Improving Drug–Drug Interaction Extraction with Gaussian Noise

Author:

Molina Marco1,Jiménez Cristina1,Montenegro Carlos1ORCID

Affiliation:

1. Department of Informatics and Computer Science, Faculty of Systems Engineering, Escuela Politécnica Nacional, Av. Ladron de Guevara E11-25, Quito 170525, Ecuador

Abstract

Drug–Drug Interactions (DDIs) produce essential and valuable insights for healthcare professionals, since they provide data on the impact of concurrent administration of medications to patients during therapy. In that sense, some relevant works, related to the DDIExtraction2013 Challenge, are available in the current technical literature. This study aims to improve previous results, using two models, where a Gaussian noise layer is added to achieve better DDI relationship extraction. (1) A Piecewise Convolutional Neural Network (PW-CNN) model is used to capture relationships among pharmacological entities described in biomedical databases. Additionally, the model incorporates multichannel words to enrich a person’s vocabulary and reduce unfamiliar words. (2) The model uses the pre-trained BERT language model to classify relationships, while also integrating data from the target entities. After identifying the target entities, the model transfers the relevant information through the pre-trained architecture and integrates the encoded data for both entities. The results of the experiment show an improved performance, with respect to previous models.

Publisher

MDPI AG

Subject

Pharmaceutical Science

Reference44 articles.

1. Adverse drug reactions and drug interactions as causes of hospital admission in oncology;Miranda;J. Pain Symptom Manag.,2011

2. Duda, S., Aliferis, C., Miller, R., Statnikov, A., and Johnson, K. (2005, January 22–26). Extracting drug–drug interaction articles from MEDLINE to improve the content of drug databases. Proceedings of the AMIA Annual Symposium Proceedings, Washington, DC, USA.

3. Segura Bedmar, I., Martínez, P., and Herrero Zazo, M. (2013, January 4–9). Semeval-2013 task 9: Extraction of drug-drug interactions from biomedical texts (DDIExtraction2013). Proceedings of the Computer Information Conference of the Association for Computational Linguistics, Sofia, Bulgaria.

4. BioPPISVMExtractor: A protein–protein interaction extractor for biomedical literature using SVM and rich feature sets;Yang;J. Biomed. Inform.,2010

5. A machine learning approach for identifying disease-treatment relations in short texts;Frunza;IEEE Trans. Knowl. Data Eng.,2010

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