Most quantitative structure-activity relationship (QSAR) models are linear relationships and significant for only a limited domain of compounds. Here we propose a data-driven approach with a flexible combination of unsupervised and supervised neural networks able to predict the toxicity of a large set of different chemicals while still respecting the QSAR postulates. Since QSAR is applicable only to similar compounds, which have similar biological and physicochemical properties, large numbers of compounds are clustered before building local models, and local models are ensembled to obtain the final result. The approach has been used to develop models to predict the fish toxicity of Pimephales promelas and Tetrahymena pyriformis, a protozoan
This study presents an analysis of the ability of a two-parameter response surface, a multiple linea...
We applied machine learning methods to predict chemical hazards focusing on fish acute toxicity acro...
Nowadays, quantitative structure–activity relationship (QSAR) methods have been widely perform...
Most quantitative structure-activity relationship (QSAR) models are linear relationships and signifi...
Selecting most rigorous quantitative structure-activity relationship (QSAR) approaches is of great i...
The use of Quantitative Structure-Activity Relationships in assessing the potential negative effects...
The use of Quantitative Structure-Activity Relationships in assessing the potential negative effects...
The use of Quantitative Structure-Activity Relationships in assessing the potential negative effects...
The use of Quantitative Structure-Activity Relationships in assessing the potential negative effects...
The use of Quantitative Structure-Activity Relationships in assessing the potential negative effects...
The use of Quantitative Structure-Activity Relationships in assessing the potential negative effects...
Human activities have introduced tens of thousands of chemicals into water systems around the world ...
International audienceThree quantitative structure–activity relationship (QSAR) models were evaluate...
We applied machine learning methods to predict chemical hazards focusing on fish acute toxicity acro...
We applied machine learning methods to predict chemical hazards focusing on fish acute toxicity acro...
This study presents an analysis of the ability of a two-parameter response surface, a multiple linea...
We applied machine learning methods to predict chemical hazards focusing on fish acute toxicity acro...
Nowadays, quantitative structure–activity relationship (QSAR) methods have been widely perform...
Most quantitative structure-activity relationship (QSAR) models are linear relationships and signifi...
Selecting most rigorous quantitative structure-activity relationship (QSAR) approaches is of great i...
The use of Quantitative Structure-Activity Relationships in assessing the potential negative effects...
The use of Quantitative Structure-Activity Relationships in assessing the potential negative effects...
The use of Quantitative Structure-Activity Relationships in assessing the potential negative effects...
The use of Quantitative Structure-Activity Relationships in assessing the potential negative effects...
The use of Quantitative Structure-Activity Relationships in assessing the potential negative effects...
The use of Quantitative Structure-Activity Relationships in assessing the potential negative effects...
Human activities have introduced tens of thousands of chemicals into water systems around the world ...
International audienceThree quantitative structure–activity relationship (QSAR) models were evaluate...
We applied machine learning methods to predict chemical hazards focusing on fish acute toxicity acro...
We applied machine learning methods to predict chemical hazards focusing on fish acute toxicity acro...
This study presents an analysis of the ability of a two-parameter response surface, a multiple linea...
We applied machine learning methods to predict chemical hazards focusing on fish acute toxicity acro...
Nowadays, quantitative structure–activity relationship (QSAR) methods have been widely perform...