Contourlet-based hippocampal magnetic resonance imaging texture features for multivariant classification and prediction of Alzheimer’s disease

被引:0
作者
Ni Gao
Li-Xin Tao
Jian Huang
Feng Zhang
Xia Li
Finbarr O’Sullivan
Si-Peng Chen
Si-Jia Tian
Gehendra Mahara
Yan-Xia Luo
Qi Gao
Xiang-Tong Liu
Wei Wang
Zhi-Gang Liang
Xiu-Hua Guo
机构
[1] Capital Medical University,School of Public Health
[2] Beijing Municipal Key Laboratory of Clinical Epidemiology,Department of Epidemiology & Public Health
[3] University College Cork,School of Medical Science
[4] Edith Cowan University,Department of Radiology, Xuanwu Hospital
[5] Capital Medical University,undefined
来源
Metabolic Brain Disease | 2018年 / 33卷
关键词
Alzheimer’s disease; Texture feature; Contourlets; Gaussian process; Partial least squares; Mild cognitive impairment;
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学科分类号
摘要
The study is aimed to assess whether the addition of contourlet-based hippocampal magnetic resonance imaging (MRI) texture features to multivariant models improves the classification of Alzheimer’s disease (AD) and the prediction of mild cognitive impairment (MCI) conversion, and to evaluate whether Gaussian process (GP) and partial least squares (PLS) are feasible in developing multivariant models in this context. Clinical and MRI data of 58 patients with probable AD, 147 with MCI, and 94 normal controls (NCs) were collected. Baseline contourlet-based hippocampal MRI texture features, medical histories, symptoms, neuropsychological tests, volume-based morphometric (VBM) parameters based on MRI, and regional CMgl measurement based on fluorine-18 fluorodeoxyglucose-positron emission tomography were included to develop GP and PLS models to classify different groups of subjects. GPR1 model, which incorporated MRI texture features and was based on GPG, performed better in classifying different groups of subjects than GPR2 model, which used the same algorithm and had the same data as GPR1 except that MRI texture features were excluded. PLS model, which included the same variables as GPR1 but was based on the PLS algorithm, performed best among the three models. GPR1 accurately predicted 82.2% (51/62) of MCI convertors confirmed during the 2-year follow-up period, while this figure was 53 (85.5%) for PLS model. GPR1 and PLS models accurately predicted 58 (79.5%) vs. 61 (83.6%) of 73 patients with stable MCI, respectively. For seven patients with MCI who converted to NCs, PLS model accurately predicted all cases (100%), while GPR1 predicted six (85.7%) cases. The addition of contourlet-based MRI texture features to multivariant models can effectively improve the classification of AD and the prediction of MCI conversion to AD. Both GPR and LPS models performed well in the classification and predictive process, with the latter having significantly higher classification and predictive accuracies. Advances in knowledge: We combined contourlet-based hippocampal MRI texture features, medical histories, symptoms, neuropsychological tests, volume-based morphometric (VBM) parameters, and regional CMgl measurement to develop models using GP and PLS algorithms to classify AD patients.
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页码:1899 / 1909
页数:10
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[1]  
Aoki C(2007)Chemical and morphological alterations of spines within the hippocampus and entorhinal cortex precede the onset of Alzheimer's disease pathology in double knock-in mice J Comp Neurol 505 352-362
[2]  
Mahadomrongkul V(2004)CSF biomarkers for mild cognitive impairment J Intern Med 256 224-234
[3]  
Fujisawa S(2015)Gaussian process classification of Alzheimer's disease and mild cognitive impairment from resting-state fMRI NeuroImage 112 232-243
[4]  
Habersat R(2012)Individual subject classification for Alzheimer's disease based on incremental learning using a spatial frequency representation of cortical thickness data Neuroimage 59 2217-2230
[5]  
Shirao T(2011)Automated hippocampal shape analysis predicts the onset of dementia in mild cognitive impairment NeuroImage 56 212-219
[6]  
Blennow K(2011)Identification of Conversion from Mild Cognitive Impairment to Alzheimer's Disease Using Multivariate Predictors PLoS ONE 6 e21896-781
[7]  
Challis E(2011)Alzheimer's disease neuroimaging I. Automatic classification of patients with Alzheimer's disease from structural MRI: a comparison of ten methods using the ADNI database NeuroImage 56 766-523
[8]  
Hurley P(2008)Detection of prodromal Alzheimer's disease via pattern classification of magnetic resonance imaging Neurobiol Aging 29 514-e27
[9]  
Serra L(2011)Prediction of MCI to AD conversion, via MRI, CSF biomarkers, and pattern classification Neurobiol Aging 32 e19-2106
[10]  
Bozzali M(2005)The contourlet transform: an efficient directional multiresolution image representation IEEE Trans Image Process 14 2091-521