Determination of Alzheimer's disease based on morphology and atrophy using machine learning combined with automated segmentation

Author:

Ikemitsu Natsuki1,Kanazawa Yuki2ORCID,Haga Akihiro2,Hayashi Hiroaki3,Matsumoto Yuki2ORCID,Harada Masafumi2

Affiliation:

1. Graduate school of Health Science, Tokushima University, Tokushima, Japan

2. Institute of Biomedical Sciences, Tokushima University Graduate School, Tokushima, Japan

3. Faculty of Health Sciences, Institute of Medical, Pharmaceutical and Health Sciences, Kanazawa University, Ishikawa, Japan

Abstract

Background To evaluate the degree of cerebral atrophy for Alzheimer's disease (AD), voxel-based morphometry has been performed with magnetic resonance imaging. Detailed morphological changes in a specific tissue area having the most evidence of atrophy were not considered by the machine-learning technique. Purpose To develop a machine-learning system that can capture morphology features for determination of atrophy of brain tissue in early-stage AD and classification of healthy participants or patients. Material and Methods Three-dimensional T1-weighted (3D-T1W) data were obtained from AD Neuroimaging Initiative (200 healthy controls and 200 patients with early-stage AD). Automated segmentation of 3D-T1W data was performed. Deep learning (DL) and support vector machine (SVM) were trained using 66-segmented volume values as input and AD diagnosis as output. DL was performed using 66 volume values or gray matter (GM) and white matter (WM) volume values. SVM learning was performed using 66 volume values and six regions with high variable importance. 3D convolutional neural network (3D-CNN) was trained using the segmented images. Accuracy and area under curve (AUC) were obtained. Variable importance was evaluated from logistic regression analysis. Results DL for GM and WM volume values, accuracy 0.6; SVM for all volume values, accuracy 0.82 and AUC 0.81; DL for all volume values, accuracy 0.82 and AUC 0.8; 3D-CNN using segmental images of the whole brain, accuracy 0.5 and AUC 0.51. SVM using volume values of six regions, accuracy 0.82; image-based 3D-CNN, highest accuracy 0.69. Conclusion Our results show that atrophic features are more considerable than morphological features in the early detection of AD.

Funder

JSPS KAKENHI

Publisher

SAGE Publications

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