Integrating Heterogeneous Domain Information into Relation Extraction: A Case Study on Drug-Drug Interaction Extraction
Masaki Asada

TL;DR
This paper explores integrating diverse domain information, including molecular structures and knowledge graphs, into relation extraction models for drug-drug interactions, demonstrating significant performance improvements.
Contribution
It introduces a novel approach combining heterogeneous domain data with textual information for enhanced relation extraction in drug interactions.
Findings
Integrating molecular structures improves extraction accuracy.
Knowledge graph embeddings enhance relation prediction.
Heterogeneous data integration significantly outperforms baseline models.
Abstract
The development of deep neural networks has improved representation learning in various domains, including textual, graph structural, and relational triple representations. This development opened the door to new relation extraction beyond the traditional text-oriented relation extraction. However, research on the effectiveness of considering multiple heterogeneous domain information simultaneously is still under exploration, and if a model can take an advantage of integrating heterogeneous information, it is expected to exhibit a significant contribution to many problems in the world. This thesis works on Drug-Drug Interactions (DDIs) from the literature as a case study and realizes relation extraction utilizing heterogeneous domain information. First, a deep neural relation extraction model is prepared and its attention mechanism is analyzed. Next, a method to combine the drug…
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Taxonomy
TopicsComputational Drug Discovery Methods · Biomedical Text Mining and Ontologies
