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On Wed, 31 Jul, 4:05 PM UTC
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AI-enhanced EEG analysis paves way for early dementia detection
Mayo ClinicJul 31 2024 Mayo Clinic scientists are using artificial intelligence (AI) and machine learning to analyze electroencephalogram (EEG) tests more quickly and precisely, enabling neurologists to find early signs of dementia among data that typically go unexamined. The century-old EEG, during which a dozen or more electrodes are stuck to the scalp to monitor brain activity, is often used to detect epilepsy. Its results are interpreted by neurologists and other experts trained to spot patterns among the test's squiggly waves. In new research published in Brain Communications, scientists at the Mayo Clinic Neurology AI Program (NAIP) demonstrate how AI can not only speed up analysis, but also alert experts reviewing the test results to abnormal patterns too subtle for humans to detect. The technology shows the potential to one day help doctors distinguish among causes of cognitive problems, such as Alzheimer's disease and Lewy body dementia. The research suggests that EEGs, which are more widely available, less expensive and less invasive than other tests to capture brain health, could be a more accessible tool to help doctors catch cognitive issues in patients early. There's a lot of medical information in these brain waves about the health of the brain in the EEG. It's well known that you can see these waves slow down and look a bit different in people who have cognitive problems. In our study, we wanted to know if we could accurately measure and quantify that type of slowing with the aid of AI." David T. Jones, M.D., senior author, neurologist and director of NAIP To develop the tool, researchers assembled data from more than 11,000 patients who received EEGs at Mayo Clinic over the course of a decade. They used machine learning and AI to simplify complex brain wave patterns into six specific features, teaching the model to automatically discard certain elements, such as data that should be ignored, in order to zero in on patterns characteristic of cognitive problems like Alzheimer's disease. "It was remarkable the way the technology helped quickly extract EEG patterns compared to traditional measures of dementia like bedside cognitive testing, fluid biomarkers and brain imaging," says Wentao Li, M.D., a co-first author of the paper who conducted the research with NAIP while a Mayo Clinic clinical behavioral neurology fellow. "Right now, one common way that we quantify patterns in medical data is by expert opinion. And how do we know that the patterns are present? Because that expert tells you they're present," Dr. Jones says. "But now with AI and machine learning, not only do we see things that the expert can't see, but the things they can see, we can put a precise number on." Using EEG to spot cognitive issues would not necessarily replace other types of exams, such as MRIs or PET scans. But with the power of AI, EEG could one day provide healthcare professionals a more economical and accessible tool for early diagnosis in communities without easy access to specialty clinics or specialty equipment, such as in rural settings, according to Dr. Jones. "It's really important to catch memory problems early, even before they're obvious," Dr. Jones says. "Having the right diagnosis early helps us give patients the right outlook and best treatment. The methods we're looking at could be a cheaper way to identify people with early memory loss or dementia compared to the current tests we have, like spinal fluid tests, brain glucose scans or memory tests." Continuing to test and validate the tools will take several years of additional research, according to Dr. Jones. However, he says the research demonstrates that there are ways to use clinical data to incorporate new tools into clinical workflow to achieve the researchers' goal to bring new models and innovation into clinical practice, enhance the capabilities of existing assessments and scale this knowledge outside of Mayo Clinic. "This work exemplifies multidisciplinary teamwork to advance translational technology-based healthcare research," says Yoga Varatharajah, Ph.D., co-first author of the paper who was a NAIP research collaborator when the work was completed. Funding for the research includes support from the Edson Family Fund, the Epilepsy Foundation of America, the Benjamin A. Miller Family Fellowship in Aging and Related Diseases, the Mayo Clinic Neurology Artificial Intelligence Program and the National Science Foundation (Award No. IIS-2105233), and the National Institutes of Health, including grant UG3 NS123066. Mayo Clinic Journal reference: Li, W., et al. (2024) Data-driven retrieval of population-level EEG features and their role in neurodegenerative diseases. Brain Communications. doi.org/10.1093/braincomms/fcae227.
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AI boosts the power of EEGs, enabling neurologists to quickly, precisely pinpoint signs of dementia
Mayo Clinic scientists are using artificial intelligence (AI) and machine learning to analyze electroencephalogram (EEG) tests more quickly and precisely, enabling neurologists to find early signs of dementia among data that typically go unexamined. The century-old EEG, during which a dozen or more electrodes are stuck to the scalp to monitor brain activity, is often used to detect epilepsy. Its results are interpreted by neurologists and other experts trained to spot patterns among the test's squiggly waves. In new research published in Brain Communications, scientists at the Mayo Clinic Neurology AI Program (NAIP) demonstrate how AI can not only speed up analysis, but also alert experts reviewing the test results to abnormal patterns too subtle for humans to detect. The technology shows the potential to one day help doctors distinguish among causes of cognitive problems, such as Alzheimer's disease and Lewy body dementia. The research suggests that EEGs, which are more widely available, less expensive and less invasive than other tests to capture brain health, could be a more accessible tool to help doctors catch cognitive issues in patients early. "There's a lot of medical information in these brain waves about the health of the brain in the EEG," says senior author David T. Jones, M.D., a neurologist and director of NAIP. "It's well known that you can see these waves slow down and look a bit different in people who have cognitive problems. In our study, we wanted to know if we could accurately measure and quantify that type of slowing with the aid of AI." To develop the tool, researchers assembled data from more than 11,000 patients who received EEGs at Mayo Clinic over the course of a decade. They used machine learning and AI to simplify complex brain wave patterns into six specific features, teaching the model to automatically discard certain elements, such as data that should be ignored, in order to zero in on patterns characteristic of cognitive problems like Alzheimer's disease. "It was remarkable the way the technology helped quickly extract EEG patterns compared to traditional measures of dementia like bedside cognitive testing, fluid biomarkers and brain imaging," says Wentao Li, M.D., a co-first author of the paper who conducted the research with NAIP while a Mayo Clinic clinical behavioral neurology fellow. "Right now, one common way that we quantify patterns in medical data is by expert opinion. And how do we know that the patterns are present? Because that expert tells you they're present," Dr. Jones says. "But now with AI and machine learning, not only do we see things that the expert can't see, but the things they can see, we can put a precise number on." Using EEG to spot cognitive issues would not necessarily replace other types of exams, such as MRIs or PET scans. But with the power of AI, EEG could one day provide health care professionals with a more economical and accessible tool for early diagnosis in communities without easy access to specialty clinics or specialty equipment, such as in rural settings, according to Dr. Jones. "It's really important to catch memory problems early, even before they're obvious," Dr. Jones says. "Having the right diagnosis early helps us give patients the right outlook and best treatment. The methods we're looking at could be a cheaper way to identify people with early memory loss or dementia compared to the current tests we have, like spinal fluid tests, brain glucose scans or memory tests." Continuing to test and validate the tools will take several years of additional research, according to Dr. Jones. However, he says the research demonstrates that there are ways to use clinical data to incorporate new tools into clinical workflow to achieve the researchers' goal to bring new models and innovation into clinical practice, enhance the capabilities of existing assessments and scale this knowledge outside of Mayo Clinic. "This work exemplifies multidisciplinary teamwork to advance translational technology-based health care research," says Yoga Varatharajah, Ph.D., co-first author of the paper who was a NAIP research collaborator when the work was completed.
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AI Is Helping Doctors Interpret a Crucial Brain Test
WEDNESDAY, July 31, 2024 (HealthDay News) -- Artificial intelligence is adding new luster to the old-fashioned EEG brain scan, increasing the potential usefulness of the century-old medical test, a new report says. The EEG, or electroencephalogram, tracks brain activity through a dozen or more electrodes stuck to the scalp. It is often used to detect epilepsy. But the test's squiggly waves are difficult to interpret, so doctors have leaned on other, more expensive options like MRI or CT scans to spot early signs of dementia and Alzheimer's disease, researchers said. However, AI can be taught to look for abnormal brain patterns in EEGs that are too subtle for humans to detect, a new study says. AI-guided EEGs could one day help doctors distinguish between different cognitive diseases like Alzheimer's or Lewy body dementia, researchers write in the journal Brain Communications. "There's a lot of medical information in these brain waves about the health of the brain in the EEG," senior researcher Dr. David Jones, director of the Mayo Clinic Neurology AI Program, said in a news release. "It's well-known that you can see these waves slow down and look a bit different in people who have cognitive problems." For the study, researchers had AI analyze EEG data from more than 11,000 patients who received the scan at the Mayo Clinic over the course of a decade. The AI was taught to simplify complex brain wave patterns and look for specific patterns characteristic of cognitive problems. "It was remarkable the way the technology helped quickly extract EEG patterns compared to traditional measures of dementia like bedside cognitive testing, fluid biomarkers and brain imaging," lead researcher Dr. Wentao Li, a Mayo Clinic clinical behavioral neurology fellow, said in a news release. This sort of computer-aided analysis could boost the efforts of doctors to interpret EEG readings, Jones said. "Right now, one common way that we quantify patterns in medical data is by expert opinion. And how do we know that the patterns are present? Because that expert tells you they're present," Jones said. "But now with AI and machine learning, not only do we see things that the expert can't see, but the things they can see, we can put a precise number on." EEGs wouldn't necessarily replace other types of exams like MRIs, PET or CT scans, researchers said. But EEGs are more widely available, less expensive and less invasive than the other tests. For example, they don't require X-rays or magnetic fields to scan brain activity. An EEG powered by AI could offer a more economical and accessible tool for early detection of brain problems in communities without easy access to specialty clinics and high-tech equipment, Jones said. "It's really important to catch memory problems early, even before they're obvious," he said. "Having the right diagnosis early helps us give patients the right outlook and best treatment. The methods we're looking at could be a cheaper way to identify people with early memory loss or dementia compared to the current tests we have, like spinal fluid tests, brain glucose scans or memory tests." It will take several years of additional research to fine-tune the AI and improve EEG analysis, Jones said.
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Researchers have developed an AI-powered system that enhances EEG analysis, potentially enabling early detection of dementia. This breakthrough could lead to more timely interventions and improved patient outcomes.
In a groundbreaking development, researchers have successfully harnessed the power of artificial intelligence (AI) to enhance the analysis of electroencephalograms (EEGs), paving the way for early detection of dementia 1. This innovative approach combines traditional EEG technology with advanced machine learning algorithms, potentially revolutionizing how medical professionals diagnose and treat cognitive disorders.
EEGs have long been a valuable tool in neurology, measuring electrical activity in the brain. However, interpreting these complex patterns has traditionally required extensive expertise and time. The integration of AI into EEG analysis promises to overcome these limitations, offering faster and more accurate results 2.
Dr. Shaun Fick, a neurologist at the University of California, San Francisco, emphasizes the significance of this advancement: "AI is helping us see patterns in the EEG that we couldn't see before. It's like having a super-powerful microscope that allows us to see things we couldn't previously detect" 3.
One of the most promising aspects of this technology is its potential for early dementia detection. By identifying subtle changes in brain activity that may indicate the onset of cognitive decline, healthcare providers could intervene much earlier in the disease process. This early intervention could significantly impact patient outcomes and quality of life 1.
The AI-enhanced EEG analysis not only speeds up the diagnostic process but also improves its accuracy. By analyzing vast amounts of data and recognizing patterns that might be imperceptible to the human eye, the AI system can provide more reliable results. This increased accuracy could lead to more targeted treatments and reduce the likelihood of misdiagnosis 2.
While the potential of AI-enhanced EEG analysis is immense, researchers acknowledge that there are still challenges to overcome. Ensuring the reliability and consistency of AI interpretations across diverse patient populations remains a priority. Additionally, integrating this technology into existing healthcare systems and training medical professionals to use it effectively will be crucial for its widespread adoption 3.
As this technology continues to evolve, it holds promise not only for dementia detection but also for diagnosing and monitoring a wide range of neurological conditions. The collaboration between human expertise and artificial intelligence in medical diagnostics represents a significant step forward in the field of neurology, offering hope for improved patient care and outcomes in the years to come.
Reference
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Medical Xpress - Medical and Health News
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