Prediction Alzheimer's disease from MRI images using deep learning

Esraa Mggdadi, Ahmad Al-Aiad, M. Al-Ayyad, Alaa Darabseh
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引用次数: 6

Abstract

Alzheimer's is one of the diseases that are the most publicized type of dementia. Alzheimer's disease will be born every 3 second the world. Previous research shows that early prediction of AD in the medical field for reduced cost of treatment and time of it. To this end, construct an efficient prediction system for AD, which is the goal of this paper, often reduces time to treatment, medical errors, and overall healthcare cost. We used Deep Learning to predict and diagnose AD and for this reason using python code in Colaboratory as platform environments. In particular, we used 2D CNN and vgg16 to achieve the research goal, we used experiments conducted on MRI images from Kaggle dataset. Our experiment achieved accuracy of 67.5% for 2D CNN algorithm, while the vgg16 algorithm achieved accuracy of 70.3%. We conclude by showing that deep learning can improve the prediction AD and using algorithm vgg16 is better than 2D CNN.
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利用深度学习从核磁共振成像图像预测阿尔茨海默病
阿尔茨海默氏症是最广为人知的痴呆症之一。全世界每三秒钟就会有一个阿尔茨海默氏症患者出生。以往的研究表明,医学领域对AD的早期预测可以降低治疗成本和时间。为此,构建一个有效的AD预测系统,这是本文的目标,往往减少治疗时间,医疗差错,和整体医疗成本。我们使用深度学习来预测和诊断AD,因此在协作实验室中使用python代码作为平台环境。特别是,我们使用2D CNN和vgg16来实现研究目标,我们使用来自Kaggle数据集的MRI图像进行实验。在我们的实验中,2D CNN算法的准确率为67.5%,而vgg16算法的准确率为70.3%。我们的结论是,深度学习可以提高预测AD,并且使用vgg16算法优于2D CNN。
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