Confounder Adjustment in Shape-on-Scalar Regression Model: Corpus Callosum Shape Alterations in Alzheimer’s Disease

IF 0.9 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Stats Pub Date : 2023-09-28 DOI:10.3390/stats6040061
Harshita Dogra, Shengxian Ding, Miyeon Yeon, Rongjie Liu, Chao Huang
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引用次数: 0

Abstract

Large-scale imaging studies often face challenges stemming from heterogeneity arising from differences in geographic location, instrumental setups, image acquisition protocols, study design, and latent variables that remain undisclosed. While numerous regression models have been developed to elucidate the interplay between imaging responses and relevant covariates, limited attention has been devoted to cases where the imaging responses pertain to the domain of shape. This adds complexity to the problem of imaging heterogeneity, primarily due to the unique properties inherent to shape representations, including nonlinearity, high-dimensionality, and the intricacies of quotient space geometry. To tackle this intricate issue, we propose a novel approach: a shape-on-scalar regression model that incorporates confounder adjustment. In particular, we leverage the square root velocity function to extract elastic shape representations which are embedded within the linear Hilbert space of square integrable functions. Subsequently, we introduce a shape regression model aimed at characterizing the intricate relationship between elastic shapes and covariates of interest, all while effectively managing the challenges posed by imaging heterogeneity. We develop comprehensive procedures for estimating and making inferences about the unknown model parameters. Through real-data analysis, our method demonstrates its superiority in terms of estimation accuracy when compared to existing approaches.
形状-标量回归模型的混杂调整:阿尔茨海默病胼胝体形状改变
由于地理位置、仪器设置、图像采集协议、研究设计和未披露的潜在变量的差异,大规模成像研究经常面临异质性带来的挑战。虽然已经开发了许多回归模型来阐明成像响应与相关协变量之间的相互作用,但对涉及形状领域的成像响应的关注有限。这增加了成像异质性问题的复杂性,主要是由于形状表示固有的独特属性,包括非线性、高维性和商空间几何的复杂性。为了解决这个复杂的问题,我们提出了一种新的方法:一个包含混杂因素调整的标量形状回归模型。特别是,我们利用平方根速度函数来提取嵌入在平方可积函数的线性希尔伯特空间中的弹性形状表示。随后,我们引入了一个形状回归模型,旨在描述弹性形状和感兴趣的协变量之间的复杂关系,同时有效地管理成像异质性带来的挑战。我们开发了全面的程序来估计和推断未知的模型参数。通过对实际数据的分析,与现有方法相比,该方法在估计精度方面具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
0.60
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0.00%
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审稿时长
7 weeks
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