Literature DB >> 29903486

Generalized fused group lasso regularized multi-task feature learning for predicting cognitive outcomes in Alzheimers disease.

Peng Cao1, Xiaoli Liu2, Hezi Liu3, Jinzhu Yang2, Dazhe Zhao2, Min Huang4, Osmar Zaiane5.   

Abstract

OBJECTIVE: Alzheimers disease (AD) is characterized by gradual neurodegeneration and loss of brain function, especially for memory during early stages. Regression analysis has been widely applied to AD research to relate clinical and biomarker data such as predicting cognitive outcomes from Magnetic Resonance Imaging (MRI) measures. Recently, the multi-task feature learning (MTFL) methods have been widely studied to predict cognitive outcomes and select the discriminative feature subset from MRI features by incorporating inherent correlations among multiple clinical cognitive measures. However, the existing MTFL assumes the correlation among all the tasks is uniform, and the task relatedness is modeled by encouraging a common subset of features with neglecting the inherent structure of tasks and MRI features.
METHODS: In this paper, we proposed a generalized fused group lasso (GFGL) regularization to model the underlying structures, involving (1) a graph structure within tasks and (2) a group structure among the image features. Then, we present a multi-task learning framework (called GFGL-MTFL), combining the ℓ2, 1-norm with the GFGL regularization, to model the flexible structures.
RESULTS: Through empirical evaluation and comparison with different baseline methods and the state-of-the-art MTL methods on data from Alzheimer's Disease Neuroimaging Initiative (ADNI) database, we illustrate that the proposed GFGL-MTFL method outperforms other methods in terms of both Mean Squared Error (nMSE) and weighted correlation coefficient (wR). Improvements are statistically significant for most scores (tasks).
CONCLUSIONS: The experimental results with real and synthetic data demonstrate that incorporating the two prior structures by the generalized fused group lasso norm into the multi task feature learning can improve the prediction performance over several state-of-the-art competing methods, and the estimated correlation of the cognitive functions and the identification of cognition relevant imaging markers are clinically and biologically meaningful.
Copyright © 2018 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Alzheimer’s disease; Biomarker identification; Fused lasso; Group lasso; Multi-task learning; Regression; Sparse learning

Mesh:

Substances:

Year:  2018        PMID: 29903486     DOI: 10.1016/j.cmpb.2018.04.028

Source DB:  PubMed          Journal:  Comput Methods Programs Biomed        ISSN: 0169-2607            Impact factor:   5.428


  3 in total

1.  Group Guided Fused Laplacian Sparse Group Lasso for Modeling Alzheimer's Disease Progression.

Authors:  Xiaoli Liu; Jianzhong Wang; Fulong Ren; Jun Kong
Journal:  Comput Math Methods Med       Date:  2020-02-20       Impact factor: 2.238

2.  Separation of Different Blogs from Skin Disease Data using Artificial Intelligence.

Authors:  Mohammed J Abdulaal; Ibrahim M Mehedi; Abdulah Jeza Aljohani; Ahmad H Milyani; Mohamed Mahmoud; Abdullah M Abusorrah; Rahtul Jannat
Journal:  Comput Intell Neurosci       Date:  2022-08-23

Review 3.  Machine learning for modeling the progression of Alzheimer disease dementia using clinical data: a systematic literature review.

Authors:  Sayantan Kumar; Inez Oh; Suzanne Schindler; Albert M Lai; Philip R O Payne; Aditi Gupta
Journal:  JAMIA Open       Date:  2021-08-02
  3 in total

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