Group Guided Fused Laplacian Sparse Group Lasso for Modeling Alzheimer’s Disease Progression

As the largest cause of dementia, Alzheimer’s disease (AD) has brought serious burdens to patients and their families, mostly in the financial, psychological, and emotional aspects. In order to assess the progression of AD and develop new treatment methods for the disease, it is essential to infer t...

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Main Authors: Xiaoli Liu, Jianzhong Wang, Fulong Ren, Jun Kong
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:Computational and Mathematical Methods in Medicine
Online Access:http://dx.doi.org/10.1155/2020/4036560
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spelling doaj-94e91bd094eb41fe991dc5d70aadef232020-11-25T03:05:26ZengHindawi LimitedComputational and Mathematical Methods in Medicine1748-670X1748-67182020-01-01202010.1155/2020/40365604036560Group Guided Fused Laplacian Sparse Group Lasso for Modeling Alzheimer’s Disease ProgressionXiaoli Liu0Jianzhong Wang1Fulong Ren2Jun Kong3College of Humanities and Sciences, Northeast Normal University, Changchun, ChinaEducation AI, College of Information Science and Technology, Northeast Normal University, Changchun, ChinaKey Laboratory of Medical Image Computing of Ministry of Education, Northeastern University, Shenyang, ChinaCollege of Humanities and Sciences, Northeast Normal University, Changchun, ChinaAs the largest cause of dementia, Alzheimer’s disease (AD) has brought serious burdens to patients and their families, mostly in the financial, psychological, and emotional aspects. In order to assess the progression of AD and develop new treatment methods for the disease, it is essential to infer the trajectories of patients’ cognitive performance over time to identify biomarkers that connect the patterns of brain atrophy and AD progression. In this article, a structured regularized regression approach termed group guided fused Laplacian sparse group Lasso (GFL-SGL) is proposed to infer disease progression by considering multiple prediction of the same cognitive scores at different time points (longitudinal analysis). The proposed GFL-SGL simultaneously exploits the interrelated structures within the MRI features and among the tasks with sparse group Lasso (SGL) norm and presents a novel group guided fused Laplacian (GFL) regularization. This combination effectively incorporates both the relatedness among multiple longitudinal time points with a general weighted (undirected) dependency graphs and useful inherent group structure in features. Furthermore, an alternating direction method of multipliers- (ADMM-) based algorithm is also derived to optimize the nonsmooth objective function of the proposed approach. Experiments on the dataset from Alzheimer’s Disease Neuroimaging Initiative (ADNI) show that the proposed GFL-SGL outperformed some other state-of-the-art algorithms and effectively fused the multimodality data. The compact sets of cognition-relevant imaging biomarkers identified by our approach are consistent with the results of clinical studies.http://dx.doi.org/10.1155/2020/4036560
collection DOAJ
language English
format Article
sources DOAJ
author Xiaoli Liu
Jianzhong Wang
Fulong Ren
Jun Kong
spellingShingle Xiaoli Liu
Jianzhong Wang
Fulong Ren
Jun Kong
Group Guided Fused Laplacian Sparse Group Lasso for Modeling Alzheimer’s Disease Progression
Computational and Mathematical Methods in Medicine
author_facet Xiaoli Liu
Jianzhong Wang
Fulong Ren
Jun Kong
author_sort Xiaoli Liu
title Group Guided Fused Laplacian Sparse Group Lasso for Modeling Alzheimer’s Disease Progression
title_short Group Guided Fused Laplacian Sparse Group Lasso for Modeling Alzheimer’s Disease Progression
title_full Group Guided Fused Laplacian Sparse Group Lasso for Modeling Alzheimer’s Disease Progression
title_fullStr Group Guided Fused Laplacian Sparse Group Lasso for Modeling Alzheimer’s Disease Progression
title_full_unstemmed Group Guided Fused Laplacian Sparse Group Lasso for Modeling Alzheimer’s Disease Progression
title_sort group guided fused laplacian sparse group lasso for modeling alzheimer’s disease progression
publisher Hindawi Limited
series Computational and Mathematical Methods in Medicine
issn 1748-670X
1748-6718
publishDate 2020-01-01
description As the largest cause of dementia, Alzheimer’s disease (AD) has brought serious burdens to patients and their families, mostly in the financial, psychological, and emotional aspects. In order to assess the progression of AD and develop new treatment methods for the disease, it is essential to infer the trajectories of patients’ cognitive performance over time to identify biomarkers that connect the patterns of brain atrophy and AD progression. In this article, a structured regularized regression approach termed group guided fused Laplacian sparse group Lasso (GFL-SGL) is proposed to infer disease progression by considering multiple prediction of the same cognitive scores at different time points (longitudinal analysis). The proposed GFL-SGL simultaneously exploits the interrelated structures within the MRI features and among the tasks with sparse group Lasso (SGL) norm and presents a novel group guided fused Laplacian (GFL) regularization. This combination effectively incorporates both the relatedness among multiple longitudinal time points with a general weighted (undirected) dependency graphs and useful inherent group structure in features. Furthermore, an alternating direction method of multipliers- (ADMM-) based algorithm is also derived to optimize the nonsmooth objective function of the proposed approach. Experiments on the dataset from Alzheimer’s Disease Neuroimaging Initiative (ADNI) show that the proposed GFL-SGL outperformed some other state-of-the-art algorithms and effectively fused the multimodality data. The compact sets of cognition-relevant imaging biomarkers identified by our approach are consistent with the results of clinical studies.
url http://dx.doi.org/10.1155/2020/4036560
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AT fulongren groupguidedfusedlaplaciansparsegrouplassoformodelingalzheimersdiseaseprogression
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