Department of Statistics, The University of British Columbia, Vancouver, British Columbia, Canada.
Centre for Health Evaluation and Outcome Sciences, The University of British Columbia, Vancouver, British Columbia, Canada.
PLoS Comput Biol. 2024 Aug 6;20(8):e1012324. doi: 10.1371/journal.pcbi.1012324. eCollection 2024 Aug.
To understand the transmissibility and spread of infectious diseases, epidemiologists turn to estimates of the instantaneous reproduction number. While many estimation approaches exist, their utility may be limited. Challenges of surveillance data collection, model assumptions that are unverifiable with data alone, and computationally inefficient frameworks are critical limitations for many existing approaches. We propose a discrete spline-based approach that solves a convex optimization problem-Poisson trend filtering-using the proximal Newton method. It produces a locally adaptive estimator for instantaneous reproduction number estimation with heterogeneous smoothness. Our methodology remains accurate even under some process misspecifications and is computationally efficient, even for large-scale data. The implementation is easily accessible in a lightweight R package rtestim.
为了了解传染病的传播和扩散,流行病学家转而估计瞬时繁殖数。虽然有许多估计方法,但它们的实用性可能受到限制。监测数据收集的挑战、仅用数据无法验证的模型假设以及计算效率低下的框架,是许多现有方法的关键局限性。我们提出了一种基于离散样条的方法,使用近端牛顿法解决凸优化问题——泊松趋势滤波。它使用局部自适应估计器进行瞬时繁殖数估计,具有异质平滑度。即使在某些过程失配的情况下,我们的方法仍然保持准确性,并且计算效率高,即使对于大规模数据也是如此。该实现可以在轻量级的 R 包 rtestim 中轻松访问。