This article advances the knowledge on teaching and training new artificial intelligence algorithms, for securing, preparing, and adapting the healthcare system to cope with future pandemics. The core objective is to develop a concept healthcare system supported by autonomous artificial intelligence that can use edge health devices with real-time data. The article constructs two case scenarios for applying cybersecurity with autonomous artificial intelligence for (1) self-optimising predictive cyber risk analytics of failures in healthcare systems during a Disease X event (i.e., undefined future pandemic), and (2) self-adaptive forecasting of medical production and supply chain bottlenecks during future pandemics. To construct the two testing scenarios, the article uses the case of Covid-19 to synthesise data for the algorithms i.e., for optimising and securing digital healthcare systems in anticipation of disease X. The testing scenarios are built to tackle the logistical challenges and disruption of complex production and supply chains for vaccine distribution with optimisation algorithms.
翻译:本条增进了有关教学和培训新的人工智能算法的知识,用于确保、准备和调整保健系统,以应对未来的流行病,核心目标是发展一个由自主人工智能支持的概念保健系统,该系统可以使用有实时数据的边际保健设备,用自主人工智能应用网络安全两种情况假设:(1) 自我优化预测网络风险分析,分析在X疾病事件(即未界定的未来大流行病)期间保健系统失败的预测性网络风险,(2) 未来大流行病期间医疗生产和供应链瓶颈的自我适应性预测。为构建两种测试方案,文章利用Covid-19案例合成数据,用于算法,即在预测X疾病时对数字保健系统进行优化和保障。 建立测试方案是为了应对后勤挑战,并打破以优化算法分发疫苗的复杂生产和供应链。