Daily pandemic surveillance, often achieved through the estimation of the reproduction number, constitutes a critical challenge for national health authorities to design countermeasures. In an earlier work, we proposed to formulate the estimation of the reproduction number as an optimization problem, combining data-model fidelity and space-time regularity constraints, solved by nonsmooth convex proximal minimizations. Though promising, that first formulation significantly lacks robustness against the Covid-19 data low quality (irrelevant or missing counts, pseudo-seasonalities,.. .) stemming from the emergency and crisis context, which significantly impairs accurate pandemic evolution assessments. The present work aims to overcome these limitations by carefully crafting a functional permitting to estimate jointly, in a single step, the reproduction number and outliers defined to model low quality data. This functional also enforces epidemiology-driven regularity properties for the reproduction number estimates, while preserving convexity, thus permitting the design of efficient minimization algorithms, based on proximity operators that are derived analytically. The explicit convergence of the proposed algorithm is proven theoretically. Its relevance is quantified on real Covid-19 data, consisting of daily new infection counts for 200+ countries and for the 96 metropolitan France counties, publicly available at Johns Hopkins University and Sant{\'e}-Publique-France. The procedure permits automated daily updates of these estimates, reported via animated and interactive maps. Open-source estimation procedures will be made publicly available.
翻译:通常通过估计复制数字实现的每日流行病监测是各国卫生当局设计应对措施的重大挑战,在早期的工作中,我们提议将估计复制数字作为一个优化问题,将数据模型忠实度和时空规律性限制结合起来,通过非moosoth convex 等离子体最小化来解决。虽然很有希望,但第一种配方对于Covid-19数据低质量(不相关或缺失计数、假季节性.)数据缺乏稳健性,而这种低质量(不相关或缺失计数、假季节性.)数据则严重缺乏稳健性,这大大损害了准确的大流行病演变评估。在早期的工作中,我们建议将估计复制数字作为优化的问题,将目前的工作旨在克服这些限制,精心设计一种功能,允许在单步中联合估计低质量数据模型定义的复制数和外端数据。这个功能还强制实施由流行病学驱动的定期性数据,用于估计复制数字,同时保持混凝度,从而允许根据从分析中得出的近距离操作者设计高效的最小化算算法。拟议算法的明确趋同是理论上的。 其相关性通过真实的Covidd-19估算,在实际数据中量化,其相关性体现在实际的数据上,即由100-Pxxxx每日新授权的硬化的硬化的直读,即为200年版的硬化的硬化版本,并存大学的公读,并存的公读。