Department of Bioenvironmental Systems Engineering, National Taiwan University, Taipei, Taiwan 10617, ROC.
Epidemiol Infect. 2010 Jun;138(6):825-35. doi: 10.1017/S0950268809991178. Epub 2009 Nov 18.
This study aimed to estimate the natural history and transmission parameters based on experimental viral shedding and symptom dynamics in order to understand the key epidemiological factors that characterize influenza (sub)type epidemics. A simple statistical algorithm was developed by combining a well-defined mathematical scheme of epidemiological determinants and experimental human influenza infection. Here we showed that (i) the observed viral shedding dynamics mapped successfully the estimated time-profile of infectiousness and (ii) the profile of asymptomatic probability was obtained based on observed temporal variation of symptom scores. Our derived estimates permitted evaluation of relationships between various model-derived and data-based estimations, allowing evaluation of trends proposed previously but not tested fully. As well as providing insights into the dynamics of viral shedding and symptom scores, a more profound understanding of influenza epidemiological parameters and determinants could enhance the viral kinetic studies of influenza during infection in the respiratory tracts of experimentally infected individuals.
本研究旨在根据实验性病毒脱落和症状动态来估计自然史和传播参数,以了解表征流感(亚)型流行的关键流行病学因素。通过将明确的流行病学决定因素和实验性人类流感感染的数学方案相结合,开发了一种简单的统计算法。在这里,我们表明:(i)观察到的病毒脱落动态成功地映射了传染性的估计时间分布;(ii)基于观察到的症状评分的时间变化,获得了无症状概率的分布。我们的推导估计允许评估各种基于模型和基于数据的估计之间的关系,从而可以评估以前提出但尚未完全测试的趋势。除了深入了解病毒脱落和症状评分的动态外,更深入地了解流感的流行病学参数和决定因素可以增强对呼吸道感染实验感染个体中流感的病毒动力学研究。