Ali Muhammad Umair, Kim Kwang Su, Khalid Majdi, Farrash Majed, Zafar Amad, Lee Seung Won
Department of Artificial Intelligence and Robotics, Sejong University, Seoul, Republic of Korea.
Department of Scientific Computing, Pukyong National University, Busan, Republic of Korea.
Front Psychiatry. 2024 Jun 24;15:1395563. doi: 10.3389/fpsyt.2024.1395563. eCollection 2024.
This study addresses the pervasive and debilitating impact of Alzheimer's disease (AD) on individuals and society, emphasizing the crucial need for timely diagnosis. We present a multistage convolutional neural network (CNN)-based framework for AD detection and sub-classification using brain magnetic resonance imaging (MRI). After preprocessing, a 26-layer CNN model was designed to differentiate between healthy individuals and patients with dementia. After detecting dementia, the 26-layer CNN model was reutilized using the concept of transfer learning to further subclassify dementia into mild, moderate, and severe dementia. Leveraging the frozen weights of the developed CNN on correlated medical images facilitated the transfer learning process for sub-classifying dementia classes. An online AD dataset is used to verify the performance of the proposed multistage CNN-based framework. The proposed approach yielded a noteworthy accuracy of 98.24% in identifying dementia classes, whereas it achieved 99.70% accuracy in dementia subclassification. Another dataset was used to further validate the proposed framework, resulting in 100% performance. Comparative evaluations against pre-trained models and the current literature were also conducted, highlighting the usefulness and superiority of the proposed framework and presenting it as a robust and effective AD detection and subclassification method.
本研究探讨了阿尔茨海默病(AD)对个人和社会的普遍且使人衰弱的影响,强调了及时诊断的迫切需求。我们提出了一种基于多级卷积神经网络(CNN)的框架,用于使用脑磁共振成像(MRI)进行AD检测和亚分类。预处理后,设计了一个26层的CNN模型来区分健康个体和痴呆患者。在检测到痴呆后,利用迁移学习的概念重新使用该26层CNN模型,将痴呆进一步细分为轻度、中度和重度痴呆。利用已开发的CNN在相关医学图像上的冻结权重,促进了痴呆类别的亚分类迁移学习过程。使用一个在线AD数据集来验证所提出的基于多级CNN的框架的性能。所提出的方法在识别痴呆类别方面取得了98.24%的显著准确率,而在痴呆亚分类中达到了99.70%的准确率。使用另一个数据集进一步验证了所提出的框架,结果性能达到100%。还与预训练模型和当前文献进行了比较评估,突出了所提出框架的实用性和优越性,并将其作为一种强大而有效的AD检测和亚分类方法呈现出来。