50 research outputs found
Designing Focused Chemical Libraries Enriched in Protein-Protein Interaction Inhibitors using Machine-Learning Methods
Protein-protein interactions (PPIs) may represent one of the next major classes of therapeutic targets. So far, only a minute fraction of the estimated 650,000 PPIs that comprise the human interactome are known with a tiny number of complexes being drugged. Such intricate biological systems cannot be cost-efficiently tackled using conventional high-throughput screening methods. Rather, time has come for designing new strategies that will maximize the chance for hit identification through a rationalization of the PPI inhibitor chemical space and the design of PPI-focused compound libraries (global or target-specific). Here, we train machine-learning-based models, mainly decision trees, using a dataset of known PPI inhibitors and of regular drugs in order to determine a global physico-chemical profile for putative PPI inhibitors. This statistical analysis unravels two important molecular descriptors for PPI inhibitors characterizing specific molecular shapes and the presence of a privileged number of aromatic bonds. The best model has been transposed into a computer program, PPI-HitProfiler, that can output from any drug-like compound collection a focused chemical library enriched in putative PPI inhibitors. Our PPI inhibitor profiler is challenged on the experimental screening results of 11 different PPIs among which the p53/MDM2 interaction screened within our own CDithem platform, that in addition to the validation of our concept led to the identification of 4 novel p53/MDM2 inhibitors. Collectively, our tool shows a robust behavior on the 11 experimental datasets by correctly profiling 70% of the experimentally identified hits while removing 52% of the inactive compounds from the initial compound collections. We strongly believe that this new tool can be used as a global PPI inhibitor profiler prior to screening assays to reduce the size of the compound collections to be experimentally screened while keeping most of the true PPI inhibitors. PPI-HitProfiler is freely available on request from our CDithem platform website, www.CDithem.com
An integrated drug repurposing strategy for the rapid identification of potential SARS-CoV-2 viral inhibitors
The Coronavirus disease 2019 (COVID-19) is an infectious disease caused by the severe acute respiratory syndrome-coronavirus 2 (SARS-CoV-2). The virus has rapidly spread in humans, causing the ongoing Coronavirus pandemic. Recent studies have shown that, similarly to SARS-CoV, SARS-CoV-2 utilises the Spike glycoprotein on the envelope to recognise and bind the human receptor ACE2. This event initiates the fusion of viral and host cell membranes and then the viral entry into the host cell. Despite several ongoing clinical studies, there are currently no approved vaccines or drugs that specifically target SARS-CoV-2. Until an effective vaccine is available, repurposing FDA approved drugs could significantly shorten the time and reduce the cost compared to de novo drug discovery. In this study we attempted to overcome the limitation of in silico virtual screening by applying a robust in silico drug repurposing strategy. We combined and integrated docking simulations, with molecular dynamics (MD), Supervised MD (SuMD) and Steered MD (SMD) simulations to identify a Spike protein – ACE2 interaction inhibitor. Our data showed that Simeprevir and Lumacaftor bind the receptor-binding domain of the Spike protein with high affinity and prevent ACE2 interaction
A Collective Variable for the Rapid Exploration of Protein Druggability
An efficient molecular simulation
methodology has been developed
for the evaluation of the druggability (ligandability) of a protein.
Previously proposed techniques were designed to assess the druggability
of crystallographic structures and cannot be tightly coupled to molecular
dynamics (MD) simulations. By contrast, the present approach, JEDI
(<u>J</u>ust <u>E</u>xploring <u>D</u>ruggability at protein <u>I</u>nterfaces),
features a druggability potential made of a combination of empirical
descriptors that can be collected “on-the-fly” during
MD simulations. Extensive validation studies indicate that JEDI analyses
discriminate druggable and nondruggable protein binding site conformations
with accuracy similar to alternative methodologies, and at a fraction
of the computational cost. Since the JEDI function is continuous and
differentiable, the druggability potential can be used as collective
variable to rapidly detect cryptic druggable binding sites in proteins
with a variety of MD free energy methods. Protocols for applications
to flexible docking problems are outlined
HIV-1 TAR RNA Spontaneously Undergoes Relevant Apo-to-Holo Conformational Transitions in Molecular Dynamics and Constrained Geometrical Simulations
Insertion of a xylanase in xylose binding protein results in a xylose-stimulated xylanase
{Fun2Struc} -- A Tool For Predicting Protein Structure Classes from Function Predictions
Chemistry Central Journal Poster presentation Designing binding pockets on protein surfaces using the A*
The in silico design of ligands binding to the protein surface instead of deep binding pockets is still a great challenge. Representative examples are small molecules that target protein-protein interactions [1]. The unbound experimental protein structures often lack appropriate binding pockets and thus standard virtual screening techniques will fail. We previously presented a pocket detection protocol that provides a starting point for in silico drug design for such cases [2]. Unfortunately, the underlying molecular dynamics simulations make this protocol quite time-consuming. However, if the potential binding site of a ligand is known, conformational sampling focused on this region appears more promising than scanning the whole protein surface for transient pockets. Here, we present two new algorithms for designing tailored ligan
