Convolutional Neural Network-based MR Image Analysis for Alzheimer’s Disease Classification

Author:

Choi Boo-Kyeong1ORCID,Madusanka Nuwan2ORCID,Choi Heung-Kook2ORCID,So Jae-Hong1ORCID,Kim Cho-Hee1ORCID,Park Hyeon-Gyun2ORCID,Bhattacharjee Subrata2ORCID,Prakash Deekshitha2ORCID

Affiliation:

1. Department of Digital Anti-Aging Healthcare, u-AHRC, Inje University, Gimhae, Korea

2. Department of Computer Engineering, u-AHRC, Inje University, Gimhae, Korea

Abstract

Background: In this study, we used a convolutional neural network (CNN) to classify Alzheimer’s disease (AD), mild cognitive impairment (MCI), and normal control (NC) subjects based on images of the hippocampus region extracted from magnetic resonance (MR) images of the brain. Materials and Methods: The datasets used in this study were obtained from the Alzheimer's Disease Neuroimaging Initiative (ADNI). To segment the hippocampal region automatically, the patient brain MR images were matched to the International Consortium for Brain Mapping template (ICBM) using 3D-Slicer software. Using prior knowledge and anatomical annotation label information, the hippocampal region was automatically extracted from the brain MR images. Results: The area of the hippocampus in each image was preprocessed using local entropy minimization with a bi-cubic spline model (LEMS) by an inhomogeneity intensity correction method. To train the CNN model, we separated the dataset into three groups, namely AD/NC, AD/MCI, and MCI/NC. The prediction model achieved an accuracy of 92.3% for AD/NC, 85.6% for AD/MCI, and 78.1% for MCI/NC. Conclusion: The results of this study were compared to those of previous studies, and summarized and analyzed to facilitate more flexible analyses based on additional experiments. The classification accuracy obtained by the proposed method is highly accurate. These findings suggest that this approach is efficient and may be a promising strategy to obtain good AD, MCI and NC classification performance using small patch images of hippocampus instead of whole slide images.

Funder

Inje University

Publisher

Bentham Science Publishers Ltd.

Subject

Radiology Nuclear Medicine and imaging

Reference33 articles.

1. Choi B.K.; Diagnosis and classification of Alzheimer’s patients using Convolution Neural Network Master Thesis, Inje University Graduate School:Gimhae February 2019

2. Jeong K.H.; Artificial intelligence based medical image analysis technology trend 2018,1-12

3. Lee Y.H.; Kim H.J.; Kim G.B.; Kim N.K.; Deep learning-based feature extraction for medical image analysis. Korean Society of Imaging Informatics in Medicine 2014,20,1-12

4. Kim KW; Jo HS; Jo YH; Korea 2017 central dementia center annual report Korea Central Dementia Center 2018,1-63

5. Choi B.K.; So J.H.; Son Y.J.; Dementia classification by distance analysis from the central coronal plane of the brain hippocampus. J Korea Multimed Soc 2018,21(2),147-157

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