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Do ‘Virtual Wards’ reduce rates of unplanned hospital admissions and at what cost? A research protocol using propensity matched controls

机译:“虚拟病房”会减少计划外的住院率吗?费用是多少?使用倾向匹配对照的研究方案

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Background: This retrospective study will assess the extent to which multidisciplinary case management in the form of virtual wards (VWs) leads to changes in the use of health care and social care by patients at high risk of future unplanned hospital admission. VWs use the staffing, systems and daily routines of a hospital ward to deliver coordinated care to patients in their own homes. Admission to a VW is offered to patients identified by a predictive risk model as being at high risk of unplanned hospital admission in the coming 12 months. Study design and data collection methods: We will compare the health care and social care use of VW patients to that of matched controls. Controls will be drawn from (a) national, and (b) local, individual-level pseudonymous routine data. The costs of setting up and running a VW will be determined from the perspectives of both health and social care organizations using a combination of administrative data, interviews and diaries. Methods of analysis: Using propensity score matching and prognostic matching, we will create matched comparator groups to estimate the effect size of virtual wards in reducing unplanned hospital admissions. Conclusions: This study will allow us to determine relative to matched comparator groups: whether VWs reduce the use of emergency hospital care;?the impact, if any, of VWs on the uptake of primary care, community health services and council-funded social care; and the potential costs and savings of VWs from the perspectives of the national health service (NHS) and local authorities.
机译:背景:这项回顾性研究将评估以虚拟病房(VW)形式进行的多学科病例管理在多大程度上导致未来计划外住院的高风险患者改变卫生保健和社会护理的使用。大众使用医院病房的人员配备,系统和日常工作来为自己家中的患者提供协调的护理。由预测风险模型确定为在未来12个月内有计划外住院的高风险的患者可以进入大众医院。研究设计和数据收集方法:我们将比较大众患者在医疗保健和社会护理方面的使用与相匹配的对照。控件将来自(a)国家和(b)本地,个人级别的匿名例行数据。建立和运行大众汽车的成本将从卫生和社会护理组织的角度出发,结合使用行政数据,访谈和日记来确定。分析方法:使用倾向得分匹配和预后匹配,我们将创建匹配的比较者组,以评估虚拟病房减少计划外住院人数的效果。结论:这项研究将使我们能够确定相对于相对的比较者群体:大众汽车是否减少了急诊医院护理的使用;大众汽车对采用初级护理,社区卫生服务和理事会资助的社会护理的影响(如果有) ;从国家卫生部门(NHS)和地方当局的角度来看,大众的潜在成本和节省。

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