Tracey England, Bronagh Walsh, Sally Brailsford, Carole Fogg, Simon de Lusignan, Simon Ds Fraser, Paul Roderick, Scott Harris, Abigail Barkham, Harnish P Patel, Andrew Clegg
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引用次数: 0
摘要
虚弱在老年人中很常见,对患者预后和服务使用有重大影响。支持服务规划的资料很少,包括中年人的患病率和人口水平上的衰弱进展模式。本文提出了一个系统动力学模型,描述了年龄≥50岁的患者群体中虚弱和衰老的动态,该模型基于来自英格兰初级保健实践的220万患者的相关数据。该模型的目的是随着时间的推移估计老龄化人口中虚弱的发生率和患病率。该模型是在与利益相关者(患者、护理人员、临床医生和专员)协商后开发的,并在威尔士的另一个大型数据集(138万患者)上进行了验证。然后根据英国国家统计局(Office for National Statistics)的预测(到2027年),将其扩大到英格兰人口。在假定虚弱过渡参数在此期间保持不变的前提下,基线结果表明,随着人口老龄化,生活虚弱的人数将增加,而那些轻度至中度虚弱的人可能对需求产生最大的影响。本文着重于模型的开发和验证,强调了使用大型常规健康数据集的好处和挑战。
Using routine health care data to develop and validate a system dynamics simulation model of frailty trajectories in an ageing population.
Frailty is common in older adults and has a substantial impact on patient outcomes and service use. Information to support service planning, including prevalence in middle-aged adults and patterns of frailty progression at population level, is scarce. This paper presents a system dynamics model describing the dynamics of frailty and ageing within a population of patients aged ≥50, based on linked data for 2.2 million patients from primary care practices in England. The purpose of the model is to estimate the incidence and prevalence of frailty in an ageing population over time. The model was developed in consultation with stakeholders (patients, carers, clinicians, and commissioners) and validated against another large dataset (1.38 million patients) from Wales. It was then scaled up to the population of England, using Office for National Statistics projections (to 2027). The baseline results, subject to the assumption that the frailty transition parameters remain constant over this period, suggest that the number of people living with frailty will increase as the population ages, and that those with mild-moderate frailty are likely to have the greatest impact on demand. This paper focuses on model development and validation, highlighting the benefits and challenges of using large routine health datasets.