Ali Muhammad Umair, Hussain Shaik Javeed, Khalid Majdi, Farrash Majed, Lahza Hassan Fareed M, Zafar Amad
Department of Artificial Intelligence and Robotics, Sejong University, Seoul 05006, Republic of Korea.
Department of Electrical and Electronics, Global College of Engineering and Technology, Muscat 112, Oman.
Bioengineering (Basel). 2024 Oct 28;11(11):1076. doi: 10.3390/bioengineering11111076.
Alzheimer's disease (AD) is a degenerative neurological condition characterized by cognitive decline, memory loss, and reduced everyday function, which eventually causes dementia. Symptoms develop years after the disease begins, making early detection difficult. While AD remains incurable, timely detection and prompt treatment can substantially slow its progression. This study presented a framework for automated AD detection using brain MRIs. Firstly, the deep network information (i.e., features) were extracted using various deep-learning networks. The information extracted from the best deep networks (EfficientNet-b0 and MobileNet-v2) were merged using the canonical correlation approach (CCA). The CCA-based fused features resulted in an enhanced classification performance of 94.7% with a large feature vector size (i.e., 2532). To remove the redundant features from the CCA-based fused feature vector, the binary-enhanced WOA was utilized for optimal feature selection, which yielded an average accuracy of 98.12 ± 0.52 (mean ± standard deviation) with only 953 features. The results were compared with other optimal feature selection techniques, showing that the binary-enhanced WOA results are statistically significant ( < 0.01). The ablation study was also performed to show the significance of each step of the proposed methodology. Furthermore, the comparison shows the superiority and high classification performance of the proposed automated AD detection approach, suggesting that the hybrid approach may help doctors with dementia detection and staging.
阿尔茨海默病(AD)是一种退行性神经疾病,其特征为认知能力下降、记忆力丧失以及日常功能减退,最终导致痴呆。症状在疾病开始数年后才会出现,这使得早期检测变得困难。虽然AD仍然无法治愈,但及时检测和迅速治疗可以显著减缓其进展。本研究提出了一种使用脑部磁共振成像(MRI)进行AD自动检测的框架。首先,使用各种深度学习网络提取深度网络信息(即特征)。从最佳深度网络(EfficientNet-b0和MobileNet-v2)提取的信息使用典型相关分析方法(CCA)进行合并。基于CCA的融合特征在特征向量规模较大(即2532)的情况下,分类性能提高到了94.7%。为了从基于CCA的融合特征向量中去除冗余特征,采用二进制增强鲸鱼优化算法(WOA)进行最优特征选择,仅用953个特征就获得了98.12±0.52(均值±标准差)的平均准确率。将结果与其他最优特征选择技术进行比较,结果表明二进制增强WOA的结果具有统计学意义(<0.01)。还进行了消融研究以表明所提方法各步骤的重要性。此外,比较结果显示了所提AD自动检测方法的优越性和高分类性能,这表明该混合方法可能有助于医生进行痴呆症的检测和分期。