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Optimizing fMRI Data Acquisition for Decoding Natural Speech with Limited Participants

Optimizing fMRI Data Acquisition for Decoding Natural Speech with Limited Participants

来源:Arxiv_logoArxiv
英文摘要

We investigate optimal strategies for decoding perceived natural speech from fMRI data acquired from a limited number of participants. Leveraging Lebel et al. (2023)'s dataset of 8 participants, we first demonstrate the effectiveness of training deep neural networks to predict LLM-derived text representations from fMRI activity. Then, in this data regime, we observe that multi-subject training does not improve decoding accuracy compared to single-subject approach. Furthermore, training on similar or different stimuli across subjects has a negligible effect on decoding accuracy. Finally, we find that our decoders better model syntactic than semantic features, and that stories containing sentences with complex syntax or rich semantic content are more challenging to decode. While our results demonstrate the benefits of having extensive data per participant (deep phenotyping), they suggest that leveraging multi-subject for natural speech decoding likely requires deeper phenotyping or a substantially larger cohort.

Louis Jalouzot、Alexis Thual、Yair Lakretz、Christophe Pallier、Bertrand Thirion

计算技术、计算机技术

Louis Jalouzot,Alexis Thual,Yair Lakretz,Christophe Pallier,Bertrand Thirion.Optimizing fMRI Data Acquisition for Decoding Natural Speech with Limited Participants[EB/OL].(2025-05-27)[2025-07-16].https://arxiv.org/abs/2505.21304.点此复制

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