Background and objective In order for computers to extract useful information from unstructured text, a concept normalization system is needed to link relevant concepts in a text to sources that contain further information about the concept. Popular concept normalization tools in the biomedical field are dictionary-based. In this study we investigate the usefulness of natural language processing (NLP) as an adjunct to dictionary-based concept normalization. Methods We compared the performance of two biomedical concept normalization systems, MetaMap and Peregrine, on the Arizona Disease Corpus, with and without the use of a rule-based NLP module. Performance was assessed for exact and inexact boundary matching of the system annotations with ...
Biomedical knowledge bases are crucial in modern data-driven biomedical sciences, but automated biom...
Motivation: Despite the central role of diseases in biomedical research, there have been much fewer ...
Background: Free-text descriptions in electronic health records (EHRs) can be of interest for clinic...
Background and objective: In order for computers to extract useful information from unstructured tex...
AbstractIn this pilot study, we explore the feasibility and accuracy of using a query in a commercia...
AbstractInformation encoded in natural language in biomedical literature publications is only useful...
Background Encoded pathology data are key for medical registries and analyses, but pathology informa...
Background: Traditionally text mention normalization corpora have normalized concepts to single onto...
In recent years, various neural network architectures have been successfully applied to natural lang...
Electronic health records and scientific articles possess differing linguistic characteristics that ...
Electronic health records and scientific articles possess differing linguistic characteristics that ...
Medical literature, such as medical health records are increasingly digitised.As with any large grow...
Background Natural language processing (NLP) tools can facilitate the extraction of ...
Entity normalization is an essential but challenging task for knowledge base construction by text mi...
Natural language processing and text analy-sis methods offer the potential of uncovering hidden asso...
Biomedical knowledge bases are crucial in modern data-driven biomedical sciences, but automated biom...
Motivation: Despite the central role of diseases in biomedical research, there have been much fewer ...
Background: Free-text descriptions in electronic health records (EHRs) can be of interest for clinic...
Background and objective: In order for computers to extract useful information from unstructured tex...
AbstractIn this pilot study, we explore the feasibility and accuracy of using a query in a commercia...
AbstractInformation encoded in natural language in biomedical literature publications is only useful...
Background Encoded pathology data are key for medical registries and analyses, but pathology informa...
Background: Traditionally text mention normalization corpora have normalized concepts to single onto...
In recent years, various neural network architectures have been successfully applied to natural lang...
Electronic health records and scientific articles possess differing linguistic characteristics that ...
Electronic health records and scientific articles possess differing linguistic characteristics that ...
Medical literature, such as medical health records are increasingly digitised.As with any large grow...
Background Natural language processing (NLP) tools can facilitate the extraction of ...
Entity normalization is an essential but challenging task for knowledge base construction by text mi...
Natural language processing and text analy-sis methods offer the potential of uncovering hidden asso...
Biomedical knowledge bases are crucial in modern data-driven biomedical sciences, but automated biom...
Motivation: Despite the central role of diseases in biomedical research, there have been much fewer ...
Background: Free-text descriptions in electronic health records (EHRs) can be of interest for clinic...