Author:
Tong Li-Li,Gu Jin-Bo,Li Jing-Jiao,Liu Guang-Xuan,Jin Shuo-Wei,Yan Ai-Yun
Abstract
AbstractCharging according to disease is an important way to effectively promote the reform of medical insurance mechanism, reasonably allocate medical resources and reduce the burden of patients, and it is also an important direction of medical development at home and abroad. The cost forecast of single disease can not only find the potential influence and driving factors, but also estimate the active cost, and tell the management and reasonable allocation of medical resources. In this paper, a method of Bayesian network combined with regression analysis is proposed to predict the cost of treatment based on the patient's electronic medical record when the amount of data is small. Firstly, a set of text-based medical record data conversion method is established, and in the clustering method, the missing value interpolation is carried out by weighted method according to the distance, which completes the data preparation and processing for the realization of data prediction. Then, aiming at the problem of low prediction accuracy of traditional regression model, this paper establishes a prediction model combined with local weight regression method after Bayesian network interpretation and classification of patients' treatment process. Finally, the model is verified with the medical record data provided by the hospital, and the results show that the model has higher prediction accuracy.
Publisher
Springer Science and Business Media LLC
Subject
Health Informatics,Health Policy,Computer Science Applications
Reference17 articles.
1. Blumenthal D, Anderson G, Burke S, et al. Tailoring complex-care management, coordination, and integration for high-need, high-cost patients: a vital direction for health and health care. NAM Perspect. 2016;9:1–11.
2. Fairman KA, Rucker ML. Fractal mathematics in managed care? How a simple and revealing analysis could improve the forecasting and management of medical costs and events. J Manag Care Pharm. 2009;15:351–8.
3. Getzen TE. Accuracy of long-range actuarial projections of health care costs. N Am Actuar J. 2016;20(2):101–13.
4. Santric-Milicevic M, Vasic V, Terzic-Supic Z. Do health care workforce, population, and service provision significantly contribute to the total health expenditure? An econometric analysis of Serbia. Hum Resour Health. 2016;14(1):1–11.
5. Tamang S, Milstein A, Sørensen HT, et al. Predicting patient ‘cost blooms’ in Denmark: a longitudinal population-based study. BMJ Open. 2017;7(1):e011580.
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献