Frontiers in Neuroscience (Feb 2024)

Speech decoding using cortical and subcortical electrophysiological signals

  • Hemmings Wu,
  • Hemmings Wu,
  • Chengwei Cai,
  • Wenjie Ming,
  • Wenjie Ming,
  • Wangyu Chen,
  • Zhoule Zhu,
  • Chen Feng,
  • Hongjie Jiang,
  • Zhe Zheng,
  • Mohamad Sawan,
  • Ting Wang,
  • Ting Wang,
  • Junming Zhu

DOI
https://doi.org/10.3389/fnins.2024.1345308
Journal volume & issue
Vol. 18

Abstract

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IntroductionLanguage impairments often result from severe neurological disorders, driving the development of neural prosthetics utilizing electrophysiological signals to restore comprehensible language. Previous decoding efforts primarily focused on signals from the cerebral cortex, neglecting subcortical brain structures’ potential contributions to speech decoding in brain-computer interfaces.MethodsIn this study, stereotactic electroencephalography (sEEG) was employed to investigate subcortical structures’ role in speech decoding. Two native Mandarin Chinese speakers, undergoing sEEG implantation for epilepsy treatment, participated. Participants read Chinese text, with 1–30, 30–70, and 70–150 Hz frequency band powers of sEEG signals extracted as key features. A deep learning model based on long short-term memory assessed the contribution of different brain structures to speech decoding, predicting consonant articulatory place, manner, and tone within single syllable.ResultsCortical signals excelled in articulatory place prediction (86.5% accuracy), while cortical and subcortical signals performed similarly for articulatory manner (51.5% vs. 51.7% accuracy). Subcortical signals provided superior tone prediction (58.3% accuracy). The superior temporal gyrus was consistently relevant in speech decoding for consonants and tone. Combining cortical and subcortical inputs yielded the highest prediction accuracy, especially for tone.DiscussionThis study underscores the essential roles of both cortical and subcortical structures in different aspects of speech decoding.

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