Please use this identifier to cite or link to this item: https://www.um.edu.mt/library/oar/handle/123456789/109628
Title: Characterising hospital admission patterns and length of stay in the Emergency Department at Mater Dei Hospital Malta
Authors: Garg, Lalit
Attard, Natasha
Caruana, Roberta
Pawar, Bhushan Dinkar
McClean, Sally I.
Buttigieg, Sandra C.
Calleja, Neville
Keywords: Mater Dei Hospital (Msida, Malta)
Hospital utilization -- Length of stay -- Malta
Machine learning
Medical care
Issue Date: 2023
Citation: Garg, L., Attard, N., Caruana, R.J., Pawar, B.D., McClean, S.I., Buttigieg, S.C., & Calleja, N. (2023). Characterising hospital admission patterns and length of stay in the Emergency Department at Mater Dei Hospital Malta. Preprints.org 2023, 2023020315.
Abstract: Healthcare professionals and resource planners can use healthcare delivery process mining to ensure the optimal utilisation of scarce healthcare resources when developing policies. Within hospitals, patients' Length of Stay (LOS) and volume of admitted patients, in terms of number and characteristics (age, gender, and social determinants), are significant factors determining daily resource requirements. In this study, we used Coxian phase-type Distribution (C-PHD) based Phase-Type Survival (PTS) trees for analysing how covariates such as admission date, gender, age, district, and admissions source influence the admission rate and LOS distribution. PTS trees. This study used a two-year data set (2011-2012) of patients admitted to the Emergency Department at Mater Dei Hospital to generate models and an independent one-year data set (2013) of patients admitted to the Emergency Department at Mater Dei Hospital to evaluate. The PTS tree effectively clusters patients based on their LOS, considering the prognostic significance of different covariates related to patients' characteristics. Characterising these covariates provided meaningful results about LOS. Similarly, the PTS tree was used to effectively cluster patients based on the admission rate, considering the prognostic significance of these covariates
URI: https://www.um.edu.mt/library/oar/handle/123456789/109628
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