Abstract Background Extraction of clinical information such as medications or problems from clinical text is an important task of clinical natural language processing (NLP). Rule-based methods are often used in clinical NLP systems because they are easy to adapt and customize. Recently, supervised machine learning methods have proven to be effective in clinical NLP as well. However, combining different classifiers to further improve the performance of clinical entity recognition systems has not been investigated extensively. Combining classifiers into an ensemble classifier presents both challenges and opportunities to improve performance in such NLP tasks. Methods We investigated ensemble classifiers that used different voting strategies t...
Natural Language Processing (NLP) is essential for concept extraction from narrative text in electro...
Background The medical subdomain of a clinical note, such as cardiology or neurolog...
Importance: Overdose is one of the leading causes of death in the US; however, surveillance data lag...
An accurate Named Entity Recognition (NER) is important for knowledge discovery in text mining. This...
Background Due to rich information embedded in published articles, literature review has become an i...
Objective This article describes a system developed for the 2009 i2b2 Medication Extraction Challeng...
To extract important concepts (named entities) from clinical notes, most widely used NLP task is nam...
AbstractObjectivesNamed entity recognition (NER), a sequential labeling task, is one of the fundamen...
In named entity recognition (NER) for biomedical literature, approaches based on combined classifier...
The Third i2b2 Workshop on Natural Language Processing Challenges for Clinical Records focused on th...
AbstractObjectiveDrug named entity recognition (NER) is a critical step for complex biomedical NLP t...
AbstractPurpose: This article describes a formative natural language processing (NLP) system that is...
AbstractRecognition of medical concepts is a basic step in information extraction from clinical reco...
Natural language processing (NLP) is the branch of computer science focused on developing systems th...
Background: Named entity recognition (NER) systems are commonly built using supervised methods that ...
Natural Language Processing (NLP) is essential for concept extraction from narrative text in electro...
Background The medical subdomain of a clinical note, such as cardiology or neurolog...
Importance: Overdose is one of the leading causes of death in the US; however, surveillance data lag...
An accurate Named Entity Recognition (NER) is important for knowledge discovery in text mining. This...
Background Due to rich information embedded in published articles, literature review has become an i...
Objective This article describes a system developed for the 2009 i2b2 Medication Extraction Challeng...
To extract important concepts (named entities) from clinical notes, most widely used NLP task is nam...
AbstractObjectivesNamed entity recognition (NER), a sequential labeling task, is one of the fundamen...
In named entity recognition (NER) for biomedical literature, approaches based on combined classifier...
The Third i2b2 Workshop on Natural Language Processing Challenges for Clinical Records focused on th...
AbstractObjectiveDrug named entity recognition (NER) is a critical step for complex biomedical NLP t...
AbstractPurpose: This article describes a formative natural language processing (NLP) system that is...
AbstractRecognition of medical concepts is a basic step in information extraction from clinical reco...
Natural language processing (NLP) is the branch of computer science focused on developing systems th...
Background: Named entity recognition (NER) systems are commonly built using supervised methods that ...
Natural Language Processing (NLP) is essential for concept extraction from narrative text in electro...
Background The medical subdomain of a clinical note, such as cardiology or neurolog...
Importance: Overdose is one of the leading causes of death in the US; however, surveillance data lag...