Litcius/Paper detail

FoodAtlas: Automated knowledge extraction of food and chemicals from literature

Jason Youn, Fangzhou Li, Gabriel Simmons, Shanghyeon Kim, Ilias Tagkopoulos

2024Computers in Biology and Medicine14 citationsDOIOpen Access PDF

Abstract

Automated generation of knowledge graphs that accurately capture published information can help with knowledge organization and access, which have the potential to accelerate discovery and innovation. Here, we present an integrated pipeline to construct a large-scale knowledge graph using large language models in an active learning setting. We apply our pipeline to the association of raw food, ingredients, and chemicals, a domain that lacks such knowledge resources. By using an iterative active learning approach of 4120 manually curated premise-hypothesis pairs as training data for ten consecutive cycles, the entailment model extracted 230,848 food-chemical composition relationships from 155,260 scientific papers, with 106,082 (46.0 %) of them never been reported in any published database. To augment the knowledge incorporated in the knowledge graph, we further incorporated information from 5 external databases and ontology sources. We then applied a link prediction model to identify putative food-chemical relationships that were not part of the constructed knowledge graph. Validation of the 443 hypotheses generated by the link prediction model resulted in 355 new food-chemical relationships, while results show that the model score correlates well (R 2 = 0.70) with the probability of a novel finding. This work demonstrates how automated learning from literature at scale can accelerate discovery and support practical applications through reproducible, evidence-based capture of latent interactions of diverse entities, such as food and chemicals. • An automated pipeline that extracts food-chemical information from literature. • A food-chemical knowledge graph with 46 % triplets not in public databases. • 6 food-chemical potentially novel associations discovered by link prediction. • Evidence-based quality control for the trustworthy food knowledge base.

Topics & Concepts

Computer sciencePipeline (software)Domain knowledgeKnowledge extractionGraphKnowledge graphConstruct (python library)Artificial intelligenceInformation retrievalMachine learningData scienceData miningTheoretical computer scienceProgramming languageBiomedical Text Mining and OntologiesComputational Drug Discovery MethodsNutrition, Genetics, and Disease