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      DR2DI: a powerful computational tool for predicting novel drug-disease associations

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      Journal of Computer-Aided Molecular Design
      Springer Science and Business Media LLC

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          Abstract

          <p class="first" id="d6441972e89">Finding the new related candidate diseases for known drugs provides an effective method for fast-speed and low-risk drug development. However, experimental identification of drug-disease associations is expensive and time-consuming. This motivates the need for developing in silico computational methods that can infer true drug-disease pairs with high confidence. In this study, we presented a novel and powerful computational tool, DR2DI, for accurately uncovering the potential associations between drugs and diseases using high-dimensional and heterogeneous omics data as information sources. Based on a unified and extended similarity kernel framework, DR2DI inferred the unknown relationships between drugs and diseases using Regularized Kernel Classifier. Importantly, DR2DI employed a semi-supervised and global learning algorithm which can be applied to uncover the diseases (drugs) associated with known and novel drugs (diseases). In silico global validation experiments showed that DR2DI significantly outperforms recent two approaches for predicting drug-disease associations. Detailed case studies further demonstrated that the therapeutic indications and side effects of drugs predicted by DR2DI could be validated by existing database records and literature, suggesting that DR2DI can be served as a useful bioinformatic tool for identifying the potential drug-disease associations and guiding drug repositioning. Our software and comparison codes are freely available at https://github.com/huayu1111/DR2DI . </p>

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          Author and article information

          Journal
          Journal of Computer-Aided Molecular Design
          J Comput Aided Mol Des
          Springer Science and Business Media LLC
          0920-654X
          1573-4951
          May 2018
          April 23 2018
          May 2018
          : 32
          : 5
          : 633-642
          Article
          10.1007/s10822-018-0117-y
          29687309
          f92f659b-8241-4b2c-bd00-2b55d60c71cc
          © 2018

          http://www.springer.com/tdm

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