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05.21.24-Leading-Edge-Webinar-Digital-Health-and-Wellness-Rosalind-Picard
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Duration: 28:10
May 21, 2024
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05.21.24-Leading-Edge-Webinar-Digital-Health-and-Wellness-Rosalind-Picard
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This talk will highlight advances in digital health, including running AI on wearable data that captures physiological patterns in real life (e.g., with autonomic stress and sleep-activity rhythms) and accurately modeling changes related to brain states (e.g., mood changes, depression, and seizures). These advances are today enabling important health monitoring and alerting, and in the future, forecasting and prevention. This talk is informed by a combination of science and real-world trials leading to five FDA clearances, including an FDA-cleared AI algorithm not using generative AI, as the latter does not preserve truth or trustworthiness, two qualities we require. This talk will overview recent findings and platform developments, as well as ongoing work to apply objective data from daily patient life to improve healthcare, clinical trials, and personalized medicine.
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Video details
This talk will highlight advances in digital health, including running AI on wearable data that captures physiological patterns in real life (e.g., with autonomic stress and sleep-activity rhythms) and accurately modeling changes related to brain states (e.g., mood changes, depression, and seizures). These advances are today enabling important health monitoring and alerting, and in the future, forecasting and prevention. This talk is informed by a combination of science and real-world trials leading to five FDA clearances, including an FDA-cleared AI algorithm not using generative AI, as the latter does not preserve truth or trustworthiness, two qualities we require. This talk will overview recent findings and platform developments, as well as ongoing work to apply objective data from daily patient life to improve healthcare, clinical trials, and personalized medicine.
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