Predictive Analysis of Heterogenous Data for Hospital Readmission

Authors

  • V R Reji Raj  Department of Computer Science, Govt. Engineering College, Idukki, India
  • Mr. Rasheed Ahammed Azad. V  Department of Computer Science, Govt. Engineering College, Idukki, India

DOI:

https://doi.org/10.32628/IJSRSET231012

Keywords:

Readmission Prediction, Data mining, Hyperparameter, Adaboost, Hyperparameter tuning, Receiver Operating Characteristics, Area under the ROC Curve.

Abstract

Hospital readmission is a high priority health care quality measure. Diabetes patient readmission rate is increasing to such an extent that it becomes one of the major concerns for many hospitals. Many studies are conducted for finding the possible causes and risks of diabetes patient’s readmission. Reducing readmission rates of diabetes patients reduce health care costs. Here the relationship between diabetes and the various patient attributes are examined. Different prediction models were developed to predict the risk of readmission within 30 days among hospitalized patients with diabetes. The dataset used here contains more than 1 lakh observations and 56 features. They include a set of numerical attributes such as number of outpatient visits, number of emergency visits and time spent in hospital etc and a set of categorical data such as what type of admission the encounter faced , sets of drugs that the patient took etc. In this study we presented a scheme to identify high-risk patients and evaluated different machine learning algorithms. Results indicate that Adaboost with hyperparameter tuning is optimal for this task The results from the study help health care providers to improve diabetic care.

References

  1. Decision Support in heart disease prediction using naïve bayes-G Subbalakshmi, K Ramesh, MC Rao - Indian Journal of computer Vol. 2 Apr-May 2011.
  2. Decision Tree Discovery for the Diagnosis of Type II Diabetes Asma A. AlJarullah , 2011 International Conference on Innovations in Information Technology.
  3. Classification of Heart Disease Using KNN and Genetic Algorithm Volume 10, 2013.
  4. Classification of Heart Disease Using K- Nearest Neighbor and Genetic Algorithm.M. Akhiljabar, B.L.Deekshatulu, PritiChandra- Volume 10, 2013.
  5. Design of a Clinical Decision Support Model for Predicting Pneumonia Readmission Jhih-Siou Huang, Yung-Fu Chen , Jiin-Chyr Hsu ,2014 International Symposium on Computer.

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Published

2023-02-28

Issue

Section

Research Articles

How to Cite

[1]
V R Reji Raj, Mr. Rasheed Ahammed Azad. V "Predictive Analysis of Heterogenous Data for Hospital Readmission" International Journal of Scientific Research in Science, Engineering and Technology (IJSRSET), Print ISSN : 2395-1990, Online ISSN : 2394-4099, Volume 10, Issue 1, pp.106-112, January-February-2023. Available at doi : https://doi.org/10.32628/IJSRSET231012