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总结:模型劳动力技能组合:英格兰的牙科专业人员如何满足老年人的需求和要求?

Summary of: Modelling workforce skill-mix: how can dental professionals meet the needs and demands of older people in England?

机构信息

Dental School Director/Postgraduate Dental Dean, Oxford Deanery.

出版信息

Br Dent J. 2010 Feb 13;208(3):116-7. doi: 10.1038/sj.bdj.2010.132.

Abstract

Background There is an urgent need to consider the skill-mix of the dental team to meet the oral health needs and demands of the population in general, and older people in particular. As people live longer and retain their teeth there will be a progressive change in both the volume and type of dental care required, and the demand for care. Operational research modelling provides the opportunity to examine and test future scenarios for National Health Service (NHS) care.Aim The aim of this research was to explore the required skill-mix of the dental team to meet future need and demand of older people in England to 2028 utilising operational research methods and to examine a range of future scenarios.Method A three-stage computer model was developed to consider demand for dental care, workforce supply and skill-mix. First, the demand model combined population demography and a marker of oral health with attendance and treatment rates based on NHS activity data. Monte Carlo simulation was used to give an indication of the uncertainty surrounding this projected demand. Second, projections on workforce supply and other assumptions relating to clinical hours, NHS commitment and workforce whole time equivalents (WTEs) were analysed to produce a range of estimates for the current and future workforce. Third, staff skill-mix competencies were examined and the data fed into an optimisation model. Linear programming was used to give the optimal workforce makeup and predictions for workforce requirements. Five future scenarios were run from 'no skill-mix' through to 'maximum skill-mix' in the dental team, and the outputs compared.Results The results indicate that by 2028 there will be an increase in demand for care among older people of over 80% to almost 8.8 million hours; however, Monte Carlo simulation suggests considerable uncertainty surrounding the demand model outputs with demand deviating from the average in terms of treatment hours by as much as 22%. Modelling a healthcare system with 'no skill-mix' resulted in the lowest volume of clinical staff equivalents (dentists: 8,668) providing care for older people, whereas maximum skill-mix involved more staff (clinical staff = 10,337, of whom 2,623 were dentists, 4,180 hygienist/therapists and 3,534 clinical dental technicians) if all care is provided at the relevant level of competence.Conclusion The model suggests that with widening skill-mix, dental care professionals can play a major role in building dental care capacity for older people in future. The implications for health policy, professional bodies and dental teamworking are discussed.

摘要

背景

为满足一般人群,尤其是老年人的口腔健康需求和需求,迫切需要考虑牙科团队的技能组合。随着人们寿命的延长和牙齿的保留,所需的牙科护理量和类型以及对护理的需求都将发生渐进变化。运营研究模型为检查和测试国民保健服务(NHS)护理的未来方案提供了机会。目的:本研究旨在利用运营研究方法探索满足英格兰未来老年人需求和需求所需的牙科团队所需的技能组合,并研究一系列未来方案。方法:开发了一个三阶段的计算机模型,以考虑对牙科护理的需求,劳动力供应和技能组合。首先,需求模型将人口统计学和口腔健康指标与基于 NHS 活动数据的就诊和治疗率相结合。使用蒙特卡罗模拟给出了对该预测需求的不确定性的指示。其次,对劳动力供应的预测以及与临床小时数,NHS 承诺和劳动力全职等效物(WTE)有关的其他假设进行了分析,以得出当前和未来劳动力的一系列估计值。第三,检查了员工技能组合能力,并将数据输入到优化模型中。线性规划用于提供最佳的劳动力构成和劳动力需求预测。从“无技能组合”到“牙科团队的最大技能组合”运行了五个未来方案,并比较了输出结果。结果:结果表明,到 2028 年,80 岁以上老年人的护理需求将增加 80%以上,达到近 880 万小时;但是,蒙特卡罗模拟表明,需求模型输出存在很大的不确定性,治疗时间可能与平均水平相差多达 22%。在没有技能组合的情况下对医疗保健系统进行建模,结果为为老年人提供护理的临床员工当量(牙医:8668)最低,而在最大技能组合中,涉及更多的员工(临床员工= 10337,其中牙医 2623 人,卫生师/治疗师 4180 人,临床牙科技术人员 3534 人),如果所有护理都在相关能力水平上提供。结论:该模型表明,随着技能组合的扩大,牙科保健专业人员可以在未来为老年人的牙科保健能力做出重大贡献。讨论了对卫生政策,专业机构和牙科团队合作的影响。

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