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Online speech synthesis using a chronically implanted brain-computer interface in an individual with ALS

Medicine and Health

Online speech synthesis using a chronically implanted brain-computer interface in an individual with ALS

M. Angrick, S. Luo, et al.

Using a chronically implanted BCI, researchers achieved online synthesis of intelligible words from electrocorticographic signals in a man with ALS, decoding and synthesizing freely chosen commands from a six-word vocabulary with 80% recognition accuracy while preserving the participant’s voice profile. Research conducted by Miguel Angrick, Shiyu Luo, Qinwan Rabbani, Daniel N. Candrea, Samyak Shah, Griffin W. Milsap, William S. Anderson, Chad R. Gordon, Kathryn R. Rosenblatt, Lora Clawson, Donna C. Tippett, Nicholas Maragakis, Francesco V. Tenore, Matthew S. Fifer, Hynek Hermansky, Nick F. Ramsey, and Nathan E. Crone.

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~3 min • Beginner • English
Abstract
Brain-computer interfaces (BCIs) that reconstruct and synthesize speech using brain activity recorded with intracranial electrodes may pave the way toward novel communication interfaces for people who have lost their ability to speak, or who are at high risk of losing this ability, due to neurological disorders. Here, we report online synthesis of intelligible words using a chronically implanted brain-computer interface (BCI) in a man with impaired articulation due to ALS, participating in a clinical trial (ClinicalTrials.gov, NCT03567213) exploring different strategies for BCI communication. The 3-stage approach reported here relies on recurrent neural networks to identify, decode and synthesize speech from electrocorticographic (ECoG) signals acquired across motor, premotor and somatosensory cortices. We demonstrate a reliable BCI that synthesizes commands freely chosen and spoken by the participant from a vocabulary of 6 keywords previously used for decoding commands to control a communication board. Evaluation of the intelligibility of the synthesized speech indicates that 80% of the words can be correctly recognized by human listeners. Our results show that a speech-impaired individual with ALS can use a chronically implanted BCI to reliably produce synthesized words while preserving the participant’s voice profile, and provide further evidence for the stability of ECoG for speech-based BCIs.
Publisher
Scientific Reports
Published On
Apr 26, 2024
Authors
Miguel Angrick, Shiyu Luo, Qinwan Rabbani, Daniel N. Candrea, Samyak Shah, Griffin W. Milsap, William S. Anderson, Chad R. Gordon, Kathryn R. Rosenblatt, Lora Clawson, Donna C. Tippett, Nicholas Maragakis, Francesco V. Tenore, Matthew S. Fifer, Hynek Hermansky, Nick F. Ramsey, Nathan E. Crone
Tags
brain-computer interface
electrocorticography (ECoG)
speech synthesis
recurrent neural networks
ALS
intelligible speech
chronic implant
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