Inter-individual and inter-site neural code conversion without shared stimuli

Inter-individual variability in fine-grained functional brain organization poses challenges for scalable data analysis and modeling. Functional alignment techniques can help mitigate these individual differences but typically require paired brain data with the same stimuli between individuals, which...

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Bibliographic Details
Main Authors Wang, Haibao, Ho, Jun Kai, Cheng, Fan L, Aoki, Shuntaro C, Muraki, Yusuke, Tanaka, Misato, Kamitani, Yukiyasu
Format Journal Article
LanguageEnglish
Published 18.03.2024
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Summary:Inter-individual variability in fine-grained functional brain organization poses challenges for scalable data analysis and modeling. Functional alignment techniques can help mitigate these individual differences but typically require paired brain data with the same stimuli between individuals, which is often unavailable. We present a neural code conversion method that overcomes this constraint by optimizing conversion parameters based on the discrepancy between the stimulus contents represented by original and converted brain activity patterns. This approach, combined with hierarchical features of deep neural networks (DNNs) as latent content representations, achieves conversion accuracy comparable to methods using shared stimuli. The converted brain activity from a source subject can be accurately decoded using the target's pre-trained decoders, producing high-quality visual image reconstructions that rival within-individual decoding, even with data across different sites and limited training samples. Our approach offers a promising framework for scalable neural data analysis and modeling and a foundation for brain-to-brain communication.
DOI:10.48550/arxiv.2403.11517