Background and objectives: Early-phase virtual screening of candidate drug molecules plays a key role in pharmaceutical industry from data mining and machine learning to prevent adverse effects of the drugs. Computational classification methods can distinguish approved drugs from withdrawn ones. We focused on 6 data sets including maximum 110 approved and 110 withdrawn drugs for all and nervous system diseases to distinguish approved drugs from withdrawn ones. Methods: In this study, we used support vector machines (SVMs) and ensemble methods (EMs) such as boosted and bagged trees to classify drugs into approved and withdrawn categories. Also, we used CORINA Symphony program to identify Toxprint chemotypes including over 700 predefined chem...
Data mining approaches can uncover underlying patterns in chemical and pharmacological property spac...
In this article we report about a successful application of modern machine learning technology, name...
In this article we report about a successful application of modern machine learning technology, name...
Systems pharmacological modeling of drug mode of action for the next generation of multitarget drugs...
In conjunction with the advance in computer technology, virtual screening of small molecules has bee...
Abstract—Compounds from discovery are often poor candidates for lead optimization or preclinical tes...
Probabilistic support vector machine (SVM) in combination with ECFP_4 (Extended Connectivity Fingerp...
Abstract Background To assess whether a compound is druglike or not as early as possible is always c...
© 2022 IEEE.Deep learning methods have been successfully used to predict characteristics of small mo...
Computer-aided drug design (CADD) has become an indispensible component in modern drug discovery pro...
This paper describes classification and prediction for pharmacologically active classes of drugs und...
This thesis lies in the area of chemoinformatics, known as virtual screening (VS). VS describes a se...
This thesis lies in the area of chemoinformatics, known as virtual screening (VS). VS describes a se...
Drug development productivity has been declining lately due to elevated costs and reduced discovery ...
In this paper, we study the classifications of unbalanced data sets of drugs. As an example we chose...
Data mining approaches can uncover underlying patterns in chemical and pharmacological property spac...
In this article we report about a successful application of modern machine learning technology, name...
In this article we report about a successful application of modern machine learning technology, name...
Systems pharmacological modeling of drug mode of action for the next generation of multitarget drugs...
In conjunction with the advance in computer technology, virtual screening of small molecules has bee...
Abstract—Compounds from discovery are often poor candidates for lead optimization or preclinical tes...
Probabilistic support vector machine (SVM) in combination with ECFP_4 (Extended Connectivity Fingerp...
Abstract Background To assess whether a compound is druglike or not as early as possible is always c...
© 2022 IEEE.Deep learning methods have been successfully used to predict characteristics of small mo...
Computer-aided drug design (CADD) has become an indispensible component in modern drug discovery pro...
This paper describes classification and prediction for pharmacologically active classes of drugs und...
This thesis lies in the area of chemoinformatics, known as virtual screening (VS). VS describes a se...
This thesis lies in the area of chemoinformatics, known as virtual screening (VS). VS describes a se...
Drug development productivity has been declining lately due to elevated costs and reduced discovery ...
In this paper, we study the classifications of unbalanced data sets of drugs. As an example we chose...
Data mining approaches can uncover underlying patterns in chemical and pharmacological property spac...
In this article we report about a successful application of modern machine learning technology, name...
In this article we report about a successful application of modern machine learning technology, name...