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Bibliographic Details
Main Authors: Wang, Yue, Wang, Xiao, Ibrahim, Joseph G., Zhu, Hongtu
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.00860
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author Wang, Yue
Wang, Xiao
Ibrahim, Joseph G.
Zhu, Hongtu
author_facet Wang, Yue
Wang, Xiao
Ibrahim, Joseph G.
Zhu, Hongtu
contents Many biomedical studies collect high-dimensional medical imaging data to identify biomarkers for the detection, diagnosis, and treatment of human diseases. Consequently, it is crucial to develop accurate models that can predict a wide range of clinical outcomes (both discrete and continuous) based on imaging data. By treating imaging predictors as functional data, we propose a residual-based alternative partial least squares (RAPLS) model for a broad class of generalized functional linear models that incorporate both functional and scalar covariates. Our RAPLS method extends the alternative partial least squares (APLS) algorithm iteratively to accommodate additional scalar covariates and non-continuous outcomes. We establish the convergence rate of the RAPLS estimator for the unknown slope function and, with an additional calibration step, we prove the asymptotic normality and efficiency of the calibrated RAPLS estimator for the scalar parameters. The effectiveness of the RAPLS algorithm is demonstrated through multiple simulation studies and an application predicting Alzheimer's disease progression using neuroimaging data from the Alzheimer's Disease Neuroimaging Initiative (ADNI).
format Preprint
id arxiv_https___arxiv_org_abs_2505_00860
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Residual-based Alternative Partial Least Squares for Generalized Functional Linear Models
Wang, Yue
Wang, Xiao
Ibrahim, Joseph G.
Zhu, Hongtu
Methodology
Many biomedical studies collect high-dimensional medical imaging data to identify biomarkers for the detection, diagnosis, and treatment of human diseases. Consequently, it is crucial to develop accurate models that can predict a wide range of clinical outcomes (both discrete and continuous) based on imaging data. By treating imaging predictors as functional data, we propose a residual-based alternative partial least squares (RAPLS) model for a broad class of generalized functional linear models that incorporate both functional and scalar covariates. Our RAPLS method extends the alternative partial least squares (APLS) algorithm iteratively to accommodate additional scalar covariates and non-continuous outcomes. We establish the convergence rate of the RAPLS estimator for the unknown slope function and, with an additional calibration step, we prove the asymptotic normality and efficiency of the calibrated RAPLS estimator for the scalar parameters. The effectiveness of the RAPLS algorithm is demonstrated through multiple simulation studies and an application predicting Alzheimer's disease progression using neuroimaging data from the Alzheimer's Disease Neuroimaging Initiative (ADNI).
title Residual-based Alternative Partial Least Squares for Generalized Functional Linear Models
topic Methodology
url https://arxiv.org/abs/2505.00860