A social theory-enhanced graph representation learning framework for multitask prediction of drug-drug interactions

被引:10
作者
Feng, Yue-Hua [1 ]
Zhang, Shao-Wu [1 ]
Feng, Yi-Yang [1 ]
Zhang, Qing-Qing [1 ]
Shi, Ming-Hui [1 ]
Shi, Jian-Yu [2 ]
机构
[1] Northwestern Polytech Univ, Sch Automat, Key Lab Informat Fus Technol, Minist Educ, Xian 710072, Peoples R China
[2] Northwestern Polytech Univ, Sch Life Sci, Xian 710072, Peoples R China
基金
中国国家自然科学基金;
关键词
drug-drug interaction; graph representation learning; Balance theory; Status theory; multitask learning;
D O I
10.1093/bib/bbac602
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Current machine learning-based methods have achieved inspiring predictions in the scenarios of mono-type and multi-type drug-drug interactions (DDIs), but they all ignore enhancive and depressive pharmacological changes triggered by DDIs. In addition, these pharmacological changes are asymmetric since the roles of two drugs in an interaction are different. More importantly, these pharmacological changes imply significant topological patterns among DDIs. To address the above issues, we first leverage Balance theory and Status theory in social networks to reveal the topological patterns among directed pharmacological DDIs, which are modeled as a signed and directed network. Then, we design a novel graph representation learning model named SGRL-DDI (social theory-enhanced graph representation learning for DDI) to realize the multitask prediction of DDIs. SGRL-DDI model can capture the task-joint information by integrating relation graph convolutional networks with Balance and Status patterns. Moreover, we utilize task-specific deep neural networks to perform two tasks, including the prediction of enhancive/depressive DDIs and the prediction of directed DDIs. Based on DDI entries collected from DrugBank, the superiority of our model is demonstrated by the comparison with other state-of-the-art methods. Furthermore, the ablation study verifies that Balance and Status patterns help characterize directed pharmacological DDIs, and that the joint of two tasks provides better DDI representations than individual tasks. Last, we demonstrate the practical effectiveness of our model by a version-dependent test, where 88.47 and 81.38% DDI out of newly added entries provided by the latest release of DrugBank are validated in two predicting tasks respectively.
引用
收藏
页数:11
相关论文
共 46 条
  • [1] Using drug descriptions and molecular structures for drug-drug interaction extraction from literature
    Asada, Masaki
    Miwa, Makoto
    Sasaki, Yutaka
    [J]. BIOINFORMATICS, 2021, 37 (12) : 1739 - 1746
  • [2] Bioactive triterpenoids from Sambucus java']javanica Blume
    Chen, Feilong
    Liu, Dong-Li
    Wang, Wei
    Lv, Xiao-Man
    Li, Weixi
    Shao, Li-Dong
    Wang, Wen-Jing
    [J]. NATURAL PRODUCT RESEARCH, 2020, 34 (19) : 2816 - 2821
  • [3] Chen Y., 2018, CIKM 2018 P 27 ACM I
  • [4] MUFFIN: multi-scale feature fusion for drug-drug interaction prediction
    Chen, Yujie
    Ma, Tengfei
    Yang, Xixi
    Wang, Jianmin
    Song, Bosheng
    Zeng, Xiangxiang
    [J]. BIOINFORMATICS, 2021, 37 (17) : 2651 - 2658
  • [5] Machine learning-based prediction of drug-drug interactions by integrating drug phenotypic, therapeutic, chemical, and genomic properties
    Cheng, Feixiong
    Zhao, Zhongming
    [J]. JOURNAL OF THE AMERICAN MEDICAL INFORMATICS ASSOCIATION, 2014, 21 (E2) : E278 - E286
  • [6] Dang Q. V., 2018, 2018 IEEE 4 INT C CO
  • [7] CLUSTERING AND STRUCTURAL BALANCE IN GRAPHS
    DAVIS, JA
    [J]. HUMAN RELATIONS, 1967, 20 (02) : 181 - 187
  • [8] A multimodal deep learning framework for predicting drug-drug interaction events
    Deng, Yifan
    Xu, Xinran
    Qiu, Yang
    Xia, Jingbo
    Zhang, Wen
    Liu, Shichao
    [J]. BIOINFORMATICS, 2020, 36 (15) : 4316 - 4322
  • [9] Signed Graph Convolutional Networks
    Derr, Tyler
    Ma, Yao
    Tang, Jiliang
    [J]. 2018 IEEE INTERNATIONAL CONFERENCE ON DATA MINING (ICDM), 2018, : 929 - 934
  • [10] DPDDI: a deep predictor for drug-drug interactions
    Feng, Yue-Hua
    Zhang, Shao-Wu
    Shi, Jian-Yu
    [J]. BMC BIOINFORMATICS, 2020, 21 (01) : 419