Predicting Unpanned Return to Hospital for Chronic Disease Patients
File version
Version of Record (VoR)
Author(s)
Good, Norm
Boyle, Justin
Griffith University Author(s)
Primary Supervisor
Other Supervisors
Editor(s)
Georgiou, A
Schaper, LK
Whetton, S
Date
Size
File type(s)
Location
Melbourne, Australia
Abstract
Preventing unplanned returns, including readmissions and representations to the emergency department is increasingly becoming a performance target for hospitals across the globe. Significant successes have been reported from interventions put in to place by hospitals to reduce their incidence. However, despite several risk stratification algorithms being proposed in recent years, there is limited use of these algorithms in hospital services to identify patients for enrolment into these intervention programs. This study identifies constraints limiting the practical use of such algorithms. We also develop and validate models that focus on clinically relevant patient cohorts and are thus better suited to practical deployment in hospitals, while still offering good predictive ability.
Journal Title
Conference Title
Digital Health Innovation for Consumers, Clinicians, Connectivity and Community
Book Title
Edition
Volume
227
Issue
Thesis Type
Degree Program
School
Publisher link
Patent number
Funder(s)
Grant identifier(s)
Rights Statement
Rights Statement
© 2016 The authors and IOS Press. This article is published online with Open Access by IOS Press and distributed under the terms of the Creative Commons Attribution Non-Commercial License 4.0 (CC BY-NC 4.0).
Item Access Status
Note
Access the data
Related item(s)
Subject
Sociology of health
Public health
Health policy
Science & Technology
Life Sciences & Biomedicine
Medical Informatics
Bed occupancy
hospital bed capacity
Persistent link to this record
Citation
Khanna, S; Good, N; Boyle, J, Predicting Unpanned Return to Hospital for Chronic Disease Patients, Digital Health Innovation for Consumers, Clinicians, Connectivity and Community, 2016, 227, pp. 67-73