학술논문

Predicting Hospital Readmission Patterns of Diabetic Patients using Ensemble Model and Cluster Analysis
Document Type
Conference
Source
2019 International Conference on System Science and Engineering (ICSSE) System Science and Engineering (ICSSE), 2019 International Conference on. :273-278 Jul, 2019
Subject
Bioengineering
Communication, Networking and Broadcast Technologies
Components, Circuits, Devices and Systems
Computing and Processing
Engineered Materials, Dielectrics and Plasmas
Engineering Profession
General Topics for Engineers
Power, Energy and Industry Applications
Robotics and Control Systems
Signal Processing and Analysis
Predictive models
Diabetes
Data models
Computational modeling
STEM
Hospitals
Analytical models
diabetes prediction
ensemble model
decision trees
neural networks
naïve bayes networks
cluster analysis
Language
ISSN
2325-0925
Abstract
Diabetes is a chronic illness that affects around 425 million people globally in 2017, and this is predicted to increase to 629 million by the end of 2045. The ability to analyze and predict the readmission patterns of diabetic patients would allow the optimization of hospital resources and assessment of treatment effectiveness. This paper proposes an ensemble model to predict hospital readmission by choosing from a pool of 15 models, made up of variants of Logistic Regression, Decision Trees (DT), Neural Network (NN) and Augmented Naïve Bayes (NB) networks. The final ensemble model was assembled using the five best models, determined based on individual model accuracy and the Jaccard distance between them, to maximize overall accuracy and sensitivity. The final ensemble contained DT (CHAID), Tree Augmented Naïve Bayes network, DT (CHAID with boosting), Neural Network with bagging and DT (CART with boosting). Compared against existing predictive models, the proposed ensemble was able to achieve improved sensitivity at 56% while maintaining comparable accuracy at 63.5%. Cluster analysis after performing principal component analysis on the dataset revealed 4 distinct clusters of patients. Patients with a history of in-patient visits or if they received a high amount of treatment in their current visit were found more likely to be readmitted.