Early detection of alzheimer's disease based on clinical trials, three-dimensional imaging data, and personal information using autoencoders

Background: A timely diagnosis of Alzheimer's disease (AD) is crucial to obtain more practical treatments. In this article, a novel approach using Auto-Encoder Neural Networks (AENN) for early detection of AD was proposed. Method: The proposed method mainly deals with the classification of mult...

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Main Authors: Hamid Akramifard, Mohammad Ali Balafar, Seyed Naser Razavi, Abd Rahman Ramli
Format: Article
Language:English
Published: Wolters Kluwer Medknow Publications 2021-01-01
Series:Journal of Medical Signals and Sensors
Subjects:
Online Access:http://www.jmssjournal.net/article.asp?issn=2228-7477;year=2021;volume=11;issue=2;spage=120;epage=130;aulast=Akramifard
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spelling doaj-1240d2e95b5e40ea907490075efe4d442021-06-15T04:43:49ZengWolters Kluwer Medknow PublicationsJournal of Medical Signals and Sensors2228-74772021-01-0111212013010.4103/jmss.JMSS_11_20Early detection of alzheimer's disease based on clinical trials, three-dimensional imaging data, and personal information using autoencodersHamid AkramifardMohammad Ali BalafarSeyed Naser RazaviAbd Rahman RamliBackground: A timely diagnosis of Alzheimer's disease (AD) is crucial to obtain more practical treatments. In this article, a novel approach using Auto-Encoder Neural Networks (AENN) for early detection of AD was proposed. Method: The proposed method mainly deals with the classification of multimodal data and the imputation of missing data. The data under study involve the MiniMental State Examination, magnetic resonance imaging, positron emission tomography, cerebrospinal fluid data, and personal information. Natural logarithm was used for normalizing the data. The Auto-Encoder Neural Networks was used for imputing missing data. Principal component analysis algorithm was used for reducing dimensionality of data. Support Vector Machine (SVM) was used as classifier. The proposed method was evaluated using Alzheimer's Disease Neuroimaging Initiative (ADNI) database. Then, 10fold crossvalidation was used to audit the detection accuracy of the method. Results: The effectiveness of the proposed approach was studied under several scenarios considering 705 cases of ADNI database. In three binary classification problems, that is AD vs. normal controls (NCs), mild cognitive impairment (MCI) vs. NC, and MCI vs. AD, we obtained the accuracies of 95.57%, 83.01%, and 78.67%, respectively. Conclusion: Experimental results revealed that the proposed method significantly outperformed most of the stateoftheart methods.http://www.jmssjournal.net/article.asp?issn=2228-7477;year=2021;volume=11;issue=2;spage=120;epage=130;aulast=Akramifardalzheimer's diseaseautoencoderscerebrospinal fluidearly detectionmagnetic resonance imagingmini-mental state examinationmissing datapositron emission tomographys
collection DOAJ
language English
format Article
sources DOAJ
author Hamid Akramifard
Mohammad Ali Balafar
Seyed Naser Razavi
Abd Rahman Ramli
spellingShingle Hamid Akramifard
Mohammad Ali Balafar
Seyed Naser Razavi
Abd Rahman Ramli
Early detection of alzheimer's disease based on clinical trials, three-dimensional imaging data, and personal information using autoencoders
Journal of Medical Signals and Sensors
alzheimer's disease
autoencoders
cerebrospinal fluid
early detection
magnetic resonance imaging
mini-mental state examination
missing data
positron emission tomographys
author_facet Hamid Akramifard
Mohammad Ali Balafar
Seyed Naser Razavi
Abd Rahman Ramli
author_sort Hamid Akramifard
title Early detection of alzheimer's disease based on clinical trials, three-dimensional imaging data, and personal information using autoencoders
title_short Early detection of alzheimer's disease based on clinical trials, three-dimensional imaging data, and personal information using autoencoders
title_full Early detection of alzheimer's disease based on clinical trials, three-dimensional imaging data, and personal information using autoencoders
title_fullStr Early detection of alzheimer's disease based on clinical trials, three-dimensional imaging data, and personal information using autoencoders
title_full_unstemmed Early detection of alzheimer's disease based on clinical trials, three-dimensional imaging data, and personal information using autoencoders
title_sort early detection of alzheimer's disease based on clinical trials, three-dimensional imaging data, and personal information using autoencoders
publisher Wolters Kluwer Medknow Publications
series Journal of Medical Signals and Sensors
issn 2228-7477
publishDate 2021-01-01
description Background: A timely diagnosis of Alzheimer's disease (AD) is crucial to obtain more practical treatments. In this article, a novel approach using Auto-Encoder Neural Networks (AENN) for early detection of AD was proposed. Method: The proposed method mainly deals with the classification of multimodal data and the imputation of missing data. The data under study involve the MiniMental State Examination, magnetic resonance imaging, positron emission tomography, cerebrospinal fluid data, and personal information. Natural logarithm was used for normalizing the data. The Auto-Encoder Neural Networks was used for imputing missing data. Principal component analysis algorithm was used for reducing dimensionality of data. Support Vector Machine (SVM) was used as classifier. The proposed method was evaluated using Alzheimer's Disease Neuroimaging Initiative (ADNI) database. Then, 10fold crossvalidation was used to audit the detection accuracy of the method. Results: The effectiveness of the proposed approach was studied under several scenarios considering 705 cases of ADNI database. In three binary classification problems, that is AD vs. normal controls (NCs), mild cognitive impairment (MCI) vs. NC, and MCI vs. AD, we obtained the accuracies of 95.57%, 83.01%, and 78.67%, respectively. Conclusion: Experimental results revealed that the proposed method significantly outperformed most of the stateoftheart methods.
topic alzheimer's disease
autoencoders
cerebrospinal fluid
early detection
magnetic resonance imaging
mini-mental state examination
missing data
positron emission tomographys
url http://www.jmssjournal.net/article.asp?issn=2228-7477;year=2021;volume=11;issue=2;spage=120;epage=130;aulast=Akramifard
work_keys_str_mv AT hamidakramifard earlydetectionofalzheimersdiseasebasedonclinicaltrialsthreedimensionalimagingdataandpersonalinformationusingautoencoders
AT mohammadalibalafar earlydetectionofalzheimersdiseasebasedonclinicaltrialsthreedimensionalimagingdataandpersonalinformationusingautoencoders
AT seyednaserrazavi earlydetectionofalzheimersdiseasebasedonclinicaltrialsthreedimensionalimagingdataandpersonalinformationusingautoencoders
AT abdrahmanramli earlydetectionofalzheimersdiseasebasedonclinicaltrialsthreedimensionalimagingdataandpersonalinformationusingautoencoders
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