scholarly journals Computer-aided classification of Alzheimer's disease based on support vector machine with combination of cerebral image features in MRI

2016 ◽  
Vol 694 ◽  
pp. 012036 ◽  
Author(s):  
C Jongkreangkrai ◽  
Y Vichianin ◽  
C Tocharoenchai ◽  
H Arimura ◽  
2017 ◽  
Vol 17 (0) ◽  
pp. 112-124
Author(s):  
Asuka Hatabu ◽  
Masafumi Harada ◽  
Yoshitake Takahashi ◽  
Shunsuke Watanabe ◽  
Kenya Sakamoto ◽  
...  

2008 ◽  
Vol 51 (2) ◽  
pp. 73-83 ◽  
Author(s):  
Benoît Magnin ◽  
Lilia Mesrob ◽  
Serge Kinkingnéhun ◽  
Mélanie Pélégrini-Issac ◽  
Olivier Colliot ◽  
...  

2008 ◽  
Author(s):  
Hidetaka Arimura ◽  
Takashi Yoshiura ◽  
Seiji Kumazawa ◽  
Kazuhiro Tanaka ◽  
Hiroshi Koga ◽  
...  

2020 ◽  
Vol 40 (4) ◽  
pp. 545-554
Author(s):  
Bang-Hung Yang ◽  
Jyh-Cheng Chen ◽  
Wen-Hsiang Chou ◽  
Wen-Sheng Huang ◽  
Jong-Ling Fuh ◽  
...  

Author(s):  
S. Rajintha. A. S. Gunawardena ◽  
Fei He ◽  
Ptolemaios Sarrigiannis ◽  
Daniel J. Blackburn

AbstractIn this work, nonlinear temporal features from multi-channel EEGs are used for the classification of Alzheimer’s disease patients from healthy individuals. This was achieved by temporal manifold learning using Gaussian Process Latent Variable Models (GPLVM) as a nonlinear dimensionality reduction technique. Classification of the extracted features was undertaken using a nonlinear Support Vector Machine. Comparisons were made against the linear counterpart, Principle Component Analysis while exploring the effect of the time window or EEG epoch length used. It was demonstrated that temporal manifold learning using GPLVM is better in extracting features that attain high separability and prediction accuracy. This work aims to set the significance of using GPLVM temporal manifold learning for EEG feature extraction in the classification of Alzheimer’s disease.


2021 ◽  
Vol 15 ◽  
Author(s):  
Justine Staal ◽  
Francesco Mattace-Raso ◽  
Hennie A. M. Daniels ◽  
Johannes van der Steen ◽  
Johan J. M. Pel

BackgroundResearch into Alzheimer’s disease has shifted toward the identification of minimally invasive and less time-consuming modalities to define preclinical stages of Alzheimer’s disease.MethodHere, we propose visuomotor network dysfunctions as a potential biomarker in AD and its prodromal stage, mild cognitive impairment with underlying the Alzheimer’s disease pathology. The functionality of this network was tested in terms of timing, accuracy, and speed with goal-directed eye-hand tasks. The predictive power was determined by comparing the classification performance of a zero-rule algorithm (baseline), a decision tree, a support vector machine, and a neural network using functional parameters to classify controls without cognitive disorders, mild cognitive impaired patients, and Alzheimer’s disease patients.ResultsFair to good classification was achieved between controls and patients, controls and mild cognitive impaired patients, and between controls and Alzheimer’s disease patients with the support vector machine (77–82% accuracy, 57–93% sensitivity, 63–90% specificity, 0.74–0.78 area under the curve). Classification between mild cognitive impaired patients and Alzheimer’s disease patients was poor, as no algorithm outperformed the baseline (63% accuracy, 0% sensitivity, 100% specificity, 0.50 area under the curve).Comparison with Existing Method(s)The classification performance found in the present study is comparable to that of the existing CSF and MRI biomarkers.ConclusionThe data suggest that visuomotor network dysfunctions have potential in biomarker research and the proposed eye-hand tasks could add to existing tests to form a clear definition of the preclinical phenotype of AD.


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