AI and brain-computer interface allow speechless ALS patient to work a full-time job
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AI and brain-computer interface allow speechless ALS patient to work a full-time job
The hardware isn't new, but a UC Davis research team's machine learning-powered method of translating brain activity in an ALS patient into sentences with 92% accuracy is
Brandon Vigliarolo
Brandon<br>Vigliarolo
Published<br>tue 16 Jun 2026 // 19:44 UTC
Imagine being paralyzed so badly that not only can't you move your hands or feet, but you can't speak either. For years, brain computer interfaces have presented the tantalizing promise of reading brainwaves well enough to allow a person to communicate and access a PC.<br>Now, a new breakthrough shows how someone can talk and even work a job while afflicted with a motion-robbing disease.<br>A team of scientists from the University of California, Davis, published a paper Monday detailing a years-long study of a brain computer interface (BCI) system implanted in a patient with amyotrophic lateral sclerosis (ALS, also known as Lou Gehrig’s disease), which destroys motor neurons and causes loss of motor control and eventual paralysis. According to the team, their patient, Casey Harrell, has been living with BCI implants since 2023 that are still working today, giving him the ability not only to control a computer cursor with his thoughts, but also to speak.
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Harrell describes what it's like getting hooked up to his system<br>SOURCE: Regents of the University of California, Davis
The Davis team is part of a broader coalition of universities with the US Department of Veterans Affairs known as BrainGate. They're working on a variety of neuroscience projects to do things like restore speech, use computers, and, in some cases, restore movement. In Harrell’s case, the Davis team was trying to figure out how to turn experimental tech into something long lasting and practical for use outside of a laboratory.
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Davis neurosurgeon David Brandman, co-principal investigator and co-senior author of the paper published Monday, as well as the surgeon who placed Harrell’s implant, described the results his team published as the crossing of a threshold in BCI technology: Not only has Harrell’s implant been working well with daily use since 2023, but it’s also incredibly accurate.<br>In controlled tests, the system managed to synthesize sentences from Harrell’s brain activity with 99 percent accuracy; outside of the lab in daily use, Harrell still assessed it as being accurate 92 percent of the time.<br>“The key thing to me is that it’s enabling everyday communication for a guy who wants to talk but can’t,” Brandman told The Register in an interview. “Despite being paralyzed [Harrell] has gone back to work full time and has meaningful conversations with his daughter who’s never heard the sound of his voice.”<br>Prior work in the BCI space, Brandman told us, has either required researchers to be in a patient’s home whenever they’re using the tech, or for the patient to come to the researchers. That’s not the case here, with the system allowing Harrell’s home care team to hook him up to the system themselves, enabling him to use the device for more than 3,800 hours in the past few years. Based on the time the study was filed (It published Monday but went into peer review in July 2025) that would mean Harrell was using the device for more than five hours a day, on average.<br>“It is a life that is more full of dynamic action and with friends and family, with colleagues, and it is something that allows me to communicate more in my natural way of communicating than any other technology that I have experienced,” Harrell told UC Davis via his BCI system.<br>An actual practical use of AI<br>Brandman is no stranger to BCI technology: Along with being a key figure in the BrainGate consortium, he’s also worked as study principal in investigating the safety of commercial BCI tech from Paradromics, one of the leading companies in the space alongside Synchron and Neuralink.<br>As Brandman explained it, the Davis study didn’t involve any purpose-built hardware, instead making use of an existing BCI design produced by Blackrock Neurotech. The big advancement, says the Davis neurosurgeon, is with his team’s use of machine learning technology.
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Harrell's home BCI setup<br>SOURCE: Regents of the University of California, Davis
The lab has built its own software platform for operating BCI devices known as Brain-computer interface for Rapidly Adaptive Neural Decoding (BRAND, which Brandman told us was coincidentally named), which UCD postdoctoral fellow Nick Card built machine learning algorithms for. BRAND is now used across the BrainGate consortium, and is where the secret sauce of the project’s success lies.<br>According to the paper, BRAND’s AI algorithms are able to translate activity in Harrell’s ventral precentral gyrus, the part of the brain that controls motor function in the face,...