outputs found
In Silico Veritas: The Pitfalls and Challenges of Predicting
Recently the first community-wide assessments of the prediction of the structures of complexes between proteins and small molecule ligands have been reported in the so-called GPCR Dock 2008 and 2010 assessments. In the current review we discuss the different steps along the protein-ligand modeling workflow by critically analyzing the modeling strategies we used to predict the structures of protein-ligand complexes we submitted to the recent GPCR Dock 2010 challenge. These representative test cases, focusing on the pharmaceutically relevant G Protein-Coupled Receptors, are used to demonstrate the strengths and challenges of the different modeling methods. Our analysis indicates that the proper performance of the sequence alignment, introduction of structural adjustments guided by experimental data, and the usage of experimental data to identify protein-ligand interactions are critical steps in the protein-ligand modeling protocol. © 2011 by the authors; licensee MDPI, Basel, Switzerland
Comparative Analysis of Pharmacophore Screening Tools
The pharmacophore concept is of central importance in
computer-aided
drug design (CADD) mainly because of its successful application in
medicinal chemistry and, in particular, high-throughput virtual screening
(HTVS). The simplicity of the pharmacophore definition enables the
complexity of molecular interactions between ligand and receptor to
be reduced to a handful set of features. With many pharmacophore screening
softwares available, it is of the utmost interest to explore the behavior
of these tools when applied to different biological systems. In this
work, we present a comparative analysis of eight pharmacophore screening
algorithms (Catalyst, Unity, LigandScout, Phase, Pharao, MOE, Pharmer,
and POT) for their use in typical HTVS campaigns against four different
biological targets by using default settings. The results herein presented
show how the performance of each pharmacophore screening tool might
be specifically related to factors such as the characteristics of
the binding pocket, the use of specific pharmacophore features, and
the use of these techniques in specific steps/contexts of the drug
discovery pipeline. Algorithms with rmsd-based scoring functions are
able to predict more compound poses correctly as overlay-based scoring
functions. However, the ratio of correctly predicted compound poses
versus incorrectly predicted poses is better for overlay-based scoring
functions that also ensure better performances in compound library
enrichments. While the ensemble of these observations can be used
to choose the most appropriate class of algorithm for specific virtual
screening projects, we remarked that pharmacophore algorithms are
often equally good, and in this respect, we also analyzed how pharmacophore
algorithms can be combined together in order to increase the success
of hit compound identification. This study provides a valuable benchmark
set for further developments in the field of pharmacophore search
algorithms, e.g., by using pose predictions and compound library enrichment
criteria
Estrogen-related receptor alpha drives mitochondrial biogenesis and resistance to neoadjuvant chemoradiation in esophageal cancer
Neoadjuvant chemoradiotherapy (nCRT) improves outcomes in resectable esophageal adenocarcinoma (EAC), but acquired resistance precludes long-term efficacy. Here, we delineate these resistance mechanisms. RNA sequencing on matched patient samples obtained pre-and post-neoadjuvant treatment reveal that oxidative phosphorylation was the most upregulated of all biological programs following nCRT. Analysis of patient-derived models confirms that mitochondrial content and oxygen consumption strongly increase in response to nCRT and that ionizing radiation is the causative agent. Bioinformatics identifies estrogen-related receptor alpha (ESRRA) as the transcription factor responsible for reprogramming, and overexpression and silencing of ESRRA functionally confirm that its downstream metabolic rewiring contributes to resistance. Pharmacological inhibition of ESRRA successfully sensitizes EAC organoids and patient-derived xenografts to radiation. In conclusion, we report a profound metabolic rewiring following chemoradiation and demonstrate that its inhibition resensitizes EAC cells to radiation. These findings hold broader relevance for other cancer types treated with radiation as well
Comparative analysis of pharmacophore screening tools.
Item does not contain fulltextThe pharmacophore concept is of central importance in computer-aided drug design (CADD) mainly because of its successful application in medicinal chemistry and, in particular, high-throughput virtual screening (HTVS). The simplicity of the pharmacophore definition enables the complexity of molecular interactions between ligand and receptor to be reduced to a handful set of features. With many pharmacophore screening softwares available, it is of the utmost interest to explore the behavior of these tools when applied to different biological systems. In this work, we present a comparative analysis of eight pharmacophore screening algorithms (Catalyst, Unity, LigandScout, Phase, Pharao, MOE, Pharmer, and POT) for their use in typical HTVS campaigns against four different biological targets by using default settings. The results herein presented show how the performance of each pharmacophore screening tool might be specifically related to factors such as the characteristics of the binding pocket, the use of specific pharmacophore features, and the use of these techniques in specific steps/contexts of the drug discovery pipeline. Algorithms with rmsd-based scoring functions are able to predict more compound poses correctly as overlay-based scoring functions. However, the ratio of correctly predicted compound poses versus incorrectly predicted poses is better for overlay-based scoring functions that also ensure better performances in compound library enrichments. While the ensemble of these observations can be used to choose the most appropriate class of algorithm for specific virtual screening projects, we remarked that pharmacophore algorithms are often equally good, and in this respect, we also analyzed how pharmacophore algorithms can be combined together in order to increase the success of hit compound identification. This study provides a valuable benchmark set for further developments in the field of pharmacophore search algorithms, e.g., by using pose predictions and compound library enrichment criteria