Atkinson Jo-An, Skinner Adam, Hackney Sue, Mason Linda, Heffernan Mark, Currier Dianne, King Kylie, Pirkis Jane
Systems Modelling and Simulation, Brain and Mind Centre, Faculty of Medicine and Health, The University of Sydney, Camperdown, NSW, Australia.
Computer Simulation & Advanced Research Technologies (CSART), Sydney, NSW, Australia.
Aust N Z J Psychiatry. 2020 Sep;54(9):892-901. doi: 10.1177/0004867420932639. Epub 2020 Jun 17.
The need to understand and respond to the unique characteristics and drivers of suicidal behaviour in rural areas has been enabled through the Australian Government's 2015 mental health reforms facilitating a move to an evidence-based, regional approach to suicide prevention. However, a key challenge has been the complex decision-making environment and lack of appropriate tools to facilitate the use of evidence, data and expert knowledge in a way that can inform contextually appropriate strategies that will deliver the greatest impact. This paper reports the co-development of an advanced decision support tool that enables regional decision makers to explore the likely impacts of their decisions before implementing them in the real world.
A system dynamics model for the rural and remote population catchment of Western New South Wales was developed. The model was based on defined pathways to mental health care and suicidal behaviour and reproduced historic trends in the incidence of attempted suicide (self-harm hospitalisations) and suicide deaths in the region. A series of intervention scenarios were investigated to forecast their impact on suicidal behaviour over a 10-year period.
Post-suicide attempt assertive aftercare was forecast to deliver the greatest impact, reducing the numbers of self-harm hospitalisations and suicide deaths by 5.65% (95% interval, 4.87-6.42%) and 5.45% (4.68-6.22%), respectively. Reductions were also projected for community support programs (self-harm hospitalisations: 2.83%, 95% interval 2.23-3.46%; suicide deaths: 4.38%, 95% interval 3.78-5.00%). Some scenarios produced unintuitive impacts or effect sizes that were significantly lower than what has been anticipated under the traditional evidence-based approach to suicide prevention and provide an opportunity for learning.
Systems modelling and simulation offers significant potential for regional decision makers to better understand and respond to the unique characteristics and drivers of suicidal behaviour in their catchments and more effectively allocate limited health resources.
澳大利亚政府2015年的心理健康改革推动了向基于证据的区域自杀预防方法的转变,这使得了解和应对农村地区自杀行为的独特特征及驱动因素成为必要。然而,一个关键挑战是决策环境复杂,且缺乏适当工具来以一种能够为具有最大影响力的因地制宜策略提供信息的方式促进证据、数据和专家知识的运用。本文报告了一种先进决策支持工具的共同开发情况,该工具使区域决策者能够在现实世界中实施决策之前探索其决策可能产生的影响。
为新南威尔士州西部的农村和偏远人口集水区开发了一个系统动力学模型。该模型基于明确的心理健康护理和自杀行为途径,并再现了该地区自杀未遂(自残住院)发生率和自杀死亡的历史趋势。研究了一系列干预方案,以预测它们在10年内对自杀行为的影响。
自杀未遂后的积极后续护理预计产生的影响最大,分别将自残住院人数和自杀死亡人数减少5.65%(95%区间,4.87 - 6.42%)和5.45%(4.68 - 6.22%)。社区支持项目也预计会有减少(自残住院:2.83%,95%区间2.23 - 3.46%;自杀死亡:4.38%,95%区间3.78 - 5.00%)。一些方案产生了非直观的影响或效应大小,显著低于传统循证自杀预防方法所预期的,这提供了学习的机会。
系统建模与模拟为区域决策者更好地理解和应对其集水区内自杀行为的独特特征及驱动因素,并更有效地分配有限的卫生资源提供了巨大潜力。