Title
Queuing Network Model and Visualization for the Patient Flow in the Obstetric Unit of the University of Tsukuba Hospital
Abstract
A complete data set of every movement of all the inpatients from room to room covering two years was provided us by the Medical Information Department of the University of Tsukuba Hospital in Japan. By focusing on the obstetric patients, who are assumed to be hospitalized rather at random times, we have analyzed the patient flow using our original visualization software. Upon admission, each obstetric patient is assigned to a bed in one of the two wards, one for high-risk delivery and the other for normal delivery, and then she may be transferred between the two wards before discharge. We confirm Little's law of queuing theory for the patient flow in each ward. Then we propose a network model of M/G/\"V and M/M/m queues to represent the flow of these patients, which is used to predict the probability distribution for the number of patients staying in each ward at the nightly census time from the observed data of patient admission rate and the histogram of the length-of-stay (LOS) in that ward. Although our model is a very rough and simplistic approximation of the real patient flow, the predicted probability distribution is shown to be in good agreement with the observed one. Our method can be used for planning the capacity of obstetric units when the patient demand is predicted.
Year
DOI
Venue
2014
10.1109/SRII.2014.31
SRII Global Conference
Keywords
Field
DocType
data visualisation,medical information systems,obstetrics,queueing theory,statistical distributions,Japan,LOS,M/G/α queues,M/M/m queues,University of Tsukuba hospital,high-risk delivery,length-of-stay histogram,medical information department,normal delivery,obstetric patient,obstetric patients,obstetric unit,obstetric units,patient admission rate,patient demand,patient flow,patient flow visualization,probability distribution,queuing network model,queuing theory,visualization software,Littles law,OR in healthcare,obstetrics,patient flow,queuing network,visualization
Little's law,Computer science,Visualization,Patient flow,Queuing network,Queueing theory,Probability distribution,Medical emergency,Operations management,Normal delivery,Queuing network model
Conference
ISSN
Citations 
PageRank 
2166-0778
2
0.53
References 
Authors
5
3
Name
Order
Citations
PageRank
Hideaki Takagi142.33
Kazuo Misue254059.88
Yuta Kanai320.53