School of Automation, Northwestern Polytechnical University, Xi'an, China.
BMC Bioinformatics. 2022 Apr 12;23(Suppl 3):128. doi: 10.1186/s12859-022-04669-z.
With the development of noninvasive imaging technology, collecting different imaging measurements of the same brain has become more and more easy. These multimodal imaging data carry complementary information of the same brain, with both specific and shared information being intertwined. Within these multimodal data, it is essential to discriminate the specific information from the shared information since it is of benefit to comprehensively characterize brain diseases. While most existing methods are unqualified, in this paper, we propose a parameter decomposition based sparse multi-view canonical correlation analysis (PDSMCCA) method. PDSMCCA could identify both modality-shared and -specific information of multimodal data, leading to an in-depth understanding of complex pathology of brain disease.
Compared with the SMCCA method, our method obtains higher correlation coefficients and better canonical weights on both synthetic data and real neuroimaging data. This indicates that, coupled with modality-shared and -specific feature selection, PDSMCCA improves the multi-view association identification and shows meaningful feature selection capability with desirable interpretation.
The novel PDSMCCA confirms that the parameter decomposition is a suitable strategy to identify both modality-shared and -specific imaging features. The multimodal association and the diverse information of multimodal imaging data enable us to better understand the brain disease such as Alzheimer's disease.
随着无创成像技术的发展,对同一大脑进行不同成像测量变得越来越容易。这些多模态成像数据携带同一大脑的互补信息,具有特定的和共享的信息交织在一起。在这些多模态数据中,从共享信息中区分特定信息至关重要,因为这有利于全面描述大脑疾病。虽然大多数现有方法都不合格,但在本文中,我们提出了一种基于参数分解的稀疏多视角典型相关分析(PDSMCCA)方法。PDSMCCA 可以识别多模态数据的模态共享和特定信息,从而深入了解大脑疾病的复杂病理。
与 SMCCA 方法相比,我们的方法在合成数据和真实神经影像学数据上都获得了更高的相关系数和更好的典型权重。这表明,结合模态共享和特定特征选择,PDSMCCA 提高了多视角关联识别能力,并具有有意义的特征选择能力和理想的解释能力。
新颖的 PDSMCCA 证实了参数分解是识别模态共享和特定成像特征的合适策略。多模态关联和多模态成像数据的多样性信息使我们能够更好地理解阿尔茨海默病等大脑疾病。