Decoding motor plans using a closed-loop ultrasonic brain–machine interface

被引:0
|
作者
Whitney S. Griggs
Sumner L. Norman
Thomas Deffieux
Florian Segura
Bruno-Félix Osmanski
Geeling Chau
Vasileios Christopoulos
Charles Liu
Mickael Tanter
Mikhail G. Shapiro
Richard A. Andersen
机构
[1] Division of Biology and Biological Engineering,Physics for Medicine Paris, INSERM, CNRS, ESPCI Paris
[2] California Institute of Technology,Department of Bioengineering
[3] David Geffen School of Medicine at UCLA,undefined
[4] PSL Research University,undefined
[5] INSERM Technology Research Accelerator in Biomedical Ultrasound,undefined
[6] Iconeus,undefined
[7] T&C Chen Brain-Machine Interface Center,undefined
[8] California Institute of Technology,undefined
[9] University of California,undefined
[10] Riverside,undefined
[11] Department of Neurological Surgery,undefined
[12] Keck School of Medicine of USC,undefined
[13] USC Neurorestoration Center,undefined
[14] Keck School of Medicine of USC,undefined
[15] Rancho Los Amigos National Rehabilitation Center,undefined
[16] Division of Chemistry & Chemical Engineering,undefined
[17] California Institute of Technology,undefined
[18] Andrew and Peggy Cherng Department of Medical Engineering,undefined
[19] California Institute of Technology,undefined
[20] Howard Hughes Medical Institute,undefined
来源
Nature Neuroscience | 2024年 / 27卷
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摘要
Brain–machine interfaces (BMIs) enable people living with chronic paralysis to control computers, robots and more with nothing but thought. Existing BMIs have trade-offs across invasiveness, performance, spatial coverage and spatiotemporal resolution. Functional ultrasound (fUS) neuroimaging is an emerging technology that balances these attributes and may complement existing BMI recording technologies. In this study, we use fUS to demonstrate a successful implementation of a closed-loop ultrasonic BMI. We streamed fUS data from the posterior parietal cortex of two rhesus macaque monkeys while they performed eye and hand movements. After training, the monkeys controlled up to eight movement directions using the BMI. We also developed a method for pretraining the BMI using data from previous sessions. This enabled immediate control on subsequent days, even those that occurred months apart, without requiring extensive recalibration. These findings establish the feasibility of ultrasonic BMIs, paving the way for a new class of less-invasive (epidural) interfaces that generalize across extended time periods and promise to restore function to people with neurological impairments.
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页码:196 / 207
页数:11
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