LPI-NRLMF: lncRNA-protein interaction prediction by neighborhood regularized logistic matrix factorization

نویسندگان

  • Hongsheng Liu
  • Guofei Ren
  • Huan Hu
  • Li Zhang
  • Haixin Ai
  • Wen Zhang
  • Qi Zhao
چکیده

LncRNA-protein interactions play important roles in many important cellular processes including signaling, transcriptional regulation, and even the generation and progression of complex diseases. However, experimental methods for determining proteins bound by a specific lncRNA remain expensive, difficult and time-consuming, and only a few theoretical approaches are available for predicting potential lncRNA-protein associations. In this study, we developed a novel matrix factorization computational approach to uncover lncRNA-protein relationships, namely lncRNA-protein interactions prediction by neighborhood regularized logistic matrix factorization (LPI-NRLMF). Moreover, it is a semi-supervised and does not need negative samples. As a result, new model obtained reliable performance in the leave-one-out cross validation (the AUC of 0.9025 and AUPR of 0.6924), which significantly improved the prediction performance of previous models. Furthermore, the case study demonstrated that many lncRNA-protein interactions predicted by our method can be successfully confirmed by experiments. It is anticipated that LPI-NRLMF could serve as a useful resource for potential lncRNA-protein association identification.

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عنوان ژورنال:

دوره 8  شماره 

صفحات  -

تاریخ انتشار 2017