Comparison of viral load and human leukocyte antigen statistical and neural network predictive models for the rate of HIV-1 disease progression across two cohorts of homosexual men.

J P Ioannidis, J J Goedert, P G McQueen, C Enger, R A Kaslow
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引用次数: 13

Abstract

We compared the performance of HIV-1 RNA and models based on human leukocyte antigen (HLA) in predicting the rate of HIV-1 disease progression using both linear regression and neural network models across two different cohorts of homosexual men. In all, 139 seroconverters from the Multicenter AIDS Cohort Study were used as the training set and 97 seroconverters from the District of Columbia Gay (DCG) cohort were used for validation to assess the generalizability of trained predictive models. Both viral load and HLA markers were strongly predictive of disease progression (p < .0001 and p = .001, respectively), with viral load superior to HLA (change in -2 log likelihood [-2LL] 26.7 and 10.2, respectively, in proportional hazards models). Consideration of both HLA markers and viral load offered no significant predictive advantage over viral load alone in most cases; however, HLA-based predictions obtained from neural networks modeling improved the discrimination among patients with high viral load (p = .02). Viral load, HLA scores, and rapid disease progression were moderately correlated (p < .01 for all three pairs of these variables). The median viral load was 10(3.70) copies/ml among DCG patients who had more favorable than unfavorable HLA markers and 10(4.66) copies/ml among patients with more unfavorable than favorable HLA markers. Viral load is a simpler, stronger predictor of disease progression than early developed HLA models, but neural network methods and further refined HLA models may offer additional prognostic information, especially for rapid progressors. The correlation between viral load and HLA markers suggests a possible HLA effect on setting viral load levels.

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两组同性恋男性HIV-1疾病进展率的病毒载量和人类白细胞抗原统计和神经网络预测模型的比较
我们比较了HIV-1 RNA和基于人类白细胞抗原(HLA)的模型在预测HIV-1疾病进展率方面的表现,使用线性回归和神经网络模型在两个不同的同性恋男性队列中。总共有139名来自多中心艾滋病队列研究的血清转化者被用作训练集,97名来自哥伦比亚特区同性恋(DCG)队列的血清转化者被用于验证,以评估训练后的预测模型的普遍性。病毒载量和HLA标记物都能强烈预测疾病进展(分别为p < 0.0001和p = 0.001),病毒载量优于HLA(在比例风险模型中,-2对数似然[-2LL]变化分别为26.7和10.2)。在大多数情况下,考虑HLA标记物和病毒载量比单独考虑病毒载量没有显著的预测优势;然而,从神经网络建模中获得的基于hla的预测提高了对高病毒载量患者的区分(p = 0.02)。病毒载量、HLA评分和疾病的快速进展具有中度相关性(所有三对变量的p < 0.01)。在HLA标记物有利多于不利的DCG患者中,中位病毒载量为10(3.70)拷贝/ml,在HLA标记物不利多于有利的患者中,中位病毒载量为10(4.66)拷贝/ml。与早期开发的HLA模型相比,病毒载量是一种更简单、更有力的疾病进展预测指标,但神经网络方法和进一步完善的HLA模型可能提供额外的预后信息,特别是对于快速进展的患者。病毒载量和HLA标记物之间的相关性提示HLA可能对病毒载量水平的设定有影响。
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