Empowering Functional Neuroimaging: A Pre-trained Generative Framework for Unified Representation of Neural Signals
Empowering Functional Neuroimaging: A Pre-trained Generative Framework for Unified Representation of Neural Signals
Multimodal functional neuroimaging enables systematic analysis of brain mechanisms and provides discriminative representations for brain-computer interface (BCI) decoding. However, its acquisition is constrained by high costs and feasibility limitations. Moreover, underrepresentation of specific groups undermines fairness of BCI decoding model. To address these challenges, we propose a unified representation framework for multimodal functional neuroimaging via generative artificial intelligence (AI). By mapping multimodal functional neuroimaging into a unified representation space, the proposed framework is capable of generating data for acquisition-constrained modalities and underrepresented groups. Experiments show that the framework can generate data consistent with real brain activity patterns, provide insights into brain mechanisms, and improve performance on downstream tasks. More importantly, it can enhance model fairness by augmenting data for underrepresented groups. Overall, the framework offers a new paradigm for decreasing the cost of acquiring multimodal functional neuroimages and enhancing the fairness of BCI decoding models.
Weiheng Yao、Xuhang Chen、Shuqiang Wang
生物科学研究方法、生物科学研究技术
Weiheng Yao,Xuhang Chen,Shuqiang Wang.Empowering Functional Neuroimaging: A Pre-trained Generative Framework for Unified Representation of Neural Signals[EB/OL].(2025-06-03)[2025-07-17].https://arxiv.org/abs/2506.02433.点此复制
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