Abstract Background Electronic medical records (EMRs) contain a variety of valuable medical concepts and relations. The ability to recognize relations between medical concepts described in EMRs enables the automatic processing of clinical texts, resulting in an improved quality of health-related data analysis. Driven by the 2010 i2b2/VA Challenge Evaluation, the relation recognition problem in EMRs has been studied by many researchers to address this important aspect of EMR information extraction. Methods This paper proposes an Attention-Based Deep Residual Network (ResNet) model to recognize medical concept relations in Chinese EMRs. Results Our model achieves F 1-score of 77.80% on the manually annotated Chinese EMRs corpus and outperform...
Increasingly popular virtualized healthcare services such as online health consultations have signif...
Clinical named entity recognition (CNER) identifies entities from unstructured medical records and c...
The surging amount of biomedical literature & digital clinical records presents a growing need for t...
With the advancement of medical informatization,a large amount of unstructured text data has been ac...
Abstract Background Electronic Medical Records(EMRs) contain much medical information about patients...
Specific entity terms such as disease, test, symptom, and genes in Electronic Medical Record (EMR) c...
Clinical Named Entity Recognition (CNER) focuses on locating named entities in electronic medical re...
The combination of medical field and big data has led to an explosive growth in the volume of electr...
Abstract Background The Named Entity Recognition (NER) task as a key step in the extraction of healt...
Abstract Background Electronic Medical Record (EMR) comprises patients’ medical information gathered...
Abstract Background Named Entity Recognition (NER) is a long-standing fundamental problem in various...
Rapid growth in electronic health records (EHRs) use has led to an unprecedented expansion of availa...
Abstract Background Clinical entity recognition as a fundamental task of clinical text processing ha...
The Electronic Medical Record (EMR) contains a great deal of medical knowledge related to patients, ...
Relation extraction is a fundamental task in information extraction that identifies the semantic rel...
Increasingly popular virtualized healthcare services such as online health consultations have signif...
Clinical named entity recognition (CNER) identifies entities from unstructured medical records and c...
The surging amount of biomedical literature & digital clinical records presents a growing need for t...
With the advancement of medical informatization,a large amount of unstructured text data has been ac...
Abstract Background Electronic Medical Records(EMRs) contain much medical information about patients...
Specific entity terms such as disease, test, symptom, and genes in Electronic Medical Record (EMR) c...
Clinical Named Entity Recognition (CNER) focuses on locating named entities in electronic medical re...
The combination of medical field and big data has led to an explosive growth in the volume of electr...
Abstract Background The Named Entity Recognition (NER) task as a key step in the extraction of healt...
Abstract Background Electronic Medical Record (EMR) comprises patients’ medical information gathered...
Abstract Background Named Entity Recognition (NER) is a long-standing fundamental problem in various...
Rapid growth in electronic health records (EHRs) use has led to an unprecedented expansion of availa...
Abstract Background Clinical entity recognition as a fundamental task of clinical text processing ha...
The Electronic Medical Record (EMR) contains a great deal of medical knowledge related to patients, ...
Relation extraction is a fundamental task in information extraction that identifies the semantic rel...
Increasingly popular virtualized healthcare services such as online health consultations have signif...
Clinical named entity recognition (CNER) identifies entities from unstructured medical records and c...
The surging amount of biomedical literature & digital clinical records presents a growing need for t...