Lapitan Romelito L
Department of Homeland Security, Agriculture Programs and Trade Liaison, U.S. Customs and Border Protection, Washington, District of Columbia, USA.
Vector Borne Zoonotic Dis. 2024 Dec;24(12):795-801. doi: 10.1089/vbz.2023.0169. Epub 2024 Aug 27.
Data mining and artificial intelligence algorithms can estimate the probability of future occurrences with defined precision. Yet, the prediction of infectious disease outbreaks remains a complex and difficult task. This is demonstrated by the limited accuracy and sensitivity of current models in predicting the emergence of previously unknown pathogens such as Zika, Chikungunya, and SARS-CoV-2, and the resurgence of Mpox, along with their impacts on global health, trade, and security. Comprehensive analysis of infectious disease risk profiles, vulnerabilities, and mitigation capacities, along with their spatiotemporal dynamics at the international level, is essential for preventing their transnational propagation. However, annual indexes about the impact of infectious diseases provide a low level of granularity to allow stakeholders to craft better mitigation strategies. A quantitative risk assessment by analytical platforms requires billions of near real-time data points from heterogeneous sources, integrating and analyzing univariable or multivariable data with different levels of complexity and latency that, in most cases, overwhelm human cognitive capabilities. Autonomous biosurveillance can open the possibility for near real-time, risk- and evidence-based policymaking and operational decision support.
数据挖掘和人工智能算法能够以规定的精度估计未来事件发生的概率。然而,预测传染病爆发仍然是一项复杂而艰巨的任务。这体现在当前模型在预测寨卡病毒、基孔肯雅病毒和严重急性呼吸综合征冠状病毒2等先前未知病原体的出现以及猴痘的卷土重来及其对全球健康、贸易和安全的影响时,准确性和敏感性有限。全面分析传染病风险概况、脆弱性和缓解能力,以及它们在国际层面的时空动态,对于防止其跨国传播至关重要。然而,关于传染病影响的年度指标提供的粒度较低,无法让利益相关者制定更好的缓解策略。分析平台进行的定量风险评估需要来自异构源的数十亿个近实时数据点,整合和分析具有不同复杂程度和延迟的单变量或多变量数据,在大多数情况下,这些数据超出了人类的认知能力。自主生物监测可为基于风险和证据的近实时决策制定和运营决策支持开辟可能性。