Ran Xue, Shi Junyi, Chen Yalan, Jiang Kui
Department of Medical Informatics, Nantong University, Nantong, China.
Front Pharmacol. 2022 Aug 17;13:947657. doi: 10.3389/fphar.2022.947657. eCollection 2022.
Neuroimaging has been widely used as a diagnostic technique for brain diseases. With the development of artificial intelligence, neuroimaging analysis using intelligent algorithms can capture more image feature patterns than artificial experience-based diagnosis. However, using only single neuroimaging techniques, e.g., magnetic resonance imaging, may omit some significant patterns that may have high relevance to the clinical target. Therefore, so far, combining different types of neuroimaging techniques that provide multimodal data for joint diagnosis has received extensive attention and research in the area of personalized medicine. In this study, based on the regularized label relaxation linear regression model, we propose a multikernel version for multimodal data fusion. The proposed method inherits the merits of the regularized label relaxation linear regression model and also has its own superiority. It can explore complementary patterns across different modal data and pay more attention to the modal data that have more significant patterns. In the experimental study, the proposed method is evaluated in the scenario of Alzheimer's disease diagnosis. The promising performance indicates that the performance of multimodality fusion multikernel learning is better than that of single modality. Moreover, the decreased square difference between training and testing performance indicates that overfitting is reduced and hence the generalization ability is improved.
神经成像已被广泛用作脑部疾病的诊断技术。随着人工智能的发展,使用智能算法的神经成像分析能够比基于人工经验的诊断捕捉到更多的图像特征模式。然而,仅使用单一的神经成像技术,例如磁共振成像,可能会遗漏一些与临床目标高度相关的重要模式。因此,到目前为止,结合提供多模态数据用于联合诊断的不同类型神经成像技术在个性化医疗领域受到了广泛关注和研究。在本研究中,基于正则化标签松弛线性回归模型,我们提出了一种用于多模态数据融合的多核版本。所提出的方法继承了正则化标签松弛线性回归模型的优点,并且具有自身的优势。它可以探索不同模态数据之间的互补模式,并更加关注具有更显著模式的模态数据。在实验研究中,所提出的方法在阿尔茨海默病诊断场景中进行了评估。有前景的性能表明多模态融合多核学习的性能优于单模态。此外,训练和测试性能之间平方差的减小表明过拟合减少,从而泛化能力得到提高。