4.7 Article

Multi-algorithm and multi-model based drug target prediction and web server

Journal

ACTA PHARMACOLOGICA SINICA
Volume 35, Issue 3, Pages 419-431

Publisher

NATURE PUBL GROUP
DOI: 10.1038/aps.2013.153

Keywords

drug target; protein sequence; multi-algorithm and multi-model strategy; web server; support vector machine; neural network; decision tree

Funding

  1. National Natural Science Foundation of China [81273435, 21021063]
  2. National Science & Technology Projects [2012ZX09301001-004, 2012AA01A305, 2013ZX09103001-001]

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Aim: To develop a reliable computational approach for predicting potential drug targets based merely on protein sequence. Methods: With drug target and non-target datasets prepared and 3 classification algorithms (Support Vector Machine, Neural Network and Decision Tree), a multi-algorithm and multi-model based strategy was employed for constructing models to predict potential drug targets. Results: Twenty one prediction models for each of the 3 algorithms were successfully developed. Our evaluation results showed that similar to 30% of human proteins were potential drug targets, and similar to 40% of putative targets for the drugs undergoing phase II clinical trials were probably non-targets. A public web server named D3TPredictor (http://www.d3pharma.com/d3tpredictor) was constructed to provide easy access. Conclusion: Reliable and robust drug target prediction based on protein sequences is achieved using the multi-algorithm and multi-model strategy.

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