Litcius/Paper detail

Knowledge graphs and their applications in drug discovery

Finlay Maclean

2021Expert Opinion on Drug Discovery96 citationsDOI

Abstract

INTRODUCTION: Knowledge graphs have proven to be promising systems of information storage and retrieval. Due to the recent explosion of heterogeneous multimodal data sources generated in the biomedical domain, and an industry shift toward a systems biology approach, knowledge graphs have emerged as attractive methods of data storage and hypothesis generation. AREAS COVERED: In this review, the author summarizes the applications of knowledge graphs in drug discovery. They evaluate their utility; differentiating between academic exercises in graph theory, and useful tools to derive novel insights, highlighting target identification and drug repurposing as two areas showing particular promise. They provide a case study on COVID-19, summarizing the research that used knowledge graphs to identify repurposable drug candidates. They describe the dangers of degree and literature bias, and discuss mitigation strategies. EXPERT OPINION: Whilst knowledge graphs and graph-based machine learning have certainly shown promise, they remain relatively immature technologies. Many popular link prediction algorithms fail to address strong biases in biomedical data, and only highlight biological associations, failing to model causal relationships in complex dynamic biological systems. These problems need to be addressed before knowledge graphs reach their true potential in drug discovery.

Topics & Concepts

Computer scienceRepurposingData scienceDrug discoveryKnowledge graphDomain knowledgeBig dataIdentification (biology)Drug repositioningKnowledge extractionArtificial intelligenceMachine learningData miningDrugBioinformaticsMedicineBiologyPsychiatryEcologyBotanyAdvanced Graph Neural NetworksBioinformatics and Genomic NetworksMachine Learning in Healthcare