Many compound properties depend directly on the dissociation constants of its acidic and basic groups. Significant effort has been invested in computational models to predict these constants. For linear regression models, compounds are often divided into chemically motivated classes, with a separate model for each class. However, sometimes too few measurements are available for a class to build a reasonable model, e.g., when investigating a new compound series. If data for related classes are available, we show that multi-task learning can be used to improve predictions by utilizing data from these other classes. We investigate performance of linear Gaussian process regression models (single task, pooling, and multitask models) in the low s...
Compound activity prediction is a major application of machine learning (ML) in pharmaceutical resea...
Abstract Background Machine learning methods are nowadays used for many biological prediction proble...
Over the last two decades, data-powered machine learning (ML) tools have profoundly transformed nume...
Many compound properties depend directly on the dissociation constants of its acidic and basic group...
Many compound properties depend directly on the dissociation constants of its acidic and basic group...
<div>A variety of fields would benefit from accurate pK<sub>a</sub> predictions, especially drug des...
A variety of fields would benefit from accurate [Formula: see text] predictions, especially drug des...
Multi-task learning for molecular property prediction is becoming increasingly important in drug dis...
Despite the increasing volume of available data, the proportion of experimentally measured data rema...
The ionization state of drugs influences many pharmaceutical properties such as their solubility, pe...
Modern machine learning provides promising methods for accelerating the discovery and characterizati...
The biopharmaceutical profile of a compound depends directly on the dissociation constants of its ac...
Machine learning models can learn complex relationships from data and have led to breakthrough resul...
The prediction of compound properties from chemical structure is a main task for machine learning (M...
Despite the increasing volume of available data, the proportion of experimentally measured data rema...
Compound activity prediction is a major application of machine learning (ML) in pharmaceutical resea...
Abstract Background Machine learning methods are nowadays used for many biological prediction proble...
Over the last two decades, data-powered machine learning (ML) tools have profoundly transformed nume...
Many compound properties depend directly on the dissociation constants of its acidic and basic group...
Many compound properties depend directly on the dissociation constants of its acidic and basic group...
<div>A variety of fields would benefit from accurate pK<sub>a</sub> predictions, especially drug des...
A variety of fields would benefit from accurate [Formula: see text] predictions, especially drug des...
Multi-task learning for molecular property prediction is becoming increasingly important in drug dis...
Despite the increasing volume of available data, the proportion of experimentally measured data rema...
The ionization state of drugs influences many pharmaceutical properties such as their solubility, pe...
Modern machine learning provides promising methods for accelerating the discovery and characterizati...
The biopharmaceutical profile of a compound depends directly on the dissociation constants of its ac...
Machine learning models can learn complex relationships from data and have led to breakthrough resul...
The prediction of compound properties from chemical structure is a main task for machine learning (M...
Despite the increasing volume of available data, the proportion of experimentally measured data rema...
Compound activity prediction is a major application of machine learning (ML) in pharmaceutical resea...
Abstract Background Machine learning methods are nowadays used for many biological prediction proble...
Over the last two decades, data-powered machine learning (ML) tools have profoundly transformed nume...