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Brain-language fusion enables interactive neural readout and in-silico experimentation

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Large language models (LLMs) have revolutionized human-machine interaction, and have been extended by embedding diverse modalities such as images into a shared language space. Yet, neural decoding has remained constrained by static, non-interactive methods. We introduce CorText, a framework that integrates neural activity directly into the latent space of an LLM, enabling open-ended, natural language interaction with brain data. Trained on fMRI data recorded during viewing of natural scenes, CorText generates accurate image captions and can answer more detailed questions better than controls, while having access to neural data only. We showcase that CorText achieves zero-shot generalization beyond semantic categories seen during training. In-silico microstimulation experiments, which enable counterfactual prompts on brain activity, reveal a consistent, and graded mapping between brain-state and language output. These advances mark a shift from passive decoding toward generative, flexible interfaces between brain activity and language.

Victoria Bosch, Daniel Anthes, Adrien Doerig, Sushrut Thorat, Peter K\"onig, Tim Christian Kietzmann• 2025

Related benchmarks

TaskDatasetResultRank
Brain CaptioningCOCO (Subject 1)
ROUGE46
10
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