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Shared latent representations of speech production for cross-patient speech decoding.

Publication ,  Journal Article
Spalding, Z; Duraivel, S; Rahimpour, S; Wang, C; Barth, K; Schmitz, C; Lad, SP; Friedman, AH; Southwell, DG; Viventi, J; Cogan, GB
Published in: bioRxiv
August 22, 2025

Speech brain-computer interfaces (BCIs) can restore communication in individuals with neuromotor disorders who are unable to speak. However, current speech BCIs limit patient usability and successful deployment by requiring large volumes of patient-specific data collected over long periods of time. A promising solution to facilitate usability and accelerate their successful deployment is to combine data from multiple patients. This has proven difficult, however, due to differences in user neuroanatomy, varied placement of electrode arrays, and sparse sampling of targeted anatomy. Here, by aligning patient-specific neural data to a shared latent space, we show that speech BCIs can be trained on data combined across patients. Using canonical correlation analysis and high-density micro-electrocorticography (μECoG), we uncovered shared neural latent dynamics with preserved micro-scale speech information. This approach enabled cross-patient decoding models to achieve improved accuracies relative to patient-specific models facilitated by the high resolution and broad coverage of μECoG. Our findings support future speech BCIs that are more accurate and rapidly deployable, ultimately improving the quality of life for people with impaired communication from neuromotor disorders.

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Published In

bioRxiv

DOI

EISSN

2692-8205

Publication Date

August 22, 2025

Location

United States
 

Citation

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Spalding, Z., Duraivel, S., Rahimpour, S., Wang, C., Barth, K., Schmitz, C., … Cogan, G. B. (2025). Shared latent representations of speech production for cross-patient speech decoding. BioRxiv. https://doi.org/10.1101/2025.08.21.671516
Spalding, Z., S. Duraivel, S. Rahimpour, C. Wang, K. Barth, C. Schmitz, S. P. Lad, et al. “Shared latent representations of speech production for cross-patient speech decoding.BioRxiv, August 22, 2025. https://doi.org/10.1101/2025.08.21.671516.
Spalding Z, Duraivel S, Rahimpour S, Wang C, Barth K, Schmitz C, et al. Shared latent representations of speech production for cross-patient speech decoding. bioRxiv. 2025 Aug 22;
Spalding, Z., et al. “Shared latent representations of speech production for cross-patient speech decoding.BioRxiv, Aug. 2025. Pubmed, doi:10.1101/2025.08.21.671516.
Spalding Z, Duraivel S, Rahimpour S, Wang C, Barth K, Schmitz C, Lad SP, Friedman AH, Southwell DG, Viventi J, Cogan GB. Shared latent representations of speech production for cross-patient speech decoding. bioRxiv. 2025 Aug 22;

Published In

bioRxiv

DOI

EISSN

2692-8205

Publication Date

August 22, 2025

Location

United States