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A data mining approach for estimating patient demand for mental health services

机译:一种估计患者对心理健康服务需求的数据挖掘方法

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摘要

The ability to better estimate future demand for health services is a critical element to maintaining a stable quality of care. With greater knowledge of how particular events can impact demand, health-care service providers can better allocate available resources to more effectively treat patients' needs. The incorporation of data mining analytics can leverage available data to identify recurring patterns among relevant variables, and these patterns provide actionable information to corresponding decision markers at health-care organizations. The demand for mental health services can be subject to variation from time of year (seasonality) and economic factors. This study illustrates the effectiveness of data mining analytics in identifying seasonality and economic factors as measured by time that affect patient demand for mental health services. It incorporates a neural network analytic method that is applied to patient demand data at a U.S. medical center. The results indicate that day of week, month of year, and a yearly trend significantly impact the demand for patient services.
机译:更好地估计未来对医疗服务需求的能力是维持稳定护理质量的关键要素。有了对特定事件如何影响需求的更多了解,医疗保健服务提供商可以更好地分配可用资源,以更有效地治疗患者的需求。数据挖掘分析的合并可以利用可用数据来识别相关变量之间的重复模式,并且这些模式向医疗机构的相应决策标记提供可操作的信息。对精神卫生服务的需求可能会因一年中的不同时间(季节性)和经济因素而有所变化。这项研究说明了数据挖掘分析在识别季节性和经济因素方面的有效性,这些因素是按时间衡量的,影响患者对心理健康服务的需求。它结合了一种神经网络分析方法,该方法已在美国医疗中心应用于患者需求数据。结果表明,星期几,一年中的某月以及每年的趋势显着影响了对患者服务的需求。

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