Literature DB >> 25042445

Hierarchical feature representation and multimodal fusion with deep learning for AD/MCI diagnosis.

Heung-Il Suk1, Seong-Whan Lee2, Dinggang Shen3.   

Abstract

For the last decade, it has been shown that neuroimaging can be a potential tool for the diagnosis of Alzheimer's Disease (AD) and its prodromal stage, Mild Cognitive Impairment (MCI), and also fusion of different modalities can further provide the complementary information to enhance diagnostic accuracy. Here, we focus on the problems of both feature representation and fusion of multimodal information from Magnetic Resonance Imaging (MRI) and Positron Emission Tomography (PET). To our best knowledge, the previous methods in the literature mostly used hand-crafted features such as cortical thickness, gray matter densities from MRI, or voxel intensities from PET, and then combined these multimodal features by simply concatenating into a long vector or transforming into a higher-dimensional kernel space. In this paper, we propose a novel method for a high-level latent and shared feature representation from neuroimaging modalities via deep learning. Specifically, we use Deep Boltzmann Machine (DBM)(2), a deep network with a restricted Boltzmann machine as a building block, to find a latent hierarchical feature representation from a 3D patch, and then devise a systematic method for a joint feature representation from the paired patches of MRI and PET with a multimodal DBM. To validate the effectiveness of the proposed method, we performed experiments on ADNI dataset and compared with the state-of-the-art methods. In three binary classification problems of AD vs. healthy Normal Control (NC), MCI vs. NC, and MCI converter vs. MCI non-converter, we obtained the maximal accuracies of 95.35%, 85.67%, and 74.58%, respectively, outperforming the competing methods. By visual inspection of the trained model, we observed that the proposed method could hierarchically discover the complex latent patterns inherent in both MRI and PET.
Copyright © 2014 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Alzheimer's Disease; Deep Boltzmann Machine; Mild Cognitive Impairment; Multimodal data fusion; Shared feature representation

Mesh:

Year:  2014        PMID: 25042445      PMCID: PMC4165842          DOI: 10.1016/j.neuroimage.2014.06.077

Source DB:  PubMed          Journal:  Neuroimage        ISSN: 1053-8119            Impact factor:   6.556


  62 in total

1.  A wavelet-based statistical analysis of FMRI data: I. motivation and data distribution modeling.

Authors:  Ivo D Dinov; John W Boscardin; Michael S Mega; Elizabeth L Sowell; Arthur W Toga
Journal:  Neuroinformatics       Date:  2005

2.  Diffusion tensor image registration using tensor geometry and orientation features.

Authors:  Jinzhong Yang; Dinggang Shen; Christos Davatzikos; Ragini Verma
Journal:  Med Image Comput Comput Assist Interv       Date:  2008

3.  Training-related brain plasticity in subjects at risk of developing Alzheimer's disease.

Authors:  Sylvie Belleville; Francis Clément; Samira Mellah; Brigitte Gilbert; Francine Fontaine; Serge Gauthier
Journal:  Brain       Date:  2011-03-22       Impact factor: 13.501

4.  Automatic classification of patients with Alzheimer's disease from structural MRI: a comparison of ten methods using the ADNI database.

Authors:  Rémi Cuingnet; Emilie Gerardin; Jérôme Tessieras; Guillaume Auzias; Stéphane Lehéricy; Marie-Odile Habert; Marie Chupin; Habib Benali; Olivier Colliot
Journal:  Neuroimage       Date:  2010-06-11       Impact factor: 6.556

5.  Predictive markers for AD in a multi-modality framework: an analysis of MCI progression in the ADNI population.

Authors:  Chris Hinrichs; Vikas Singh; Guofan Xu; Sterling C Johnson
Journal:  Neuroimage       Date:  2010-12-10       Impact factor: 6.556

6.  Hippocampal and entorhinal atrophy in mild cognitive impairment: prediction of Alzheimer disease.

Authors:  D P Devanand; G Pradhaban; X Liu; A Khandji; S De Santi; S Segal; H Rusinek; G H Pelton; L S Honig; R Mayeux; Y Stern; M H Tabert; M J de Leon
Journal:  Neurology       Date:  2007-03-13       Impact factor: 9.910

7.  Voxel-based morphometric comparison between early- and late-onset mild Alzheimer's disease and assessment of diagnostic performance of z score images.

Authors:  Kazunari Ishii; Takashi Kawachi; Hiroki Sasaki; Atsushi K Kono; Tetsuya Fukuda; Yoshio Kojima; Etsuro Mori
Journal:  AJNR Am J Neuroradiol       Date:  2005-02       Impact factor: 3.825

8.  Multivariate examination of brain abnormality using both structural and functional MRI.

Authors:  Yong Fan; Hengyi Rao; Hallam Hurt; Joan Giannetta; Marc Korczykowski; David Shera; Brian B Avants; James C Gee; Jiongjiong Wang; Dinggang Shen
Journal:  Neuroimage       Date:  2007-04-19       Impact factor: 6.556

9.  Combining MR imaging, positron-emission tomography, and CSF biomarkers in the diagnosis and prognosis of Alzheimer disease.

Authors:  K B Walhovd; A M Fjell; J Brewer; L K McEvoy; C Fennema-Notestine; D J Hagler; R G Jennings; D Karow; A M Dale
Journal:  AJNR Am J Neuroradiol       Date:  2010-01-14       Impact factor: 3.825

10.  Strongly reduced volumes of putamen and thalamus in Alzheimer's disease: an MRI study.

Authors:  L W de Jong; K van der Hiele; I M Veer; J J Houwing; R G J Westendorp; E L E M Bollen; P W de Bruin; H A M Middelkoop; M A van Buchem; J van der Grond
Journal:  Brain       Date:  2008-11-20       Impact factor: 13.501

View more
  146 in total

1.  Diagnosis of Autism Spectrum Disorders in Young Children Based on Resting-State Functional Magnetic Resonance Imaging Data Using Convolutional Neural Networks.

Authors:  Maryam Akhavan Aghdam; Arash Sharifi; Mir Mohsen Pedram
Journal:  J Digit Imaging       Date:  2019-12       Impact factor: 4.056

2.  Subspace Regularized Sparse Multitask Learning for Multiclass Neurodegenerative Disease Identification.

Authors:  Xiaofeng Zhu; Heung-Il Suk; Seong-Whan Lee; Dinggang Shen
Journal:  IEEE Trans Biomed Eng       Date:  2015-08-11       Impact factor: 4.538

3.  Combination of rs-fMRI and sMRI Data to Discriminate Autism Spectrum Disorders in Young Children Using Deep Belief Network.

Authors:  Maryam Akhavan Aghdam; Arash Sharifi; Mir Mohsen Pedram
Journal:  J Digit Imaging       Date:  2018-12       Impact factor: 4.056

Review 4.  Role of deep learning in infant brain MRI analysis.

Authors:  Mahmoud Mostapha; Martin Styner
Journal:  Magn Reson Imaging       Date:  2019-06-20       Impact factor: 2.546

5.  A cybernetic eye for rare disease.

Authors:  Qian Wang; Dinggang Shen
Journal:  Nat Biomed Eng       Date:  2017-02-10       Impact factor: 25.671

6.  Visual Explanations From Deep 3D Convolutional Neural Networks for Alzheimer's Disease Classification.

Authors:  Chengliang Yang; Anand Rangarajan; Sanjay Ranka
Journal:  AMIA Annu Symp Proc       Date:  2018-12-05

7.  Adaptive template generation for amyloid PET using a deep learning approach.

Authors:  Seung Kwan Kang; Seongho Seo; Seong A Shin; Min Soo Byun; Dong Young Lee; Yu Kyeong Kim; Dong Soo Lee; Jae Sung Lee
Journal:  Hum Brain Mapp       Date:  2018-05-11       Impact factor: 5.038

8.  Dynamic Routing Capsule Networks for Mild Cognitive Impairment Diagnosis.

Authors:  Zhicheng Jiao; Pu Huang; Tae-Eui Kam; Li-Ming Hsu; Ye Wu; Han Zhang; Dinggang Shen
Journal:  Med Image Comput Comput Assist Interv       Date:  2019-10-10

9.  Deep Learning Models Unveiled Functional Difference Between Cortical Gyri and Sulci.

Authors:  Shu Zhang; Huan Liu; Heng Huang; Yu Zhao; Xi Jiang; Brook Bowers; Lei Guo; Xiaoping Hu; Mar Sanchez; Tianming Liu
Journal:  IEEE Trans Biomed Eng       Date:  2018-09-28       Impact factor: 4.538

10.  Topographical Information-Based High-Order Functional Connectivity and Its Application in Abnormality Detection for Mild Cognitive Impairment.

Authors:  Han Zhang; Xiaobo Chen; Feng Shi; Gang Li; Minjeong Kim; Panteleimon Giannakopoulos; Sven Haller; Dinggang Shen
Journal:  J Alzheimers Dis       Date:  2016-10-04       Impact factor: 4.472

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.