Abstract Background Electronic Medical Records(EMRs) contain much medical information about patients. Medical named entity extracting from EMRs can provide value information to support doctors’ decision making. The research on information extraction of Chinese Electronic Medical Records is still behind that has done in English. Methods This paper proposed a practical annotation scheme for medical entity extraction on Resident Admit Notes (RANs), and a model which can automatic extract medical entity. Nine types of clinical entities, four types of clinical relationships were defined in our annotation scheme. An end-to-end deep neural network with convolution neural network and long-short term memory units was applied in our model for the med...
In the medical field, text classification based on natural language process (NLP) has shown good res...
Intelligent traditional Chinese medicine (TCM) has become a popular research field by means of prosp...
Clinical named entity recognition (CNER) identifies entities from unstructured medical records and c...
Abstract Background The Named Entity Recognition (NER) task as a key step in the extraction of healt...
Rapid growth in electronic health records (EHRs) use has led to an unprecedented expansion of availa...
Abstract Background Named Entity Recognition (NER) is a long-standing fundamental problem in various...
Objective: Named entity recognition (NER) is one of the fundamental tasks in natural language proces...
The combination of medical field and big data has led to an explosive growth in the volume of electr...
Clinical Named Entity Recognition (CNER) focuses on locating named entities in electronic medical re...
Specific entity terms such as disease, test, symptom, and genes in Electronic Medical Record (EMR) c...
Abstract Background Electronic medical records (EMRs) contain a variety of valuable medical concepts...
Abstract Background Electronic Medical Record (EMR) comprises patients’ medical information gathered...
Increasingly popular virtualized healthcare services such as online health consultations have signif...
To extract important concepts (named entities) from clinical notes, most widely used NLP task is nam...
With the advancement of medical informatization,a large amount of unstructured text data has been ac...
In the medical field, text classification based on natural language process (NLP) has shown good res...
Intelligent traditional Chinese medicine (TCM) has become a popular research field by means of prosp...
Clinical named entity recognition (CNER) identifies entities from unstructured medical records and c...
Abstract Background The Named Entity Recognition (NER) task as a key step in the extraction of healt...
Rapid growth in electronic health records (EHRs) use has led to an unprecedented expansion of availa...
Abstract Background Named Entity Recognition (NER) is a long-standing fundamental problem in various...
Objective: Named entity recognition (NER) is one of the fundamental tasks in natural language proces...
The combination of medical field and big data has led to an explosive growth in the volume of electr...
Clinical Named Entity Recognition (CNER) focuses on locating named entities in electronic medical re...
Specific entity terms such as disease, test, symptom, and genes in Electronic Medical Record (EMR) c...
Abstract Background Electronic medical records (EMRs) contain a variety of valuable medical concepts...
Abstract Background Electronic Medical Record (EMR) comprises patients’ medical information gathered...
Increasingly popular virtualized healthcare services such as online health consultations have signif...
To extract important concepts (named entities) from clinical notes, most widely used NLP task is nam...
With the advancement of medical informatization,a large amount of unstructured text data has been ac...
In the medical field, text classification based on natural language process (NLP) has shown good res...
Intelligent traditional Chinese medicine (TCM) has become a popular research field by means of prosp...
Clinical named entity recognition (CNER) identifies entities from unstructured medical records and c...