The Clinical E-Science Framework (CLEF) project was used to extract important information from medical texts by building a system for the purpose of clinical research, evidence-based healthcare and genotype-meets-phenotype informatics. The system is divided into two parts, one part concerns with the identification of relationships between clinically important entities in the text. The full parses and domain-specific grammars had been used to apply many approaches to extract the relationship. In the second part of the system, statistical machine learning (ML) approaches are applied to extract relationship. A corpus of oncology narratives that hand annotated with clinical relationships can be used to train and test a system that has been desi...
Rapid advances in the biomedical fields have led to the generation of an explosive\ud amount of text...
The body of biomedical literature is growing at an unprecedented rate, exceeding the ability of rese...
International audienceWe describe a system for automatic extraction of semantic relations between en...
Background: The Clinical E-Science Framework (CLEF) project has built a system to extract clinically...
Background The Clinical E-Science Framework (CLEF) project has built a system to extract clinical...
© 2020 Elsevier Inc. Relation extraction aims to discover relational facts about entity mentions fro...
Machine Learning (ML) is a natural outgrowth of the intersection of Computer Science and Statistics....
Electronic Patient Records have opened up the possibility of re-using the data collected for clinica...
Significant growth in Electronic Health Records (EHR) over the last decade has provided an abundance...
Held in conjunction with ECML-PKDD 2017International audienceA key aspect of machine learning-based ...
and rule-based methods for structured information extraction from narrative clinical discharge summa...
Shanker, Vijay K.Wu, Cathy H.Biomedical relation extraction is an critical text-mining task that con...
The surging amount of biomedical literature & digital clinical records presents a growing need for t...
Background: Knowledge representation frameworks are essential to the understanding of complex biomed...
The information extraction from unstructured text segments is a complex task. Although manual inform...
Rapid advances in the biomedical fields have led to the generation of an explosive\ud amount of text...
The body of biomedical literature is growing at an unprecedented rate, exceeding the ability of rese...
International audienceWe describe a system for automatic extraction of semantic relations between en...
Background: The Clinical E-Science Framework (CLEF) project has built a system to extract clinically...
Background The Clinical E-Science Framework (CLEF) project has built a system to extract clinical...
© 2020 Elsevier Inc. Relation extraction aims to discover relational facts about entity mentions fro...
Machine Learning (ML) is a natural outgrowth of the intersection of Computer Science and Statistics....
Electronic Patient Records have opened up the possibility of re-using the data collected for clinica...
Significant growth in Electronic Health Records (EHR) over the last decade has provided an abundance...
Held in conjunction with ECML-PKDD 2017International audienceA key aspect of machine learning-based ...
and rule-based methods for structured information extraction from narrative clinical discharge summa...
Shanker, Vijay K.Wu, Cathy H.Biomedical relation extraction is an critical text-mining task that con...
The surging amount of biomedical literature & digital clinical records presents a growing need for t...
Background: Knowledge representation frameworks are essential to the understanding of complex biomed...
The information extraction from unstructured text segments is a complex task. Although manual inform...
Rapid advances in the biomedical fields have led to the generation of an explosive\ud amount of text...
The body of biomedical literature is growing at an unprecedented rate, exceeding the ability of rese...
International audienceWe describe a system for automatic extraction of semantic relations between en...