[EN] The objective of this work was to develop a predictive model to aid non-clinical dispatchers to classify emergency medical call incidents by their life-threatening level (yes/no), admissible response delay (undelayable, minutes, hours, days) and emergency system jurisdiction (emergency system/primary care) in real time. We used a total of 1 244 624 independent incidents from the Valencian emergency medical dispatch service in Spain, compiled in retrospective from 2009 to 2012, including clinical features, demographics, circumstantial factors and free text dispatcher observations. Based on them, we designed and developed DeepEMC2, a deep ensemble multitask model integrating four subnetworks: three specialized to context, clinical and te...
Machine learning and data mining techniques are increasingly being applied to electronic health reco...
International audienceEmergency call centers are often required to properly assess and prioritise em...
Emergency situations encompassing natural and human-made disasters, as well as their cascading effec...
In emergency call centers, operators are required to analyze and prioritize emergency situations pri...
In the emergency department (ED), patients are first sorted by acuity in order to prioritize those r...
8th IEEE International Conference on Big Data (Big Data), ELECTR NETWORK, DEC 10-13, 2020Internation...
A novel machine learning approach is presented in this paper, based on extracting latent informatio...
Abstract The triage process in emergency departments (EDs) relies on the subjective assessment of me...
Abstract Background Development of emergency department (ED) triage systems that accurately differen...
A novel machine learning approach is presented in this paper, based on extracting latent information...
As an industry where performance improvements can save lives, but resources are often scarce, emerge...
Emergency Medical Dispatch (EMD) defines the healthcare task concerning the assignment of paramedic ...
Myocardial infarction diagnosis is a common challenge in the emergency department. In managed settin...
This thesis aimed to improve the accuracy of dispatching ambulances to road crashes by identifying t...
With the proliferation of smart mobile devices, people are now increasingly using social media appli...
Machine learning and data mining techniques are increasingly being applied to electronic health reco...
International audienceEmergency call centers are often required to properly assess and prioritise em...
Emergency situations encompassing natural and human-made disasters, as well as their cascading effec...
In emergency call centers, operators are required to analyze and prioritize emergency situations pri...
In the emergency department (ED), patients are first sorted by acuity in order to prioritize those r...
8th IEEE International Conference on Big Data (Big Data), ELECTR NETWORK, DEC 10-13, 2020Internation...
A novel machine learning approach is presented in this paper, based on extracting latent informatio...
Abstract The triage process in emergency departments (EDs) relies on the subjective assessment of me...
Abstract Background Development of emergency department (ED) triage systems that accurately differen...
A novel machine learning approach is presented in this paper, based on extracting latent information...
As an industry where performance improvements can save lives, but resources are often scarce, emerge...
Emergency Medical Dispatch (EMD) defines the healthcare task concerning the assignment of paramedic ...
Myocardial infarction diagnosis is a common challenge in the emergency department. In managed settin...
This thesis aimed to improve the accuracy of dispatching ambulances to road crashes by identifying t...
With the proliferation of smart mobile devices, people are now increasingly using social media appli...
Machine learning and data mining techniques are increasingly being applied to electronic health reco...
International audienceEmergency call centers are often required to properly assess and prioritise em...
Emergency situations encompassing natural and human-made disasters, as well as their cascading effec...