基于主体的英国社会关怀供给与需求模型

Es Silverman, U. Gostoli
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引用次数: 0

摘要

提供社会关怀对于确保老年人和弱势群体的健康至关重要。联合王国50%的保健服务依赖非正式保健,这意味着社会保健政策在这方面对保健服务的可持续性具有重大影响。我们提出了一个基于代理的英国非正式护理提供模拟,展示了这个框架如何捕捉到社会护理中令人不安的趋势和不平等。我们用Python构建了一个基于agent的模型,模拟了1860年至2022年虚拟英国的个体人类agent。人口动态是由英国出生率和死亡率驱动的。代理人可以建立伙伴关系、生育、为工作或其他目的在国内迁移、换工作和提供社会照顾。护理决定是根据就业状况、工资、年龄、健康状况、地理位置及其与需要护理者的关系作出的。模拟代理人参与一个详细的经济,根据他们的收入是不同社会经济地位群体的成员。输出文件跟踪代理的社会经济地位、社会流动性、非正式护理提供和正式护理服务的支付情况。模拟输出包括个人层面的代理统计和按年龄、性别、社会经济地位和就业状况对护理提供的人口层面分析。模拟结果是根据2011年英国人口普查数据对关键人口动态措施进行校准的。结果2022年的模拟结果显示,性别和SES群体在社会护理需求和提供方面存在显著不平等。社会经济地位最低的五分位数(第一组)的代理人平均未满足的护理需求为19小时/周,而最高的五分位数(第五组)为12.5小时/周。第一组的护理人员平均提供8.6小时/周的护理,而第五组为3.6小时/周。因此,第一组的代理人不仅工资较低,而且他们还失去了更多的工作时间来提供护理,他们自己也需要更多的照顾。此外,女性特工提供的非正式照顾是男性的1.9倍,而她们的平均工资却较低。最后,模拟显示了未满足护理需求的增长趋势,从1976年的人均1.17小时增长到2022年的2.38小时。结论构建完善的基于主体的模拟可以为研究经济和社会因素对社会照护提供的影响提供一个平台。因此,这一框架为制定和测试新的社会护理政策提供了一种手段,这些政策可以更好地解释全国非正规护理人员面临的复杂性和挑战,从而更好地保护保健服务的可持续性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RF16 An agent-based model of social care supply and demand in the UK
Background Social care provision is vital for ensuring the health of ageing and vulnerable populations. The UK relies on informal care for 50% of care provision, meaning that social care policies have significant implications for health services sustainability in this context. We present an agent-based simulation of UK informal care provision, demonstrating how this framework captures troubling trends and inequalities in social care. Methods We constructed an agent-based model in Python that simulates individual human agents in a virtual UK from the year 1860 to 2022. Population dynamics are driven by UK birth rates and mortality rates. Agents can form partnerships, reproduce, migrate domestically for work or other purposes, change jobs, and provide social care. Care decisions are taken based on employment status, salary, age, health status, geographical location, and their relationship to those in need of care. Simulated agents participate in a detailed economy, and are members of different socioeconomic status groups depending on their income. Output files track agents’ socioeconomic status, social mobility, informal care provision, and payment for formal care services. Simulation output includes individual-level agent statistics and population-level analyses of care provision by age, sex, socioeconomic status, and employment status. Simulation results were calibrated against 2011 UK Census data for key population dynamics measures. Results Simulation results in the year 2022 show significant inequalities in social care need and provision by gender and SES group. Agents in the lowest SES quintile (Group I) show a mean unmet care need of 19 hours/week, as compared to 12.5/week in in the highest (Group V). Carers in Group I supply an average 8.6 hours/week of care, compared to 3.6 hours/week in Group V. Thus, agents in Group I not only make a lower wage, they also lose more hours of work to care provision, and need more care themselves. In addition, female agents provide 1.9 times more informal care than males, while receiving lower average wages. Finally, the simulation shows a trend of growth in unmet care need from 1.17 hours per capita in 1976 to 2.38 by 2022. Conclusion This work demonstrates that a well-constructed agent-based simulation can provide a platform for investigating the influence of economic and social factors on social care provision. This framework thus provides a means to develop and test new social care policies which better account for the complexities and challenges facing informal carers across the country, and in turn better protect health services sustainability.
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