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3 months ago

Using Drug Descriptions and Molecular Structures for Drug-Drug Interaction Extraction from Literature

{Yutaka Sasaki Makoto Miwa Masaki Asada}

Abstract

MotivationNeural methods to extract drug-drug interactions (DDIs) from literature require a large number of annotations. In this study, we propose a novel method to effectively utilize external drug database information as well as information from large-scale plain text for DDI extraction. Specifically, we focus on drug description and molecular structure information as the drug database information.ResultsWe evaluated our approach on the DDIExtraction 2013 shared task data set. We obtained the following results. First, large-scale raw text information can greatly improve the performance of extracting DDIs when combined with the existing model and it shows the state-of-the-art performance. Second, each of drug description and molecular structure information is helpful to further improve the DDI performance for some specific DDI types. Finally, the simultaneous use of the drug description and molecular structure information can significantly improve the performance on all the DDI types. We showed that the plain text, the drug description information, and molecular structure information are complementary and their effective combination are essential for the improvement.

Benchmarks

BenchmarkMethodologyMetrics
drug-drug-interaction-extraction-on-ddiDESC+MOL+SciBERT
F1: 0.8408
Micro F1: 84.08

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Using Drug Descriptions and Molecular Structures for Drug-Drug Interaction Extraction from Literature | Papers | HyperAI