Computer based classification of MR scans in first time applicant Alzheimer patients

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Date

2012

Authors

Fatma Eksi Polat
Selçuk Orhan Demirel
Ömer Kitiş
Fatma Şimşek
Damla İşman Haznedaroǧlu
Kerry Lee Coburn
Emre Kumral
Ali Saffet Gönül

Journal Title

Journal ISSN

Volume Title

Publisher

Bentham Science Publ Ltd

Open Access Color

Green Open Access

Yes

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No
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Average
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Average
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Average

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Abstract

In this study we aimed to classify MR images for recognizing Alzheimer Disease (AD) in a group of patients who were recently diagnosed by clinical history and neuropsychiatric exams by using non-biased machine-learning techniques. T1 weighted MRI scans of 31 patients with probable AD and 31 age- and gender-matched cognitively normal elderly were analyzed with voxel-based morphometry and classified by support vector machine (SVM) a machine learning technique. SVM could differentiate patients from controls with accuracy of 74 % (sensitivity: 70 % and specificity: 77 %) when the whole brain was included the analyses. The classification accuracy was increased to 79 % (sensitivity: 65 % and specificity: 93 %) when the analyses restricted to hippocampus. Our results showed that SVM is a promising tool for diagnosis of AD but needed to be improved. © 2012 Bentham Science Publishers. © 2013 Elsevier B.V. All rights reserved., MEDLINE® is the source for the MeSH terms of this document.

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Keywords

Alzheimer's Disease, Classification, Diagnoses, Hippocampus, Magnetic Resonance Imaging, Support Vector Machines, Magnetom Symphony, Aged, Alzheimer Disease, Article, Clinical Article, Cognition, Controlled Study, Female, Hippocampus, Human, Male, Medical Device, Neuropsychiatry, Nuclear Magnetic Resonance Imaging, Priority Journal, Sensitivity And Specificity, Support Vector Machine, Voxel Based Morphometry, Aged, Aged 80 And Over, Alzheimer Disease, Brain, Case-control Studies, Female, Humans, Image Interpretation Computer-assisted, Image Processing Computer-assisted, Magnetic Resonance Imaging, Male, Middle Aged, Sensitivity And Specificity, Support Vector Machines, aged, Alzheimer disease, article, clinical article, cognition, controlled study, female, hippocampus, human, male, medical device, neuropsychiatry, nuclear magnetic resonance imaging, priority journal, sensitivity and specificity, support vector machine, voxel based morphometry, Aged, Aged 80 and over, Alzheimer Disease, Brain, Case-Control Studies, Female, Humans, Image Interpretation Computer-Assisted, Image Processing Computer-Assisted, Magnetic Resonance Imaging, Male, Middle Aged, Sensitivity and Specificity, Support Vector Machines, Alzheimer’s Disease, Magnetic Resonance Imaging, Support Vector Machines, Hippocampus, Classification, Diagnoses, Aged, 80 and over, Male, Support vector machines, Support Vector Machine, Brain, Alzheimer's disease, Middle Aged, Classification, Hippocampus, Magnetic Resonance Imaging, Sensitivity and Specificity, Diagnoses, Magnetic resonance imaging, Alzheimer Disease, Case-Control Studies, Image Interpretation, Computer-Assisted, Image Processing, Computer-Assisted, Humans, Female, Aged

Fields of Science

03 medical and health sciences, 0302 clinical medicine

Citation

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OpenCitations Citation Count
5

Source

Current Alzheimer Research

Volume

9

Issue

7

Start Page

789

End Page

794
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CrossRef : 1

Scopus : 4

PubMed : 2

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Mendeley Readers : 39

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4

checked on Apr 08, 2026

Web of Science™ Citations

5

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