The COVID-19 pandemic revealed that global health, social systems, and economies can be surprisingly fragile in an increasingly interconnected and interdependent world. Yet, during the last half of 2022, and quite remarkably, we began dismantling essential infectious disease monitoring programs in several countries. Absent such programs, localized biological risks will transform into global shocks linked directly to our lack of foresight regarding emerging health risks. Additionally, recent studies indicate that more than half of all infectious diseases could be made worse by climate change, complicating pandemic containment. Despite this complexity, the factors leading to pandemics are largely predictable but can only be realized through a well-designed global early warning system. Such a system should integrate data from genomics, climate and environment, social dynamics, and healthcare infrastructure. The glue for such a system is community-driven modeling, a modern logistics of data, and democratization of AI tools. Using the example of dengue fever in Brazil, we can demonstrate how thoughtfully designed technology platforms can build global-scale precision disease detection and response systems that significantly reduce exposure to systemic shocks, accelerate science-informed public health policies, and deliver reliable healthcare and economic opportunities as an intrinsic part of the global sustainable development agenda.
翻译:COVID-19大流行的COVID-19大流行表明,在一个日益相互关联和相互依存的世界中,全球卫生、社会体系和经济体可能极其脆弱。然而,在2022年最后半期,我们开始在几个国家拆除基本的传染病监测方案。如果没有这样的方案,局部生物风险将转变为全球冲击,直接与我们对新出现的健康风险缺乏远见有关。此外,最近的研究表明,所有传染病中有一半以上可能由于气候变化而恶化,使大流行病的遏制复杂化。尽管如此复杂,但导致大流行病的因素在很大程度上是可以预测的,但只能通过精心设计的全球预警系统来实现。这样的系统应该整合基因组学、气候和环境、社会动态和保健基础设施的数据。这种系统的粘合剂是社区驱动的模型、现代数据物流和AI工具的民主化。我们可以用巴西的登革热热的例子来证明设计的技术平台能够建立全球规模精确的疾病检测和反应系统,从而大大减少对系统冲击的接触,加速科学知情的公共卫生政策,并提供可靠的保健和经济机会,作为全球可持续发展议程的内在部分。