A Hybrid Data-Driven Approach For Analyzing And Predicting Inpatient Length Of Stay In Health Centre
Journal:
arXiv
Published Date:
Jan 30, 2025
Abstract
Patient length of stay (LoS) is a critical metric for evaluating the efficacy
of hospital management. The primary objectives encompass to improve efficiency
and reduce costs while enhancing patient outcomes and hospital capacity within
the patient journey. By seamlessly merging data-driven techniques with
simulation methodologies, the study proposes an all-encompassing framework for
the optimization of patient flow. Using a comprehensive dataset of 2.3 million
de-identified patient records, we analyzed demographics, diagnoses, treatments,
services, costs, and charges with machine learning models (Decision Tree,
Logistic Regression, Random Forest, Adaboost, LightGBM) and Python tools
(Spark, AWS clusters, dimensionality reduction). Our model predicts patient
length of stay (LoS) upon admission using supervised learning algorithms. This
hybrid approach enables the identification of key factors influencing LoS,
offering a robust framework for hospitals to streamline patient flow and
resource utilization. The research focuses on patient flow, corroborating the
efficacy of the approach, illustrating decreased patient length of stay within
a real healthcare environment. The findings underscore the potential of hybrid
data-driven models in transforming hospital management practices. This
innovative methodology provides generally flexible decision-making, training,
and patient flow enhancement; such a system could have huge implications for
healthcare administration and overall satisfaction with healthcare.