Abstract

Direct decoding of speech from the brain is a faster alternative to current electroencephalography (EEG) speller-based brain-computer interfaces (BCI) in providing communication assistance to locked-in patients. Magnetoencephalography (MEG) has recently shown great potential as a non-invasive neuroimaging modality for neural speech decoding, owing in part to its spatial selectivity over other high-temporal resolution devices. Standard MEG systems have a large number of cryogenically cooled channels/sensors (200 – 300) encapsulated within a fixed liquid helium dewar, precluding their use as wearable BCI devices. Fortunately, recently developed optically pumped magnetometers (OPM) do not require cryogens, and have the potential to be wearable and movable making them more suitable for BCI applications. This design is also modular allowing for customized montages to include only the sensors necessary for a particular task. As the number of sensors bears a heavy influence on the cost, size, and weight of MEG systems, minimizing the number of sensors is critical for designing practical MEG-based BCIs in the future. In this study, we sought to identify an optimal set of MEG channels to decode imagined and spoken phrases from the MEG signals. Using a forward selection algorithm with a support vector machine classifier we found that nine optimally located MEG gradiometers provided higher decoding accuracy compared to using all channels. Additionally, the forward selection algorithm achieved similar performance to dimensionality reduction using a stacked-sparse-autoencoder. Analysis of spatial dynamics of speech decoding suggested that both left and right hemisphere sensors contribute to speech decoding. Sensors approximately located near Broca’s area were found to be commonly contributing among the higher-ranked sensors across all subjects.

Highlights

  • S PEECH processing involves a complex yet hierarchical execution of oromotor tasks underpinned by continuous cross-talk among various cortical areas

  • We tested the forward selection algorithm up to 50 optimal sensors as in our previous work on speech decoding with principal component analysis (PCA) components of MEG signals [11], we found that the decoding performance saturated after 50 principal components

  • The used forward selection algorithm can be implemented on multi-channel dense optically pumped magnetometers (OPM)-MEG arrays to select the location of few OPM sensors that could potentially result in optimal decoding performance and a customized sensor set that is specific to the patient

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Summary

Introduction

S PEECH processing involves a complex yet hierarchical execution of oromotor tasks underpinned by continuous cross-talk among various cortical areas. This process can be impaired with neurodegenerative diseases such as amyotrophic lateral sclerosis (ALS), a motor neuron disease that causes progressive motor paralysis. The slow communication rate of these BCI spellers (under 10 words per minute) is a major obstacle for users [6]–[8] as they may experience fatigue. Acknowledging this limitation, recent studies have attempted

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