Abstract

Aim: With the improvement in people's living standards, the incidence of chronic renal failure (CRF) is increasing annually. The increase in the number of patients with CRF has significantly increased pressure on China's medical budget. Predicting hospitalization expenses for CRF can provide guidance for effective allocation and control of medical costs. The purpose of this study was to use the random forest (RF) method and least absolute shrinkage and selection operator (LASSO) regression to predict personal hospitalization expenses of hospitalized patients with CRF and to evaluate related influencing factors.Methods: The data set was collected from the first page of data of the medical records of three tertiary first-class hospitals for the whole year of 2016. Factors influencing hospitalization expenses for CRF were analyzed. Random forest and least absolute shrinkage and selection operator regression models were used to establish a prediction model for the hospitalization expenses of patients with CRF, and comparisons and evaluations were carried out.Results: For CRF inpatients, statistically significant differences in hospitalization expenses were found for major procedures, medical payment method, hospitalization frequency, length of stay, number of other diagnoses, and number of procedures. The R2 of LASSO regression model and RF regression model are 0.6992 and 0.7946, respectively. The mean absolute error (MAE) and root mean square error (RMSE) of the LASSO regression model were 0.0268 and 0.043, respectively, and the MAE and RMSE of the RF prediction model were 0.0171 and 0.0355, respectively. In the RF model, and the weight of length of stay was the highest (0.730).Conclusions: The hospitalization expenses of patients with CRF are most affected by length of stay. The RF prediction model is superior to the LASSO regression model and can be used to predict the hospitalization expenses of patients with CRF. Health administration departments may consider formulating accurate individualized hospitalization expense reimbursement mechanisms accordingly.

Highlights

  • Chronic renal failure (CRF) refers to chronic progressive renal parenchyma damage caused by various factors, leading to obvious kidney atrophy and the inability to maintain basic function

  • For CRF inpatients, statistically significant differences in hospitalization expenses were found for major procedures, medical payment method, hospitalization frequency, length of stay, number of other diagnoses, and number of procedures

  • The random forest (RF) prediction model is superior to the least absolute shrinkage and selection operator (LASSO) regression

Read more

Summary

Introduction

Chronic renal failure (CRF) refers to chronic progressive renal parenchyma damage caused by various factors, leading to obvious kidney atrophy and the inability to maintain basic function. With the improvement in people’s living standards, the CRF incidence is increasing annually, and CRF has become one of the major chronic diseases affecting the health of the Chinese people. A national epidemiological survey conducted by Zhang Lixin et al [1] in 2012 showed that the overall prevalence of chronic kidney disease in China was 10.8%. According to the annual report of the United States Renal Disease Data System (USRDS) 2016, the global average prevalence of adult CKD is 14.8% [2]. A study by the Korean Society of Nephrology [3] showed that the incidence of end-stage renal disease in South Korea is 70% of that in the United States. The increase in the number of CRF patients has significantly increased pressure on national medical budgets [4]

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call