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机器学习支持D1、Nef和Tat影响HIV储存库动态的证据。

Machine Learning Bolsters Evidence That D1, Nef, and Tat Influence HIV Reservoir Dynamics.

作者信息

Cannon LaMont, Fehrman Sophia, Pinzone Marilia, Weissman Sam, O'Doherty Una

机构信息

Center for Biological Data Science, Virginia Commonwealth University, Richmond, Virginia.

Department of Pathology and Laboratory Medicine, University of Pennsylvania, Philadelphia, Pennsylvania.

出版信息

Pathog Immun. 2024 Jan 23;8(2):37-58. doi: 10.20411/pai.v8i2.621. eCollection 2023.

Abstract

BACKGROUND

The primary hurdle to curing HIV is due to the establishment of a reservoir early in infection. In an effort to find new treatment strategies, we and others have focused on understanding the selection pressures exerted on the reservoir by studying how proviral sequences change over time.

METHODS

To gain insights into the dynamics of the HIV reservoir we analyzed longitudinal near full-length sequences from 7 people living with HIV between 1 and 20 years following the initiation of antiretroviral treatment. We used this data to employ Bayesian mixed effects models to characterize the decay of the reservoir using single-phase and multiphasic decay models based on near full-length sequencing. In addition, we developed a machine-learning approach utilizing logistic regression to identify elements within the HIV genome most associated with proviral decay and persistence. By systematically analyzing proviruses that are deleted for a specific element, we gain insights into their role in reservoir contraction and expansion.

RESULTS

Our analyses indicate that biphasic decay models of intact reservoir dynamics were better than single-phase models with a stronger statistical fit. Based on the biphasic decay pattern of the intact reservoir, we estimated the half-lives of the first and second phases of decay to be 18.2 (17.3 to 19.2, 95%CI) and 433 (227 to 6400, 95%CI) months, respectively.In contrast, the dynamics of defective proviruses differed favoring neither model definitively, with an estimated half-life of 87.3 (78.1 to 98.8, 95% CI) months during the first phase of the biphasic model. Machine-learning analysis of HIV genomes at the nucleotide level revealed that the presence of the splice donor site D1 was the principal genomic element associated with contraction. This role of D1 was then validated in an system. Using the same approach, we additionally found supporting evidence that HIV may confer a protective advantage for latently infected T cells while was associated with clonal expansion.

CONCLUSIONS

The nature of intact reservoir decay suggests that the long-lived HIV reservoir contains at least 2 distinct compartments. The first compartment decays faster than the second compartment. Our machine-learning analysis of HIV proviral sequences reveals specific genomic elements are associated with contraction while others are associated with persistence and expansion. Together, these opposing forces shape the reservoir over time.

摘要

背景

治愈艾滋病病毒的主要障碍在于感染早期病毒储存库的建立。为了寻找新的治疗策略,我们和其他研究人员致力于通过研究前病毒序列随时间的变化来了解施加于病毒储存库的选择压力。

方法

为深入了解艾滋病病毒储存库的动态变化,我们分析了7名艾滋病病毒感染者在开始抗逆转录病毒治疗后1至20年的纵向近全长序列。我们利用这些数据,采用贝叶斯混合效应模型,基于近全长测序,使用单相和多相衰减模型来描述病毒储存库的衰减情况。此外,我们开发了一种利用逻辑回归的机器学习方法,以识别艾滋病病毒基因组中与前病毒衰减和持续存在最相关的元件。通过系统分析针对特定元件缺失的前病毒,我们深入了解了它们在病毒储存库收缩和扩张中的作用。

结果

我们的分析表明,完整病毒储存库动态变化的双相衰减模型比单相模型更优,具有更强的统计拟合度。基于完整病毒储存库的双相衰减模式,我们估计衰减第一阶段和第二阶段的半衰期分别为18.2(17.3至19.2,95%置信区间)和433(227至6400,95%置信区间)个月。相比之下,缺陷前病毒的动态变化对两种模型均无明显偏向,在双相模型的第一阶段,估计半衰期为87.3(78.1至98.8,95%置信区间)个月。对艾滋病病毒基因组核苷酸水平的机器学习分析表明,剪接供体位点D1的存在是与收缩相关的主要基因组元件。D1的这一作用随后在一个系统中得到验证。使用相同方法,我们还额外发现支持性证据,表明艾滋病病毒1型可能为潜伏感染的T细胞赋予保护优势,而艾滋病病毒2型与克隆扩增相关。

结论

完整病毒储存库衰减的性质表明,长寿的艾滋病病毒储存库至少包含2个不同的区室。第一个区室的衰减速度比第二个区室快。我们对艾滋病病毒前病毒序列的机器学习分析揭示,特定基因组元件与收缩相关,而其他元件与持续存在和扩张相关。这些相反的力量共同随着时间塑造了病毒储存库。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7758/10827039/f415fee3b8d7/pai-8-037-g001.jpg

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