Cuffless hemodynamic monitoring with physics-informed machine learning models
11d ago· 1 min readNews
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Revolutionizing cuffless BP monitoring: Physics-informed ML models enhance accuracy in wearable devices, overcoming limitations of traditional methods! PMID:42135283, Nat Commun 2026, @NatureComms #Medsky #Pharmsky #RNA #ASHG #ESHG 🧪
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