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Subject-Agnostic Transformer-Based Neural Speech Decoding from Surface and Depth Electrode Signals.
Chen, Junbo; Chen, Xupeng; Wang, Ran; Le, Chenqian; Khalilian-Gourtani, Amirhossein; Jensen, Erika; Dugan, Patricia; Doyle, Werner; Devinsky, Orrin; Friedman, Daniel; Flinker, Adeen; Wang, Yao.
Afiliación
  • Chen J; Electrical and Computer Engineering Department, New York University, 370 Jay Street, Brooklyn, 11201, NY, USA.
  • Chen X; Electrical and Computer Engineering Department, New York University, 370 Jay Street, Brooklyn, 11201, NY, USA.
  • Wang R; Electrical and Computer Engineering Department, New York University, 370 Jay Street, Brooklyn, 11201, NY, USA.
  • Le C; Electrical and Computer Engineering Department, New York University, 370 Jay Street, Brooklyn, 11201, NY, USA.
  • Khalilian-Gourtani A; Neurology Department, New York University, 223 East 34th Street, Manhattan, 10016, NY, USA.
  • Jensen E; Neurology Department, New York University, 223 East 34th Street, Manhattan, 10016, NY, USA.
  • Dugan P; Neurology Department, New York University, 223 East 34th Street, Manhattan, 10016, NY, USA.
  • Doyle W; Neurosurgery Department, New York University, 550 1st Avenue, Manhattan, 10016, NY, USA.
  • Devinsky O; Neurology Department, New York University, 223 East 34th Street, Manhattan, 10016, NY, USA.
  • Friedman D; Neurology Department, New York University, 223 East 34th Street, Manhattan, 10016, NY, USA.
  • Flinker A; Neurology Department, New York University, 223 East 34th Street, Manhattan, 10016, NY, USA.
  • Wang Y; Biomedical Engineering Department, New York University, 370 Jay Street, Brooklyn, 11201, NY, USA.
bioRxiv ; 2024 Mar 14.
Article en En | MEDLINE | ID: mdl-38559163
ABSTRACT

Objective:

This study investigates speech decoding from neural signals captured by intracranial electrodes. Most prior works can only work with electrodes on a 2D grid (i.e., Electrocorticographic or ECoG array) and data from a single patient. We aim to design a deep-learning model architecture that can accommodate both surface (ECoG) and depth (stereotactic EEG or sEEG) electrodes. The architecture should allow training on data from multiple participants with large variability in electrode placements and the trained model should perform well on participants unseen during training.

Approach:

We propose a novel transformer-based model architecture named SwinTW that can work with arbitrarily positioned electrodes, by leveraging their 3D locations on the cortex rather than their positions on a 2D grid. We train both subject-specific models using data from a single participant as well as multi-patient models exploiting data from multiple participants. Main

Results:

The subject-specific models using only low-density 8x8 ECoG data achieved high decoding Pearson Correlation Coefficient with ground truth spectrogram (PCC=0.817), over N=43 participants, outperforming our prior convolutional ResNet model and the 3D Swin transformer model. Incorporating additional strip, depth, and grid electrodes available in each participant (N=39) led to further improvement (PCC=0.838). For participants with only sEEG electrodes (N=9), subject-specific models still enjoy comparable performance with an average PCC=0.798. The multi-subject models achieved high performance on unseen participants, with an average PCC=0.765 in leave-one-out cross-validation.

Significance:

The proposed SwinTW decoder enables future speech neuroprostheses to utilize any electrode placement that is clinically optimal or feasible for a particular participant, including using only depth electrodes, which are more routinely implanted in chronic neurosurgical procedures. Importantly, the generalizability of the multi-patient models suggests the exciting possibility of developing speech neuroprostheses for people with speech disability without relying on their own neural data for training, which is not always feasible.

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Idioma: En Revista: BioRxiv Año: 2024 Tipo del documento: Article País de afiliación: Estados Unidos

Texto completo: 1 Colección: 01-internacional Base de datos: MEDLINE Idioma: En Revista: BioRxiv Año: 2024 Tipo del documento: Article País de afiliación: Estados Unidos