AbstractClinical records include both coded and free-text fields that interact to reflect complicated patient stories. The information often covers not only the present medical condition and events experienced by the patient, but also refers to relevant events in the past (such as signs, symptoms, tests or treatments). In order to automatically construct a timeline of these events, we first need to extract the temporal relations between pairs of events or time expressions presented in the clinical notes. We designed separate extraction components for different types of temporal relations, utilizing a novel hybrid system that combines machine learning with a graph-based inference mechanism to extract the temporal links. The temporal graph is...
We propose a scalable structured learning model that jointly predicts temporal relations between eve...
Objective: An analysis of the timing of events is critical for a deeper understanding of the course ...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...
AbstractClinical records include both coded and free-text fields that interact to reflect complicate...
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,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...
Abstract Background Most of the current work on clinical temporal relation identification follows th...
We propose a scalable structured learning model that jointly predicts temporal relations between eve...
We propose a scalable structured learning model that jointly predicts temporal relations between eve...
Objective: An analysis of the timing of events is critical for a deeper understanding of the course ...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...
AbstractClinical records include both coded and free-text fields that interact to reflect complicate...
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,...
International audienceUnstructured data in electronic health records, represented by clinical texts,...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...
Abstract Background Most of the current work on clinical temporal relation identification follows th...
We propose a scalable structured learning model that jointly predicts temporal relations between eve...
We propose a scalable structured learning model that jointly predicts temporal relations between eve...
Objective: An analysis of the timing of events is critical for a deeper understanding of the course ...
AbstractThe automatic detection of temporal relations between events in electronic medical records h...