Deep Learning Framework of Convolutional Neural Network (CNN) and Attention CNN for Early Diagnosis of Alzheimer's Disease

Hoda K. Mohamed, A. Abdelhafeez, Nariman A. Khalil
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Abstract

One of the biggest killers in the industrialized world is Alzheimer's disease (AD). Although computer-aided techniques have shown promising outcomes in laboratory experiments, they have yet to be used in a clinical setting. Recently, deep neural networks have gained traction, particularly for image processing tasks. There has been a dramatic increase in the number of publications written on the topic of identifying AD using deep learning since 2017. It has been observed that deep networks are more efficient than standard machine learning methods for detecting AD. It remains difficult to identify AD because distinguishing between comparable brain signals during categorization needs an extremely discriminative depiction of features. This paper proposed a deep neural network method for prediction the AD. Low-level computer vision has been a hotspot for research into deep convolutional neural networks (CNNs). Studies often focus on enhancing performance through the use of very deep CNNs. Yet, as one goes deeper, the effect of the shallow layers on the deeper ones gradually diminishes. Prompted by reality. This paper compared with the CNN and attention CNN models. The proposed model applied in the AD dataset which contains 5121 images for the train set. The results showed the attention CNN model is better than the CNN model in accuracy, precision, recall, loss, and AUC.
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卷积神经网络(CNN)的深度学习框架及其对阿尔茨海默病早期诊断的关注
阿尔茨海默病(AD)是工业化世界最大的杀手之一。尽管计算机辅助技术已经在实验室实验中显示出有希望的结果,但它们还没有在临床环境中使用。最近,深度神经网络获得了关注,特别是在图像处理任务方面。自2017年以来,关于使用深度学习识别AD的主题的出版物数量急剧增加。据观察,深度网络比标准的机器学习方法更有效地检测AD。识别AD仍然很困难,因为在分类过程中区分可比较的大脑信号需要对特征进行极具歧视性的描述。提出了一种基于深度神经网络的AD预测方法。低层次计算机视觉一直是深度卷积神经网络(cnn)研究的热点。研究通常侧重于通过使用非常深度的cnn来提高性能。然而,随着深入,浅层对深层的影响逐渐减弱。受到现实的驱使。本文将CNN模型和注意力CNN模型进行了比较。将该模型应用于包含5121张图像的AD数据集。结果表明,注意CNN模型在正确率、精密度、召回率、损失率和AUC方面都优于CNN模型。
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