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Alzheimer’s Disease Prediction via Brain Structural-Functional Deep Fusing Network

Qiankun Zuo, Yanyan Shen, Na Zhong, C. L. Philip Chen, Baiying Lei, Shuqiang Wang

2023IEEE Transactions on Neural Systems and Rehabilitation Engineering63 citationsDOIOpen Access PDF

Abstract

Fusing structural-functional images of the brain has shown great potential to analyze the deterioration of Alzheimer's disease (AD). However, it is a big challenge to effectively fuse the correlated and complementary information from multimodal neuroimages. In this work, a novel model termed cross-modal transformer generative adversarial network (CT-GAN) is proposed to effectively fuse the functional and structural information contained in functional magnetic resonance imaging (fMRI) and diffusion tensor imaging (DTI). The CT-GAN can learn topological features and generate multimodal connectivity from multimodal imaging data in an efficient end-to-end manner. Moreover, the swapping bi-attention mechanism is designed to gradually align common features and effectively enhance the complementary features between modalities. By analyzing the generated connectivity features, the proposed model can identify AD-related brain connections. Evaluations on the public ADNI dataset show that the proposed CT-GAN can dramatically improve prediction performance and detect AD-related brain regions effectively. The proposed model also provides new insights into detecting AD-related abnormal neural circuits.

Topics & Concepts

NeuroscienceDiseaseFunctional connectivityArtificial intelligencePsychologyComputer scienceMedicineInternal medicineFunctional Brain Connectivity StudiesBrain Tumor Detection and ClassificationDementia and Cognitive Impairment Research
Alzheimer’s Disease Prediction via Brain Structural-Functional Deep Fusing Network | Litcius