Literature DB >> 21236349

Multimodal classification of Alzheimer's disease and mild cognitive impairment.

Daoqiang Zhang1, Yaping Wang, Luping Zhou, Hong Yuan, Dinggang Shen.   

Abstract

Effective and accurate diagnosis of Alzheimer's disease (AD), as well as its prodromal stage (i.e., mild cognitive impairment (MCI)), has attracted more and more attention recently. So far, multiple biomarkers have been shown to be sensitive to the diagnosis of AD and MCI, i.e., structural MR imaging (MRI) for brain atrophy measurement, functional imaging (e.g., FDG-PET) for hypometabolism quantification, and cerebrospinal fluid (CSF) for quantification of specific proteins. However, most existing research focuses on only a single modality of biomarkers for diagnosis of AD and MCI, although recent studies have shown that different biomarkers may provide complementary information for the diagnosis of AD and MCI. In this paper, we propose to combine three modalities of biomarkers, i.e., MRI, FDG-PET, and CSF biomarkers, to discriminate between AD (or MCI) and healthy controls, using a kernel combination method. Specifically, ADNI baseline MRI, FDG-PET, and CSF data from 51AD patients, 99 MCI patients (including 43 MCI converters who had converted to AD within 18 months and 56 MCI non-converters who had not converted to AD within 18 months), and 52 healthy controls are used for development and validation of our proposed multimodal classification method. In particular, for each MR or FDG-PET image, 93 volumetric features are extracted from the 93 regions of interest (ROIs), automatically labeled by an atlas warping algorithm. For CSF biomarkers, their original values are directly used as features. Then, a linear support vector machine (SVM) is adopted to evaluate the classification accuracy, using a 10-fold cross-validation. As a result, for classifying AD from healthy controls, we achieve a classification accuracy of 93.2% (with a sensitivity of 93% and a specificity of 93.3%) when combining all three modalities of biomarkers, and only 86.5% when using even the best individual modality of biomarkers. Similarly, for classifying MCI from healthy controls, we achieve a classification accuracy of 76.4% (with a sensitivity of 81.8% and a specificity of 66%) for our combined method, and only 72% even using the best individual modality of biomarkers. Further analysis on MCI sensitivity of our combined method indicates that 91.5% of MCI converters and 73.4% of MCI non-converters are correctly classified. Moreover, we also evaluate the classification performance when employing a feature selection method to select the most discriminative MR and FDG-PET features. Again, our combined method shows considerably better performance, compared to the case of using an individual modality of biomarkers.
Copyright © 2011 Elsevier Inc. All rights reserved.

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Year:  2011        PMID: 21236349      PMCID: PMC3057360          DOI: 10.1016/j.neuroimage.2011.01.008

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


  61 in total

1.  Mild cognitive impairment: Can FDG-PET predict who is to rapidly convert to Alzheimer's disease?

Authors:  G Chételat; B Desgranges; V de la Sayette; F Viader; F Eustache; J-C Baron
Journal:  Neurology       Date:  2003-04-22       Impact factor: 9.910

2.  FDG-PET measurement is more accurate than neuropsychological assessments to predict global cognitive deterioration in patients with mild cognitive impairment.

Authors:  Gaël Chételat; Francis Eustache; Fausto Viader; Vincent De La Sayette; Alice Pélerin; Florence Mézenge; Didier Hannequin; Benoît Dupuy; Jean-Claude Baron; Béatrice Desgranges
Journal:  Neurocase       Date:  2005-02       Impact factor: 0.881

3.  CSF biomarkers and medial temporal lobe atrophy predict dementia in mild cognitive impairment.

Authors:  F H Bouwman; S N M Schoonenboom; W M van der Flier; E J van Elk; A Kok; F Barkhof; M A Blankenstein; Ph Scheltens
Journal:  Neurobiol Aging       Date:  2006-06-19       Impact factor: 4.673

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.  Different regional patterns of cortical thinning in Alzheimer's disease and frontotemporal dementia.

Authors:  An-Tao Du; Norbert Schuff; Joel H Kramer; Howard J Rosen; Maria Luisa Gorno-Tempini; Katherine Rankin; Bruce L Miller; Michael W Weiner
Journal:  Brain       Date:  2007-03-12       Impact factor: 13.501

7.  Longitudinal changes of CSF biomarkers in memory clinic patients.

Authors:  F H Bouwman; W M van der Flier; N S M Schoonenboom; E J van Elk; A Kok; F Rijmen; M A Blankenstein; P Scheltens
Journal:  Neurology       Date:  2007-09-04       Impact factor: 9.910

8.  A comparison of classification methods for differentiating fronto-temporal dementia from Alzheimer's disease using FDG-PET imaging.

Authors:  Roger Higdon; Norman L Foster; Robert A Koeppe; Charles S DeCarli; William J Jagust; Christopher M Clark; Nancy R Barbas; Steven E Arnold; R Scott Turner; Judith L Heidebrink; Satoshi Minoshima
Journal:  Stat Med       Date:  2004-01-30       Impact factor: 2.373

9.  FDG-PET improves accuracy in distinguishing frontotemporal dementia and Alzheimer's disease.

Authors:  Norman L Foster; Judith L Heidebrink; Christopher M Clark; William J Jagust; Steven E Arnold; Nancy R Barbas; Charles S DeCarli; R Scott Turner; Robert A Koeppe; Roger Higdon; Satoshi Minoshima
Journal:  Brain       Date:  2007-08-18       Impact factor: 13.501

10.  Cerebral metabolic patterns at early stages of frontotemporal dementia and semantic dementia. A PET study.

Authors:  J Diehl; T Grimmer; A Drzezga; M Riemenschneider; H Förstl; A Kurz
Journal:  Neurobiol Aging       Date:  2004-09       Impact factor: 4.673

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  347 in total

1.  Identifying quantitative trait loci via group-sparse multitask regression and feature selection: an imaging genetics study of the ADNI cohort.

Authors:  Hua Wang; Feiping Nie; Heng Huang; Sungeun Kim; Kwangsik Nho; Shannon L Risacher; Andrew J Saykin; Li Shen
Journal:  Bioinformatics       Date:  2011-12-06       Impact factor: 6.937

2.  Matrix-Similarity Based Loss Function and Feature Selection for Alzheimer's Disease Diagnosis.

Authors:  Xiaofeng Zhu; Heung-Il Suk; Dinggang Shen
Journal:  Proc IEEE Comput Soc Conf Comput Vis Pattern Recognit       Date:  2014-06

3.  Multiple Effect of APOE Genotype on Clinical and Neuroimaging Biomarkers Across Alzheimer's Disease Spectrum.

Authors:  Ying Liu; Lan Tan; Hui-Fu Wang; Yong Liu; Xiao-Ke Hao; Chen-Chen Tan; Teng Jiang; Bing Liu; Dao-Qiang Zhang; Jin-Tai Yu
Journal:  Mol Neurobiol       Date:  2015-08-23       Impact factor: 5.590

4.  Integrative linear discriminant analysis with guaranteed error rate improvement.

Authors:  Quefeng Li; Lexin Li
Journal:  Biometrika       Date:  2018-10-22       Impact factor: 2.445

5.  Low-Rank Graph-Regularized Structured Sparse Regression for Identifying Genetic Biomarkers.

Authors:  Xiaofeng Zhu; Heung-Il Suk; Heng Huang; Dinggang Shen
Journal:  IEEE Trans Big Data       Date:  2017-08-04

6.  Disrupted interactions among the hippocampal, dorsal attention, and central-executive networks in amnestic mild cognitive impairment.

Authors:  Ganesh B Chand; Ihab Hajjar; Deqiang Qiu
Journal:  Hum Brain Mapp       Date:  2018-09-11       Impact factor: 5.038

7.  Inter-modality relationship constrained multi-modality multi-task feature selection for Alzheimer's Disease and mild cognitive impairment identification.

Authors:  Feng Liu; Chong-Yaw Wee; Huafu Chen; Dinggang Shen
Journal:  Neuroimage       Date:  2013-09-14       Impact factor: 6.556

8.  Randomized denoising autoencoders for smaller and efficient imaging based AD clinical trials.

Authors:  Vamsi K Ithapul; Vikas Singh; Ozioma Okonkwo; Sterling C Johnson
Journal:  Med Image Comput Comput Assist Interv       Date:  2014

9.  Maximum-margin based representation learning from multiple atlases for Alzheimer's disease classification.

Authors:  Rui Min; Jian Cheng; True Price; Guorong Wu; Dinggang Shen
Journal:  Med Image Comput Comput Assist Interv       Date:  2014

Review 10.  Single and Combined Neuroimaging Techniques for Alzheimer's Disease Detection.

Authors:  Morteza Amini; Mir Mohsen Pedram; Alireza Moradi; Mahdieh Jamshidi; Mahshad Ouchani
Journal:  Comput Intell Neurosci       Date:  2021-07-13
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