{"title":"Shape Mediation Analysis in Alzheimer's Disease Studies.","authors":"Xingcai Zhou, Miyeon Yeon, Jiangyan Wang, Shengxian Ding, Kaizhou Lei, Yanyong Zhao, Rongjie Liu, Chao Huang","doi":"10.1002/sim.10265","DOIUrl":null,"url":null,"abstract":"<p><p>As a crucial tool in neuroscience, mediation analysis has been developed and widely adopted to elucidate the role of intermediary variables derived from neuroimaging data. Typically, structural equation models (SEMs) are employed to investigate the influences of exposures on outcomes, with model coefficients being interpreted as causal effects. While existing SEMs have proven to be effective tools for mediation analysis involving various neuroimaging-related mediators, limited research has explored scenarios where these mediators are derived from the shape space. In addition, the linear relationship assumption adopted in existing SEMs may lead to substantial efficiency losses and decreased predictive accuracy in real-world applications. To address these challenges, we introduce a novel framework for shape mediation analysis, designed to explore the causal relationships between genetic exposures and clinical outcomes, whether mediated or unmediated by shape-related factors while accounting for potential confounding variables. Within our framework, we apply the square-root velocity function to extract elastic shape representations, which reside within the linear Hilbert space of square-integrable functions. Subsequently, we introduce a two-layer shape regression model to characterize the relationships among neurocognitive outcomes, elastic shape mediators, genetic exposures, and clinical confounders. Both estimation and inference procedures are established for unknown parameters along with the corresponding causal estimands. The asymptotic properties of estimated quantities are investigated as well. Both simulated studies and real-data analyses demonstrate the superior performance of our proposed method in terms of estimation accuracy and robustness when compared to existing approaches for estimating causal estimands.</p>","PeriodicalId":21879,"journal":{"name":"Statistics in Medicine","volume":" ","pages":""},"PeriodicalIF":1.8000,"publicationDate":"2024-11-12","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Statistics in Medicine","FirstCategoryId":"3","ListUrlMain":"https://doi.org/10.1002/sim.10265","RegionNum":4,"RegionCategory":"医学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q3","JCRName":"MATHEMATICAL & COMPUTATIONAL BIOLOGY","Score":null,"Total":0}
引用次数: 0
Abstract
As a crucial tool in neuroscience, mediation analysis has been developed and widely adopted to elucidate the role of intermediary variables derived from neuroimaging data. Typically, structural equation models (SEMs) are employed to investigate the influences of exposures on outcomes, with model coefficients being interpreted as causal effects. While existing SEMs have proven to be effective tools for mediation analysis involving various neuroimaging-related mediators, limited research has explored scenarios where these mediators are derived from the shape space. In addition, the linear relationship assumption adopted in existing SEMs may lead to substantial efficiency losses and decreased predictive accuracy in real-world applications. To address these challenges, we introduce a novel framework for shape mediation analysis, designed to explore the causal relationships between genetic exposures and clinical outcomes, whether mediated or unmediated by shape-related factors while accounting for potential confounding variables. Within our framework, we apply the square-root velocity function to extract elastic shape representations, which reside within the linear Hilbert space of square-integrable functions. Subsequently, we introduce a two-layer shape regression model to characterize the relationships among neurocognitive outcomes, elastic shape mediators, genetic exposures, and clinical confounders. Both estimation and inference procedures are established for unknown parameters along with the corresponding causal estimands. The asymptotic properties of estimated quantities are investigated as well. Both simulated studies and real-data analyses demonstrate the superior performance of our proposed method in terms of estimation accuracy and robustness when compared to existing approaches for estimating causal estimands.
作为神经科学的重要工具,中介分析已被开发并广泛采用,以阐明从神经影像数据中得出的中间变量的作用。通常情况下,采用结构方程模型(SEM)来研究暴露因素对结果的影响,并将模型系数解释为因果效应。虽然现有的 SEM 已被证明是涉及各种神经影像相关中介因子的中介分析的有效工具,但对这些中介因子来自形状空间的情景的探索却很有限。此外,现有 SEM 采用的线性关系假设可能会导致实际应用中的效率损失和预测准确性降低。为了应对这些挑战,我们引入了一种新的形状中介分析框架,旨在探索遗传暴露与临床结果之间的因果关系,无论是否由形状相关因素中介,同时考虑潜在的混杂变量。在我们的框架中,我们应用平方根速度函数来提取弹性形状表征,这些表征位于平方可积分函数的线性希尔伯特空间中。随后,我们引入了一个双层形状回归模型来描述神经认知结果、弹性形状介导因素、遗传暴露和临床混杂因素之间的关系。我们为未知参数和相应的因果估计值建立了估计和推理程序。此外,还研究了估计量的渐近特性。模拟研究和真实数据分析都表明,与现有的因果估计方法相比,我们提出的方法在估计准确性和稳健性方面都有卓越表现。
期刊介绍:
The journal aims to influence practice in medicine and its associated sciences through the publication of papers on statistical and other quantitative methods. Papers will explain new methods and demonstrate their application, preferably through a substantive, real, motivating example or a comprehensive evaluation based on an illustrative example. Alternatively, papers will report on case-studies where creative use or technical generalizations of established methodology is directed towards a substantive application. Reviews of, and tutorials on, general topics relevant to the application of statistics to medicine will also be published. The main criteria for publication are appropriateness of the statistical methods to a particular medical problem and clarity of exposition. Papers with primarily mathematical content will be excluded. The journal aims to enhance communication between statisticians, clinicians and medical researchers.