International audienceUnstructured data in electronic health records, represented by clinical texts, are a vast source of healthcare information because they describe a patient's journey, including clinical findings, procedures, and information about the continuity of care. The publication of several studies on temporal relation extraction from clinical texts during the last decade and the realization of multiple shared tasks highlight the importance of this research theme. Therefore, we propose a review of temporal relation extraction in clinical texts. We analyzed 105 articles and verified that relations between events and document creation time, a coarse temporality type, were addressed with traditional machine learning–based models with...
Objective: An analysis of the timing of events is critical for a deeper understanding of the course ...
Temporal information extraction is and has been a crucial aspect of automatic language understanding...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
Abstract Background Most of the current work on clinical temporal relation identification follows th...
Extracting temporal relations usually entails identifying and classifying the relation between two m...
AbstractClinical records include both coded and free-text fields that interact to reflect complicate...
AbstractTemporal information extraction from clinical narratives is of critical importance to many c...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...
Objective: An analysis of the timing of events is critical for a deeper understanding of the course ...
Temporal information extraction is and has been a crucial aspect of automatic language understanding...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
Abstract Background Most of the current work on clinical temporal relation identification follows th...
Extracting temporal relations usually entails identifying and classifying the relation between two m...
AbstractClinical records include both coded and free-text fields that interact to reflect complicate...
AbstractTemporal information extraction from clinical narratives is of critical importance to many c...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...
Objective: An analysis of the timing of events is critical for a deeper understanding of the course ...
Temporal information extraction is and has been a crucial aspect of automatic language understanding...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...