University of California San Diego, San Diego, California, USA.
AIDS. 2023 Aug 1;37(10):1617-1624. doi: 10.1097/QAD.0000000000003614. Epub 2023 May 31.
Accurate estimates of HIV incidence are necessary to monitor progress towards Ending the HIV Epidemic (EHE) initiative targets (90% decline by 2030). U.S. incidence estimates are derived from a CD4 depletion model (CD4 model). We performed simulation-based analyses to investigate the ability of this model to estimate HIV incidence when implementing EHE interventions that have the potential to shorten the duration between HIV infection and diagnosis (diagnosis delay).
Our simulation study evaluates the impact of three parameters on the accuracy of incidence estimates derived from the CD4 model: rate of HIV incidence decline, length of diagnosis delay, and sensitivity of using CD4 + cell counts to identify new infections (recency error). We model HIV incidence and diagnoses after the implementation of a theoretical prevention intervention and compare HIV incidence estimates derived from the CD4 model to simulated incidence.
Theoretical interventions that shortened the diagnosis delay (10-50%) result in overestimation of HIV incidence by the CD4 model (10-92%) in the first year and by more than 10% for the first 6 years after implementation of the intervention. Changes in the rate of HIV incidence decline and the presence of recency error had minimal impact on the accuracy of incidence estimates derived from the CD4 model.
In the setting of EHE interventions to identify persons with HIV earlier during infection, the CD4 model overestimates HIV incidence. Alternative methods to estimate incidence based on objective measures of incidence are needed to assess and monitor EHE interventions.
准确估计 HIV 发病率对于监测实现终结艾滋病流行(EHE)倡议目标(到 2030 年下降 90%)的进展情况至关重要。美国的发病率估计是从 CD4 细胞耗竭模型(CD4 模型)中得出的。我们进行了基于模拟的分析,以研究该模型在实施可能缩短 HIV 感染和诊断之间时间间隔(诊断延迟)的 EHE 干预措施时估计 HIV 发病率的能力。
我们的模拟研究评估了三个参数对从 CD4 模型得出的发病率估计准确性的影响:HIV 发病率下降的速度、诊断延迟的长度以及使用 CD4+细胞计数来识别新感染的敏感性(近期误差)。我们模拟了在实施理论预防干预措施后的 HIV 发病率和诊断,并将 CD4 模型得出的 HIV 发病率估计与模拟的发病率进行比较。
缩短诊断延迟(10-50%)的理论干预措施会导致 CD4 模型在第一年高估 HIV 发病率(10-92%),并且在干预实施后的前 6 年,高估幅度超过 10%。HIV 发病率下降速度的变化和近期误差的存在对 CD4 模型得出的发病率估计的准确性影响极小。
在 EHE 干预措施的背景下,为了在感染期间更早地发现 HIV 感染者,CD4 模型会高估 HIV 发病率。需要基于发病率的客观测量方法来估计发病率,以评估和监测 EHE 干预措施。