Access to reliable data from electronic health records is of high importance in several key areas in patient care, biomedical research, and education. However, many of the clinical entities are negated in the patient record text. Detecting what is a negation and what is not is therefore a key to high quality text mining. In this study we used the NegEx system adapted for Swedish to investigate negated clinical entities. We applied the system to a subset of free-text entries under a heading containing the word ‘assessment’ from the Stockholm EPR corpus, containing in total 23,171,559 tokens. Specifically, the explored entities were the SNOMED CT terms having the semantic categories ‘finding’ or ‘disorder’. The s...
Abstract Background Most methods for negation detection in clinical text have been developed for Eng...
In Electronic Health Records (EHRs), much of valuable information regarding patients’ conditions is ...
NegEx is a popular rule-based system used to identify negated concepts in clinical notes. This syste...
Access to reliable data from electronic health records is of high importance in several key areas in...
Electronic patient records are a potentially rich data source for knowledge extraction in bio-medica...
AbstractIn Electronic Health Records (EHRs), much of valuable information regarding patients’ condit...
Abstract When developing models for clinical information retrieval and decision support systems, the...
Clinical text contains many negated concepts since the physician excludes irrelevant symptoms when r...
Background: Most methods for negation detection in clinical text have been developed for English tex...
Negation detection is a key component in clinical information extraction systems, as health record t...
Negation detection is a key component in clinical information extraction systems, as health record t...
AbstractNarrative reports in medical records contain a wealth of information that may augment struct...
Identification of the certainty of events is an important text mining problem. In partic...
Electronic health records contain valuable information written in narrative form. A relevant challen...
In medical reports patient data is mostly stored in narrative language, which is the spoken or writt...
Abstract Background Most methods for negation detection in clinical text have been developed for Eng...
In Electronic Health Records (EHRs), much of valuable information regarding patients’ conditions is ...
NegEx is a popular rule-based system used to identify negated concepts in clinical notes. This syste...
Access to reliable data from electronic health records is of high importance in several key areas in...
Electronic patient records are a potentially rich data source for knowledge extraction in bio-medica...
AbstractIn Electronic Health Records (EHRs), much of valuable information regarding patients’ condit...
Abstract When developing models for clinical information retrieval and decision support systems, the...
Clinical text contains many negated concepts since the physician excludes irrelevant symptoms when r...
Background: Most methods for negation detection in clinical text have been developed for English tex...
Negation detection is a key component in clinical information extraction systems, as health record t...
Negation detection is a key component in clinical information extraction systems, as health record t...
AbstractNarrative reports in medical records contain a wealth of information that may augment struct...
Identification of the certainty of events is an important text mining problem. In partic...
Electronic health records contain valuable information written in narrative form. A relevant challen...
In medical reports patient data is mostly stored in narrative language, which is the spoken or writt...
Abstract Background Most methods for negation detection in clinical text have been developed for Eng...
In Electronic Health Records (EHRs), much of valuable information regarding patients’ conditions is ...
NegEx is a popular rule-based system used to identify negated concepts in clinical notes. This syste...