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Comparison of machine learning methods for predicting viral failure: a case study using electronic health record data. 比较预测病毒失败的机器学习方法:使用电子健康记录数据的案例研究。
Pub Date : 2020-11-12 eCollection Date: 2020-09-01 DOI: 10.1515/scid-2019-0017
Allan Kimaina, Jonathan Dick, Allison DeLong, Stavroula A Chrysanthopoulou, Rami Kantor, Joseph W Hogan

Background: Human immunodeficiency virus (HIV) viral failure occurs when antiretroviral therapy fails to suppress and sustain a person's viral load count below 1,000 copies of viral ribonucleic acid per milliliter. For those newly diagnosed with HIV and living in a setting where healthcare resources are limited, such as a low- and middle-income country, the World Health Organization recommends viral load monitoring six months after initiation of antiretroviral treatment and yearly thereafter. Deviations from this schedule are made in cases where viral failure occurs or at the discretion of the clinician. Failure to detect viral failure in a timely fashion can lead to delayed administration of essential interventions. Clinical prediction models based on information available in the patient medical record are increasingly being developed and deployed for decision support in clinical medicine and public health. This raises the possibility that prediction models can be used to detect potential for viral failure in advance of viral measurements, particularly when those measurements occur infrequently.

Objective: Our goal is to use electronic health record data from a large HIV care program in Kenya to characterize and compare the predictive accuracy of several statistical machine learning methods for predicting viral failure at the first and second measurements following initiation of antiretroviral therapy. Predictive accuracy is measured in terms of sensitivity, specificity and area under the receiver-operator characteristic curve.

Methods: We trained and cross-validated 10 statistical machine learning models and algorithms on data from over 10,000 patients in the Academic Model Providing Access to Healthcare care program in western Kenya. These included parametric, non-parametric, ensemble, and Bayesian methods. The input variables included 50 items from the clinical record, hand picked in consultation with clinician experts. Predictive accuracy measures were calculated using 10-fold cross validation.

Results: Viral load failure rate is about 20% in this patient cohort at both the first and second measurements. Ensemble techniques generally outperformed other methods. For predicting viral failure at the first follow up measure, specificity was over 90% for these methods, but sensitivity was typically in the 50-60% range. Predictive accuracy was greater for the second follow up measure, with sensitivities over 80%. Super Learner, gradient boosting and Bayesian additive regression trees consistently outperformed other methods. For a viral failure rate of 20%, the positive predictive value for the top-performing methods is between 75 and 85%, while the negative predictive value is over 95%.

Conclusion: Evidence from this study suggests that machine learning techniques have potential to identify patients at risk for viral failure prior to the

背景:当抗逆转录病毒疗法不能抑制和维持患者的病毒载量低于每毫升 1,000 拷贝病毒核糖核酸时,就会出现人体免疫缺陷病毒(HIV)病毒失效。对于那些新诊断出的艾滋病毒感染者和生活在医疗资源有限的环境中(如中低收入国家)的人,世界卫生组织建议在开始抗逆转录病毒治疗六个月后进行病毒载量监测,此后每年监测一次。在出现病毒衰竭的情况下,或由临床医生酌情决定是否偏离这一时间表。如果不能及时发现病毒衰竭,就可能导致延迟实施必要的干预措施。基于患者病历信息的临床预测模型正被越来越多地开发和应用于临床医学和公共卫生领域的决策支持。这就提出了一种可能性,即预测模型可用于在病毒测量之前检测出病毒失效的可能性,尤其是在病毒测量并不频繁进行的情况下:我们的目标是利用肯尼亚一个大型艾滋病护理项目的电子健康记录数据,描述并比较几种统计机器学习方法的预测准确性,以预测开始抗逆转录病毒疗法后第一次和第二次测量时的病毒失败。预测准确性以灵敏度、特异性和接收者-操作者特征曲线下的面积来衡量:我们对肯尼亚西部 "提供医疗保健服务学术模式 "项目中 10,000 多名患者的数据进行了训练,并交叉验证了 10 种统计机器学习模型和算法。其中包括参数、非参数、集合和贝叶斯方法。输入变量包括临床记录中的 50 个项目,这些项目都是在咨询临床专家后亲自挑选的。预测准确度是通过 10 倍交叉验证计算得出的:结果:在该患者群中,第一次和第二次测量的病毒载量失败率约为 20%。组合技术的表现普遍优于其他方法。在预测第一次随访测量的病毒失败时,这些方法的特异性超过 90%,但灵敏度通常在 50-60% 之间。第二次随访测量的预测准确性更高,灵敏度超过 80%。超级学习器、梯度提升和贝叶斯加性回归树的表现始终优于其他方法。在病毒失败率为 20% 的情况下,表现最好的方法的阳性预测值在 75% 到 85% 之间,而阴性预测值则超过 95%:本研究的证据表明,机器学习技术有可能在预定测量之前识别出有病毒失败风险的患者。最终,预后病毒学评估可帮助指导采取更早的针对性干预措施,如加强耐药性监测、严格的依从性咨询或适当的下线疗法转换。应利用外部验证研究来确认本文的结果。
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引用次数: 0
Joint modeling of time-varying HIV exposure and infection for estimation of per-act efficacy in HIV prevention trials. 时变HIV暴露和感染的联合建模,用于估计HIV预防试验中每个行为的有效性。
Pub Date : 2020-09-01 Epub Date: 2020-09-24 DOI: 10.1515/scid-2019-0016
Elizabeth R Brown, Clara P Dominguez Islas, Jingyang Zhang

Objectives: Using the MTN-020/ASPIRE HIV prevention trial as a motivating example, our objective is to construct a joint model for the HIV exposure process through vaginal intercourse and the time to HIV infection in a population of sexually active women. By modeling participants' HIV infection in terms of exposures, rather than time exposed, our aim is to obtain a valid estimate of the per-act efficacy of a preventive intervention.

Methods: Within the context of HIV prevention trials, in which the frequency of sex acts is self-reported periodically by the participants, we model the exposure process of the trial participants with a non-homogeneous Poisson process. This approach allows for variability in the rate of sexual contacts between participants as well as variability in the rate of sexual contacts over time. The time to HIV infection for each participant is modeled as the time to the exposure that results in HIV infection, based on the modeled sexual contact rate. We propose an empirical Bayes approach for estimation.

Results: We report the results of a simulation study where we evaluate the performance of our proposed approachandcompareittothetraditionalapproachofestimatingtheoverallreductioninHIVincidenceusing a Proportional Hazards Cox model. The proposed approach is also illustrated with data from the MTN-020/ASPIRE trial.

Conclusions: The proposed joint modeling, along with the proposed empirical Bayes estimation approach, can provide valid estimation of the per-exposure efficacy of a preventive intervention.

目的:以MTN-020/ASPIRE艾滋病毒预防试验为例,我们的目标是建立一个联合模型,研究性活跃妇女通过阴道性交接触艾滋病毒的过程和感染艾滋病毒的时间。通过根据暴露而不是暴露时间对参与者的艾滋病毒感染进行建模,我们的目标是获得对预防性干预的每行为功效的有效估计。方法:在艾滋病毒预防试验的背景下,参与者定期自我报告性行为的频率,我们用非均匀泊松过程来模拟试验参与者的暴露过程。这种方法考虑了参与者之间性接触率的可变性,以及性接触率随时间的可变性。根据模拟的性接触率,每个参与者感染艾滋病毒的时间被建模为导致艾滋病毒感染的暴露时间。我们提出了一种经验贝叶斯估计方法。结果:我们报告了一项模拟研究的结果,在该研究中,我们评估了我们提出的方法的性能,并使用比例风险Cox模型与传统方法进行了比较,以估计总体降低的发病率。MTN-020/ASPIRE试验的数据也说明了所提出的方法。结论:所提出的联合建模,以及所提出的经验贝叶斯估计方法,可以有效地估计预防干预的每次暴露效果。
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引用次数: 0
Pre-selected class-level testing of longitudinal biomarkers reduces required multiple testing corrections to yield novel insights in longitudinal small sample human studies. 纵向生物标志物的预选类水平测试减少了在纵向小样本人类研究中产生新见解所需的多次测试更正。
Pub Date : 2020-09-01 DOI: 10.1515/scid-2019-0018
Andrea S Foulkes, Livio Azzoni, Luis J Montaner

Objectives: Exploratory studies that aim to evaluate novel therapeutic strategies in human cohorts often involve the collection of hundreds of variables measured over time on a small sample of individuals. Stringent error control for testing hypotheses in this setting renders it difficult to identify statistically signification associations. The objective of this study is to demonstrate how leveraging prior information about the biological relationships among variables can increase power for novel discovery.

Methods: We apply the class level association score statistic for longitudinal data (CLASS-LD) as an analysis strategy that complements single variable tests. An example is presented that aims to evaluate the relationships among 14 T-cell and monocyte activation variables measured with CD4 T-cell count over three time points after antiretroviral therapy (n=62).

Results: CLASS-LD using three classes with emphasis on T-cell activation with either classical vs. intermediate/inflammatory monocyte subsets detected associations in two of three classes, while single variable testing detected only one out of the 14 variables considered.

Conclusions: Application of a class-level testing strategy provides an alternative to single immune variables by defining hypotheses based on a collection of variables that share a known underlying biological relationship. Broader use of class-level analysis is expected to increase the available information that can be derived from limited sample clinical studies.

目的:旨在评估人类群体新治疗策略的探索性研究通常涉及收集数百个变量,这些变量随时间在一小部分个体样本上测量。在这种情况下,严格的误差控制测试假设使得很难识别统计意义关联。本研究的目的是证明如何利用关于变量之间生物关系的先验信息可以增加新发现的能力。方法:我们采用纵向数据的类水平关联评分统计(class - ld)作为单变量检验的补充分析策略。本文提出了一个例子,旨在评估抗逆转录病毒治疗后三个时间点上用CD4 t细胞计数测量的14个t细胞和单核细胞活化变量之间的关系(n=62)。结果:CLASS-LD使用三个类别,强调t细胞激活,无论是经典的还是中间/炎症的单核细胞亚群,在三个类别中检测到两个关联,而单变量测试只检测到14个变量中的一个。结论:类水平测试策略的应用提供了一种替代单一免疫变量的方法,该方法基于共享已知潜在生物学关系的变量集合定义假设。类水平分析的广泛使用有望增加可从有限样本临床研究中获得的可用信息。
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引用次数: 0
Challenges in evaluating the use of viral sequence data to identify HIV transmission networks for public health. 评估利用病毒序列数据确定艾滋病毒传播网络以促进公共卫生方面的挑战。
Pub Date : 2020-09-01 Epub Date: 2020-11-11 DOI: 10.1515/scid-2019-0019
Rami Kantor, John P Fulton, Jon Steingrimsson, Vladimir Novitsky, Mark Howison, Fizza Gillani, Yuanning Li, Akarsh Manne, Zoanne Parillo, Matthew Spence, Theodore Marak, Philip Chan, Casey W Dunn, Thomas Bertrand, Utpala Bandy, Nicole Alexander-Scott, Joseph W Hogan

Great efforts are devoted to end the HIV epidemic as it continues to have profound public health consequences in the United States and throughout the world, and new interventions and strategies are continuously needed. The use of HIV sequence data to infer transmission networks holds much promise to direct public heath interventions where they are most needed. As these new methods are being implemented, evaluating their benefits is essential. In this paper, we recognize challenges associated with such evaluation, and make the case that overcoming these challenges is key to the use of HIV sequence data in routine public health actions to disrupt HIV transmission networks.

由于艾滋病毒继续对美国和全世界的公共卫生产生深远的影响,人们为结束艾滋病毒流行病作出了巨大努力,并且不断需要新的干预措施和战略。利用艾滋病毒序列数据推断传播网络很有希望在最需要的地方指导公共卫生干预。随着这些新方法的实施,评估其效益是至关重要的。在本文中,我们认识到与此类评估相关的挑战,并提出克服这些挑战是在常规公共卫生行动中使用艾滋病毒序列数据以破坏艾滋病毒传播网络的关键。
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引用次数: 0
Errors in multiple variables in human immunodeficiency virus (HIV) cohort and electronic health record data: statistical challenges and opportunities. 人类免疫缺陷病毒(HIV)队列和电子健康记录数据中多变量误差:统计挑战和机遇。
Pub Date : 2020-09-01 DOI: 10.1515/scid-2019-0015
Bryan E Shepherd, Pamela A Shaw

Objectives: Observational data derived from patient electronic health records (EHR) data are increasingly used for human immunodeficiency virus/acquired immunodeficiency syndrome (HIV/AIDS) research. There are challenges to using these data, in particular with regards to data quality; some are recognized, some unrecognized, and some recognized but ignored. There are great opportunities for the statistical community to improve inference by incorporating validation subsampling into analyses of EHR data.Methods: Methods to address measurement error, misclassification, and missing data are relevant, as are sampling designs such as two-phase sampling. However, many of the existing statistical methods for measurement error, for example, only address relatively simple settings, whereas the errors seen in these datasets span multiple variables (both predictors and outcomes), are correlated, and even affect who is included in the study.Results/Conclusion: We will discuss some preliminary methods in this area with a particular focus on time-to-event outcomes and outline areas of future research.

目的:来自患者电子健康记录(EHR)数据的观察性数据越来越多地用于人类免疫缺陷病毒/获得性免疫缺陷综合症(艾滋病毒/艾滋病)的研究。使用这些数据存在挑战,特别是在数据质量方面;有些被认可,有些未被认可,还有一些被认可但被忽视。统计界有很大的机会通过将验证子抽样纳入EHR数据分析来改进推理。方法:解决测量误差、错误分类和缺失数据的方法是相关的,抽样设计如两阶段抽样也是相关的。然而,许多现有的测量误差的统计方法,例如,只处理相对简单的设置,而在这些数据集中看到的误差跨越多个变量(预测因子和结果),是相关的,甚至影响谁被纳入研究。结果/结论:我们将讨论这一领域的一些初步方法,特别关注事件时间结果,并概述未来研究的领域。
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引用次数: 1
Forward 向前
Pub Date : 2020-09-01 DOI: 10.1515/scid-2020-0010
Misrak Gezmu, C. Liang
Over the last three decades, statisticians and mathematical modelers have played a role in advancing the HIV/AIDS research byworking closelywith clinicians, experimentalists, subject matter area researchers and computer scientists. Their contributions include developingmathematical models to study the pathogenesis of the virus and to develop statistical methods for the design and analysis of HIV/AIDS therapeutics and vaccine clinical trials. This issue of Statistical Communication in Infectious Diseases contains papers from a workshop conducted by the National Institute of Allergy and Infectious Diseases (NIAID), National Institutes of Health (NIH) on 23 March 2019 in Philadelphia, PA. The title of the workshop was “Statistical Challenges and Opportunities in HIV/AIDS Research in the Era of Getting-to-Zero HIV infections” The workshop was conducted as a pre-conference workshop at the Eastern North American Region (ENAR) of the International Biometric Society (IBS) 2019 conference. The purpose of the workshop was to bring together statisticians and subject matter area researchers working in HIV–AIDS research to: highlight current topics in HIV/AIDS Research with novel statistical challenges, to galvanize methodological research in priority areas in HIV–AIDS research and foster collaborations between statisticians in these priority areas, and to identify opportunities to strengthen collaborations internationally-particularly where input from statisticians may be most needed. The workshop participants were, mathematicians, statisticians, subject matter area researchers and computer scientists. At the end of the workshop, a panel discussion was conducted to encourage interaction between statisticians and subject matter area researchers. The discussion and the oral presentations showed that the advances in research will occur most productively when quantitative methods researchers are working in multidisciplinary teams with subject matter researchers and computer scientists. The eight papers in this issue cover a range of topics in HIV/AIDS research. Below are the summaries of the eight papers. Foulkes et al. demonstrate how leveraging prior information about the biological relationships among variables can increase power for novel discovery. They illustrated that application of a class-level testing strategy provides an alternative to single immune variables by defining hypotheses based on a collection of variables that share a known underlying biological relationship. Brown et al. propose joint modeling, along with the proposed empirical Bayes estimation approach that can provide valid estimation of the per-exposure efficacy of a preventive intervention. The proposed approach is illustrated with data from a simulation study and from the MTN-020/ASPIRE trial. Bing et al. compare empirical and dynamicmodels for HIV viral load rebound after treatment interruption. They apply and compare the two modeling approaches in analysis of data from 346 participa
在过去的三十年中,统计学家和数学建模者通过与临床医生、实验学家、主题领域研究人员和计算机科学家密切合作,在推进艾滋病毒/艾滋病研究方面发挥了作用。他们的贡献包括开发数学模型来研究病毒的发病机制,并开发用于设计和分析艾滋病毒/艾滋病治疗方法和疫苗临床试验的统计方法。本期《传染病统计传播》包含了2019年3月23日在宾夕法尼亚州费城由美国国立卫生研究院(NIH)国家过敏和传染病研究所(NIAID)举办的研讨会上的论文。研讨会的题目是“在实现零艾滋病毒感染的时代,艾滋病毒/艾滋病研究中的统计挑战和机遇”,该研讨会是作为国际生物识别学会(IBS) 2019年会议北美东部地区(ENAR)的会前研讨会进行的。讲习班的目的是使从事艾滋病毒/艾滋病研究的统计学家和专题领域的研究人员聚集在一起,以便:以新的统计挑战突出当前艾滋病毒/艾滋病研究中的主题,激励艾滋病毒/艾滋病研究优先领域的方法学研究,促进这些优先领域统计学家之间的合作,并确定加强国际合作的机会-特别是在最需要统计学家投入的地方。讲习班的参加者有数学家、统计学家、主题领域研究人员和计算机科学家。在讲习班结束时,进行了一次小组讨论,以鼓励统计学家和主题领域研究人员之间的互动。讨论和口头报告表明,当定量方法研究人员与主题研究人员和计算机科学家在多学科团队中合作时,研究的进展将最富有成效。本期的八篇论文涵盖了艾滋病毒/艾滋病研究的一系列主题。以下是八篇论文的摘要。Foulkes等人展示了如何利用关于变量之间生物关系的先验信息来增加新发现的力量。他们说明,类水平测试策略的应用提供了单一免疫变量的替代方案,通过定义基于共享已知潜在生物学关系的变量集合的假设。Brown等人提出了联合建模,并提出了经验贝叶斯估计方法,该方法可以有效地估计预防干预的每次暴露效果。通过模拟研究和MTN-020/ASPIRE试验的数据说明了所提出的方法。Bing等人比较了治疗中断后HIV病毒载量反弹的经验模型和动态模型。他们应用并比较了这两种建模方法,分析了来自6个艾滋病临床试验组研究的346名参与者的数据。尽管基于不同的假设,但他们证明,两种模型都得出了关于病毒反弹过程特征的相似结论。Kimaina等人比较了预测病毒失败的机器学习技术。他们的目标是利用肯尼亚一个大型艾滋病毒护理项目的电子健康记录数据来描述和比较这些项目
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引用次数: 0
A semiparametric method for the analysis of outcomes during a gap in HIV care under incomplete outcome ascertainment. 在不完全结果确定的情况下,一种半参数方法分析HIV护理缺口期间的结果。
Pub Date : 2020-09-01 DOI: 10.1515/scid-2019-0013
Giorgos Bakoyannis, Lameck Diero, Ann Mwangi, Kara K Wools-Kaloustian, Constantin T Yiannoutsos

Objectives: Estimation of the cascade of HIV care is essential for evaluating care and treatment programs, informing policy makers and assessing targets such as 90-90-90. A challenge to estimating the cascade based on electronic health record concerns patients "churning" in and out of care. Correctly estimating this dynamic phenomenon in resource-limited settings, such as those found in sub-Saharan Africa, is challenging because of the significant death under-reporting. An approach to partially recover information on the unobserved deaths is a double-sampling design, where a small subset of individuals with a missed clinic visit is intensively outreached in the community to actively ascertain their vital status. This approach has been adopted in several programs within the East Africa regional IeDEA consortium, the context of our motivating study. The objective of this paper is to propose a semiparametric method for the analysis of competing risks data with incomplete outcome ascertainment.

Methods: Based on data from double-sampling designs, we propose a semiparametric inverse probability weighted estimator of key outcomes during a gap in care, which are crucial pieces of the care cascade puzzle.

Results: Simulation studies suggest that the proposed estimators provide valid estimates in settings with incomplete outcome ascertainment under a set of realistic assumptions. These studies also illustrate that a naïve complete-case analysis can provide seriously biased estimates. The methodology is applied to electronic health record data from the East Africa IeDEA Consortium to estimate death and return to care during a gap in care.

Conclusions: The proposed methodology provides a robust approach for valid inferences about return to care and death during a gap in care, in settings with death under-reporting. Ultimately, the resulting estimates will have significant consequences on program construction, resource allocation, policy and decision making at the highest levels.

目的:对艾滋病毒护理级联的估计对于评估护理和治疗方案、为决策者提供信息和评估诸如90-90-90等目标至关重要。基于电子健康记录估计级联的一个挑战涉及到病人“频繁”进出护理。在资源有限的情况下,如在撒哈拉以南非洲,正确估计这一动态现象是具有挑战性的,因为死亡人数严重漏报。部分恢复未观察到的死亡信息的一种方法是双重抽样设计,即在社区中集中外展错过诊所就诊的一小部分个人,以积极确定他们的生命状况。这种方法已经在东非区域IeDEA联盟的几个项目中被采用,这是我们的激励研究的背景。本文的目的是提出一种具有不完全结果确定的竞争风险数据的半参数分析方法。方法:基于双抽样设计的数据,我们提出了一个半参数反概率加权估计在护理间隙期间的关键结果,这是护理级联谜题的关键部分。结果:模拟研究表明,在一组现实假设下,在不完全确定结果的情况下,所提出的估计器提供了有效的估计。这些研究还表明,naïve完整案例分析可能会提供严重偏颇的估计。该方法应用于东非IeDEA联盟的电子健康记录数据,以估计在护理空白期间的死亡和重返护理。结论:所提出的方法提供了一种强有力的方法,可以有效推断在护理空白期间,在死亡低报的情况下,重返护理和死亡的情况。最终,结果评估将对最高级别的规划构建、资源分配、政策和决策制定产生重要影响。
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引用次数: 1
Comparison of empirical and dynamic models for HIV viral load rebound after treatment interruption. 治疗中断后艾滋病毒病毒载量反弹的经验模型和动态模型比较。
Pub Date : 2020-01-01 Epub Date: 2020-08-21 DOI: 10.1515/scid-2019-0021
Ante Bing, Yuchen Hu, Melanie Prague, Alison L Hill, Jonathan Z Li, Ronald J Bosch, Victor De Gruttola, Rui Wang

Objective: To compare empirical and mechanistic modeling approaches for describing HIV-1 RNA viral load trajectories after antiretroviral treatment interruption and for identifying factors that predict features of viral rebound process.

Methods: We apply and compare two modeling approaches in analysis of data from 346 participants in six AIDS Clinical Trial Group studies. From each separate analysis, we identify predictors for viral set points and delay in rebound. Our empirical model postulates a parametric functional form whose parameters represent different features of the viral rebound process, such as rate of rise and viral load set point. The viral dynamics model augments standard HIV dynamics models-a class of mathematical models based on differential equations describing biological mechanisms-by including reactivation of latently infected cells and adaptive immune response. We use Monolix, which makes use of a Stochastic Approximation of the Expectation-Maximization algorithm, to fit non-linear mixed effects models incorporating observations that were below the assay limit of quantification.

Results: Among the 346 participants, the median age at treatment interruption was 42. Ninety-three percent of participants were male and sixty-five percent, white non-Hispanic. Both models provided a reasonable fit to the data and can accommodate atypical viral load trajectories. The median set points obtained from two approaches were similar: 4.44 log10 copies/mL from the empirical model and 4.59 log10 copies/mL from the viral dynamics model. Both models revealed that higher nadir CD4 cell counts and ART initiation during acute/recent phase were associated with lower viral set points and identified receiving a non-nucleoside reverse transcriptase inhibitor (NNRTI)-based pre-ATI regimen as a predictor for a delay in rebound.

Conclusion: Although based on different sets of assumptions, both models lead to similar conclusions regarding features of viral rebound process.

目的:比较经验建模法和机理建模法,以描述抗逆转录病毒治疗中断后 HIV-1 RNA 病毒载量的变化轨迹,并确定预测病毒反弹过程特征的因素:我们在分析六项艾滋病临床试验组研究中 346 名参与者的数据时,采用并比较了两种建模方法。从每项单独的分析中,我们确定了病毒设定点和反弹延迟的预测因素。我们的经验模型假设了一种参数函数形式,其参数代表了病毒反弹过程的不同特征,如上升速度和病毒载量设定点。病毒动力学模型通过将潜伏感染细胞的再活化和适应性免疫反应包括在内,增强了标准的 HIV 动力学模型--一类基于描述生物机制的微分方程的数学模型。我们使用了Monolix,它采用了期望最大化随机逼近算法,拟合了非线性混合效应模型,其中包含了低于检测定量限的观察结果:在 346 名参与者中,中断治疗时的中位年龄为 42 岁。93%的参与者为男性,65%为非西班牙裔白人。两种模型都能合理拟合数据,并能适应非典型病毒载量轨迹。两种方法得出的设定点中位数相似:经验模型得出的设定点中位数为 4.44 log10 copies/mL,病毒动态模型得出的设定点中位数为 4.59 log10 copies/mL。两种模型都显示,较高的 CD4 细胞计数和在急性期/新发期开始抗逆转录病毒疗法与较低的病毒载定点有关,并确定接受非核苷类逆转录酶抑制剂(NNRTI)为基础的前抗逆转录病毒疗法是推迟反弹的预测因素:结论:尽管两种模型基于不同的假设,但就病毒反弹过程的特征得出了相似的结论。
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引用次数: 0
Accounting for Informative Sampling in Estimation of Associations between Sexually Transmitted Infections and Hormonal Contraceptive Methods. 估计性传播感染与激素避孕方法之间关系的信息抽样核算。
Pub Date : 2020-01-01 DOI: 10.1515/scid-2019-0010
Anu Mishra, Petra Buzkova, Jennifer E Balkus, Elizabeth R Brown

The relationship between hormonal contraceptive method use and sexually transmitted infections (STIs) is not well understood. Studies that implement routine screening for STIs among different contraceptive users, such as the ASPIRE HIV-1 prevention trial, can be useful for identifying potential risk factors of STIs. However, the complex nature of non-random data can lead to challenges in estimation of associations for potential risk factors. In particular, if screening for the disease is not random (i.e. it is driven by symptoms or other clinical indicators), estimates of association can suffer from bias, often referred to as informative sampling bias. Time-varying predictors and potential stratification variables can further contribute to difficulty in obtaining unbiased estimates. In this paper, we estimate the association between time-varying contraceptive use and STI acquisition, in the presence of informative sampling, by extending the work Buzkova (2010). We use a two-step procedure to jointly model the non-random screening process and sexually transmitted infection risk. In the first step, inverse intensity rate ratios (IIRR) weights are estimated. In the second step, a weighted proportional rate model is fit to estimate the IIRR weighted hazard ratio. We apply the method to evaluate the relationship between hormonal contraception and risk of sexually transmitted infections among women participating in a biomedical HIV-1 prevention trial. We compare our results using the proposed weighted method to those generated using conventional approaches that do not account for potential informative sampling bias or do not use the full potential of the data. Using the IIRR weighted approach we found DMPA users have a significantly decreased hazard of T. vaginalis acquisition compared to IUD users (HR: 0.44, 95% CI: (0.25, 0.83)), which is consistent with the literature. We did not find significant increased or decreased hazard of other STIs for hormonal contraceptive users compared to non-hormonal IUD users.

激素避孕方法的使用与性传播感染(STIs)之间的关系尚不清楚。在不同避孕药具使用者中实施性传播感染常规筛查的研究,例如ASPIRE HIV-1预防试验,可有助于确定性传播感染的潜在危险因素。然而,非随机数据的复杂性会给潜在风险因素的关联估计带来挑战。特别是,如果疾病筛查不是随机的(即由症状或其他临床指标驱动),则关联估计可能存在偏差,通常称为信息抽样偏差。时变预测因子和潜在的分层变量可能进一步增加获得无偏估计的困难。在本文中,我们通过扩展Buzkova(2010)的工作,在信息抽样的情况下,估计时变避孕措施使用与性传播感染之间的关系。我们使用两步程序来共同模拟非随机筛选过程和性传播感染风险。在第一步中,估计逆强度率比(IIRR)权重。第二步,拟合加权比例率模型来估计IIRR加权风险比。我们应用该方法来评估激素避孕与参与HIV-1生物医学预防试验的妇女性传播感染风险之间的关系。我们将我们的结果与使用传统方法产生的结果进行比较,传统方法不考虑潜在的信息抽样偏差或不使用数据的全部潜力。使用IIRR加权方法,我们发现与宫内节育器使用者相比,DMPA使用者患阴道生殖道感染的风险显著降低(HR: 0.44, 95% CI:(0.25, 0.83)),这与文献一致。与非激素宫内节育器使用者相比,我们没有发现激素避孕药使用者的其他性传播感染风险显著增加或减少。
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引用次数: 4
Principal surrogates in context of high vaccine efficacy 高疫苗效力背景下的主要替代物
Pub Date : 2019-11-05 DOI: 10.21203/rs.2.16785/v1
A. Callegaro, F. Tibaldi, D. Follmann
Abstract Objectives The use of correlates of protection (CoPs) in vaccination trials offers significant advantages as useful clinical endpoint substitutes. Vaccines with very high vaccine efficacy (VE) are documented in the literature (95% or above). Callegaro, A., and F. Tibaldi. 2019. “Assessing Correlates of Protection in Vaccine Trials: Statistical Solutions in the Context of High Vaccine Efficacy.” BMC Medical Research Methodology 19: 47 showed that the rare infections observed in the vaccinated groups of these trials poses challenges when applying conventionally-used statistical methods for CoP assessment such as the Prentice criteria and meta-analysis. The objective of this work is to investigate the impact of this problem on another statistical method for the assessment of CoPs called Principal stratification. Methods We perform simulation experiments to investigate the effect of high vaccine efficacy on the performance of the Principal Stratification approach. Results Similarly to the Prentice framework, simulation results show that the power of the Principal Stratification approach decreases when the VE grows. Conclusions It can be challenging to validate principal surrogates (and statistical surrogates) for vaccines with very high vaccine efficacy.
目的在疫苗接种试验中使用相关保护(cop)作为有用的临床终点替代品具有显著的优势。文献记载了具有非常高疫苗效力(VE)的疫苗(95%或以上)。Callegaro, A.和F. Tibaldi. 2019。评估疫苗试验中保护的相关因素:高疫苗效力背景下的统计解决方案。BMC医学研究方法学19:47表明,在这些试验的接种疫苗组中观察到的罕见感染,在应用传统的统计方法(如Prentice标准和荟萃分析)进行CoP评估时提出了挑战。这项工作的目的是调查这个问题对评估cop的另一种统计方法的影响,称为主要分层。方法通过模拟实验研究高疫苗效力对主分层方法性能的影响。结果与普伦蒂斯框架相似,仿真结果表明,随着VE的增大,主分层方法的功率减小。结论验证具有很高疫苗效力的疫苗的主要替代物(和统计替代物)可能具有挑战性。
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引用次数: 0
期刊
Statistical communications in infectious diseases
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