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Robust Length of Stay Prediction Model for Indoor Patients

Authors
Siddiqa, AyeshaNaqvi, Syed Abbas ZilqurnainAhsan, MuhammadDitta, AllahAlquhayz, HaniKhan, M. A.Khan, Muhammad Adnan
Issue Date
Mar-2022
Publisher
TECH SCIENCE PRESS
Keywords
Length of stay; machine learning; robust model; random forest regression
Citation
CMC-COMPUTERS MATERIALS & CONTINUA, v.70, no.3, pp.5519 - 5536
Journal Title
CMC-COMPUTERS MATERIALS & CONTINUA
Volume
70
Number
3
Start Page
5519
End Page
5536
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/82513
DOI
10.32604/cmc.2022.021666
ISSN
1546-2218
Abstract
Due to unforeseen climate change, complicated chronic diseases, and mutation of viruses' hospital administration's top challenge is to know about the Length of stay (LOS) of different diseased patients in the hospitals. Hospital management does not exactly know when the existing patient leaves the hospital; this information could be crucial for hospital management. It could allow them to take more patients for admission. As a result, hospitals face many problems managing available resources and new patients in getting entries for their prompt treatment. Therefore, a robust model needs to be designed to help hospital administration predict patients' LOS to resolve these issues. For this purpose, a very large-sized data (more than 2.3 million patients' data) related to New-York Hospitals patients and containing information about a wide range of diseases including Bone-Marrow, Tuberculosis, Intestinal Transplant, Mental illness, Leukaemia, Spinal cord injury, Trauma, Rehabilitation, Kidney and Alcoholic Patients, HIV Patients, Malignant Breast disorder, Asthma, Respiratory distress syndrome, etc. have been analyzed to predict the LOS. We selected six Machine learning (ML) models named: Multiple linear regression (MLR), Lasso regression (LR), Ridge regression (RR), Decision tree regression (DTR), Extreme gradient boosting regression (XGBR), and Random Forest regression (RFR). The selected models' predictive performance was checked using R square and Mean square error (MSE) as the performance evaluation criteria. Our results revealed the superior predictive performance of the RFR model, both in terms of RS score (92%) and MSE score (5), among all selected models. By Exploratory data analysis (EDA), we conclude that maximum stay was between 0 to 5 days with the meantime of each patient 5.3 days and more than 50 years old patients spent more days in the hospital. Based on the average LOS, results revealed that the patients with diagnoses related to birth complications spent more days in the hospital than other diseases. This finding could help predict the future length of hospital stay of new patients, which will help the hospital administration estimate and manage their resources efficiently.
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