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Intelligent Network DisRuption Analysis (INDRA): a targeted strategy for efficient interruption of hepatitis C transmissions

机译:智能网络中断分析(INDRA):有效阻断丙型肝炎传播的目标策略

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摘要

Hepatitis C virus (HCV) infection is a global public health problem. The implementation of public health interventions (PHI) to control HCV infection could effectively interrupt HCV transmission. PHI targeting high-risk populations, e.g., people who inject drugs (PWID), are the most efficient but there is a lack of tools for prioritizing individuals within a high-risk community. Here, we present Intelligent Network DisRuption Analysis (INDRA), a targeted strategy for efficient interruption of hepatitis C transmissions. Using a large HCV transmission network among PWID in Indiana as an example, we compare effectiveness of random and targeted strategies in reducing the rate of HCV transmission in two settings: (1) long-established and (2) rapidly spreading infections (outbreak). Identification of high centrality for the network nodes co-infected with HIV or >1 HCV subtype indicates that the network structure properly represents the underlying contacts among PWID relevant to the transmission of these infections. Changes in the network’s global efficiency (GE) were used as a measure of the PHI effects. In setting 1, simulation experiments showed that a 50% GE reduction can be achieved by removing 11.2 times less nodes using targeted vs random strategies. A greater effect of targeted strategies on GE was consistently observed when networks were simulated: (1) with a varying degree of errors in node sampling and link assignment, and (2) at different levels of transmission reduction at affected nodes. In simulations considering a 10% removal of infected nodes, targeted strategies were ~2.8 times more effective than random in reducing incidence. Peer-education intervention (PEI) was modeled as a probabilistic distribution of actionable knowledge of safe injection practices from the affected node to adjacent nodes in the network. Addition of PEI to the models resulted in a 2–3 times greater reduction in incidence than from direct PHI alone. In setting 2, however, random direct PHI were ~3.2 times more effective in reducing incidence at the simulated conditions. Nevertheless, addition of PEI resulted in a ~1.7-fold greater efficiency of targeted PHI. In conclusion, targeted PHI facilitated by INDRA outperforms random strategies in decreasing circulation of long-established infections. Network-based PEI may amplify effects of PHI on incidence reduction in both settings.
机译:丙型肝炎病毒(HCV)感染是全球性的公共卫生问题。实施控制HCV感染的公共卫生干预措施(PHI)可有效中断HCV传播。针对高风险人群(例如,注射毒品的人)的PHI是最有效的方法,但是缺乏在高风险社区中对个人进行优先排序的工具。在这里,我们介绍了智能网络中断分析(INDRA),这是一种有效中断丙型肝炎传播的针对性策略。以印第安纳州PWID中的大型HCV传播网络为例,我们比较了两种情况下随机和有针对性的策略在降低HCV传播率方面的有效性:(1)长期存在的和(2)快速传播的感染(爆发)。对感染有HIV或> 1 HCV亚型的网络节点的高度集中性的识别表明,网络结构正确地代表了与这些感染的传播相关的PWID之间的潜在联系。网络的全球效率(GE)的变化被用来衡量PHI的影响。在设置1中,仿真实验表明,使用有针对性的策略与随机策略相比,通过删除少11.2倍的节点,可以将GE减少50%。在仿真网络时,始终可以观察到有针对性的策略对GE产生的更大影响:(1)节点采样和链路分配中的错误程度不同,(2)受影响节点的传输减少程度不同。在考虑将感染节点去除10%的模拟中,针对性策略在降低发病率方面的效果比随机效果高约2.8倍。对等教育干预(PEI)被建模为从受影响节点到网络中相邻节点的安全注入实践的可行知识的概率分布。与仅直接使用PHI相比,将PEI添加到模型中的发生率降低了2-3倍。但是,在第2种情况下,随机直接PHI在降低模拟条件下的发生率方面的效率要高约3.2倍。但是,添加PEI可使目标PHI的效率提高约1.7倍。总之,在减少长期存在的感染的循环方面,INDRA促进的靶向PHI优于随机策略。在这两种情况下,基于网络的PEI可能会放大PHI对降低发病率的影响。

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