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Forecasting Single Disease Cost of Cataract Based on MultivariableRegression Analysis and Backpropagation Neural Network

机译:基于多变量的白内障单发病成本预测回归分析与反向传播神经网络

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摘要

In medical services, charge according to the disease is an important way to promote the reform of pricing mechanism, control the unreasonable growth of medical expenses, as well as reduce the burden on patients. Single disease cost forecasting that both identify potential influencing or driving factors and enable better proactive estimation of costs can guide the management and control of medical costs. This study aimed to identify the factors that affect the medical costs of single disease cataract and compare 2 regression models for anticipating acceptable medical cost forecasts. For this purpose, 483 patients with cataract surgery completed in West China Hospital from May 1, 2015, to October 1, 2015, were selected from hospital information system. For cost forecasting, multivariable regression analysis (MRA) and backpropagation neural network (BPNN) were used. Analysis of data was performed with SPSS21.0 and MATLAB2014a software. Total medical costs of patients with cataract (n = 483) ranged from 2015.00 to 13 359.00 CNY, and the mean ± standard deviation is 6292.29 ± 2639.43 CNY. Factors influencing costs of cataract in the MRA include, in importance order, intraocular lens (IOL) implantation (|r|: 0.805, P < .01), doctor level (|r|: 0.644,P < .01), payment source (|r|: 0.554,P < .01), admission status (|r|: 0.326,P < .01), additional diagnosis (|r|:0.260, P < .01), type of surgery (|r|:0.127, P < .05), and type of anesthesia(|r|: 0.126, P < .05). In terms offorecasting performance, BPNN (average error: 2.81%) outperforms, yet is lessinterpretable than MRA (average error: 5.79%). Both MRA and BPNN are technicallyand economically feasible in generating medical costs of cataract. And someinsights on using results of the forecasting model in controlling and reducingdisease costs are obtained.
机译:在医疗服务中,按病种收费是促进价格机制改革,控制医疗费用不合理增长,减轻患者负担的重要途径。单一疾病成本预测既可以识别潜在的影响因素或驱动因素,又可以更好地主动估算成本,可以指导医疗成本的管理和控制。本研究旨在确定影响单一疾病白内障医疗费用的因素,并比较2种回归模型以预测可接受的医疗费用预测。为此,从医院信息系统中选择了2015年5月1日至2015年10月1日在华西医院完成的483例白内障手术患者。对于成本预测,使用了多元回归分析(MRA)和反向传播神经网络(BPNN)。数据分析使用SPSS21.0和MATLAB2014a软件进行。白内障患者的总医疗费用(n = 483)为2015.00至13 359.00 CNY,平均值±标准差为6292.29±2639.43 CNY。影响MRA中白内障费用的因素包括:按重要性顺序排列的人工晶状体(IOL)植入(| r |:0.805,P <.01),医生水平(| r |:0.644,P <.01),付款来源(| r |:0.554,P <.01),准入状态(| r |:0.326,P <.01),附加诊断(| r |:0.260,P <.01),手术类型(| r |:0.127,P <.05)和麻醉类型(| r |:0.126,P <.05)。就......而言预测性能,BPNN(平均误差:2.81%)跑赢大盘,但表现不佳比MRA可以解释的(平均误差:5.79%)。 MRA和BPNN在技术上都是在产生白内障的医疗费用方面是经济上可行的。还有一些关于使用预测模型的结果进行控制和减少的见解获得疾病费用。

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