NIH Funds Groundbreaking Study on Wearable Sleep Trackers for Alzheimer's Prediction
NIH Funds Groundbreaking Study on Wearable Sleep Trackers
The National Institutes of Health has awarded Joyita Dutta, professor of biomedical engineering at the University of Massachusetts Amherst, $3.9 million over five years to study if wearable sleep trackers can assist in predicting Alzheimer's disease. This research aims to explore the relationship between sleep patterns and the risk of developing Alzheimer's, leveraging technology to gather essential data.
Exploring Sleep Patterns and Alzheimer's
The study will investigate how variations in sleep quality may correlate with neurological changes associated with Alzheimer's disease. Researchers believe that analyzing sleep data could lead to early detection and intervention strategies. Participants will wear sleep trackers, providing valuable insights that could revolutionize our approach to cognitive health.
- Funding Amount: $3.9 million
- Study Duration: 5 years
- Lead Researcher: Joyita Dutta
- Institution: University of Massachusetts Amherst
Significance of the Research
This innovative study highlights the increasing importance of technology in healthcare and the potential of wearable devices in monitoring health conditions. By understanding sleep's impact on Alzheimer's, this research could change how we view sleep in relation to cognitive decline.
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