The free text notes typed by physicians during patient consultations contain valuable information for the study of disease and treatment. These notes are difficult to process by existing natural language analysis tools since they are highly telegraphic (omitting many words), and contain many spelling mistakes, inconsistencies in punctuation, and non-standard word order. To support information extraction and classification tasks over such text, we describe a de-identified corpus of free text notes, a shallow syntactic and named entity annotation scheme for this kind of text, and an approach to training domain specialists with no linguistic background to annotate the text. Finally, we present a statistical chunking system for such clinical te...
One of the central tasks of medical text analysis is to extract and structure meaningful information...
Electronic health record systems are ubiquitous and the majority of patients’ data are now being col...
In the context of clinical trials and medical research medical text mining can provide broader insig...
Free text notes typed by primary care physicians during patient consultations typically contain high...
Electronic patient records, containing data about the health and care of a patient, are a valuable s...
We report on a research effort to create a corpus of clinical free text records enriched with annota...
In this paper, we describe the construction of a semantically annotated corpus of clinical texts for...
AbstractIn this paper, we describe the construction of a semantically annotated corpus of clinical t...
Introduction A number of challenges exist in analyzing unstructured free text data in electronic med...
Background: Named entity recognition (NER) systems are commonly built using supervised methods that ...
AbstractBackgroundFull syntactic parsing of clinical text as a part of clinical natural language pro...
AbstractNamed entity recognition is a crucial component of biomedical natural language processing, e...
BACKGROUND: Natural Language Processing (NLP) systems can be used for specific Information Extractio...
Problem: Clinical practice requires the production of a time- and resource-consuming great amount of...
A major hurdle in the development of natural language processing (NLP) methods for Electronic Health...
One of the central tasks of medical text analysis is to extract and structure meaningful information...
Electronic health record systems are ubiquitous and the majority of patients’ data are now being col...
In the context of clinical trials and medical research medical text mining can provide broader insig...
Free text notes typed by primary care physicians during patient consultations typically contain high...
Electronic patient records, containing data about the health and care of a patient, are a valuable s...
We report on a research effort to create a corpus of clinical free text records enriched with annota...
In this paper, we describe the construction of a semantically annotated corpus of clinical texts for...
AbstractIn this paper, we describe the construction of a semantically annotated corpus of clinical t...
Introduction A number of challenges exist in analyzing unstructured free text data in electronic med...
Background: Named entity recognition (NER) systems are commonly built using supervised methods that ...
AbstractBackgroundFull syntactic parsing of clinical text as a part of clinical natural language pro...
AbstractNamed entity recognition is a crucial component of biomedical natural language processing, e...
BACKGROUND: Natural Language Processing (NLP) systems can be used for specific Information Extractio...
Problem: Clinical practice requires the production of a time- and resource-consuming great amount of...
A major hurdle in the development of natural language processing (NLP) methods for Electronic Health...
One of the central tasks of medical text analysis is to extract and structure meaningful information...
Electronic health record systems are ubiquitous and the majority of patients’ data are now being col...
In the context of clinical trials and medical research medical text mining can provide broader insig...