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Classification of Alzheimer’s Disease with and without Imagery Using Gradient Boosted Machines and ResNet-50

机译:使用梯度增强机和ResNet-50对有图像和无图像的阿尔茨海默氏病进行分类

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摘要

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.
机译:背景。老年痴呆症是无法治愈的疾病。尽早诊断阿尔茨海默氏病(AD)有助于计划生育和成本控制。这项研究的目的是使用社会人口统计学,临床和磁共振成像(MRI)数据预测AD的存在。尽早发现AD可以进行计划生育,并且可以通过延迟长期照护来降低成本。准确的非成像方法还可以降低患者费用。分析了影像研究的开放获取系列(OASIS-1)横截面MRI数据。梯度增强机(GBM)预测AD的存在与性别,年龄,教育程度,社会经济地位(SES)和小精神状态检查(MMSE)有关。一个具有50层的残留网络(ResNet-50)根据MRI的(多类分类)预测了临床痴呆评分(CDR)的存在和严重程度。使用社会人口统计学和MMSE变量,二分法CDR GBM的平均预测准确度达到91.3%(分层交叉验证的10倍)。 MMSE是最重要的功能。 ResNet-50使用基于80%训练集的图像生成技术,在Epoch 133上对4139张图像(20%验证集)获得了98.99%的三级预测准确性,在训练集上实现了近乎完美的多类别预测准确性(99.34%) 。机器学习方法可以对AD进行高精度分类。 GBM模型可以帮助基于非图像分析提供初始检测,而ResNet-50网络模型可以帮助在提供者进行检查之前自动识别AD患者。

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