Cheminformatics approaches such as Quantitative Structure Activity Relationship (QSAR) modeling have been used traditionally for predicting chemical toxicity. In recent years, high throughput biological assays have been increasingly employed to elucidate mechanisms of chemical toxicity and predict toxic effects of chemicals in vivo. The data generated in such assays can be considered as biological descriptors of chemicals that can be combined with molecular descriptors and employed in QSAR modeling to improve the accuracy of toxicity prediction. In this review, we discuss several approaches for integrating chemical and biological data for predicting biological effects of chemicals in vivo and compare their performance across several data se...
Traditional read-across approaches typically rely on the chemical similarity principle to predict ch...
The availability of large in vitro datasets enables better insight into the mode of action of chemic...
The availability of large in vitro datasets enables better insight into the mode of action of chemic...
Cheminformatics approaches such as Quantitative Structure Activity Relationship (QSAR) modeling have...
Quantitative structure-activity relationship (QSAR) models are widely used for in silico prediction ...
Quantitative structure-activity relationship (QSAR) models are widely used for in silico prediction ...
Quantitative structure-activity relationship (QSAR) models are widely used for in silico prediction ...
Quantitative structure-activity relationship (QSAR) models are widely used for in silico prediction ...
BackgroundAccurate prediction of in vivo toxicity from in vitro testing is a challenging problem. La...
BackgroundAccurate prediction of in vivo toxicity from in vitro testing is a challenging problem. La...
In this chapter, we review our QSAR research in the prediction of toxicities, bioactivities and prop...
In this chapter, we review our QSAR research in the prediction of toxicities, bioactivities and prop...
Traditional read-across approaches typically rely on the chemical similarity principle to predict ch...
In this chapter, we review our QSAR research in the prediction of toxicities, bioactivities and prop...
In this chapter, we review our QSAR research in the prediction of toxicities, bioactivities and prop...
Traditional read-across approaches typically rely on the chemical similarity principle to predict ch...
The availability of large in vitro datasets enables better insight into the mode of action of chemic...
The availability of large in vitro datasets enables better insight into the mode of action of chemic...
Cheminformatics approaches such as Quantitative Structure Activity Relationship (QSAR) modeling have...
Quantitative structure-activity relationship (QSAR) models are widely used for in silico prediction ...
Quantitative structure-activity relationship (QSAR) models are widely used for in silico prediction ...
Quantitative structure-activity relationship (QSAR) models are widely used for in silico prediction ...
Quantitative structure-activity relationship (QSAR) models are widely used for in silico prediction ...
BackgroundAccurate prediction of in vivo toxicity from in vitro testing is a challenging problem. La...
BackgroundAccurate prediction of in vivo toxicity from in vitro testing is a challenging problem. La...
In this chapter, we review our QSAR research in the prediction of toxicities, bioactivities and prop...
In this chapter, we review our QSAR research in the prediction of toxicities, bioactivities and prop...
Traditional read-across approaches typically rely on the chemical similarity principle to predict ch...
In this chapter, we review our QSAR research in the prediction of toxicities, bioactivities and prop...
In this chapter, we review our QSAR research in the prediction of toxicities, bioactivities and prop...
Traditional read-across approaches typically rely on the chemical similarity principle to predict ch...
The availability of large in vitro datasets enables better insight into the mode of action of chemic...
The availability of large in vitro datasets enables better insight into the mode of action of chemic...