4.1 Article

NRLMFβ: Beta-distribution-restored neighborhood regularized logistic matrix factorization for improving the performance of drug-target interaction prediction

Journal

BIOCHEMISTRY AND BIOPHYSICS REPORTS
Volume 18, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.bbrep.2019.01.008

Keywords

Drug-target interaction prediction; Neighborhood regularized logistic matrix factorization; Beta distribution; Rescoring; Bayesian optimization; Bayesian inference

Funding

  1. MEXT Regional Innovation and Ecosystem Formation Program Program to Industrialize an Innovative Middle Molecule Drug Discovery Flow through Fusion of Computational Drug Design and Chemical Synthesis Technology
  2. JST Research Complex Program Wellbeing Research Campus: Creating new values through technological and social innovation
  3. JST CREST Extreme Big Data [JPMJCR1303]
  4. JSPS KAKENHI [15J11261, 17H01814, 18K18149]
  5. AMED BINDS [JP17am0101112]
  6. Grants-in-Aid for Scientific Research [18K18149, 17H01814, 15J11261] Funding Source: KAKEN

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Techniques for predicting interactions between a drug and a target (protein) are useful for strategic drug repositioning. Neighborhood regularized logistic matrix factorization (NRLMF) is one of the state-of-the-art drug-target interaction prediction methods; it is based on a statistical model using the Bernoulli distribution. However, the prediction is not accurate when drug-target interaction pairs have less interaction information (e.g., the sum of the number of ligands for a target and the number of target proteins for a drug). This study aimed to address this issue by proposing NRLMF with beta distribution rescoring (NRLMF beta), which is an algorithm to improve the score of NRLMF. The score of NRLMF beta is equivalent to the value of the original NRLMF score when the concentration of the beta distribution becomes infinity. The beta distribution is known as a conjugative prior distribution of the Bernoulli distribution and can reflect the amount of interaction information to its shape based on Bayesian inference. Therefore, in NRLMF beta, the beta distribution was used for rescoring the NRLMF score. In the evaluation experiment, we measured the average values of area under the receiver operating characteristics and area under precision versus recall and the 95% confidence intervals. The performance of NRLMF beta was found to be better than that of NRLMF in the four types of benchmark datasets. Thus, we concluded that NRLMF beta improved the prediction accuracy of NRLMF. The source code is available at https: //github.com/akiyamalab/NRLMFb.

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