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Predicting Falls and When to Intervene in Older People: A Multilevel Logistical Regression Model and Cost Analysis

机译:预测跌倒以及何时介入老年人:多级Logistic回归模型和成本分析

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摘要

Introduction Falls are the leading cause of injury in older people. Reducing falls could reduce financial pressures on health services. We carried out this research to develop a falls risk model, using routine primary care and hospital data to identify those at risk of falls, and apply a cost analysis to enable commissioners of health services to identify those in whom savings can be made through referral to a falls prevention service. Methods Multilevel logistical regression was performed on routinely collected general practice and hospital data from 74751 over 65’s, to produce a risk model for falls. Validation measures were carried out. A cost-analysis was performed to identify at which level of risk it would be cost-effective to refer patients to a falls prevention service. 95% confidence intervals were calculated using a Monte Carlo Model (MCM), allowing us to adjust for uncertainty in the estimates of these variables. Results A risk model for falls was produced with an area under the curve of the receiver operating characteristics curve of 0.87. The risk cut-off with the highest combination of sensitivity and specificity was at p = 0.07 (sensitivity of 81% and specificity of 78%). The risk cut-off at which savings outweigh costs was p = 0.27 and the risk cut-off with the maximum savings was p = 0.53, which would result in referral of 1.8% and 0.45% of the over 65’s population respectively. Above a risk cut-off of p = 0.27, costs do not exceed savings. Conclusions This model is the best performing falls predictive tool developed to date; it has been developed on a large UK city population; can be readily run from routine data; and can be implemented in a way that optimises the use of health service resources. Commissioners of health services should use this model to flag and refer patients at risk to their falls service and save resources
机译:引言跌倒是老年人受伤的主要原因。减少跌倒可减轻对卫生服务的财政压力。我们进行了这项研究,以开发一个跌倒风险模型,使用常规的初级保健和医院数据来识别那些有跌倒风险的人,并进行成本分析,以使卫生服务专员能够确定可以通过转诊而节省下来的人。预防跌倒服务。方法对65岁以上的74751例常规收集的常规操作和医院数据进行多级Logistic回归分析,以建立跌倒风险模型。进行了验证措施。进行了成本分析,以确定将患者转介至跌倒预防服务所需要的风险等级是哪种成本效益。使用蒙特卡洛模型(MCM)计算了95%的置信区间,使我们能够针对这些变量的估计中的不确定性进行调整。结果产生跌倒风险模型,接收器工作特性曲线的曲线下面积为0.87。敏感性和特异性最高组合的风险分界值为p = 0.07(敏感性为81%,特异性为78%)。储蓄大于成本的风险截止值为p = 0.27,而最高储蓄率的风险截止值为p = 0.53,这将导致分别推荐65岁以上人口的1.8%和0.45%。超过风险临界值p = 0.27时,成本不会超过节省额。结论该模型是迄今为止开发的性能最好的跌倒预测工具。它是针对英国大城市人口开发的;可以从常规数据轻松运行;并且可以以优化卫生服务资源使用的方式实施。卫生服务专员应使用此模型来标记并告知有风险的患者跌倒服务并节省资源

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