Identifying factors that impact patient length of stay metrics for healthcare providers with advanced analytics
Document Type
Article
Publication Date
12-1-2010
Abstract
Managing patients' length of stay is a critical task for healthcare organizations. In order to better manage the processes impacting this performance metric, providers can leverage data resources describing the network of activities that impact a patient's stay with analytic methods. Interdependencies between departmental activities exist within the patient treatment process, where inefficiency in one element of the patient care network of activities can adversely affect process outcomes.This work utilizes the method of neural networks to analyze data describing inpatient cases that incorporate radiology process variables to determine their effect on patient length of stay excesses for a major NJ based healthcare provider. The results indicate that inefficiencies at the radiology level can adversely extend a patient's length of stay beyond initial estimations. Proactive analysis of networks of activities in the patient treatment process can enhance organizational efficiencies of healthcare providers by enabling decision makers to better optimize resource allocations to increase throughput of activities. © The Author(s) 2010.
Identifier
78651281745 (Scopus)
Publication Title
Health Informatics Journal
External Full Text Location
https://doi.org/10.1177/1460458210380529
e-ISSN
17412811
ISSN
14604582
PubMed ID
21216804
First Page
235
Last Page
245
Issue
4
Volume
16
Recommended Citation
Kudyba, Stephan and Gregorio, Thomas, "Identifying factors that impact patient length of stay metrics for healthcare providers with advanced analytics" (2010). Faculty Publications. 5896.
https://digitalcommons.njit.edu/fac_pubs/5896
