The COVID-19 pandemic created enormous public health and socioeconomic challenges. The health effects of vaccination and non-pharmaceutical interventions (NPIs) were often contrasted with significant social and economic costs. We describe a general framework aimed to derive adaptive cost-effective interventions, adequate for both recent and emerging pandemic threats. We also quantify the net health benefits and propose a reinforcement learning approach to optimise adaptive NPIs. The approach utilises an agent-based model simulating pandemic responses in Australia, and accounts for a heterogeneous population with variable levels of compliance fluctuating over time and across individuals. Our analysis shows that a significant net health benefit may be attained by adaptive NPIs formed by partial social distancing measures, coupled with moderate levels of the society's willingness to pay for health losses. We demonstrate that a socially acceptable balance between health effects and incurred economic costs is achievable over a long term, despite possible early setbacks.
翻译:COVID-19大流行造成了巨大的公共卫生和社会经济挑战,疫苗接种和非药物干预对健康的影响往往与巨大的社会和经济成本形成鲜明对比。我们描述了一个总框架,旨在获得适应性、成本效益高的干预措施,足以应对最近和新出现的流行病威胁。我们还量化净健康惠益,并提出一个强化学习方法,优化适应性非传染病的适应性非传染病。该方法使用一种基于代理的模型,模拟澳大利亚的大流行病反应,并计算出不同人口不同,不同时间和个人的遵守程度波动不定。我们的分析表明,通过部分社会分化措施形成的适应性非传染病,加上社会支付健康损失的温和意愿,可以实现重大的净健康惠益。我们证明,尽管可能早期出现倒退,健康影响和经济成本之间在社会上可以接受的平衡是可以长期实现的。