The identification of possible targets for a known bioactive compound is of the utmost importance for drug design and development. Molecular docking is one possible approach for in-silico protein target prediction, whereas a molecule is docked into several different protein structures to identify potential targets. This reverse docking approach is hampered by the limitation of current scoring functions to correctly discriminate between targets and nontargets. In this work, a development of target-specific scoring functions is described that showed improved prediction performances for the correct target prediction of both actives and decoys on three validation data sets. In contrast to pure ligand-based approaches, that are in general faster...
Background: Identifying and assessing ligand-target binding is a core component in early drug discov...
Background: The selection and prioritization of drug targets is a central problem in drug discovery....
In this study, two probabilistic machine-learning algorithms were compared for in silico target pred...
The identification of possible targets for a known bioactive compound is of the utmost importance fo...
In drug discovery, where a model of the protein structure is known, molecular docking is a well-esta...
Motivation: Accurately predicting the binding affinities of large sets of diverse protein-ligand com...
Structure-based drug discovery uses information about the structure of a protein to identify novel l...
Abstract Scoring functions are essential for modern in silico drug discovery. However, the accurate ...
In recent years, machine learning has been proposed as a promising strategy to build accurate scorin...
Increased availability of bioinformatics resources is creating opportunities for the application of ...
Molecular docking plays a significant role in early-stage drug discovery, from structure-based virtu...
Increased availability of bioinformatics resources is creating opportunities for the application of ...
<div><p>Increased availability of bioinformatics resources is creating opportunities for the applica...
Predicting protein-ligand binding affinities constitutes a key computational method in the early sta...
We propose a computational workflow to design novel drug-like molecules by combining the global opti...
Background: Identifying and assessing ligand-target binding is a core component in early drug discov...
Background: The selection and prioritization of drug targets is a central problem in drug discovery....
In this study, two probabilistic machine-learning algorithms were compared for in silico target pred...
The identification of possible targets for a known bioactive compound is of the utmost importance fo...
In drug discovery, where a model of the protein structure is known, molecular docking is a well-esta...
Motivation: Accurately predicting the binding affinities of large sets of diverse protein-ligand com...
Structure-based drug discovery uses information about the structure of a protein to identify novel l...
Abstract Scoring functions are essential for modern in silico drug discovery. However, the accurate ...
In recent years, machine learning has been proposed as a promising strategy to build accurate scorin...
Increased availability of bioinformatics resources is creating opportunities for the application of ...
Molecular docking plays a significant role in early-stage drug discovery, from structure-based virtu...
Increased availability of bioinformatics resources is creating opportunities for the application of ...
<div><p>Increased availability of bioinformatics resources is creating opportunities for the applica...
Predicting protein-ligand binding affinities constitutes a key computational method in the early sta...
We propose a computational workflow to design novel drug-like molecules by combining the global opti...
Background: Identifying and assessing ligand-target binding is a core component in early drug discov...
Background: The selection and prioritization of drug targets is a central problem in drug discovery....
In this study, two probabilistic machine-learning algorithms were compared for in silico target pred...