南非少女和年轻妇女艾滋病毒预测风险评分:确定需要艾滋病毒暴露前预防的人。

IF 1.7 4区 医学 Q3 INFECTIOUS DISEASES HIV Research & Clinical Practice Pub Date : 2023-06-03
Reuben Christopher Moyo, Darshini Govindasamy, Samuel Om Manda, Peter Suwirakwenda Nyasulu
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引用次数: 0

摘要

背景:在撒哈拉以南非洲(SSA),少女和年轻妇女(AGYW)感染艾滋病毒的风险最高。这导致了几项旨在确定AGYM中艾滋病毒风险因素的研究。然而,在多变量风险模型中,将所谓的风险变量组合在一起可能比一次一个地确定AGYW中的艾滋病毒风险更有用。本研究的目的是建立和验证AGYW的HIV风险预测模型。方法:我们分析了南非4399名AGYW的hiv相关HERStory调查数据。我们从数据集中确定了16个所谓的风险变量。HIV感染风险评分通过HIV阳性的多变量logistic回归模型的系数组合来计算。最终模型在区分HIV阳性和HIV阴性方面的性能使用接受者工作特征曲线下的面积(AUROC)进行评估。利用约登指数确定了预测模型的最佳切点。我们还使用了其他判别能力的方法,如预测值、敏感性和特异性。结果:估计HIV患病率为12.4%(11.7% ~ 14.0%)%。所得风险预测模型得分均值为2.36,标准差为0.64,范围为0.37 ~ 4.59。预测模型的灵敏度为16。特异性为98.5%。模型的阳性预测值为68.2%,阴性预测值为85.8%。预测模型的最佳切点为2.43,敏感性为71%,特异性为60%。我们的模型在预测HIV阳性方面表现良好,训练AUC为0.78,测试AUC为0.76。结论:确定的危险因素组合在预测AGYW中HIV阳性方面具有良好的辨别和校准能力。该模型可以为初级卫生保健诊所和社区环境中的AGYW筛查提供一种简单而低成本的策略。通过这种方式,卫生服务提供者可以很容易地识别并将AGYW与艾滋病毒预防服务联系起来。
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A prediction risk score for HIV among adolescent girls and young women in South Africa: identifying those in need of HIV pre-exposure prophylaxis.

Background: In sub-Saharan Africa (SSA), adolescent girls and young women (AGYW) have the highest risk of acquiring HIV. This has led to several studies aimed at identifying risk factors for HIV in AGYM. However, a combination of the purported risk variables in a multivariate risk model could be more useful in determining HIV risk in AGYW than one at a time. The purpose of this study was to develop and validate an HIV risk prediction model for AGYW.

Methods: We analyzed HIV-related HERStory survey data on 4,399 AGYW from South Africa. We identified 16 purported risk variables from the data set. The HIV acquisition risk scores were computed by combining coefficients of a multivariate logistic regression model of HIV positivity. The performance of the final model at discriminating between HIV positive and HIV negative was assessed using the area under the receiver-operating characteristic curve (AUROC). The optimal cut-point of the prediction model was determined using the Youden index. We also used other measures of discriminative abilities such as predictive values, sensitivity, and specificity.

Results: The estimated HIV prevalence was 12.4% (11.7% - 14.0) %. The score of the derived risk prediction model had a mean and standard deviation of 2.36 and 0.64 respectively and ranged from 0.37 to 4.59. The prediction model's sensitivity was 16. 7% and a specificity of 98.5%. The model's positive predictive value was 68.2% and a negative predictive value of 85.8%. The prediction model's optimal cut-point was 2.43 with sensitivity of 71% and specificity of 60%. Our model performed well at predicting HIV positivity with training AUC of 0.78 and a testing AUC of 0.76.

Conclusion: A combination of the identified risk factors provided good discrimination and calibration at predicting HIV positivity in AGYW. This model could provide a simple and low-cost strategy for screening AGYW in primary healthcare clinics and community-based settings. In this way, health service providers could easily identify and link AGYW to HIV PrEP services.

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CiteScore
2.90
自引率
6.20%
发文量
15
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