Quick Takeaways
- Innovative AI Tool: USC researchers have developed a groundbreaking AI model that non-invasively tracks the pace of brain aging through MRI scans, potentially transforming the monitoring of brain health and cognitive decline.
- Longitudinal Analysis: The new model uses longitudinal data, comparing multiple MRI scans from the same individual, which allows for a more precise measurement of brain aging over time and identifies specific regions involved in accelerated aging.
- Cognitive Correlation: Faster brain aging assessed by the model aligns significantly with changes in cognitive function, indicating its potential as an early biomarker for neurocognitive decline in both healthy individuals and those with cognitive impairment.
- Future Implications: This model could not only assist in characterizing healthy aging and disease progression but also help predict individual risk for Alzheimer’s and inform treatment efficacy, making early intervention strategies more feasible.
New AI Model Measures Brain Aging Speed, Offers Hope for Cognitive Health
Researchers at the University of Southern California (USC) have developed a groundbreaking artificial intelligence model that assesses how quickly a patient’s brain ages. This first-of-its-kind tool can significantly enhance our understanding of cognitive decline and dementia.
USC researchers, led by Andrei Irimia, associate professor at the USC Leonard Davis School of Gerontology, emphasize the model’s importance. “Faster brain aging correlates with a higher risk of cognitive impairment,” Irimia noted. The study, published on February 24, 2025, in Proceedings of the National Academy of Sciences, showcases the innovative capabilities of this new model.
The AI model utilizes magnetic resonance imaging (MRI) scans, allowing non-invasive tracking of brain changes over time. Traditional measurements of biological age often rely on blood samples, which can poorly reflect brain aging due to the protective barrier between the bloodstream and brain. Thus, this new method offers a clear advantage.
Irimia explained that biological age differs from chronological age.
Two people of the same age can exhibit vastly different biological ages due to various health factors. Previous models depended on single MRI scans but had limitations. They could indicate if a brain was aging faster than expected but could not reveal when this aging took place or if it accelerated over time.
The newly developed three-dimensional convolutional neural network (3D-CNN) overcomes these challenges. By comparing multiple scans from the same individual, the model paints a clearer picture of neuroanatomic changes. Paul Bogdan, an associate professor at USC, highlighted the use of “saliency maps” in this model, which show which brain regions most influence aging speed.
Applying this model to 104 healthy adults and 140 Alzheimer’s patients, researchers found a strong correlation between the model’s results and cognitive function over time. Bogdan remarked that this correlation points to the model’s potential as an early indicator of neurocognitive decline.
Moreover, the research delves into how brain aging rates vary by region, sex, and other factors. Understanding these differences could clarify why certain demographics are more susceptible to neurodegenerative disorders. Irimia expressed enthusiasm about the model’s potential to identify individuals with accelerated brain aging even before cognitive symptoms appear.
Looking forward, Irimia’s team aims to develop tools to predict Alzheimer’s risk more effectively. He stated, “We’d like to one day be able to say, ‘This person has a 30% risk for Alzheimer’s.’” This research not only advances our ability to measure brain health but also holds promise for future treatments and prevention strategies.
In a world where cognitive health remains a growing concern, this AI model represents a hopeful step toward understanding and combating brain aging. It signifies the potential for transformative changes in how healthcare providers monitor and treat cognitive decline.
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