Purpose: The purpose of this study is twofold: exploring new queue-based variables enabled by process mining and evaluating their impact on the accuracy of waiting time prediction. Such queue-based predictors that capture the current state of the emergency department (ED) may lead to a significant improvement in the accuracy of the prediction models. Design/methodology/approach: Alongside the traditional variables influencing ED waiting time, the authors developed new queue-based predictors exploiting process mining. Process mining techniques allowed the authors to discover the actual patient-flow and derive information about the crowding level of the activities. The proposed predictors were evaluated using linear and nonlinear learning tec...
OBJECTIVE: Emergency departments (EDs) continue to pursue optimal patient flow without sacrificing q...
STUDY OBJECTIVE: We apply a previously described tool to forecast emergency department (ED) crowding...
Emergency Departments (EDs) in hospitals are experiencing severe crowding and prolonged patient wait...
This thesis aims at providing a robust predictive model that accurately estimates the waiting time o...
Background: The current systems of reporting waiting time to patients in public emergency department...
Emergency Departments (EDs) can better manage activities and resources and anticipate overcrowding t...
Problem definition: We study the estimation of the probability distribution of individual patient wa...
International audiencePredicting patient waiting times in public emergency department rooms (EDs) ha...
OBJECTIVE: Patients, families and community members would like emergency department wait time visibi...
Waiting times are linked to risks for the patient and higher mortality rate. We propose a model to r...
In this work, we produce several prediction models for aspects of hospital emergency departments. Fi...
Abstract— One of the primary difficulties that hospitals confront nowadays is patient overpopulation...
Thesis (Master's)--University of Washington, 2017Emergency Department (ED) overcrowding has become c...
Background: Since providing timely care is the primary concern of emergency departments (EDs), long ...
The development of predictive models in healthcare settings has been growing; one such area is the p...
OBJECTIVE: Emergency departments (EDs) continue to pursue optimal patient flow without sacrificing q...
STUDY OBJECTIVE: We apply a previously described tool to forecast emergency department (ED) crowding...
Emergency Departments (EDs) in hospitals are experiencing severe crowding and prolonged patient wait...
This thesis aims at providing a robust predictive model that accurately estimates the waiting time o...
Background: The current systems of reporting waiting time to patients in public emergency department...
Emergency Departments (EDs) can better manage activities and resources and anticipate overcrowding t...
Problem definition: We study the estimation of the probability distribution of individual patient wa...
International audiencePredicting patient waiting times in public emergency department rooms (EDs) ha...
OBJECTIVE: Patients, families and community members would like emergency department wait time visibi...
Waiting times are linked to risks for the patient and higher mortality rate. We propose a model to r...
In this work, we produce several prediction models for aspects of hospital emergency departments. Fi...
Abstract— One of the primary difficulties that hospitals confront nowadays is patient overpopulation...
Thesis (Master's)--University of Washington, 2017Emergency Department (ED) overcrowding has become c...
Background: Since providing timely care is the primary concern of emergency departments (EDs), long ...
The development of predictive models in healthcare settings has been growing; one such area is the p...
OBJECTIVE: Emergency departments (EDs) continue to pursue optimal patient flow without sacrificing q...
STUDY OBJECTIVE: We apply a previously described tool to forecast emergency department (ED) crowding...
Emergency Departments (EDs) in hospitals are experiencing severe crowding and prolonged patient wait...