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2000
Volume 20, Issue 6
  • ISSN: 1566-5240
  • E-ISSN: 1875-5666

Abstract

Background: Drug repositioning refers to discovering new indications for the existing drugs, which can improve the efficiency of drug research and development. Methods: In this work, a novel drug repositioning approach based on integrative multiple similarity measure, called DR_IMSM, is proposed. The process of integrative similarity measure contains three steps. First, a heterogeneous network can be constructed based on known drug-disease association, shared entities information for drug pairwise and diseases pairwise. Second, a deep learning method, DeepWalk, is used to capture the topology similarity for drug and disease. Third, a similarity integration and adjusting process is further conducted to obtain more comprehensive drug and disease similarity measure, respectively. Results: On this basis, a Bi-random walk algorithm is implemented in the constructed heterogeneous network to rank diseases for each drug. Compared with other approaches, the proposed DR_IMSM can achieve superior performance in terms of AUC on the gold standard datasets. Case studies further confirm the practical significance of DR_IMSM.

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/content/journals/cmm/10.2174/1566524019666191115103307
2020-07-01
2025-09-02
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/content/journals/cmm/10.2174/1566524019666191115103307
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