Predictive models used in decision making, such as QSARs in chemical regulation or drug discovery, call for evaluated approaches to quantitatively assess associated uncertainty in predictions. Uncertainty in less reliable predictions may be captured by locally varying predictive errors. In the current study, model-based bootstrapping was combined with analogy reasoning to generate predictive distributions varying in magnitude over a model's domain of applicability. A resampling experiment based on PLS regressions on four QSAR data sets demonstrated that predictive errors assessed by k nearest neighbour or weighted PRedicted Error Sum of Squares (PRESS) on samples of external test data or by internal cross-validation improved the performance...
In most cases of QSAR modelling the final model used to make predictions, is not known a priori but ...
Key requirements for quantitative structure–activity relationship (QSAR) models to gain acceptance b...
The statistical metrics used to characterize the external predictivity of a model, i.e., how well it...
International audienceThe assessment of uncertainty attached to individual predictions is now a prio...
It is relevant to consider uncertainty in individual predictions when quantitative structure-activit...
In QSAR, a statistical model is generated from a training set of molecules (represented by chemical ...
We propose that quantitative structure-activity relationship (QSAR) predictions should be explicitly...
Abstract Reliable uncertainty quantification for statistical models is crucial in various downstream...
International audienceQuantitative Structure-Activity Relationships (QSAR) models routinely predict ...
Wider acceptance of QSARs would result in a constellation of benefits and savings to both private an...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
The ability to define the regions of chemical space where a predictive model can be safely used is a...
This article provides an overview of methods for reliability assessment of quantitative structure–ac...
The vastness of chemical space and the relatively small coverage by experimental data recording mole...
Abstract A key challenge in the field of Quantitative Structure Activity Relationships (QSAR) is how...
In most cases of QSAR modelling the final model used to make predictions, is not known a priori but ...
Key requirements for quantitative structure–activity relationship (QSAR) models to gain acceptance b...
The statistical metrics used to characterize the external predictivity of a model, i.e., how well it...
International audienceThe assessment of uncertainty attached to individual predictions is now a prio...
It is relevant to consider uncertainty in individual predictions when quantitative structure-activit...
In QSAR, a statistical model is generated from a training set of molecules (represented by chemical ...
We propose that quantitative structure-activity relationship (QSAR) predictions should be explicitly...
Abstract Reliable uncertainty quantification for statistical models is crucial in various downstream...
International audienceQuantitative Structure-Activity Relationships (QSAR) models routinely predict ...
Wider acceptance of QSARs would result in a constellation of benefits and savings to both private an...
One popular metric for estimating the accuracy of prospective quantitative structure–activity relati...
The ability to define the regions of chemical space where a predictive model can be safely used is a...
This article provides an overview of methods for reliability assessment of quantitative structure–ac...
The vastness of chemical space and the relatively small coverage by experimental data recording mole...
Abstract A key challenge in the field of Quantitative Structure Activity Relationships (QSAR) is how...
In most cases of QSAR modelling the final model used to make predictions, is not known a priori but ...
Key requirements for quantitative structure–activity relationship (QSAR) models to gain acceptance b...
The statistical metrics used to characterize the external predictivity of a model, i.e., how well it...