Population Council, Washington, DC, USA.
Population Council, New York, NY, USA.
J Int AIDS Soc. 2020 Jun;23 Suppl 2(Suppl 2):e25518. doi: 10.1002/jia2.25518.
Engaging at-risk men in HIV prevention programs and services is a current priority, yet there are few effective ways to identify which men are at highest risk or how to best reach them. In this study we generated multi-factor profiles of HIV acquisition/transmission risk for men in Durban, South Africa, to help inform targeted programming and service delivery.
Data come from surveys with 947 men ages 20 to 40 conducted in two informal settlements from May to September 2017. Using latent class analysis (LCA), which detects a small set of underlying groups based on multiple dimensions, we identified classes based on nine HIV risk factors and socio-demographic characteristics. We then compared HIV service use between the classes.
We identified four latent classes, with good model fit statistics. The older high-risk class (20% of the sample; mean age 36) were more likely married/cohabiting and employed, with multiple sexual partners, substantial age-disparity with partners (eight years younger on-average), transactional relationships (including more resource-intensive forms like paying for partner's rent), and hazardous drinking. The younger high-risk class (24%; mean age 27) were likely unmarried and employed, with the highest probability of multiple partners in the last year (including 42% with 5+ partners), transactional relationships (less resource-intensive, e.g., clothes/transportation), hazardous drinking, and inequitable gender views. The younger moderate-risk class (36%; mean age 23) were most likely unmarried, unemployed technical college/university students/graduates. They had a relatively high probability of multiple partners and transactional relationships (less resource-intensive), and moderate hazardous drinking. Finally, the older low-risk class (20%; mean age 29) were more likely married/cohabiting, employed, and highly gender-equitable, with few partners and limited transactional relationships. Circumcision (status) was higher among the younger moderate-risk class than either high-risk class (p < 0.001). HIV testing and treatment literacy score were suboptimal and did not differ across classes.
Distinct HIV risk profiles among men were identified. Interventions should focus on reaching the highest-risk profiles who, despite their elevated risk, were less or no more likely than the lower-risk to use HIV services. By enabling a more synergistic understanding of subgroups, LCA has potential to enable more strategic, data-driven programming and evaluation.
让高危男性参与艾滋病毒预防计划和服务是当前的重点,但目前几乎没有有效的方法来确定哪些男性面临最大的风险,或者如何最好地接触到他们。在这项研究中,我们为南非德班的男性生成了艾滋病毒感染/传播风险的多因素特征,以帮助提供有针对性的规划和服务。
数据来自于 2017 年 5 月至 9 月在两个非正规住区对 947 名 20 至 40 岁男性进行的调查。我们使用潜在类别分析(LCA),根据多个维度检测出一小组潜在的群体,根据九个艾滋病毒风险因素和社会人口特征确定类别。然后,我们比较了不同类别之间的艾滋病毒服务使用情况。
我们确定了四个潜在类别,具有良好的模型拟合统计数据。年龄较大的高风险类别(样本的 20%;平均年龄 36 岁)更有可能已婚/同居和就业,性伴侣较多,与伴侣的年龄差距较大(平均小 8 岁),有交易关系(包括更具资源密集型的形式,如支付伴侣的租金),以及危险饮酒。年龄较小的高风险类别(24%;平均年龄 27 岁)未婚且就业,过去一年中与多个伴侣发生性关系的可能性最高(包括 42%的人与 5 个以上伴侣发生性关系),交易关系(资源密集程度较低,例如衣服/交通),危险饮酒和不平等的性别观念。年龄较小的中危类别(36%;平均年龄 23 岁)最有可能未婚,失业,技术学院/大学学生/毕业生。他们有较高的可能性有多个伴侣和交易关系(资源密集程度较低),以及中等程度的危险饮酒。最后,年龄较大的低危类别(20%;平均年龄 29 岁)更有可能已婚/同居,就业,性别平等意识高,伴侣少,交易关系有限。在年轻的中危类别中,接受过割礼(状态)的人比任何高危类别都多(p<0.001)。艾滋病毒检测和治疗知识得分不理想,且各类别之间没有差异。
确定了男性艾滋病毒风险的不同特征。干预措施应侧重于接触风险最高的人群,尽管他们的风险较高,但他们使用艾滋病毒服务的可能性并不比低风险人群高。潜在类别分析(LCA)通过对亚组有更协同的理解,具有潜在的能力来实现更具战略性、数据驱动的规划和评估。