Modelling the effect of first-wave COVID-19 on mental health services

IF 1.5 Q3 HEALTH CARE SCIENCES & SERVICES Operations Research for Health Care Pub Date : 2021-09-01 DOI:10.1016/j.orhc.2021.100311
B.J. Murch , J.A. Cooper , T.J. Hodgett , E.L. Gara , J.S. Walker , R.M. Wood
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引用次数: 5

Abstract

During the first wave of the COVID-19 pandemic it emerged that the nature and magnitude of demand for mental health services was changing. Considerable increases were expected to follow initial lulls as treatment was sought for new and existing conditions following relaxation of ‘lockdown’ measures. For this to be managed by the various services that constitute a mental health system, it would be necessary to complement such projections with assessments of capacity, in order to understand the propagation of demand and the value of any consequent mitigations. This paper provides an account of exploratory modelling undertaken within a major UK healthcare system during the first wave of the pandemic, when actionable insights were in short supply and decisions were made under much uncertainty. In understanding the impact on post-lockdown operational performance, the objective was to evaluate the efficacy of two considered interventions against a baseline ‘do nothing’ scenario. In doing so, a versatile and purpose-built discrete time simulation model was developed, calibrated and used by a multi-disciplinary project working group. The solution, representing a multi-node, multi-server queueing network with reneging, is implemented in open-source software and is freely and publicly available.

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模拟第一波COVID-19对精神卫生服务的影响
在COVID-19大流行的第一波期间,人们发现精神卫生服务需求的性质和规模正在发生变化。在放松“封锁”措施后,由于寻求治疗新的和现有的疾病,预计在最初的平静之后会有相当大的增长。为了让构成心理健康系统的各种服务来管理这一点,有必要用能力评估来补充这种预测,以便了解需求的传播以及随之而来的缓解措施的价值。本文提供了在大流行的第一波期间在英国主要医疗保健系统内进行的探索性建模的说明,当时可操作的见解供不应求,并且在很大的不确定性下做出了决定。为了了解封锁后对运营绩效的影响,我们的目标是在“什么都不做”的基线情况下,评估两种考虑的干预措施的有效性。在此过程中,一个多学科项目工作组开发、校准并使用了一个通用的、专门构建的离散时间模拟模型。该解决方案,代表了一个多节点,多服务器排队网络与违约,是在开源软件中实现的,是免费和公开的。
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来源期刊
Operations Research for Health Care
Operations Research for Health Care HEALTH CARE SCIENCES & SERVICES-
CiteScore
3.90
自引率
0.00%
发文量
9
审稿时长
69 days
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