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利用接触者追踪数据检测和量化易感性的异质性。

Detecting and quantifying heterogeneity in susceptibility using contact tracing data.

作者信息

Tuschhoff Beth M, Kennedy David A

机构信息

Department of Biology, The Pennsylvania State University, University Park, Pennsylvania, United States of America.

出版信息

PLoS Comput Biol. 2024 Jul 29;20(7):e1012310. doi: 10.1371/journal.pcbi.1012310. eCollection 2024 Jul.

Abstract

The presence of heterogeneity in susceptibility, differences between hosts in their likelihood of becoming infected, can fundamentally alter disease dynamics and public health responses, for example, by changing the final epidemic size, the duration of an epidemic, and even the vaccination threshold required to achieve herd immunity. Yet, heterogeneity in susceptibility is notoriously difficult to detect and measure, especially early in an epidemic. Here we develop a method that can be used to detect and estimate heterogeneity in susceptibility given contact by using contact tracing data, which are typically collected early in the course of an outbreak. This approach provides the capability, given sufficient data, to estimate and account for the effects of this heterogeneity before they become apparent during an epidemic. It additionally provides the capability to analyze the wealth of contact tracing data available for previous epidemics and estimate heterogeneity in susceptibility for disease systems in which it has never been estimated previously. The premise of our approach is that highly susceptible individuals become infected more often than less susceptible individuals, and so individuals not infected after appearing in contact networks should be less susceptible than average. This change in susceptibility can be detected and quantified when individuals show up in a second contact network after not being infected in the first. To develop our method, we simulated contact tracing data from artificial populations with known levels of heterogeneity in susceptibility according to underlying discrete or continuous distributions of susceptibilities. We analyzed these data to determine the parameter space under which we are able to detect heterogeneity and the accuracy with which we are able to estimate it. We found that our power to detect heterogeneity increases with larger sample sizes, greater heterogeneity, and intermediate fractions of contacts becoming infected in the discrete case or greater fractions of contacts becoming infected in the continuous case. We also found that we are able to reliably estimate heterogeneity and disease dynamics. Ultimately, this means that contact tracing data alone are sufficient to detect and quantify heterogeneity in susceptibility.

摘要

易感性的异质性,即宿主在感染可能性上的差异,可能会从根本上改变疾病动态和公共卫生应对措施,例如,通过改变最终的疫情规模、疫情持续时间,甚至是实现群体免疫所需的疫苗接种阈值。然而,易感性的异质性极难检测和测量,尤其是在疫情早期。在此,我们开发了一种方法,可利用接触者追踪数据(通常在疫情爆发初期收集)来检测和估计接触情况下的易感性异质性。这种方法在有足够数据的情况下,能够在疫情期间异质性显现之前估计并考虑其影响。它还能够分析以往疫情中可用的大量接触者追踪数据,并估计以前从未估计过易感性异质性的疾病系统的易感性。我们方法的前提是,高易感性个体比低易感性个体更常被感染,因此在接触网络中出现后未被感染的个体应该比平均水平更不易感。当个体在首次未被感染后出现在第二个接触网络中时,这种易感性的变化就可以被检测和量化。为了开发我们的方法,我们根据易感性的潜在离散或连续分布,从具有已知易感性异质性水平的人工群体中模拟接触者追踪数据。我们分析这些数据以确定能够检测异质性的参数空间以及估计异质性的准确性。我们发现,检测异质性的能力随着样本量的增大、异质性的增加以及在离散情况下被感染接触者的中间比例或在连续情况下被感染接触者的更大比例而增强。我们还发现,我们能够可靠地估计异质性和疾病动态。最终,这意味着仅接触者追踪数据就足以检测和量化易感性的异质性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/4a5f/11309420/9159fb5a9a7f/pcbi.1012310.g001.jpg

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