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尼日利亚血清学多样化人群中HIV感染状况的错误分类:对检测和治疗计划的影响。

Misclassification of HIV infection status among serologically diverse populations in Nigeria: implications for test and treat program.

作者信息

Eluwa George I E, Geibel Scott, Callens Steven, Vu Lung, Wong Vincent J, Iyortim Isa

机构信息

Diadem Consults Initiative, Abuja, Nigeria.

Population Council, Washington DC, USA.

出版信息

BMC Health Serv Res. 2025 Mar 26;25(1):430. doi: 10.1186/s12913-025-12617-9.

Abstract

BACKGROUND

In 2015, the World Health Organization (WHO) launched the Test and Treat policy which supports antiretroviral treatment for all people with HIV, irrespective of CD4 count or clinical stage. This was adopted in 2016 in Nigeria. This policy resulted in scaleup of HIV testing strategies and differentiated models of care including community-based ART. This study evaluated the HIV testing algorithm and assessed the rates of misclassification of HIV status among newly diagnosed clients.

METHODS

Between February and August 2018, whole blood samples were collected from clients newly diagnosed with HIV in Lagos and Benue states. HIV status wasconfirmed with rapid tests using the serial algorithm during outreach sessions for both key populations and general populations. HIV positivity was confirmed using GenScreen™ HIV1/2.O Antibody only ELISA test (BioRad, USA). Optical density (OD) for each sample was measured with the use of Emax microplate reader set at endpoint 450 wavelength. Based on manufacturer's algorithm, sample OD and calculated cut-off value ratio, an OD < 1.0 was interpreted as negative and > 1.0, positive. Concordance between rapid test algorithm result and ELISA was used to estimate the proportion of samples that were misclassified.

RESULTS

A total of 788 samples were collected from newly diagnosed clients across 4 sites in Lagos and 3 sites in Benue. Samples were collected from 212 and 178 key populations (KPs) clients in Lagos and Benue, respectively, and from 206 and 192 general population (GPs) clients in Lagos and Benue, respectively. Mean OD was 3.75 (IQR:3.70-3.81) with a standard deviation of 0.13. There was a 100% concordance between rapid test and ELISA results and no misclassification identified.

CONCLUSION

We identified no instances of misclassification of positive HIV status suggesting that all clients who have been placed on treatment truly had HIV infection. The 100% concordance rate recorded from all the sites may be attributable to the maturity of the HIV program in Nigerian with a concomitant standard quality assurance system for both clinical and outreach testing services. This finding supports the implementation of the Test and Treat policy that Nigeria has adopted. Scale up of Test and Treat and community ART is thus recommended to increase access to treatment.

摘要

背景

2015年,世界卫生组织(WHO)推出了“检测与治疗”政策,该政策支持为所有艾滋病毒感染者提供抗逆转录病毒治疗,无论其CD4细胞计数或临床分期如何。尼日利亚于2016年采用了这一政策。该政策促使艾滋病毒检测策略得以扩大,并采用了包括社区抗逆转录病毒治疗在内的差异化护理模式。本研究评估了艾滋病毒检测算法,并评估了新诊断患者中艾滋病毒状态的错误分类率。

方法

2018年2月至8月期间,从拉各斯州和贝努埃州新诊断为艾滋病毒感染的患者中采集全血样本。在针对重点人群和普通人群的外展服务中,使用连续算法通过快速检测来确认艾滋病毒状态。使用GenScreen™ HIV1/2.O仅抗体ELISA检测(美国伯乐公司)确认艾滋病毒阳性。使用设置在450波长终点的Emax酶标仪测量每个样本的光密度(OD)。根据制造商的算法、样本OD和计算出的临界值比率,OD < 1.0被解释为阴性,> 1.0为阳性。快速检测算法结果与ELISA之间的一致性用于估计错误分类的样本比例。

结果

共从拉各斯的4个地点和贝努埃的3个地点的新诊断患者中采集了788份样本。分别从拉各斯和贝努埃的212名和178名重点人群(KPs)患者以及拉各斯和贝努埃的206名和192名普通人群(GPs)患者中采集样本。平均OD为3.75(四分位间距:3.70 - 3.81),标准差为0.13。快速检测和ELISA结果之间的一致性为100%,未发现错误分类。

结论

我们未发现艾滋病毒阳性状态错误分类的情况,这表明所有接受治疗的患者确实感染了艾滋病毒。所有地点记录的100%一致性率可能归因于尼日利亚艾滋病毒项目的成熟以及临床和外展检测服务相应的标准质量保证体系。这一发现支持了尼日利亚所采用的“检测与治疗”政策的实施。因此,建议扩大“检测与治疗”以及社区抗逆转录病毒治疗的规模,以增加治疗可及性。

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