SumGNN: multi-typed drug interaction prediction via efficient knowledge graph summarization

Author:

Yu Yue1,Huang Kexin2ORCID,Zhang Chao1,Glass Lucas M34,Sun Jimeng5,Xiao Cao3

Affiliation:

1. College of Computing, Georgia Institute of Technology, Atlanta, GA 30332, USA

2. Health Data Science, Harvard T.H. Chan School of Public Health, Boston, MA 02115, USA

3. Analytic Center of Excellence, IQVIA, Cambridge, MA 02139, USA

4. Department of Statistics, Temple University, Philadelphia, PA 19122, USA

5. Department of Computer Science, University of Illinois at Urbana-Champaign, Urbana, IL 61801, USA

Abstract

Abstract Motivation Thanks to the increasing availability of drug–drug interactions (DDI) datasets and large biomedical knowledge graphs (KGs), accurate detection of adverse DDI using machine learning models becomes possible. However, it remains largely an open problem how to effectively utilize large and noisy biomedical KG for DDI detection. Due to its sheer size and amount of noise in KGs, it is often less beneficial to directly integrate KGs with other smaller but higher quality data (e.g. experimental data). Most of existing approaches ignore KGs altogether. Some tries to directly integrate KGs with other data via graph neural networks with limited success. Furthermore most previous works focus on binary DDI prediction whereas the multi-typed DDI pharmacological effect prediction is more meaningful but harder task. Results To fill the gaps, we propose a new method SumGNN: knowledge summarization graph neural network, which is enabled by a subgraph extraction module that can efficiently anchor on relevant subgraphs from a KG, a self-attention based subgraph summarization scheme to generate reasoning path within the subgraph, and a multi-channel knowledge and data integration module that utilizes massive external biomedical knowledge for significantly improved multi-typed DDI predictions. SumGNN outperforms the best baseline by up to 5.54%, and performance gain is particularly significant in low data relation types. In addition, SumGNN provides interpretable prediction via the generated reasoning paths for each prediction. Availability and implementation The code is available in Supplementary Material. Supplementary information Supplementary data are available at Bioinformatics online.

Funder

National Science Foundation

National Institute of Health

NIH

Publisher

Oxford University Press (OUP)

Subject

Computational Mathematics,Computational Theory and Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Statistics and Probability

Reference55 articles.

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3. Predicting adverse drug–drug interactions with neural embedding of semantic predications;Burkhardt;bioRxiv,2019

4. Graph transformer for graph-to-sequence learning;Cai;AAAI,2020

5. Evaluation of knowledge graph embedding approaches for drug–drug interaction prediction in realistic settings;Celebi;BMC Bioinformatics,2019

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