Title :
High-Throughput Ligand Screening via Preclustering and Evolved Neural Networks
Author :
Hecht, David ; Fogel, Gary B.
Author_Institution :
Southwestern Community Coll., Chula Vista
Abstract :
The pathway for novel lead drug discovery has many major deficiencies, the most significant of which is the immense size of small molecule diversity space. Methods that increase the search efficiency and/or reduce the size of the search space increase the rate at which useful lead compounds are identified. Artificial neural networks optimized via evolutionary computation provide a cost and time-effective solution to this problem. Here, we present results that suggest that preclustering of small molecules prior to neural network optimization is useful for generating models of quantitative structure-activity relationships for a set of HIV inhibitors. Using these methods, it is possible to prescreen compounds to separate active from inactive compounds or even active and mildly active compounds from inactive compounds with high predictive accuracy while simultaneously reducing the feature space. It is also possible to identify "human interpretable" features from the best models that can be used for proposal and synthesis of new compounds in order to optimize potency and specificity.
Keywords :
drugs; evolutionary computation; lead compounds; medical computing; molecular biophysics; neural nets; HIV inhibitors; PbJkJk; artificial neural networks; computational intelligence; drug discovery; evolutionary computation; human interpretable features; lead compounds; ligand screening; molecule preclustering; neural network optimization; quantitative structure-activity relationships; Accuracy; Artificial neural networks; Computational efficiency; Cost function; Drugs; Evolutionary computation; Human immunodeficiency virus; Inhibitors; Lead compounds; Neural networks; Computational intelligence; artificial neural networks; evolutionary computation; medicine and science; Anti-HIV Agents; Artificial Intelligence; Cluster Analysis; Combinatorial Chemistry Techniques; Computer Simulation; Drug Design; Ligands; Models, Chemical; Neural Networks (Computer); Pattern Recognition, Automated; Quantitative Structure-Activity Relationship;
Journal_Title :
Computational Biology and Bioinformatics, IEEE/ACM Transactions on
DOI :
10.1109/tcbb.2007.1038