Objective: A danger threatening hospitals is fire. The most important action following a fire is to urgently evacuate the hospital during the shortest time possible. The aim of this study was to predict the duration of emergency evacuation following hospital fire using machine-learning algorithms. Methods: In this study, the real emergency evacuation duration of 190 patients admitted to a hospital was predicted in a simulation based on the following 8 factors: the number of hospital floors, patient preparation and transfer time, distance to the safe location, as well as patient's weight, age, sex, and movement capability. To design and validate the model, we used statistical models of machine learning, including Support Vector Machines Rand...
There are many issues in a hospital evacuation, related both to conditions of the patients and to bu...
Purpose: The purpose of this paper is to design a numerical model to calculate the individual evacua...
Assessing the fire safety of buildings is fundamental to reduce the impact of this threat on their o...
Objective: A danger threatening hospitals is fire. The most important action following a fire is to ...
In this paper, a prediction model is presented that estimates the evacuation time in an emergency si...
Abstract In this retrospective observational study, we aimed to develop a machine-learning model usi...
When fire occurs in a large multiplex building, the direction of smoke and flames is often similar t...
International audienceWhen ambulances' turnaround time (TT) in emergency departments is prolonged, i...
The paper presents a model to support evacuation plans design for fire emergency management in healt...
In a mass casualty incident, the factors that determine the survival rate of injured patients are di...
As the COVID-19 pandemic has affected the globe, health systems worldwide have also been significant...
The study of the quality of hospital emergency services is based on analyzing a set of indicators su...
The motivation of the project is to model and predict the volume of arrivals at the emergency depart...
International audienceEmergency medical services (EMS) provide crucial prehospital care, such as in ...
There are many issues in a hospital evacuation, related both to conditions of the patients and to bu...
Purpose: The purpose of this paper is to design a numerical model to calculate the individual evacua...
Assessing the fire safety of buildings is fundamental to reduce the impact of this threat on their o...
Objective: A danger threatening hospitals is fire. The most important action following a fire is to ...
In this paper, a prediction model is presented that estimates the evacuation time in an emergency si...
Abstract In this retrospective observational study, we aimed to develop a machine-learning model usi...
When fire occurs in a large multiplex building, the direction of smoke and flames is often similar t...
International audienceWhen ambulances' turnaround time (TT) in emergency departments is prolonged, i...
The paper presents a model to support evacuation plans design for fire emergency management in healt...
In a mass casualty incident, the factors that determine the survival rate of injured patients are di...
As the COVID-19 pandemic has affected the globe, health systems worldwide have also been significant...
The study of the quality of hospital emergency services is based on analyzing a set of indicators su...
The motivation of the project is to model and predict the volume of arrivals at the emergency depart...
International audienceEmergency medical services (EMS) provide crucial prehospital care, such as in ...
There are many issues in a hospital evacuation, related both to conditions of the patients and to bu...
Purpose: The purpose of this paper is to design a numerical model to calculate the individual evacua...
Assessing the fire safety of buildings is fundamental to reduce the impact of this threat on their o...