期刊论文详细信息
BMC Bioinformatics
Small molecule drug and biotech drug interaction prediction based on multi-modal representation learning
Research
Hongjian He1  Jiang Xie1  Jiaming Ouyang1  Chang Zhao1  Dingkai Huang1  Xin Dong2 
[1] School of Computer Engineering and Science, Shanghai University, 200444, Shanghai, China;School of Medicine, Shanghai University, 200444, Shanghai, China;
关键词: Drug–drug interactions;    Multi-modal representation learning;    PU-sampling;   
DOI  :  10.1186/s12859-022-05101-2
 received in 2022-08-25, accepted in 2022-12-06,  发布年份 2022
来源: Springer
PDF
【 摘 要 】

BackgroundDrug–drug interactions (DDIs) occur when two or more drugs are taken simultaneously or successively. Early detection of adverse drug interactions can be essential in preventing medical errors and reducing healthcare costs. Many computational methods already predict interactions between small molecule drugs (SMDs). As the number of biotechnology drugs (BioDs) increases, so makes the threat of interactions between SMDs and BioDs. However, few computational methods are available to predict their interactions.ResultsConsidering the structural specificity and relational complexity of SMDs and BioDs, a novel multi-modal representation learning method called Multi-SBI is proposed to predict their interactions. First, multi-modal features are used to adequately represent the heterogeneous structure and complex relationships of SMDs and BioDs. Second, an undersampling method based on Positive-unlabeled learning (PU-sampling) is introduced to obtain negative samples with high confidence from the unlabeled data set. Finally, both learned representations of SMD and BioD are fed into DNN classifiers to predict their interaction events. In addition, we also conduct a retrospective analysis.ConclusionsOur proposed multi-modal representation learning method can extract drug features more comprehensively in heterogeneous drugs. In addition, PU-sampling can effectively reduce the noise in the sampling procedure. Our proposed method significantly outperforms other state-of-the-art drug interaction prediction methods. In a retrospective analysis of DrugBank 5.1.0, 14 out of the 20 predictions with the highest confidence were validated in the latest version of DrugBank 5.1.8, demonstrating that Multi-SBI is a valuable tool for predicting new drug interactions through effectively extracting and learning heterogeneous drug features.

【 授权许可】

CC BY   
© The Author(s) 2022

【 预 览 】
附件列表
Files Size Format View
RO202305064944070ZK.pdf 1544KB PDF download
12982_2022_119_Article_IEq162.gif 1KB Image download
Fig. 2 642KB Image download
MediaObjects/42004_2022_780_MOESM2_ESM.pdf 5013KB PDF download
Fig. 1 286KB Image download
Fig. 1 139KB Image download
Fig. 3 181KB Image download
Fig. 9 74KB Image download
40644_2022_517_Article_IEq1.gif 1KB Image download
Fig. 2 496KB Image download
Fig. 2 621KB Image download
Fig. 2 221KB Image download
【 图 表 】

Fig. 2

Fig. 2

Fig. 2

40644_2022_517_Article_IEq1.gif

Fig. 9

Fig. 3

Fig. 1

Fig. 1

Fig. 2

12982_2022_119_Article_IEq162.gif

【 参考文献 】
  • [1]
  • [2]
  • [3]
  • [4]
  • [5]
  • [6]
  • [7]
  • [8]
  • [9]
  • [10]
  • [11]
  • [12]
  • [13]
  • [14]
  • [15]
  • [16]
  • [17]
  • [18]
  • [19]
  • [20]
  • [21]
  • [22]
  • [23]
  • [24]
  • [25]
  • [26]
  • [27]
  • [28]
  • [29]
  • [30]
  • [31]
  • [32]
  • [33]
  • [34]
  • [35]
  • [36]
  • [37]
  • [38]
  • [39]
  文献评价指标  
  下载次数:8次 浏览次数:0次