Predicting the Length of Stay of Cardiac Patients Based on Pre-Operative Variables—Bayesian Models vs. Machine Learning Models

Author:

Abdurrab Ibrahim1ORCID,Mahmood Tariq1,Sheikh Sana2,Aijaz Saba2,Kashif Muhammad2,Memon Ahson2,Ali Imran2,Peerwani Ghazal2,Pathan Asad2,Alkhodre Ahmad B.3ORCID,Siddiqui Muhammad Shoaib3ORCID

Affiliation:

1. Department of Computer Science, Institute of Business Administration, Karachi 75270, Pakistan

2. Department of Clinical Research Cardiology, Tabba Heart Institute, Karachi 75950, Pakistan

3. Faculty of Computer and Information Systems, Islamic University of Madinah, Madinah 42351, Saudi Arabia

Abstract

Length of stay (LoS) prediction is deemed important for a medical institution’s operational and logistical efficiency. Sound estimates of a patient’s stay increase clinical preparedness and reduce aberrations. Various statistical methods and techniques are used to quantify and predict the LoS of a patient based on pre-operative clinical features. This study evaluates and compares the results of Bayesian (simple Bayesian regression and hierarchical Bayesian regression) models and machine learning (ML) regression models against multiple evaluation metrics for the problem of LoS prediction of cardiac patients admitted to Tabba Heart Institute, Karachi, Pakistan (THI) between 2015 and 2020. In addition, the study also presents the use of hierarchical Bayesian regression to account for data variability and skewness without homogenizing the data (by removing outliers). LoS estimates from the hierarchical Bayesian regression model resulted in a root mean squared error (RMSE) and mean absolute error (MAE) of 1.49 and 1.16, respectively. Simple Bayesian regression (without hierarchy) achieved an RMSE and MAE of 3.36 and 2.05, respectively. The average RMSE and MAE of ML models remained at 3.36 and 1.98, respectively.

Publisher

MDPI AG

Subject

Health Information Management,Health Informatics,Health Policy,Leadership and Management

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