Classification of Alzheimer’s Disease with and without Imagery Using Gradient Boosted Machines and ResNet-50
Background. Alzheimer’s is a disease for which there is no cure. Diagnosing Alzheimer’s disease (AD) early facilitates family planning and cost control. The purpose of this study is to predict the presence of AD using socio-demographic, clinical, and magnetic resonance imaging (M...
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doaj-77ba555e20534590b7567a7158a62eed2020-11-24T21:48:59ZengMDPI AGBrain Sciences2076-34252019-08-019921210.3390/brainsci9090212brainsci9090212Classification of Alzheimer’s Disease with and without Imagery Using Gradient Boosted Machines and ResNet-50Lawrence V. Fulton0Diane Dolezel1Jordan Harrop2Yan Yan3Christopher P. Fulton4Department of Health Administration, Texas State University, 601 University Drive, San Marcos, TX 78666, USADepartment of Health Administration, Texas State University, 601 University Drive, San Marcos, TX 78666, USAAcushnet Holdings Corporation, Acushnet, MA 02743, USADepartment of Health Administration, Texas State University, 601 University Drive, San Marcos, TX 78666, USAUnited States Air Force Experimental Test Pilot School, Edwards Air Force Base, CA 93524, USABackground. Alzheimer’s is a disease for which there is no cure. Diagnosing Alzheimer’s disease (AD) early facilitates family planning and cost control. The purpose of this study is to predict the presence of AD using socio-demographic, clinical, and magnetic resonance imaging (MRI) data. Early detection of AD enables family planning and may reduce costs by delaying long-term care. Accurate, non-imagery methods also reduce patient costs. The Open Access Series of Imaging Studies (OASIS-1) cross-sectional MRI data were analyzed. A gradient boosted machine (GBM) predicted the presence of AD as a function of gender, age, education, socioeconomic status (SES), and a mini-mental state exam (MMSE). A residual network with 50 layers (ResNet-50) predicted the clinical dementia rating (CDR) presence and severity from MRI’s (multi-class classification). The GBM achieved a mean 91.3% prediction accuracy (10-fold stratified cross validation) for dichotomous CDR using socio-demographic and MMSE variables. MMSE was the most important feature. ResNet-50 using image generation techniques based on an 80% training set resulted in 98.99% three class prediction accuracy on 4139 images (20% validation set) at Epoch 133 and nearly perfect multi-class predication accuracy on the training set (99.34%). Machine learning methods classify AD with high accuracy. GBM models may help provide initial detection based on non-imagery analysis, while ResNet-50 network models might help identify AD patients automatically prior to provider review.https://www.mdpi.com/2076-3425/9/9/212Alzheimer’s diseaseextreme gradient boostingdeep residual learningconvolutional neural networksmachine learningdementia |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Lawrence V. Fulton Diane Dolezel Jordan Harrop Yan Yan Christopher P. Fulton |
spellingShingle |
Lawrence V. Fulton Diane Dolezel Jordan Harrop Yan Yan Christopher P. Fulton Classification of Alzheimer’s Disease with and without Imagery Using Gradient Boosted Machines and ResNet-50 Brain Sciences Alzheimer’s disease extreme gradient boosting deep residual learning convolutional neural networks machine learning dementia |
author_facet |
Lawrence V. Fulton Diane Dolezel Jordan Harrop Yan Yan Christopher P. Fulton |
author_sort |
Lawrence V. Fulton |
title |
Classification of Alzheimer’s Disease with and without Imagery Using Gradient Boosted Machines and ResNet-50 |
title_short |
Classification of Alzheimer’s Disease with and without Imagery Using Gradient Boosted Machines and ResNet-50 |
title_full |
Classification of Alzheimer’s Disease with and without Imagery Using Gradient Boosted Machines and ResNet-50 |
title_fullStr |
Classification of Alzheimer’s Disease with and without Imagery Using Gradient Boosted Machines and ResNet-50 |
title_full_unstemmed |
Classification of Alzheimer’s Disease with and without Imagery Using Gradient Boosted Machines and ResNet-50 |
title_sort |
classification of alzheimer’s disease with and without imagery using gradient boosted machines and resnet-50 |
publisher |
MDPI AG |
series |
Brain Sciences |
issn |
2076-3425 |
publishDate |
2019-08-01 |
description |
Background. Alzheimer’s is a disease for which there is no cure. Diagnosing Alzheimer’s disease (AD) early facilitates family planning and cost control. The purpose of this study is to predict the presence of AD using socio-demographic, clinical, and magnetic resonance imaging (MRI) data. Early detection of AD enables family planning and may reduce costs by delaying long-term care. Accurate, non-imagery methods also reduce patient costs. The Open Access Series of Imaging Studies (OASIS-1) cross-sectional MRI data were analyzed. A gradient boosted machine (GBM) predicted the presence of AD as a function of gender, age, education, socioeconomic status (SES), and a mini-mental state exam (MMSE). A residual network with 50 layers (ResNet-50) predicted the clinical dementia rating (CDR) presence and severity from MRI’s (multi-class classification). The GBM achieved a mean 91.3% prediction accuracy (10-fold stratified cross validation) for dichotomous CDR using socio-demographic and MMSE variables. MMSE was the most important feature. ResNet-50 using image generation techniques based on an 80% training set resulted in 98.99% three class prediction accuracy on 4139 images (20% validation set) at Epoch 133 and nearly perfect multi-class predication accuracy on the training set (99.34%). Machine learning methods classify AD with high accuracy. GBM models may help provide initial detection based on non-imagery analysis, while ResNet-50 network models might help identify AD patients automatically prior to provider review. |
topic |
Alzheimer’s disease extreme gradient boosting deep residual learning convolutional neural networks machine learning dementia |
url |
https://www.mdpi.com/2076-3425/9/9/212 |
work_keys_str_mv |
AT lawrencevfulton classificationofalzheimersdiseasewithandwithoutimageryusinggradientboostedmachinesandresnet50 AT dianedolezel classificationofalzheimersdiseasewithandwithoutimageryusinggradientboostedmachinesandresnet50 AT jordanharrop classificationofalzheimersdiseasewithandwithoutimageryusinggradientboostedmachinesandresnet50 AT yanyan classificationofalzheimersdiseasewithandwithoutimageryusinggradientboostedmachinesandresnet50 AT christopherpfulton classificationofalzheimersdiseasewithandwithoutimageryusinggradientboostedmachinesandresnet50 |
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