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Nonparametric Bayesian Adjustment of Unmeasured Confounders in Cox Proportional Hazards Models. Cox比例风险模型中未测量混杂因素的非参数贝叶斯调整。
IF 1.8 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Pub Date : 2026-01-01 DOI: 10.1002/sim.70360
Shunichiro Orihara, Shonosuke Sugasawa, Tomohiro Ohigashi, Keita Hirano, Tomoyuki Nakagawa, Masataka Taguri

Unmeasured confounders pose a major challenge in accurately estimating causal effects in observational studies. To address this issue when estimating hazard ratios (HRs) using Cox proportional hazards models, several methods, including instrumental variables (IVs) approaches, have been proposed. However, these methods often face limitations, such as weak IV problems and restrictive assumptions regarding unmeasured confounder distributions. In this study, we introduce a novel nonparametric Bayesian procedure that provides accurate HR estimates while addressing these limitations. A key assumption of our approach is that unmeasured confounders exhibit a cluster structure. Under this assumption, we integrate two remarkable Bayesian techniques, the Dirichlet process mixture (DPM) and general Bayes (GB), to simultaneously (1) detect latent clusters based on the likelihood of exposure and outcome variables and (2) estimate HRs using the likelihood constructed within each cluster. Notably, leveraging DPM, our procedure eliminates the need for IVs by identifying unmeasured confounders under an alternative condition. Additionally, GB techniques remove the need for explicit modeling of the baseline hazard function, distinguishing our procedure from traditional Bayesian approaches. Simulation experiments demonstrate that the proposed Bayesian procedure outperforms existing methods in some performance metrics. Moreover, it achieves statistical efficiency comparable to the efficient estimator while accurately identifying cluster structures. These features highlight its ability to overcome challenges associated with traditional IV approaches for time-to-event data.

在观察性研究中,未测量的混杂因素对准确估计因果效应提出了重大挑战。为了在使用Cox比例风险模型估计风险比(hr)时解决这一问题,已经提出了几种方法,包括工具变量(IVs)方法。然而,这些方法往往面临局限性,如弱IV问题和关于未测量混杂分布的限制性假设。在这项研究中,我们引入了一种新的非参数贝叶斯过程,在解决这些限制的同时提供准确的人力资源估计。我们方法的一个关键假设是,未测量的混杂因素表现出群集结构。在此假设下,我们将Dirichlet过程混合(DPM)和一般贝叶斯(GB)两种显著的贝叶斯技术结合起来,同时(1)基于暴露可能性和结果变量检测潜在聚类,(2)使用每个聚类内构建的似然估计hr。值得注意的是,利用DPM,我们的程序通过在替代条件下识别未测量的混杂因素,消除了对IVs的需求。此外,GB技术消除了对基线危险函数的显式建模的需要,将我们的程序与传统的贝叶斯方法区分开来。仿真实验表明,所提出的贝叶斯方法在某些性能指标上优于现有方法。在准确识别聚类结构的同时,达到了与高效估计器相当的统计效率。这些特点突出了其克服传统IV方法在获取事件时间数据方面的挑战的能力。
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引用次数: 0
Finite Mixtures of Multivariate t $$ t $$ Linear Mixed-Effects Models for Censored Longitudinal Data With Concomitant Covariates. 多元有限混合t $$ t $$含协变量截尾纵向数据的线性混合效应模型。
IF 1.8 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Pub Date : 2026-01-01 DOI: 10.1002/sim.70392
Tsung-I Lin, Wan-Lun Wang

Clustering longitudinal biomarkers in clinical trials uncovers associations between clinical outcomes, disease progression, and treatment effects. Finite mixtures of multivariate t $$ t $$ linear mixed-effects (FM-MtLME) models have proven effective for modeling and clustering multiple longitudinal trajectories that exhibit grouped patterns with strong within-group similarity. Motivated by an AIDS study with plasma viral loads measured under assay-specific detection limits, this article extends the FM-MtLME model to account for censored outcomes. The proposed model is called the FM-MtLME with censoring (FM-MtLMEC). To allow covariate-dependent mixing proportions, we further extend it with a logistic link, resulting in the EFM-MtLMEC model. Two efficient EM-based algorithms are developed for parameter estimation of both FM-MtLMEC and EFM-MtLMEC models. The utility of our methods is demonstrated through comprehensive analyses of the AIDS data and simulation studies.

临床试验中的聚类纵向生物标志物揭示了临床结果、疾病进展和治疗效果之间的关联。多元t $$ t $$线性混合效应(FM-MtLME)模型的有限混合已被证明对具有强组内相似性的分组模式的多个纵向轨迹的建模和聚类是有效的。受一项艾滋病研究的启发,在检测特异性检测限下测量血浆病毒载量,本文扩展了FM-MtLME模型,以解释审查结果。该模型被称为带删减的FM-MtLMEC (FM-MtLMEC)。为了允许协变量相关的混合比例,我们用逻辑链接进一步扩展它,从而得到EFM-MtLMEC模型。针对FM-MtLMEC和EFM-MtLMEC模型的参数估计,提出了两种高效的基于em的算法。通过对艾滋病数据的综合分析和模拟研究,证明了我们方法的实用性。
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引用次数: 0
Dual-Criterion Approach Incorporating Historical Information to Seek Accelerated Approval With Application in Time-to-Event Group Sequential Trials. 结合历史信息的双标准方法在事件时间组序贯试验中寻求加速审批。
IF 1.8 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Pub Date : 2026-01-01 DOI: 10.1002/sim.70361
Marco Ratta, Gaëlle Saint-Hilary, Valentine Barboux, Mauro Gasparini, Donia Skanji, Pavel Mozgunov

The urgency of delivering novel, effective treatments against life-threatening diseases has brought various health authorities to allow for Accelerated Approvals (AAs). AA is the "fast track" program where promising treatments are evaluated based on surrogate (short term) endpoints likely to predict clinical benefit. This allows treatments to get an early approval, subject to providing further evidence of efficacy, for example, on the primary (long term) endpoint. Despite this procedure being quite consolidated, a number of conditionally approved treatments do not obtain full approval (FA), mainly due to lack of correlation between surrogate and primary endpoint. This implies a need to improve the criteria for controlling the risk of AAs for noneffective treatments, while maximizing the chance of AAs for effective ones. We first propose a novel adaptive group sequential design that includes an early dual-criterion "Accelerated Approval" interim analysis, where efficacy on a surrogate endpoint is tested jointly with a predictive metric based on the primary endpoint. Secondarily, we explore how the predictive criterion may be strengthened by historical information borrowing, in particular using: (i) historical control data on the primary endpoint, and (ii) the estimated historical relationship between the surrogate and the primary endpoints. We propose various metrics to characterize the risk of correct and incorrect early AAs and demonstrate how the proposed design allows explicit control of these risks, with particular attention to the family-wise error rate (FWER). The methodology is then evaluated through a simulation study motivated by a Phase-III trial in metastatic colorectal cancer (mCRC).

针对危及生命的疾病,迫切需要提供新颖有效的治疗方法,这使得各卫生当局允许加速批准(AAs)。AA是一个“快速通道”项目,在这个项目中,有希望的治疗方法是基于可能预测临床益处的替代(短期)终点进行评估的。这使得治疗能够获得早期批准,前提是提供进一步的疗效证据,例如,在主要(长期)终点。尽管这一程序得到了相当的巩固,但许多有条件批准的治疗并没有获得完全批准(FA),主要原因是替代终点和主要终点之间缺乏相关性。这意味着需要改进控制无效治疗中AAs风险的标准,同时最大限度地提高有效治疗中AAs的机会。我们首先提出了一种新的自适应组序贯设计,其中包括早期双标准“加速批准”中期分析,其中替代终点的疗效与基于主要终点的预测指标联合测试。其次,我们探讨了如何通过借鉴历史信息来加强预测标准,特别是使用:(i)主要终点的历史控制数据,以及(ii)替代终点和主要终点之间的估计历史关系。我们提出了各种度量来描述正确和不正确的早期aa的风险,并演示了所建议的设计如何允许对这些风险进行显式控制,特别注意家庭错误率(FWER)。然后通过一项由转移性结直肠癌(mCRC) iii期试验驱动的模拟研究来评估该方法。
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引用次数: 0
Sequential Event Rate Monitoring. 顺序事件速率监控。
IF 1.8 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Pub Date : 2026-01-01 DOI: 10.1002/sim.70359
Dong-Yun Kim, Sung-Min Han

Effective monitoring of event rates is essential for maintaining statistical power and study integrity in clinical trials, particularly when the primary endpoint involves time-to-event outcomes. We propose Sequential Event Rate Monitoring (SERM), a new and innovative approach for continuous monitoring of event rates. SERM leverages the Sequential Probability Ratio Test (SPRT) with improved boundaries derived from the nonlinear renewal theorem by Kim and Woodroofe (2003). This method represents the first practical implementation of their theoretical work in this area. SERM offers several tangible benefits, including ease of implementation, efficient use of data, and broad applicability to trials. Decision boundaries can be directly obtained from simple formula. A detailed illustration of the method using real-world data from a large Phase III clinical trial demonstrates its potential for rapid assessment. SERM operates on blinded data so it can be used in tandem with a broad range of study designs while preserving study integrity. Although slow patient accrual lengthens the time needed to reach a conclusion, it does not significantly affect type I or type II errors associated with the decision. This new method provides a robust tool for enhancing trial monitoring, enabling timely and informed decision-making in diverse clinical settings.

有效监测事件发生率对于维持临床试验的统计效力和研究完整性至关重要,特别是当主要终点涉及到事件发生时间的结果时。我们提出了连续事件率监测(SERM),这是一种持续监测事件率的创新方法。SERM利用序列概率比检验(SPRT),改进了Kim和Woodroofe(2003)从非线性更新定理中导出的边界。这种方法代表了他们在这一领域的理论工作的第一次实际实施。SERM提供了几个切实的好处,包括易于实现、有效使用数据和广泛适用于试验。决策边界可由简单公式直接求得。使用来自大型III期临床试验的真实数据对该方法进行了详细说明,证明了其快速评估的潜力。SERM对盲法数据进行操作,因此它可以与广泛的研究设计串联使用,同时保持研究的完整性。虽然缓慢的患者累积延长了得出结论所需的时间,但它对与决策相关的I型或II型错误没有显着影响。这种新方法提供了一个强大的工具,加强试验监测,使及时和知情的决策在不同的临床设置。
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引用次数: 0
A Fully-Integrated Bayesian Approach for the Imputation and Analysis of Derived Outcome Variables With Missingness. 带缺失的衍生结果变量的全集成贝叶斯方法的估计与分析。
IF 1.8 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Pub Date : 2026-01-01 DOI: 10.1002/sim.70383
Harlan Campbell, Tim P Morris, Paul Gustafson

Derived variables are variables that are constructed from one or more source variables through established mathematical operations or algorithms. For example, body mass index (BMI) is a derived variable constructed from two source variables: weight and height. When using a derived variable as the outcome in a statistical model, complications arise when some of the source variables have missing values. In this paper, we propose how one can define a single fully integrated Bayesian model to simultaneously impute missing values and sample from the posterior. We compare our proposed method with alternative approaches that rely on multiple imputation (MI), with examples including an analysis to estimate the risk of microcephaly (a derived variable based on sex, gestational age, and head circumference at birth) in newborns exposed to the ZIKA virus.

派生变量是通过既定的数学运算或算法从一个或多个源变量构造而成的变量。例如,身体质量指数(BMI)是由两个源变量构成的派生变量:体重和身高。在统计模型中使用派生变量作为结果时,当一些源变量的值缺失时,就会出现复杂情况。在本文中,我们提出了如何定义一个完全集成的贝叶斯模型来同时从后验中输入缺失值和样本。我们将我们提出的方法与依赖于多重归算(MI)的替代方法进行了比较,示例包括对暴露于寨卡病毒的新生儿小头畸形(基于性别、胎龄和出生时头围的衍生变量)风险的估计分析。
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引用次数: 0
Analytical Evaluation of the 2-in-1 Adaptive Design for Binary Endpoints. 二元端点2合1自适应设计的分析评价。
IF 1.8 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Pub Date : 2026-01-01 DOI: 10.1002/sim.70349
Gosuke Homma, Takuma Yoshida

To reduce drug development costs and time in therapeutic areas with high unmet medical needs, sponsors are often motivated to accelerate the drug development process, specifically by skipping the Phase 2 trial and starting the Phase 3 trial directly after the Phase 1 trial. To address this need, a novel design called 2-in-1 adaptive design has been proposed recently. This design allows a trial to maintain a small trial or to expand to a large trial adaptively based on decisions made based on the interim analysis. Although several statistical methods have been proposed for the 2-in-1 adaptive design, they specifically emphasize clinical trials with continuous or time-to-event endpoints assuming the normal approximation of the test statistic. Methods for the 2-in-1 adaptive design with binary endpoints are notably lacking. For binary endpoints, some statistical tests do not rely on the normal approximation. Therefore, it is not clear whether the operating characteristics obtained by existing 2-in-1 adaptive design methods in the context of continuous or time-to-event endpoints can be generalized to cases with binary endpoints. For this study, we propose formulas to evaluate the type I error rate and power for the 2-in-1 adaptive design for binary endpoints. Our proposed formulas can evaluate the exact type I error rate and power without using Monte Carlo simulations. Moreover, the proposed formulas are useful for any statistical test of binary endpoints. Numerical investigations under different scenarios demonstrated that the operating characteristics for the 2-in-1 adaptive design with binary endpoints are similar to those with continuous or time-to-event endpoints. We present the application of our proposed formulas to a clinical trial in patients with pyruvate kinase deficiency.

为了减少未满足医疗需求高的治疗领域的药物开发成本和时间,申办者往往有动力加快药物开发过程,特别是跳过2期试验,在1期试验之后直接开始3期试验。为了满足这一需求,最近提出了一种新的设计,称为2合1自适应设计。这种设计允许试验维持小规模试验或根据基于中期分析的决策自适应地扩展到大型试验。虽然已有几种统计方法被提出用于2合1自适应设计,但它们特别强调具有连续或时间到事件终点的临床试验,假设检验统计量的正态近似。具有二元端点的2合1自适应设计方法明显缺乏。对于二元端点,一些统计检验不依赖于正态近似。因此,目前尚不清楚现有的2合1自适应设计方法在连续或时间到事件端点的情况下获得的工作特性是否可以推广到二元端点的情况。在这项研究中,我们提出了评估二元端点的2合1自适应设计的I型错误率和功率的公式。我们提出的公式可以在不使用蒙特卡罗模拟的情况下准确地评估I型错误率和功率。此外,所提出的公式对任何二元端点的统计检验都是有用的。不同情况下的数值研究表明,具有二元端点的二合一自适应设计的工作特性与具有连续或时间到事件端点的自适应设计相似。我们提出的应用我们提出的公式,以临床试验患者丙酮酸激酶缺乏症。
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引用次数: 0
Comparing Methods to Assess Treatment Effect Heterogeneity in General Parametric Regression Models. 评价一般参数回归模型治疗效果异质性的方法比较。
IF 1.8 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Pub Date : 2026-01-01 DOI: 10.1002/sim.70381
Yao Chen, Sophie Sun, Konstantinos Sechidis, Cong Zhang, Torsten Hothorn, Björn Bornkamp

This paper reviews and compares methods to assess treatment effect heterogeneity in the context of parametric regression models. These methods include the standard likelihood ratio tests, bootstrap likelihood ratio tests, and Goeman's global test, motivated by testing whether the random effect variance is zero. We place particular emphasis on tests based on the score-residual of the treatment effect and explore different variants of tests in this class. All approaches are compared in a simulation study, and the approach based on residual scores is illustrated in a clinical trial with a time-to-event outcome comparing treatment vs. placebo. Our findings demonstrate that score-residual-based methods provide practical, flexible, and reliable tools for exploring treatment effect heterogeneity and treatment effect modifiers, and can provide useful guidance for decision-making around treatment effect heterogeneity.

本文回顾并比较了在参数回归模型背景下评估治疗效果异质性的方法。这些方法包括标准似然比检验、自举似然比检验和Goeman全局检验,其动机是检验随机效应方差是否为零。我们特别强调基于治疗效果的分数残差的测试,并在本课程中探索不同变体的测试。所有的方法都在模拟研究中进行了比较,基于残差评分的方法在一项临床试验中进行了说明,该试验比较了治疗与安慰剂的时间到事件结果。我们的研究结果表明,基于分数残差的方法为探索治疗效果异质性和治疗效果调节剂提供了实用、灵活和可靠的工具,可以为围绕治疗效果异质性的决策提供有用的指导。
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引用次数: 0
A Dirichlet-Multinomial Gibbs Algorithm for Assessing the Accuracy of Binary Tests in the Absence of a Gold Standard. 在没有金标准的情况下评估二元检验准确性的dirichlet -多项式Gibbs算法。
IF 1.8 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Pub Date : 2026-01-01 DOI: 10.1002/sim.70372
Joseph B Kadane

Each patient is simultaneously given several binary tests for a disease. The tests are partitioned into disjoint groups, assumed to be conditionally independent between groups, but allowed to have arbitrary dependence within a group. The groups are intended to capture similar biological features of the tests. A Dirichlet-multinomial model is employed with a Gibbs Sampler to estimate the sensitivity and specificity of the tests. The model is exemplified by data on four tests for Chlamydia, both with complete data and with a random 10% of the data treated as missing.

每个病人同时接受几种针对某种疾病的二元检查。测试被划分为不相交的组,假定组之间是有条件独立的,但允许在组内具有任意依赖。这些小组的目的是捕捉测试的类似生物学特征。采用dirichlet -多项式模型和Gibbs采样器来估计检测的敏感性和特异性。该模型以四项衣原体测试的数据为例,其中既有完整的数据,也有随机的10%的数据被视为缺失。
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引用次数: 0
The Role of Congeniality in Multiple Imputation for Doubly Robust Causal Estimation. 双鲁棒性因果估计的多重拟合中的拟合性作用。
IF 1.8 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Pub Date : 2026-01-01 DOI: 10.1002/sim.70363
Lucy D'Agostino McGowan

This paper provides clear and practical guidance on the specification of imputation models when multiple imputation is used in conjunction with doubly robust estimation methods for causal inference. Through theoretical arguments and targeted simulations, we demonstrate that if a confounder has missing data, the corresponding imputation model must include all variables appearing in either the propensity score model or the outcome model, in addition to both the exposure and outcome, and that these variables must appear in the same functional form as in the final analysis. Violating these conditions can lead to biased treatment effect estimates, even when both components of the doubly robust estimator are correctly specified. We present a mathematical framework for doubly robust estimation combined with multiple imputation, establish the theoretical requirements for proper imputation in this setting, and demonstrate the consequences of misspecification through simulation. Based on these findings, we offer concrete recommendations to ensure valid inference when using multiple imputation with doubly robust methods in applied causal analyses.

本文提供了明确和实用的指导,说明了当多重插值与双鲁棒估计方法相结合用于因果推理时,该模型的规格。通过理论论证和有针对性的模拟,我们证明,如果一个混杂因素有缺失的数据,那么除了暴露和结果之外,相应的归算模型必须包括在倾向评分模型或结果模型中出现的所有变量,并且这些变量必须以与最终分析相同的函数形式出现。违反这些条件可能导致偏倚的治疗效果估计,即使双鲁棒估计器的两个组成部分都被正确指定。我们提出了双重鲁棒估计与多重输入相结合的数学框架,建立了在这种情况下正确输入的理论要求,并通过仿真证明了错误输入的后果。基于这些发现,我们提出了具体的建议,以确保在应用因果分析中使用双重鲁棒方法的多重imputation时有效的推断。
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引用次数: 0
A DNN-Based Weighted Partial Likelihood for Partially Linear Subdistribution Hazard Model. 基于dnn的部分线性子分布风险模型加权偏似然。
IF 1.8 4区 医学 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Pub Date : 2026-01-01 DOI: 10.1002/sim.70397
Nengjie Zhu, Zhangsheng Yu

Deep learning has excelled in the field of statistical learning. In the field of survival analysis, some studies have combined deep learning methods with partially linear structures to propose deep partially linear structures. We extend it to the field of competing risks and propose the deep partially linear subdistribution hazard model (DPLSHM). To evaluate the predictive performance of the model, we further develop a time-dependent AUC method specifically tailored for competing risks data and provide an estimator for AUC. Theoretical results for the proposed model demonstrate the asymptotic normality of the parameter component at a rate of n $$ sqrt{n} $$ and provide the convergence rate of the nonparametric component, which achieves the minimal limit convergence rate (multiplicative logarithmic factors). The theory of consistency and rate of convergence of AUC-related estimates is also developed, while we prove that the regression component of DPLSHM maximizes theoretical AUC asymptotically. Subsequently, the paper validates the excellent performance of DPLSHM in estimation and prediction through numerical simulations and real-world datasets.

深度学习在统计学习领域表现出色。在生存分析领域,一些研究将深度学习方法与部分线性结构相结合,提出了深度部分线性结构。将其推广到竞争风险领域,提出了深度部分线性子分布风险模型(DPLSHM)。为了评估模型的预测性能,我们进一步开发了一种专门针对竞争风险数据的时间相关AUC方法,并提供了AUC的估计器。该模型的理论结果证明了参数分量的渐近正态性,其速率为n $$ sqrt{n} $$,并给出了非参数分量的收敛速率,该收敛速率达到最小极限收敛速率(乘对数因子)。建立了AUC相关估计的一致性和收敛率理论,并证明了DPLSHM的回归分量使理论AUC渐近最大化。随后,通过数值模拟和实际数据集验证了DPLSHM在估计和预测方面的优异性能。
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引用次数: 0
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Statistics in Medicine
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