Yoneoka Daisuke, Kawashima Takayuki, Tanoue Yuta, Nomura Shuhei, Eguchi Akifumi
Center for Surveillance, Immunization, and Epidemiologic Research, National Institute of Infectious Diseases, Tokyo, Japan.
Department of Mathematical and Computing Science, Tokyo Institute of Technology, Tokyo, Japan.
Stat Med. 2023 Nov 10;42(25):4542-4555. doi: 10.1002/sim.9874. Epub 2023 Aug 22.
Accurately estimating the timing of pathogen exposure plays a crucial role in outbreak control for emerging infectious diseases, including the source identification, contact tracing, and vaccine research and development. However, since surveillance activities often collect data retrospectively after symptoms have appeared, obtaining accurate data on the timing of disease onset is difficult in practice and can involve "coarse" observations, such as interval or censored data. To address this challenge, we propose a novel likelihood function, tailored to coarsely observed data in rapid outbreak surveillance, along with an optimization method based on an -accelerated EM algorithm for faster convergence to find maximum likelihood estimates (MLEs). The covariance matrix of MLEs is also discussed using a nonparametric bootstrap approach. In terms of bias and mean-squared error, the performance of our proposed method is evaluated through extensive numerical experiments, as well as its application to a series of epidemiological surveillance focused on cases of mass food poisoning. The experiments show that our method exhibits less bias than conventional methods, providing greater efficiency across all scenarios.
准确估计病原体暴露时间对于新发传染病的疫情控制至关重要,包括传染源识别、接触者追踪以及疫苗研发等方面。然而,由于监测活动通常在症状出现后才进行回顾性数据收集,在实际中很难获得关于疾病发病时间的准确数据,并且可能涉及“粗略”的观测数据,例如区间数据或删失数据。为应对这一挑战,我们提出了一种新颖的似然函数,专门针对快速疫情监测中的粗略观测数据,同时还提出了一种基于 -加速期望最大化(EM)算法的优化方法,以实现更快收敛从而找到最大似然估计(MLE)。我们还使用非参数自助法讨论了MLE的协方差矩阵。在偏差和均方误差方面,通过广泛的数值实验评估了我们所提出方法的性能,以及该方法在一系列针对集体食物中毒病例的流行病学监测中的应用。实验表明,我们的方法比传统方法具有更小的偏差,在所有情况下都具有更高的效率。