News Release

New study reveals breakthrough in understanding brain stimulation therapies

For the first time, researchers show how the brain can precisely adapt to external stimulation

Peer-Reviewed Publication

University of Minnesota

Opitz Lab research

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Researchers using non-invasive neuromodulation, a technique that has shown promising results in reducing symptoms of depression, Alzheimer’s disease, and Parkinson’s disease.

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Credit: Opitz Lab, University of Minnesota Twin Cities

MINNEAPOLIS/ST. PAUL (03/15/2024) — For the first time, researchers at the University of Minnesota Twin Cities showed that non-invasive brain stimulation can change a specific brain mechanism that is directly related to human behavior. This is a major step forward for discovering new therapies to treat  brain disorders such as schizophrenia, depression, Alzheimer’s disease, and Parkinson’s disease.

The study was recently published in Nature Communications, a peer-reviewed, open access, scientific journal.  

Researchers used what is called “transcranial alternating current stimulation” to modulate brain activity. This technique is also known as neuromodulation. By applying a small electrical current to the brain, the timing of when brain cells are active is shifted. This modulation of neural timing is related to neuroplasticity, which is a change in the connections between brain cells that is needed for human behavior, learning, and cognition. 

“Previous research showed that brain activity was time-locked to stimulation. What we found in this new study is that this relationship slowly changed and the brain adapted over time as we added in external stimulation,” said Alexander Opitz, University of Minnesota biomedical engineering associate professor. “This showed brain activity shifting in a way we didn’t expect.” 

This result is called “neural phase precession.” This is when the brain activity gradually changes over time in relation to a repeating pattern, like an external event or in this case non-invasive stimulation. In this research, all three investigated methods (computational models, humans, and animals) showed that the external stimulation could shift brain activity over time.

“The timing of this repeating pattern has a direct impact on brain processes, for example, how we navigate space, learn, and remember,” Opitz said.

The discovery of this new technique shows how the brain adapts to external stimulation. This technique can increase or decrease brain activity, but is most powerful when it targets specific brain functions that affect behaviors. This way, long-term memory as well as learning can be improved. The long-term goal is to use this technique in the treatment of psychiatric and neurological disorders.

Opitz hopes that this discovery will help bring improved knowledge and technology to clinical applications, which could lead to more personalized therapies for schizophrenia, depression, Alzheimer’s disease, and Parkinson’s disease.

In addition to Opitz, the research team included co-first authors Miles Wischnewski and Harry Tran. Other team members from the University of Minnesota Biomedical Engineering Department include Zhihe Zhao, Zachary Haigh, Nipun Perera, Ivan Alekseichuk, Sina Shirinpour and Jonna Rotteveel. This study was in collaboration with Dr. Jan Zimmermann, associate professor in the University of Minnesota Medical School.

This work was supported primarily by the National Institute of Health (NIH) along with the  Behavior and Brain Research Foundation and the University of Minnesota’s Minnesota’s Discovery, Research, and InnoVation Economy (MnDRIVE) Initiative. Computational resources were provided by the Minnesota Supercomputing Institute (MSI).

To read the entire research paper titled, “Induced neural phase precession through exogenous electric fields”, visit the Nature Communications website.


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