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Pattern Discovery from High-Order Drug-Drug Interaction Relations.

Wen-Hao ChiangTitus SchleyerLi ShenLang LiXia Ning
Published in: Journal of healthcare informatics research (2018)
Drug-drug interactions (DDIs) and associated adverse drug reactions (ADRs) represent a significant public health problem in the USA. The research presented in this manuscript tackles the problems of representing, quantifying, discovering, and visualizing patterns from high-order DDIs in a purely data-driven fashion within a unified graph-based framework and via unified convolution-based algorithms. We formulate the problem based on the notions of nondirectional DDI relations (DDI-nd's) and directional DDI relations (DDI-d's), and correspondingly developed weighted complete graphs and hyper-graphlets for their representation, respectively. We also develop a convolutional scheme and its stochastic algorithm SD 2 ID 2 S to discover DDI-based drug-drug similarities. Our experimental results demonstrate that such approaches can well capture the patterns of high-order DDIs.
Keyphrases
  • adverse drug
  • public health
  • machine learning
  • neural network
  • emergency department
  • magnetic resonance
  • electronic health record
  • high throughput
  • magnetic resonance imaging
  • network analysis
  • living cells