Abstract A key challenge in the field of Quantitative Structure Activity Relationships (QSAR) is how to effectively treat experimental error in the training and evaluation of computational models. It is often assumed in the field of QSAR that models cannot produce predictions which are more accurate than their training data. Additionally, it is implicitly assumed, by necessity, that data points in test sets or validation sets do not contain error, and that each data point is a population mean. This work proposes the hypothesis that QSAR models can make predictions which are more accurate than their training data and that the error-free test set assumption leads to a significant misevaluation of model performance. This work used 8 datasets w...
The description of quantitative structure¿activity relationship (QSAR) models has been a topic for s...
Validation is a crucial aspect of quantitative structure–activity relationship (QSAR) modeling. The ...
The vastness of chemical space and the relatively small coverage by experimental data recording mole...
In QSAR, a statistical model is generated from a training set of molecules (represented by chemical ...
Predictive performance of QSAR model depends not only on the way how this model has been built and v...
Key requirements for quantitative structure–activity relationship (QSAR) models to gain acceptance b...
In QSAR, a statistical model is generated from a training set of molecules (represented by chemical ...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
This study performed an analysis of the influence of the training and test set rational selection on...
We propose that quantitative structure-activity relationship (QSAR) predictions should be explicitly...
The estimation of the accuracy of predictions is a critical problem in QSAR modeling. The "dist...
Prior to using a quantitative structure activity relationship (QSAR) model for external predictions,...
<div><p>Recent implementations of QSAR modelling software provide the user with numerous models and ...
In most cases of QSAR modelling the final model used to make predictions, is not known a priori but ...
Wider acceptance of QSARs would result in a constellation of benefits and savings to both private an...
The description of quantitative structure¿activity relationship (QSAR) models has been a topic for s...
Validation is a crucial aspect of quantitative structure–activity relationship (QSAR) modeling. The ...
The vastness of chemical space and the relatively small coverage by experimental data recording mole...
In QSAR, a statistical model is generated from a training set of molecules (represented by chemical ...
Predictive performance of QSAR model depends not only on the way how this model has been built and v...
Key requirements for quantitative structure–activity relationship (QSAR) models to gain acceptance b...
In QSAR, a statistical model is generated from a training set of molecules (represented by chemical ...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
This study performed an analysis of the influence of the training and test set rational selection on...
We propose that quantitative structure-activity relationship (QSAR) predictions should be explicitly...
The estimation of the accuracy of predictions is a critical problem in QSAR modeling. The "dist...
Prior to using a quantitative structure activity relationship (QSAR) model for external predictions,...
<div><p>Recent implementations of QSAR modelling software provide the user with numerous models and ...
In most cases of QSAR modelling the final model used to make predictions, is not known a priori but ...
Wider acceptance of QSARs would result in a constellation of benefits and savings to both private an...
The description of quantitative structure¿activity relationship (QSAR) models has been a topic for s...
Validation is a crucial aspect of quantitative structure–activity relationship (QSAR) modeling. The ...
The vastness of chemical space and the relatively small coverage by experimental data recording mole...