Predictive reliability and validity of hospital cost analysis with dynamic neural network and genetic algorithm

被引:0
作者
Le Hoang Son
Angelo Ciaramella
Duong Thi Thu Huyen
Antonino Staiano
Tran Manh Tuan
Pham Van Hai
机构
[1] Vietnam National University,VNU Information Technology Institute
[2] University of Naples Parthenope,Department Science and Technology
[3] Hanoi Medical University,School of Information and Communication Technology
[4] Thuyloi University,undefined
[5] Hanoi University of Science and Technology,undefined
来源
Neural Computing and Applications | 2020年 / 32卷
关键词
Hospital cost analysis; Medical informatics; Artificial neural networks; Genetic algorithm; Strategic management;
D O I
暂无
中图分类号
学科分类号
摘要
Hospital cost analysis (HCA) becomes a key topic and forefront of politics, social welfare and medical discourse. HCA includes a wide range of expenses; yet the foremost attention relates to the money expense in which hospital managers would like to draw a figure of incomes in the past and future. Based on the HCA results, they can develop many plans for improving hospital’s service quality and investing in potential healthcare services in order to deliver better services with lower costs. Machine learning methods are often opted for prediction in HCA. In this paper, we propose a new method for HCA that uses genetic algorithm (GA) and artificial neural network (ANN). Operators of GA are used to boost up calculation to get optimal weights in the forward propagation of ANN. Experiments on a real database of Hanoi Medical University Hospital (HMUH) including calculus of kidney and ureter inpatients show that the new method achieves better accuracy than the relevant ones including linear regression, K-nearest neighbors (KNN), ANN and deep learning. The mean squared error of the proposed model gets the lowest value (0.00360), compared to those of deep learning, KNN and linear regression which are 0.00901, 0.01205 and 0.01718 respectively.
引用
收藏
页码:15237 / 15248
页数:11
相关论文
共 142 条
[1]  
Abou-Nassif GA(2015)Predicting the tensile and air permeability properties of woven fabrics using artificial neural network and linear regression models J Text Sci Eng 5 1-540
[2]  
Alelign T(2018)Kidney stone disease an update on current concepts Adv Urol 12 525-269
[3]  
Petros B(2017)Balanced training of a hybrid ensemble method for imbalanced datasets: a case of emergency department readmission prediction Neural Comput Appl 53 261-188
[4]  
Artetxe A(2019)Adaptive convolutional neural network using N-gram for spatial object recognition Earth Sci Inform 77 170-51
[5]  
Graña M(2015)Improving hospital bed occupancy and resource utilization through queuing modeling and evolutionary computation J Biomed Inform 6 1322-238
[6]  
Beristain A(2017)A mixed integer linear programing approach to perform hospital capacity assessments Expert Syst Appl 769–770 49-1757
[7]  
Ríos S(2014)Identification of premature ventricular contraction (PVC) caused by disturbances in calcium and potassium ion concentrations using artificial neural networks Health 40 203-302
[8]  
Bapu JJ(2011)Research urologic disease model at Can Tho Hospital J Pract Med 56 229-489
[9]  
Florinabel DJ(2016)Applying data mining techniques to improve breast cancer diagnosis J Med Syst 2013 271-429
[10]  
Robinson YH(2015)A comparison of models for predicting early hospital readmissions J Biomed Inform 38 1750-886