A novel machine learning approach is presented in this paper, based on extracting latent information and using it to assist decision making on ambulance attendance and conveyance to a hospital. The approach includes two steps: in the first, a forward model analyzes the clinical and, possibly, non-clinical factors (explanatory variables), predicting whether positive decisions (response variables) should be given to the ambulance call, or not; in the second, a backward model analyzes the latent variables extracted from the forward model to infer the decision making procedure. The forward model is implemented through a machine, or deep learning technique, whilst the backward model is implemented through unsupervised learning. An experim...
International audienceBackground: Recently, many research groups have tried to develop emergency dep...
IntroductionThe closest emergency department (ED) may not always be the optimal hospital for certain...
This research lays down foundations for a stronger presence of machine learning in the emergency dep...
A novel machine learning approach is presented in this paper, based on extracting latent information...
This thesis aimed to improve the accuracy of dispatching ambulances to road crashes by identifying t...
One of the main problems currently facing the delivery of safe and effective emergency care is exces...
International audienceEmergency medical services (EMS) provide crucial prehospital care, such as in ...
Background: Predictors of subsequent events after Emergency Medical Services (EMS) non-conveyance de...
Background The inconsistency in triage evaluation in emergency departments (EDs) and the limitations...
Nurses at the Uppsala Emergency Medical Dispatch Center uses a computerized dispatcher system to pri...
Machine learning for hospital operations is under-studied. We present a prediction pipeline that use...
BackgroundEmergency admissions are a major source of healthcare spending. We aimed to derive, valida...
Background Emergency admissions are a major source of healthcare spending. We aimed to derive, valid...
International audienceWhen ambulances' turnaround time (TT) in emergency departments is prolonged, i...
Abstract In this retrospective observational study, we aimed to develop a machine-learning model usi...
International audienceBackground: Recently, many research groups have tried to develop emergency dep...
IntroductionThe closest emergency department (ED) may not always be the optimal hospital for certain...
This research lays down foundations for a stronger presence of machine learning in the emergency dep...
A novel machine learning approach is presented in this paper, based on extracting latent information...
This thesis aimed to improve the accuracy of dispatching ambulances to road crashes by identifying t...
One of the main problems currently facing the delivery of safe and effective emergency care is exces...
International audienceEmergency medical services (EMS) provide crucial prehospital care, such as in ...
Background: Predictors of subsequent events after Emergency Medical Services (EMS) non-conveyance de...
Background The inconsistency in triage evaluation in emergency departments (EDs) and the limitations...
Nurses at the Uppsala Emergency Medical Dispatch Center uses a computerized dispatcher system to pri...
Machine learning for hospital operations is under-studied. We present a prediction pipeline that use...
BackgroundEmergency admissions are a major source of healthcare spending. We aimed to derive, valida...
Background Emergency admissions are a major source of healthcare spending. We aimed to derive, valid...
International audienceWhen ambulances' turnaround time (TT) in emergency departments is prolonged, i...
Abstract In this retrospective observational study, we aimed to develop a machine-learning model usi...
International audienceBackground: Recently, many research groups have tried to develop emergency dep...
IntroductionThe closest emergency department (ED) may not always be the optimal hospital for certain...
This research lays down foundations for a stronger presence of machine learning in the emergency dep...