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首页> 外文期刊>BMC Medical Research Methodology >Inferencing superspreading potential using zero-truncated negative binomial model: exemplification with COVID-19
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Inferencing superspreading potential using zero-truncated negative binomial model: exemplification with COVID-19

机译:使用零截断的负二项式模型推动超级预涂潜力:Covid-19的示例

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摘要

In infectious disease transmission dynamics, the high heterogeneity in individual infectiousness indicates that few index cases generate large numbers of secondary cases, which is commonly known as superspreading events. The heterogeneity in transmission can be measured by describing the distribution of the number of?secondary cases as a negative binomial (NB) distribution with dispersion parameter, k. However, such inference framework usually neglects the under-ascertainment of sporadic cases, which are those without known epidemiological link and considered as independent clusters of size one, and this may potentially bias the estimates. In this study, we adopt a zero-truncated likelihood-based framework to estimate k. We evaluate the estimation performance by using stochastic simulations, and compare it with the baseline non-truncated version. We exemplify the analytical framework with three contact tracing datasets of COVID-19. We demonstrate that the estimation bias exists when the under-ascertainment of index cases with 0 secondary case occurs, and the zero-truncated inference overcomes this problem and yields a less biased estimator of k. We find that the k of COVID-19 is inferred at 0.32 (95%CI: 0.15, 0.64), which appears slightly smaller than many previous estimates. We provide the simulation codes applying the inference framework in this study. The zero-truncated framework is recommended for less biased transmission heterogeneity estimates. These findings highlight the importance of individual-specific case management strategies to mitigate COVID-19 pandemic by lowering the transmission risks of potential super-spreaders with priority.
机译:在传染病传输动态中,个体传染病中的高异质性表明,很少有指标案例产生大量的次要病例,这通常被称为超级概念事件。通过描述具有色散参数的负二项式(Nb)分布的次级壳体的分布,可以测量变速器中的异质性。然而,这种推理框架通常忽略了散发性案例的下方,这是没有已知流行病学链接的散发病例,并且被认为是尺寸的独立集群,这可能会偏向估计。在这项研究中,我们采用零截断的基于似然的框架来估计k。我们通过使用随机仿真来评估估计性能,并将其与基线非截断版本进行比较。我们举例说明了Covid-19的三个联系跟踪数据集的分析框架。我们证明,当发生具有0次壳的索引案例的下方确定估计偏差时,并且零截断的推断克服该问题并产生较少的k的偏差估计。我们发现Covid-19的k在0.32(95%CI:0.15,0.64)时推断出略小于以前的估计数。我们提供应用本研究推断框架的仿真代码。建议零截断的框架以用于更少的偏置传输异质性估计。这些调查结果突出了个人特定案例管理战略的重要性,通过降低潜在超级展示员的传输风险,优先考虑潜在的超级蔓延公司的传输风险。

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