Assay interference caused by small molecules continues to pose a significant challenge for early drug discovery. A number of rule-based and similarity-based approaches have been derived that allow the flagging of potentially “badly behaving compounds”, “bad actors”, or “nuisance compounds”. These compounds are typically aggregators, reactive compounds, and/or pan-assay interference compounds (PAINS), and many of them are frequent hitters. Hit Dexter is a recently introduced machine learning approach that predicts frequent hitters independent of the underlying physicochemical mechanisms (including also the binding of compounds based on “privileged scaffolds” to multiple binding sites). Here we report on the development of a second generation...
Abstract Background Deep learning methods are a proven commodity in many fields and endeavors. One o...
Motivation: Identifying drug-target interactions is an important task in drug discovery. To reduce h...
BackgroundA number of algorithms have been proposed to predict the biological targets of diverse mol...
Assay interference caused by small molecules continues to pose a significant challenge for early dru...
Scientists rely on high-throughput screening tools to identify promising small-molecule compounds fo...
AlphaScreen is one of the most widely used assay technologies in drug discovery due to its versatili...
In drug discovery, compounds with well-defined activity against multiple targets (multitarget compou...
Complex mixtures containing natural products are still an interesting source of novel drug candidate...
A significant challenge in high-throughput screening (HTS) campaigns is the identification of assay ...
Assay interference compounds give rise to false-positives and cause substantial problems in medicina...
Drug–drug interaction (DDI) is a major public health problem contributing to 30% of the unexpected c...
MOTIVATION: High-throughput phenotypic assays reveal information about the molecules that modulate b...
Computational methods for predicting the macromolecular targets of drugs and drug-like compounds hav...
Motivation Machine-learning-based prediction of compound–protein interactions (CPIs) is important fo...
Screening of compound libraries against panels of targets yields profiling matrices. Such matrices t...
Abstract Background Deep learning methods are a proven commodity in many fields and endeavors. One o...
Motivation: Identifying drug-target interactions is an important task in drug discovery. To reduce h...
BackgroundA number of algorithms have been proposed to predict the biological targets of diverse mol...
Assay interference caused by small molecules continues to pose a significant challenge for early dru...
Scientists rely on high-throughput screening tools to identify promising small-molecule compounds fo...
AlphaScreen is one of the most widely used assay technologies in drug discovery due to its versatili...
In drug discovery, compounds with well-defined activity against multiple targets (multitarget compou...
Complex mixtures containing natural products are still an interesting source of novel drug candidate...
A significant challenge in high-throughput screening (HTS) campaigns is the identification of assay ...
Assay interference compounds give rise to false-positives and cause substantial problems in medicina...
Drug–drug interaction (DDI) is a major public health problem contributing to 30% of the unexpected c...
MOTIVATION: High-throughput phenotypic assays reveal information about the molecules that modulate b...
Computational methods for predicting the macromolecular targets of drugs and drug-like compounds hav...
Motivation Machine-learning-based prediction of compound–protein interactions (CPIs) is important fo...
Screening of compound libraries against panels of targets yields profiling matrices. Such matrices t...
Abstract Background Deep learning methods are a proven commodity in many fields and endeavors. One o...
Motivation: Identifying drug-target interactions is an important task in drug discovery. To reduce h...
BackgroundA number of algorithms have been proposed to predict the biological targets of diverse mol...