Emphasis Learning, Features Repetition in Width Instead of Length to Improve Classification Performance: Case Study—Alzheimer’s Disease Diagnosis

In the past decade, many studies have been conducted to advance computer-aided systems for Alzheimer’s disease (AD) diagnosis. Most of them have recently developed systems concentrated on extracting and combining features from MRI, PET, and CSF. For the most part, they have obtained very h...

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Main Authors: Hamid Akramifard, MohammadAli Balafar, SeyedNaser Razavi, Abd Rahman Ramli
Format: Article
Language:English
Published: MDPI AG 2020-02-01
Series:Sensors
Subjects:
svm
pca
Online Access:https://www.mdpi.com/1424-8220/20/3/941
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spelling doaj-7daad6277f9e47cd99205354e96a12a72020-11-25T01:42:55ZengMDPI AGSensors1424-82202020-02-0120394110.3390/s20030941s20030941Emphasis Learning, Features Repetition in Width Instead of Length to Improve Classification Performance: Case Study—Alzheimer’s Disease DiagnosisHamid Akramifard0MohammadAli Balafar1SeyedNaser Razavi2Abd Rahman Ramli3. Faculty of Electrical and Computer Engineering, University of Tabriz, East Azerbaijan, Tabriz 51666-16471, Iran. Faculty of Electrical and Computer Engineering, University of Tabriz, East Azerbaijan, Tabriz 51666-16471, Iran. Faculty of Electrical and Computer Engineering, University of Tabriz, East Azerbaijan, Tabriz 51666-16471, Iran. Department of Computer and Communication Systems Engineering, University Putra Malaysia, UPM-Serdang 43400, MalaysiaIn the past decade, many studies have been conducted to advance computer-aided systems for Alzheimer’s disease (AD) diagnosis. Most of them have recently developed systems concentrated on extracting and combining features from MRI, PET, and CSF. For the most part, they have obtained very high performance. However, improving the performance of a classification problem is complicated, specifically when the model’s accuracy or other performance measurements are higher than 90%. In this study, a novel methodology is proposed to address this problem, specifically in Alzheimer’s disease diagnosis classification. This methodology is the first of its kind in the literature, based on the notion of replication on the feature space instead of the traditional sample space. Briefly, the main steps of the proposed method include extracting, embedding, and exploring the best subset of features. For feature extraction, we adopt VBM-SPM; for embedding features, a concatenation strategy is used on the features to ultimately create one feature vector for each subject. Principal component analysis is applied to extract new features, forming a low-dimensional compact space. A novel process is applied by replicating selected components, assessing the classification model, and repeating the replication until performance divergence or convergence. The proposed method aims to explore most significant features and highest-preforming model at the same time, to classify normal subjects from AD and mild cognitive impairment (MCI) patients. In each epoch, a small subset of candidate features is assessed by support vector machine (SVM) classifier. This repeating procedure is continued until the highest performance is achieved. Experimental results reveal the highest performance reported in the literature for this specific classification problem. We obtained a model with accuracies of 98.81%, 81.61%, and 81.40% for AD vs. normal control (NC), MCI vs. NC, and AD vs. MCI classification, respectively.https://www.mdpi.com/1424-8220/20/3/941alzheimer’s diseaseemphasis learningmulti-modal classificationsvmpca
collection DOAJ
language English
format Article
sources DOAJ
author Hamid Akramifard
MohammadAli Balafar
SeyedNaser Razavi
Abd Rahman Ramli
spellingShingle Hamid Akramifard
MohammadAli Balafar
SeyedNaser Razavi
Abd Rahman Ramli
Emphasis Learning, Features Repetition in Width Instead of Length to Improve Classification Performance: Case Study—Alzheimer’s Disease Diagnosis
Sensors
alzheimer’s disease
emphasis learning
multi-modal classification
svm
pca
author_facet Hamid Akramifard
MohammadAli Balafar
SeyedNaser Razavi
Abd Rahman Ramli
author_sort Hamid Akramifard
title Emphasis Learning, Features Repetition in Width Instead of Length to Improve Classification Performance: Case Study—Alzheimer’s Disease Diagnosis
title_short Emphasis Learning, Features Repetition in Width Instead of Length to Improve Classification Performance: Case Study—Alzheimer’s Disease Diagnosis
title_full Emphasis Learning, Features Repetition in Width Instead of Length to Improve Classification Performance: Case Study—Alzheimer’s Disease Diagnosis
title_fullStr Emphasis Learning, Features Repetition in Width Instead of Length to Improve Classification Performance: Case Study—Alzheimer’s Disease Diagnosis
title_full_unstemmed Emphasis Learning, Features Repetition in Width Instead of Length to Improve Classification Performance: Case Study—Alzheimer’s Disease Diagnosis
title_sort emphasis learning, features repetition in width instead of length to improve classification performance: case study—alzheimer’s disease diagnosis
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-02-01
description In the past decade, many studies have been conducted to advance computer-aided systems for Alzheimer’s disease (AD) diagnosis. Most of them have recently developed systems concentrated on extracting and combining features from MRI, PET, and CSF. For the most part, they have obtained very high performance. However, improving the performance of a classification problem is complicated, specifically when the model’s accuracy or other performance measurements are higher than 90%. In this study, a novel methodology is proposed to address this problem, specifically in Alzheimer’s disease diagnosis classification. This methodology is the first of its kind in the literature, based on the notion of replication on the feature space instead of the traditional sample space. Briefly, the main steps of the proposed method include extracting, embedding, and exploring the best subset of features. For feature extraction, we adopt VBM-SPM; for embedding features, a concatenation strategy is used on the features to ultimately create one feature vector for each subject. Principal component analysis is applied to extract new features, forming a low-dimensional compact space. A novel process is applied by replicating selected components, assessing the classification model, and repeating the replication until performance divergence or convergence. The proposed method aims to explore most significant features and highest-preforming model at the same time, to classify normal subjects from AD and mild cognitive impairment (MCI) patients. In each epoch, a small subset of candidate features is assessed by support vector machine (SVM) classifier. This repeating procedure is continued until the highest performance is achieved. Experimental results reveal the highest performance reported in the literature for this specific classification problem. We obtained a model with accuracies of 98.81%, 81.61%, and 81.40% for AD vs. normal control (NC), MCI vs. NC, and AD vs. MCI classification, respectively.
topic alzheimer’s disease
emphasis learning
multi-modal classification
svm
pca
url https://www.mdpi.com/1424-8220/20/3/941
work_keys_str_mv AT hamidakramifard emphasislearningfeaturesrepetitioninwidthinsteadoflengthtoimproveclassificationperformancecasestudyalzheimersdiseasediagnosis
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AT seyednaserrazavi emphasislearningfeaturesrepetitioninwidthinsteadoflengthtoimproveclassificationperformancecasestudyalzheimersdiseasediagnosis
AT abdrahmanramli emphasislearningfeaturesrepetitioninwidthinsteadoflengthtoimproveclassificationperformancecasestudyalzheimersdiseasediagnosis
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