Alzheimer’s disease diagnosis based on long-range dependency mechanism using convolutional neural network

被引:0
作者
Zhao Pei
Yuanshuai Gou
Miao Ma
Min Guo
Chengcai Leng
Yuli Chen
Jun Li
机构
[1] Ministry of Education,Key Laboratory of Modern Teaching Technology
[2] Shaanxi Normal University,School of Computer Science
[3] Northwest University,School of Mathematics
[4] Nanjing Normal University,School of Computer Science
来源
Multimedia Tools and Applications | 2022年 / 81卷
关键词
Alzheimer’s disease diagnosis; Long-range dependency mechanism; Convolutional neural network; Classification;
D O I
暂无
中图分类号
学科分类号
摘要
Being able to collect rich morphological information of brain, structural magnetic resonance imaging (MRI) is popularly applied to computer-aided diagnosis of Alzheimer’s disease (AD). Conventional methods for AD diagnosis are labor-intensive and typically depend on a substantial amount of hand-crafted features. In this paper, we propose a novel framework of convolutional neural network that aims at identifying AD or normal control, and mild cognitive impairment or normal control. The centerpiece of our method are pseudo-3D block and expanded global context block which are integrated into residual block of backbone in a cascaded manner. To be specific, we transfer pseudo-3D block in the video feature representation to extract structural MRI features. Besides, we extend the 2D global context block to the 3D model which can effectively combine the features and capture the latent associations, while simulate the global context in each dimension of structural MRI results. With the preprocessed structural MRI used as the input of the overall network, our method is capable of constructing a latent representation with multiple residual blocks to promote the classification accuracy. Intrinsically, our method reduces the complexity of conventional 3D convolutional network model applied to AD diagnosis and improves the classification accuracy over the baseline. Furthermore, our network can fully take advantage of the deep 3D convolutional neural network for automatic feature extraction and representation, and thus avoids the limitation of low processing efficiency caused by the preprocessing procedure in which a specific area needs to be annotated in advance. Experimental results on Alzheimer’s Disease Neuroimaging Initiative database indicate that our proposed method reports accuracy of 89.29% on the AD/NC and 87.57% on the mild cognitive impairment/NC, whilst our approach achieves the 0.5% improvement of accuracy compared with the backbone.
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页码:36053 / 36068
页数:15
相关论文
共 94 条
[1]  
Akkus Z(2017)Deep learning for brain mri segmentation: State of the art and future directions J Digit Imaging 30 449-459, 06
[2]  
Galimzianova A(2014)Multivariate data analysis and machine learning in alzheimer’s disease with a focus on structural magnetic resonance imaging J Alzheimer’s Disease 41 685-708,04
[3]  
Hoogi A(2017)Classification of ct brain images based on deep learning networks Comput Methods Prog Biomed 138 49-56
[4]  
Rubin D(2008)The alzheimer’s disease neuroimaging initiative (adni): Mri methods J Magnetic Resonance Imaging 27 685-691, 05
[5]  
Erickson B(2008)Automatic classification of mr scans in alzheimer’s disease Brain 131 681-689, 04
[6]  
Falahati F(2020)Hierarchical fully convolutional network for joint atrophy localization and alzheimer’s disease diagnosis using structural mri IEEE Trans Pattern Anal Mach Intell 42 880-893
[7]  
Westman E(2019)Joint classification and regression via deep multi-task multi-channel learning for alzheimer’s disease diagnosis IEEE Trans Biomed Eng 66 1195-1206
[8]  
Simmons A(2014)Hierarchical fusion of features and classifier decisions for alzheimer’s disease diagnosis Hum Brain Mapp 35 1305-1319, 04
[9]  
Gao XW(2015)Machine learning framework for early mri-based alzheimer’s conversion prediction in mci subjects NeuroImage 104 398-412
[10]  
Hui R(2016)Ensembles of deep learning architectures for the early diagnosis of the alzheimer’s disease Int J Neural Syst 26 03-361, 08