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预测美国伊利诺伊州的 HIV-1 遗传簇增长

Forecasting HIV-1 Genetic Cluster Growth in Illinois,United States.

机构信息

Department of Medicine, University of California San Diego, San Diego, CA.

Department of Infectious Disease Epidemiology, MRC Centre for Global Infectious Disease Analysis, Imperial College London, London, United Kingdom.

出版信息

J Acquir Immune Defic Syndr. 2022 Jan 1;89(1):49-55. doi: 10.1097/QAI.0000000000002821.

DOI:10.1097/QAI.0000000000002821
PMID:34878434
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC8667185/
Abstract

BACKGROUND

HIV intervention activities directed toward both those most likely to transmit and their HIV-negative partners have the potential to substantially disrupt HIV transmission. Using HIV sequence data to construct molecular transmission clusters can reveal individuals whose viruses are connected. The utility of various cluster prioritization schemes measuring cluster growth have been demonstrated using surveillance data in New York City and across the United States, by the Centers for Disease Control and Prevention (CDC).

METHODS

We examined clustering and cluster growth prioritization schemes using Illinois HIV sequence data that include cases from Chicago, a large urban center with high HIV prevalence, to compare their ability to predict future cluster growth.

RESULTS

We found that past cluster growth was a far better predictor of future cluster growth than cluster membership alone but found no substantive difference between the schemes used by CDC and the relative cluster growth scheme previously used in New York City (NYC). Focusing on individuals selected simultaneously by both the CDC and the NYC schemes did not provide additional improvements.

CONCLUSION

Growth-based prioritization schemes can easily be automated in HIV surveillance tools and can be used by health departments to identify and respond to clusters where HIV transmission may be actively occurring.

摘要

背景

针对那些最有可能传播 HIV 的人和他们的 HIV 阴性伴侣的 HIV 干预活动有可能大大阻断 HIV 的传播。使用 HIV 序列数据构建分子传播簇可以揭示病毒相互关联的个体。美国疾病控制与预防中心(CDC)已经使用纽约市和美国各地的监测数据证明了各种衡量簇增长的簇优先级方案的实用性。

方法

我们使用包括来自芝加哥的病例在内的伊利诺伊州 HIV 序列数据来检查聚类和簇增长优先级方案,芝加哥是一个 HIV 流行率很高的大城市中心,以比较它们预测未来簇增长的能力。

结果

我们发现过去的簇增长是未来簇增长的更好预测指标,而不仅仅是簇成员身份,但发现 CDC 使用的方案与以前在纽约市(NYC)使用的相对簇增长方案之间没有实质性差异。同时关注 CDC 和 NYC 方案都选择的个体并没有提供额外的改进。

结论

基于增长的优先级方案可以很容易地在 HIV 监测工具中自动化,并可由卫生部门用于识别和应对可能正在发生 HIV 传播的集群。