Background: There are three main problems associated with the virtual screening of bioassay data. The first is access to freely-available curated data, the second is the number of false positives that occur in the physical primary screening process, and finally the data is highly-imbalanced with a low ratio of Active compounds to Inactive compounds. This paper first discusses these three problems and then a selection of Weka cost-sensitive classifiers (Naive Bayes, SVM, C4.5 and Random Forest) are applied to a variety of bioassay datasets. Results: Pharmaceutical bioassay data is not readily available to the academic community. The data held at PubChem is not curated and there is a lack of detailed cross-referencing between Primary ...
Drug discovery has witnessed an increase in the application of in silico methods to complement exist...
To address the imbalanced data problem in molecular docking-based virtual screening methods, this pa...
Virtual Screening (VS) methods can considerably aid clinical research, predicting how ligands intera...
Abstract Background There are three main problems associated with the virtual screening of bioassay ...
Virtual screening consists of using computational tools to predict potentially bioactive compounds f...
AbstractDrug discovery is a time-consuming and costly process. The data generated during various sta...
This thesis lies in the area of chemoinformatics, known as virtual screening (VS). VS describes a se...
The machine learning-based virtual screening of molecular databases is a commonly used approach to i...
This thesis lies in the area of chemoinformatics, known as virtual screening (VS). VS describes a se...
Virtual screening represents an effective computational strategy to rise-up the chances of finding n...
In the current work, we measure the performance of seven ligand-based virtual screening tools - five...
Machine-learning methods can be used for virtual screening by analysing the structural characteristi...
Background: A Virtual Screening algorithm has to adapt to the different stages of this process. Earl...
This project aims to improve the results of virtual screening and docking techniques used for drug d...
Virtual screening emerged as an important tool in our quest to access novel drug like compounds. The...
Drug discovery has witnessed an increase in the application of in silico methods to complement exist...
To address the imbalanced data problem in molecular docking-based virtual screening methods, this pa...
Virtual Screening (VS) methods can considerably aid clinical research, predicting how ligands intera...
Abstract Background There are three main problems associated with the virtual screening of bioassay ...
Virtual screening consists of using computational tools to predict potentially bioactive compounds f...
AbstractDrug discovery is a time-consuming and costly process. The data generated during various sta...
This thesis lies in the area of chemoinformatics, known as virtual screening (VS). VS describes a se...
The machine learning-based virtual screening of molecular databases is a commonly used approach to i...
This thesis lies in the area of chemoinformatics, known as virtual screening (VS). VS describes a se...
Virtual screening represents an effective computational strategy to rise-up the chances of finding n...
In the current work, we measure the performance of seven ligand-based virtual screening tools - five...
Machine-learning methods can be used for virtual screening by analysing the structural characteristi...
Background: A Virtual Screening algorithm has to adapt to the different stages of this process. Earl...
This project aims to improve the results of virtual screening and docking techniques used for drug d...
Virtual screening emerged as an important tool in our quest to access novel drug like compounds. The...
Drug discovery has witnessed an increase in the application of in silico methods to complement exist...
To address the imbalanced data problem in molecular docking-based virtual screening methods, this pa...
Virtual Screening (VS) methods can considerably aid clinical research, predicting how ligands intera...