BMC Bioinformatics (Jun 2019)

L2,1-GRMF: an improved graph regularized matrix factorization method to predict drug-target interactions

  • Zhen Cui,
  • Ying-Lian Gao,
  • Jin-Xing Liu,
  • Ling-Yun Dai,
  • Sha-Sha Yuan

DOI
https://doi.org/10.1186/s12859-019-2768-7
Journal volume & issue
Vol. 20, no. S8
pp. 1 – 13

Abstract

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Abstract Background Predicting drug-target interactions is time-consuming and expensive. It is important to present the accuracy of the calculation method. There are many algorithms to predict global interactions, some of which use drug-target networks for prediction (ie, a bipartite graph of bound drug pairs and targets known to interact). Although these algorithms can predict some drug-target interactions to some extent, there is little effect for some new drugs or targets that have no known interaction. Results Since the datasets are usually located at or near low-dimensional nonlinear manifolds, we propose an improved GRMF (graph regularized matrix factorization) method to learn these flow patterns in combination with the previous matrix-decomposition method. In addition, we use one of the pre-processing steps previously proposed to improve the accuracy of the prediction. Conclusions Cross-validation is used to evaluate our method, and simulation experiments are used to predict new interactions. In most cases, our method is superior to other methods. Finally, some examples of new drugs and new targets are predicted by performing simulation experiments. And the improved GRMF method can better predict the remaining drug-target interactions.

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