Abstract

Extracting biomedical relations such as drug-drug interaction (DDI) from text is an important task in biomedical natural language processing. Due to the large number of complex sentences in biomedical literature, researchers have employed some sentence simplification techniques to improve the performance of the relation extraction methods. However, no significant improvement has been reported in literature, since the task is difficult. This paper aims to explore clause dependency related features alongside to linguisticbased negation scope and cues to overcome complexity of the sentences. The results show through employing the proposed features combined with a bag of words kernel, the performance of the used kernel methods improves. Moreover, experiments show that the enhanced local context kernel outperforms other methods. The proposed method can be used as an alternative approach for sentence simplification techniques in biomedical area which is an error-prone task.

Highlights

  • Being relatively new, biomedical relation extraction from text is a fast-growing topic in Natural Language Processing (NLP) research field

  • The last row contains the results for entire testing dataset. 10-fold cross validation of NegDDI-DrugBank 2013 led to the results reported in table 4

  • In local context kernel, the best improvement was 3.9%. Similar experiments to those conducted by global context kernel were carried out by the modified local context kernel with the best performance exhibited by the dataset containing the sentences without negation cues and clause connectors, just like what was observed for the global context kernel (Table 4)

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Summary

Introduction

Biomedical relation extraction from text is a fast-growing topic in Natural Language Processing (NLP) research field. Biomedical Natural Language processing or briefly BioNLP refers to the text mining applied to literature of the biomedical and molecular biology domain. With Drug-Drug interaction being a serious event in medicine, automatic extraction of these interactions from text is an important task to be carried out in BioNLP. Since biomedical relations, such as protein-protein and drug-drug interactions, significantly contribute to identification of biological and medical processes, biomedical relation extraction is believed to be a very important research topic within the field. Many of the existing works on biomedical relation extraction task in the literature (including the DDI detection) are approached via supervised binary relation extraction [4]. Other types of algorithms including complex relation extraction algorithms and semi-supervised ones are expected to be incorporated into this kind of the relation extraction task [5]

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