Abstract Background Extracting relations between important clinical entities is critical but very challenging for natural language processing (NLP) in the medical domain. Researchers have applied deep learning-based approaches to clinical relation extraction; but most of them consider sentence sequence only, without modeling syntactic structures. The aim of this study was to utilize a deep neural network to capture the syntactic features and further improve the performances of relation extraction in clinical notes. Methods We propose a novel neural approach to model shortest dependency path (SDP) between target entities together with the sentence sequence for clinical relation extraction. Our neural network architecture consists of three mo...
Previous research on relation classification has verified the effectiveness of using de-pendency sho...
© 2020 Elsevier Inc. Relation extraction aims to discover relational facts about entity mentions fro...
We introduce a family of deep-learning architectures for inter-sentence relation extraction, i.e., r...
Relation classification is an important re-search arena in the field of natural lan-guage processing...
Past work in relation extraction mostly focuses on binary relation between entity pairs within singl...
Many approaches to solving tasks in the field of Natural Language Processing (NLP) use syntactic dep...
Background: With the rapid expansion of biomedical literature, biomedical information extraction has...
Abstract Background Drug-drug interaction extraction (DDI) needs assistance from automated methods t...
With the advancement of medical informatization,a large amount of unstructured text data has been ac...
The surging amount of biomedical literature & digital clinical records presents a growing need for t...
Dependency analysis can assist neural networks to capture semantic features within a sentence for en...
Motivation: Adverse events resulting from drug-drug interactions (DDI) pose a serious health issue. ...
Abstract Background Extracting biomedical entities and their relations from text has important appli...
This Work Presents A Two-Stage Deep Learning System For Named Entity Recognition (Ner) And Relation ...
Rapid advances in the biomedical fields have led to the generation of an explosive\ud amount of text...
Previous research on relation classification has verified the effectiveness of using de-pendency sho...
© 2020 Elsevier Inc. Relation extraction aims to discover relational facts about entity mentions fro...
We introduce a family of deep-learning architectures for inter-sentence relation extraction, i.e., r...
Relation classification is an important re-search arena in the field of natural lan-guage processing...
Past work in relation extraction mostly focuses on binary relation between entity pairs within singl...
Many approaches to solving tasks in the field of Natural Language Processing (NLP) use syntactic dep...
Background: With the rapid expansion of biomedical literature, biomedical information extraction has...
Abstract Background Drug-drug interaction extraction (DDI) needs assistance from automated methods t...
With the advancement of medical informatization,a large amount of unstructured text data has been ac...
The surging amount of biomedical literature & digital clinical records presents a growing need for t...
Dependency analysis can assist neural networks to capture semantic features within a sentence for en...
Motivation: Adverse events resulting from drug-drug interactions (DDI) pose a serious health issue. ...
Abstract Background Extracting biomedical entities and their relations from text has important appli...
This Work Presents A Two-Stage Deep Learning System For Named Entity Recognition (Ner) And Relation ...
Rapid advances in the biomedical fields have led to the generation of an explosive\ud amount of text...
Previous research on relation classification has verified the effectiveness of using de-pendency sho...
© 2020 Elsevier Inc. Relation extraction aims to discover relational facts about entity mentions fro...
We introduce a family of deep-learning architectures for inter-sentence relation extraction, i.e., r...