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Predicting Urban Medical Services Demand in China: An Improved Grey Markov Chain Model by Taylor Approximation

机译:预测中国城市医疗服务需求:基于泰勒近似的改进灰色马尔可夫链模型

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摘要

The sharp increase of the aging population has raised the pressure on the current limited medical resources in China. To better allocate resources, a more accurate prediction on medical service demand is very urgently needed. This study aims to improve the prediction on medical services demand in China. To achieve this aim, the study combines Taylor Approximation into the Grey Markov Chain model, and develops a new model named Taylor-Markov Chain GM (1,1) (T-MCGM (1,1)). The new model has been tested by adopting the historical data, which includes the medical service on treatment of diabetes, heart disease, and cerebrovascular disease from 1997 to 2015 in China. The model provides a predication on medical service demand of these three types of disease up to 2022. The results reveal an enormous growth of urban medical service demand in the future. The findings provide practical implications for the Health Administrative Department to allocate medical resources, and help hospitals to manage investments on medical facilities.
机译:人口老龄化的急剧增加给中国目前有限的医疗资源带来了压力。为了更好地分配资源,迫切需要对医疗服务需求进行更准确的预测。这项研究旨在改善对中国医疗服务需求的预测。为了实现此目标,该研究将泰勒逼近合并到了灰色马尔可夫链模型中,并开发了一个新模型,名为泰勒-马尔可夫链GM(1,1)(T-MCGM(1,1))。该新模型已通过采用历史数据进行了测试,该历史数据包括1997年至2015年在中国治疗糖尿病,心脏病和脑血管疾病的医疗服务。该模型为直至2022年这三种疾病的医疗服务需求提供了一个预测。结果表明,未来城市医疗服务需求将有巨大的增长。研究结果为卫生行政部门分配医疗资源提供实际意义,并帮助医院管理医疗设施投资。

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