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2000
Volume 17, Issue 12
  • ISSN: 0929-8665
  • E-ISSN: 1875-5305

Abstract

Information about interactions between enzymes and small molecules is important for understanding various metabolic bioprocesses. In this article we applied a majority voting system to predict the interactions between enzymes and small molecules in the metabolic pathways, by combining several classifiers including AdaBoost, Bagging and KNN together. The advantage of such a strategy is based on the principle that a predictor based majority voting systems usually provide more reliable results than any single classifier. The prediction accuracies thus obtained on a training dataset and an independent testing dataset were 82.8% and 84.8%, respectively. The prediction accuracy for the networking couples in the independent testing dataset was 75.5%, which is about 4% higher than that reported in a previous study [1]. The webserver for the prediction method presented in this paper is available at http://chemdata.shu.edu.cn/small-enz.

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/content/journals/ppl/10.2174/0929866511009011536
2010-12-01
2025-05-28
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