Helaly Hadeer A, Badawy Mahmoud, Haikal Amira Y
Electrical Engineering Department, Faculty of Engineering, Damietta University, Damietta, Egypt.
Computers and Control Systems Engineering Department, Faculty of Engineering, Mansoura University, Mansoura, Egypt.
Cognit Comput. 2022;14(5):1711-1727. doi: 10.1007/s12559-021-09946-2. Epub 2021 Nov 3.
Alzheimer's disease (AD) is a chronic, irreversible brain disorder, no effective cure for it till now. However, available medicines can delay its progress. Therefore, the early detection of AD plays a crucial role in preventing and controlling its progression. The main objective is to design an end-to-end framework for early detection of Alzheimer's disease and medical image classification for various AD stages. A deep learning approach, specifically convolutional neural networks (CNN), is used in this work. Four stages of the AD spectrum are multi-classified. Furthermore, separate binary medical image classifications are implemented between each two-pair class of AD stages. Two methods are used to classify the medical images and detect AD. The first method uses simple CNN architectures that deal with 2D and 3D structural brain scans from the Alzheimer's Disease Neuroimaging Initiative (ADNI) dataset based on 2D and 3D convolution. The second method applies the transfer learning principle to take advantage of the pre-trained models for medical image classifications, such as the VGG19 model. Due to the COVID-19 pandemic, it is difficult for people to go to hospitals periodically to avoid gatherings and infections. As a result, Alzheimer's checking web application is proposed using the final qualified proposed architectures. It helps doctors and patients to check AD remotely. It also determines the AD stage of the patient based on the AD spectrum and advises the patient according to its AD stage. Nine performance metrics are used in the evaluation and the comparison between the two methods. The experimental results prove that the CNN architectures for the first method have the following characteristics: suitable simple structures that reduce computational complexity, memory requirements, overfitting, and provide manageable time. Besides, they achieve very promising accuracies, 93.61% and 95.17% for 2D and 3D multi-class AD stage classifications. The VGG19 pre-trained model is fine-tuned and achieved an accuracy of 97% for multi-class AD stage classifications.
阿尔茨海默病(AD)是一种慢性、不可逆的脑部疾病,目前尚无有效的治愈方法。然而,现有的药物可以延缓其进展。因此,AD的早期检测在预防和控制其进展中起着至关重要的作用。主要目标是设计一个用于AD早期检测和各种AD阶段医学图像分类的端到端框架。这项工作采用了深度学习方法,特别是卷积神经网络(CNN)。对AD谱系的四个阶段进行多分类。此外,在AD阶段的每两对类别之间进行单独的二元医学图像分类。使用两种方法对医学图像进行分类并检测AD。第一种方法使用简单的CNN架构,基于二维和三维卷积处理来自阿尔茨海默病神经影像倡议(ADNI)数据集的二维和三维脑部结构扫描。第二种方法应用迁移学习原理,利用预训练模型进行医学图像分类,如VGG19模型。由于新冠疫情,人们难以定期前往医院以避免聚集和感染。因此,使用最终合格的提议架构提出了阿尔茨海默病检查网络应用程序。它帮助医生和患者远程检查AD。它还根据AD谱系确定患者的AD阶段,并根据其AD阶段为患者提供建议。在评估和两种方法的比较中使用了九个性能指标。实验结果证明,第一种方法的CNN架构具有以下特点:合适的简单结构,可降低计算复杂度、内存需求和过拟合,并提供可控的时间。此外,它们取得了非常可观的准确率,二维和三维多类AD阶段分类的准确率分别为93.61%和95.17%。VGG19预训练模型经过微调,多类AD阶段分类的准确率达到了97%。