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BED-CEIA 和 AxSYM 亲和力指数检测的双重检测算法在识别卢旺达性工作者样本中的近期 HIV 感染方面表现最佳。

Dual testing algorithm of BED-CEIA and AxSYM Avidity Index assays performs best in identifying recent HIV infection in a sample of Rwandan sex workers.

机构信息

Mailman School of Public Health-Columbia University, New York, New York, United States of America.

出版信息

PLoS One. 2011 Apr 12;6(4):e18402. doi: 10.1371/journal.pone.0018402.

Abstract

BACKGROUND

To assess the performance of BED-CEIA (BED) and AxSYM Avidity Index (Ax-AI) assays in estimating HIV incidence among female sex workers (FSW) in Kigali, Rwanda.

METHODOLOGY AND FINDINGS

Eight hundred FSW of unknown HIV status were HIV tested; HIV-positive women had BED and Ax-AI testing at baseline and ≥12 months later to estimate assay false-recent rates (FRR). STARHS-based HIV incidence was estimated using the McWalter/Welte formula, and adjusted with locally derived FRR and CD4 results. HIV incidence and local assay window periods were estimated from a prospective cohort of FSW. At baseline, 190 HIV-positive women were BED and Ax-AI tested; 23 were classified as recent infection (RI). Assay FRR with 95% confidence intervals were: 3.6% (1.2-8.1) (BED); 10.6% (6.1-17.0) (Ax-AI); and 2.1% (0.4-6.1) (BED/Ax-AI combined). After FRR-adjustment, incidence estimates by BED, Ax-AI, and BED/Ax-AI were: 5.5/100 person-years (95% CI 2.2-8.7); 7.7 (3.2-12.3); and 4.4 (1.4-7.3). After CD4-adjustment, BED, Ax-AI, and BED/Ax-AI incidence estimates were: 5.6 (2.6-8.6); 9.7 (5.0-14.4); and 4.7 (2.0-7.5). HIV incidence rates in the first and second 6 months of the cohort were 4.6 (1.6-7.7) and 2.2 (0.1-4.4).

CONCLUSIONS

Adjusted incidence estimates by BED/Ax-AI combined were similar to incidence in the first 6 months of the cohort. Furthermore, false-recent rate on the combined BED/Ax-AI algorithm was low and substantially lower than for either assay alone. Improved assay specificity with time since seroconversion suggests that specificity would be higher in population-based testing where more individuals have long-term infection.

摘要

背景

评估 BED-CEIA(BED)和 AxSYM 亲和力指数(Ax-AI)检测在估计卢旺达基加利女性性工作者(FSW)中 HIV 发病率方面的性能。

方法和发现

对 800 名 HIV 未知状态的 FSW 进行 HIV 检测;HIV 阳性女性在基线和至少 12 个月后进行 BED 和 Ax-AI 检测,以估计检测错误近期率(FRR)。基于 STARHS 的 HIV 发病率使用 McWalter/Welte 公式估计,并通过当地推导的 FRR 和 CD4 结果进行调整。HIV 发病率和当地检测窗口期是从 FSW 的前瞻性队列中估计的。在基线时,190 名 HIV 阳性女性接受了 BED 和 Ax-AI 检测;23 人被归类为近期感染(RI)。检测 FRR 的 95%置信区间分别为:3.6%(1.2-8.1)(BED);10.6%(6.1-17.0)(Ax-AI);和 2.1%(0.4-6.1)(BED/Ax-AI 联合)。在 FRR 调整后,BED、Ax-AI 和 BED/Ax-AI 的发病率估计值分别为:5.5/100 人年(95%CI 2.2-8.7);7.7(3.2-12.3);和 4.4(1.4-7.3)。在 CD4 调整后,BED、Ax-AI 和 BED/Ax-AI 的发病率估计值分别为:5.6(2.6-8.6);9.7(5.0-14.4);和 4.7(2.0-7.5)。队列前 6 个月和后 6 个月的 HIV 发病率分别为 4.6(1.6-7.7)和 2.2(0.1-4.4)。

结论

BED/Ax-AI 联合的调整发病率估计值与队列前 6 个月的发病率相似。此外,联合 BED/Ax-AI 算法的错误近期率较低,明显低于单独使用任何一种检测方法。随着时间的推移,检测方法的特异性会逐渐提高,这表明在基于人群的检测中,特异性会更高,因为更多的人有长期感染。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/28a5/3075245/d0acc396002b/pone.0018402.g001.jpg

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