Binary kernel discrimination (BKD) uses a training set of compounds, for which structural and qualitative activity data are available, to produce a model that can then be applied to the structures of other compounds in order to predict their likely activity. Experiments with the MDL Drug Data Report database show that the optimal value of the smoothing parameter, and hence the predictive power of BKD, is crucially dependent on the number of false positives in the training set. It is also shown that the best results for BKD are achieved using one particular optimization method for the determination of the smoothing parameter that lies at the heart of the method and using the Jaccard/Tanimoto coefficient in the kernel function that is used to...
By applying recent results in optimization transfer, a new algorithm for kernel Fisher Discriminant ...
<p>AR: Accuracy rate, SE: Sensitivity, SP: Specificity, PPV: Positive predictive value, NPV: Negativ...
Discovery of new pharmaceutical substances is currently boosted by the possibility of utilization of...
This paper discusses the use of a machine-learning technique called binary kernel discrimination (BK...
This thesis lies in the area of chemoinformatics, known as virtual screening (VS). VS describes a se...
Machine-learning methods can be used for virtual screening by analysing the structural characteristi...
This paper discusses a range of procedures for virtual screening of chemical databases in which the ...
This thesis lies in the area of chemoinformatics, known as virtual screening (VS). VS describes a se...
The ability to rank molecules according to their effectiveness in some domain, e.g. pesticide, drug,...
We investigate the utility of modern kernel-based machine learning methods for ligand-based virtual ...
Abstract — The ability to rank molecules according to their effectiveness in some domain, e.g. pesti...
The high-throughput technologies of combinatorial chemistry and high-throughput screening have cause...
The machine learning-based virtual screening of molecular databases is a commonly used approach to i...
Drug discovery is the process of identifying compounds which have potentially meaningful biological ...
International audienceSupport vector machines and kernel methods have recently gained considerable a...
By applying recent results in optimization transfer, a new algorithm for kernel Fisher Discriminant ...
<p>AR: Accuracy rate, SE: Sensitivity, SP: Specificity, PPV: Positive predictive value, NPV: Negativ...
Discovery of new pharmaceutical substances is currently boosted by the possibility of utilization of...
This paper discusses the use of a machine-learning technique called binary kernel discrimination (BK...
This thesis lies in the area of chemoinformatics, known as virtual screening (VS). VS describes a se...
Machine-learning methods can be used for virtual screening by analysing the structural characteristi...
This paper discusses a range of procedures for virtual screening of chemical databases in which the ...
This thesis lies in the area of chemoinformatics, known as virtual screening (VS). VS describes a se...
The ability to rank molecules according to their effectiveness in some domain, e.g. pesticide, drug,...
We investigate the utility of modern kernel-based machine learning methods for ligand-based virtual ...
Abstract — The ability to rank molecules according to their effectiveness in some domain, e.g. pesti...
The high-throughput technologies of combinatorial chemistry and high-throughput screening have cause...
The machine learning-based virtual screening of molecular databases is a commonly used approach to i...
Drug discovery is the process of identifying compounds which have potentially meaningful biological ...
International audienceSupport vector machines and kernel methods have recently gained considerable a...
By applying recent results in optimization transfer, a new algorithm for kernel Fisher Discriminant ...
<p>AR: Accuracy rate, SE: Sensitivity, SP: Specificity, PPV: Positive predictive value, NPV: Negativ...
Discovery of new pharmaceutical substances is currently boosted by the possibility of utilization of...