Qin Zhiwei, Liu Zhao, Lu Yunmin, Zhu Ping
School of Mechanical Engineering, Shanghai Jiao Tong University, Shanghai 200240, P. R. China.
National Engineering Research Center of Automotive Power and Intelligent Control, Shanghai Jiao Tong University, Shanghai 200240, P. R. China.
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2023 Apr 25;40(2):217-225. doi: 10.7507/1001-5515.202212046.
Alzheimer's disease (AD) is a progressive and irreversible neurodegenerative disease. Neuroimaging based on magnetic resonance imaging (MRI) is one of the most intuitive and reliable methods to perform AD screening and diagnosis. Clinical head MRI detection generates multimodal image data, and to solve the problem of multimodal MRI processing and information fusion, this paper proposes a structural and functional MRI feature extraction and fusion method based on generalized convolutional neural networks (gCNN). The method includes a three-dimensional residual U-shaped network based on hybrid attention mechanism (3D HA-ResUNet) for feature representation and classification for structural MRI, and a U-shaped graph convolutional neural network (U-GCN) for node feature representation and classification of brain functional networks for functional MRI. Based on the fusion of the two types of image features, the optimal feature subset is selected based on discrete binary particle swarm optimization, and the prediction results are output by a machine learning classifier. The validation results of multimodal dataset from the AD Neuroimaging Initiative (ADNI) open-source database show that the proposed models have superior performance in their respective data domains. The gCNN framework combines the advantages of these two models and further improves the performance of the methods using single-modal MRI, improving the classification accuracy and sensitivity by 5.56% and 11.11%, respectively. In conclusion, the gCNN-based multimodal MRI classification method proposed in this paper can provide a technical basis for the auxiliary diagnosis of Alzheimer's disease.
阿尔茨海默病(AD)是一种进行性且不可逆的神经退行性疾病。基于磁共振成像(MRI)的神经影像学检查是进行AD筛查和诊断最直观、可靠的方法之一。临床头部MRI检测会生成多模态图像数据,为解决多模态MRI处理和信息融合问题,本文提出一种基于广义卷积神经网络(gCNN)的结构和功能MRI特征提取与融合方法。该方法包括基于混合注意力机制的三维残差U型网络(3D HA-ResUNet)用于结构MRI的特征表示和分类,以及U型图卷积神经网络(U-GCN)用于功能MRI的脑功能网络节点特征表示和分类。基于两种类型图像特征的融合,通过离散二进制粒子群优化选择最优特征子集,并由机器学习分类器输出预测结果。来自阿尔茨海默病神经影像学计划(ADNI)开源数据库的多模态数据集验证结果表明,所提出的模型在各自的数据领域具有卓越性能。gCNN框架结合了这两种模型的优点,进一步提高了使用单模态MRI方法的性能,分类准确率和灵敏度分别提高了5.56%和11.11%。总之,本文提出的基于gCNN的多模态MRI分类方法可为阿尔茨海默病的辅助诊断提供技术依据。