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结合病毒遗传学和统计建模提高 HIV-1 感染时间估计,以增强疫苗效力评估。

Combining Viral Genetics and Statistical Modeling to Improve HIV-1 Time-of-infection Estimation towards Enhanced Vaccine Efficacy Assessment.

机构信息

Vaccine and Infectious Disease Division, Fred Hutchinson Cancer Research Center, Seattle, WA 98109, USA.

U.S. Military HIV Research Program, Walter Reed Army Institute of Research, Silver Spring, MD 20910, USA.

出版信息

Viruses. 2019 Jul 3;11(7):607. doi: 10.3390/v11070607.

Abstract

Knowledge of the time of HIV-1 infection and the multiplicity of viruses that establish HIV-1 infection is crucial for the in-depth analysis of clinical prevention efficacy trial outcomes. Better estimation methods would improve the ability to characterize immunological and genetic sequence correlates of efficacy within preventive efficacy trials of HIV-1 vaccines and monoclonal antibodies. We developed new methods for infection timing and multiplicity estimation using maximum likelihood estimators that shift and scale (calibrate) estimates by fitting true infection times and founder virus multiplicities to a linear regression model with independent variables defined by data on HIV-1 sequences, viral load, diagnostics, and sequence alignment statistics. Using Poisson models of measured mutation counts and phylogenetic trees, we analyzed longitudinal HIV-1 sequence data together with diagnostic and viral load data from the RV217 and CAPRISA 002 acute HIV-1 infection cohort studies. We used leave-one-out cross validation to evaluate the prediction error of these calibrated estimators versus that of existing estimators and found that both infection time and founder multiplicity can be estimated with improved accuracy and precision by calibration. Calibration considerably improved all estimators of time since HIV-1 infection, in terms of reducing bias to near zero and reducing root mean squared error (RMSE) to 5-10 days for sequences collected 1-2 months after infection. The calibration of multiplicity assessments yielded strong improvements with accurate predictions (ROC-AUC above 0.85) in all cases. These results have not yet been validated on external data, and the best-fitting models are likely to be less robust than simpler models to variation in sequencing conditions. For all evaluated models, these results demonstrate the value of calibration for improved estimation of founder multiplicity and of time since HIV-1 infection.

摘要

了解 HIV-1 感染的时间和建立 HIV-1 感染的病毒多样性对于深入分析临床预防效果试验结果至关重要。更好的估计方法将提高在 HIV-1 疫苗和单克隆抗体预防效果试验中对免疫和遗传序列相关性的功效进行特征描述的能力。我们使用最大似然估计器开发了新的感染时间和多样性估计方法,这些估计器通过拟合真实感染时间和创始病毒多样性到具有独立变量的线性回归模型来调整和校准(校准)估计值,这些独立变量由 HIV-1 序列、病毒载量、诊断和序列比对统计数据定义。我们使用测量突变计数的泊松模型和系统发育树,分析了来自 RV217 和 CAPRISA 002 急性 HIV-1 感染队列研究的纵向 HIV-1 序列数据以及诊断和病毒载量数据。我们使用留一交叉验证来评估这些校准估计器与现有估计器的预测误差,并发现通过校准可以以更高的准确性和精度估计感染时间和创始病毒多样性。校准极大地改善了所有 HIV-1 感染后时间的估计器,将偏差降低到接近零,并将感染后 1-2 个月采集的序列的均方根误差(RMSE)降低到 5-10 天。在所有情况下,对多样性评估的校准都产生了很强的改进,具有很高的预测准确性(ROC-AUC 高于 0.85)。这些结果尚未在外部数据上得到验证,最佳拟合模型可能比更简单的模型对测序条件的变化更不稳健。对于所有评估的模型,这些结果都证明了校准在提高创始病毒多样性和 HIV-1 感染后时间的估计方面的价值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ccd2/6669737/57745c3f8d44/viruses-11-00607-g001.jpg

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