Rocío Carrasco-Hernández , Humberto Valenzuela-Ponce , Maribel Soto-Nava , Claudia García-Morales , Margarita Matías-Florentino , Joel O. Wertheim , Davey M. Smith , Gustavo Reyes-Terán , Santiago Ávila-Ríos
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We identified how these functional slope changes (i.e. random slopes by year) improved predictions of the observed pVL median changes between 2019 and 2021, leading us to hypothesize underlying ecological and evolutionary factors. Our analysis involved a dataset of pVL values from 7325 ART-naïve individuals living with HIV, accompanied by their associated clinical and viral molecular predictors. A conventional fixed-effects linear model revealed significant correlations between pVL and predictors that evolved over time. However, this fixed-effects model could not fully explain the reduction in median pVL; thus, prompting us to adopt random-effects models. After applying a random effects regression model—with random slopes and intercepts by year—, we observed potential \"functional changes\" within the local HIV viral population, highlighting the importance of ecological and evolutionary considerations in HIV dynamics: A notably stronger negative correlation emerged between HIV pVL and the CpG content in the <em>pol</em> gene, suggesting a changing immune landscape influenced by CpG-induced innate immune responses that could impact viral load dynamics. Our study underscores the significance of random effects models in capturing dynamic correlations and the crucial role of molecular characteristics like CpG content. By enriching our understanding of changing host-virus interactions and HIV progression, our findings contribute to the broader relevance of such models in infectious disease research. They shed light on the changing interplay between host and pathogen, driving us closer to more effective strategies for managing infectious diseases.</p></div><div><h3>Significance of the study</h3><p>This study highlights a decreasing trend in median plasma viral loads among ART-naïve individuals living with HIV in Mexico City between 2019 and 2021. It uncovers various predictors significantly correlated with pVL, shedding light on the complex interplay between host-virus interactions and disease progression. By employing a random-slopes model, the researchers move beyond traditional fixed-effects models to better capture dynamic correlations and evolutionary changes in HIV dynamics. The discovery of a stronger negative correlation between pVL and CpG content in HIV-pol sequences suggests potential changes in the immune landscape and innate immune responses, opening avenues for further research into adaptive changes and responses to environmental shifts in the context of HIV infection. The study's emphasis on molecular characteristics as predictors of pVL adds valuable insights to epidemiological and evolutionary studies of viruses, providing new avenues for understanding and managing HIV infection at the population level.</p></div>","PeriodicalId":49206,"journal":{"name":"Epidemics","volume":"47 ","pages":"Article 100770"},"PeriodicalIF":3.0000,"publicationDate":"2024-05-14","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.sciencedirect.com/science/article/pii/S1755436524000318/pdfft?md5=5d45e05c3ae78c8e05108ba6aded0c72&pid=1-s2.0-S1755436524000318-main.pdf","citationCount":"0","resultStr":"{\"title\":\"Unveiling ecological/evolutionary insights in HIV viral load dynamics: Allowing random slopes to observe correlational changes to CpG-contents and other molecular and clinical predictors\",\"authors\":\"Rocío Carrasco-Hernández , Humberto Valenzuela-Ponce , Maribel Soto-Nava , Claudia García-Morales , Margarita Matías-Florentino , Joel O. 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We identified how these functional slope changes (i.e. random slopes by year) improved predictions of the observed pVL median changes between 2019 and 2021, leading us to hypothesize underlying ecological and evolutionary factors. Our analysis involved a dataset of pVL values from 7325 ART-naïve individuals living with HIV, accompanied by their associated clinical and viral molecular predictors. A conventional fixed-effects linear model revealed significant correlations between pVL and predictors that evolved over time. However, this fixed-effects model could not fully explain the reduction in median pVL; thus, prompting us to adopt random-effects models. After applying a random effects regression model—with random slopes and intercepts by year—, we observed potential \\\"functional changes\\\" within the local HIV viral population, highlighting the importance of ecological and evolutionary considerations in HIV dynamics: A notably stronger negative correlation emerged between HIV pVL and the CpG content in the <em>pol</em> gene, suggesting a changing immune landscape influenced by CpG-induced innate immune responses that could impact viral load dynamics. Our study underscores the significance of random effects models in capturing dynamic correlations and the crucial role of molecular characteristics like CpG content. By enriching our understanding of changing host-virus interactions and HIV progression, our findings contribute to the broader relevance of such models in infectious disease research. They shed light on the changing interplay between host and pathogen, driving us closer to more effective strategies for managing infectious diseases.</p></div><div><h3>Significance of the study</h3><p>This study highlights a decreasing trend in median plasma viral loads among ART-naïve individuals living with HIV in Mexico City between 2019 and 2021. It uncovers various predictors significantly correlated with pVL, shedding light on the complex interplay between host-virus interactions and disease progression. By employing a random-slopes model, the researchers move beyond traditional fixed-effects models to better capture dynamic correlations and evolutionary changes in HIV dynamics. 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引用次数: 0
摘要
在传染病方面,不断变化的宿主种群和病毒生物学之间的动态相互作用要求采用比普通固定相关性更灵活的建模方法。采用随机效应回归模型可以细致入微地了解复杂现象背后错综复杂的生态和进化动态,为疾病的发展和传播模式提供有价值的见解。在这篇文章中,我们采用随机效应回归来模拟墨西哥城艾滋病毒感染者在 2019-2021 年期间观察到的血浆病毒载量(pVL)中位数下降的情况。我们确定了这些功能斜率变化(即按年份划分的随机斜率)如何改善了对 2019 年至 2021 年期间观察到的 pVL 中位数变化的预测,从而提出了潜在生态和进化因素的假设。我们的分析涉及 7325 名抗逆转录病毒疗法无效的艾滋病毒感染者的 pVL 值数据集及其相关的临床和病毒分子预测因子。传统的固定效应线性模型显示 pVL 与随时间演变的预测因子之间存在显著的相关性。然而,这种固定效应模型无法完全解释中位 pVL 的下降,因此促使我们采用随机效应模型。在应用随机效应回归模型--按年份设置随机斜率和截距--后,我们观察到了当地 HIV 病毒种群中潜在的 "功能变化",突出了生态和进化因素在 HIV 动态变化中的重要性:HIV pVL 与 pol 基因中的 CpG 含量之间出现了明显更强的负相关,这表明受 CpG 诱导的先天性免疫反应影响,免疫环境正在发生变化,这可能会影响病毒载量的动态变化。我们的研究强调了随机效应模型在捕捉动态相关性方面的重要性,以及 CpG 含量等分子特征的关键作用。我们的研究结果丰富了我们对不断变化的宿主-病毒相互作用和艾滋病进展的理解,有助于此类模型在传染病研究中发挥更广泛的作用。它们揭示了宿主与病原体之间不断变化的相互作用,使我们更接近管理传染病的更有效策略。研究意义:本研究强调了 2019 年至 2021 年期间墨西哥城抗逆转录病毒疗法无效的艾滋病毒感染者血浆病毒载量中位数的下降趋势。它揭示了与 pVL 显著相关的各种预测因素,揭示了宿主-病毒相互作用和疾病进展之间复杂的相互作用。通过采用随机斜率模型,研究人员超越了传统的固定效应模型,更好地捕捉到了艾滋病毒动态变化中的动态相关性和进化变化。在 HIV-pol 序列中发现 pVL 与 CpG 含量之间存在更强的负相关,这表明免疫环境和先天免疫反应可能发生变化,为进一步研究 HIV 感染环境变化的适应性变化和反应开辟了途径。该研究强调分子特征是 pVL 的预测因素,这为病毒的流行病学和进化研究增添了宝贵的见解,为在人群水平上了解和管理 HIV 感染提供了新的途径。
Unveiling ecological/evolutionary insights in HIV viral load dynamics: Allowing random slopes to observe correlational changes to CpG-contents and other molecular and clinical predictors
In the context of infectious diseases, the dynamic interplay between ever-changing host populations and viral biology demands a more flexible modeling approach than common fixed correlations. Embracing random-effects regression models allows for a nuanced understanding of the intricate ecological and evolutionary dynamics underlying complex phenomena, offering valuable insights into disease progression and transmission patterns. In this article, we employed a random-effects regression to model an observed decreasing median plasma viral load (pVL) among individuals with HIV in Mexico City during 2019–2021. We identified how these functional slope changes (i.e. random slopes by year) improved predictions of the observed pVL median changes between 2019 and 2021, leading us to hypothesize underlying ecological and evolutionary factors. Our analysis involved a dataset of pVL values from 7325 ART-naïve individuals living with HIV, accompanied by their associated clinical and viral molecular predictors. A conventional fixed-effects linear model revealed significant correlations between pVL and predictors that evolved over time. However, this fixed-effects model could not fully explain the reduction in median pVL; thus, prompting us to adopt random-effects models. After applying a random effects regression model—with random slopes and intercepts by year—, we observed potential "functional changes" within the local HIV viral population, highlighting the importance of ecological and evolutionary considerations in HIV dynamics: A notably stronger negative correlation emerged between HIV pVL and the CpG content in the pol gene, suggesting a changing immune landscape influenced by CpG-induced innate immune responses that could impact viral load dynamics. Our study underscores the significance of random effects models in capturing dynamic correlations and the crucial role of molecular characteristics like CpG content. By enriching our understanding of changing host-virus interactions and HIV progression, our findings contribute to the broader relevance of such models in infectious disease research. They shed light on the changing interplay between host and pathogen, driving us closer to more effective strategies for managing infectious diseases.
Significance of the study
This study highlights a decreasing trend in median plasma viral loads among ART-naïve individuals living with HIV in Mexico City between 2019 and 2021. It uncovers various predictors significantly correlated with pVL, shedding light on the complex interplay between host-virus interactions and disease progression. By employing a random-slopes model, the researchers move beyond traditional fixed-effects models to better capture dynamic correlations and evolutionary changes in HIV dynamics. The discovery of a stronger negative correlation between pVL and CpG content in HIV-pol sequences suggests potential changes in the immune landscape and innate immune responses, opening avenues for further research into adaptive changes and responses to environmental shifts in the context of HIV infection. The study's emphasis on molecular characteristics as predictors of pVL adds valuable insights to epidemiological and evolutionary studies of viruses, providing new avenues for understanding and managing HIV infection at the population level.
期刊介绍:
Epidemics publishes papers on infectious disease dynamics in the broadest sense. Its scope covers both within-host dynamics of infectious agents and dynamics at the population level, particularly the interaction between the two. Areas of emphasis include: spread, transmission, persistence, implications and population dynamics of infectious diseases; population and public health as well as policy aspects of control and prevention; dynamics at the individual level; interaction with the environment, ecology and evolution of infectious diseases, as well as population genetics of infectious agents.