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Alexandre Almorad

Verified Contributor2 Publications in Hub

Research Bibliography

ID: smartphone-derived-seismocardiography-robust-approach-for-accurate-cardiac-energy-assessment-in-patients-with-various-cardiovascular-conditions2024

Smartphone-Derived Seismocardiography: Robust Approach for Accurate Cardiac Energy Assessment in Patients with Various Cardiovascular Conditions

This study shows that smartphones can reliably measure heart vibrations to assess cardiac energy, making it easier for patients to monitor their heart health at home.

ID: point-of-care-aid-to-diagnosis-for-heart-failure-using-artificial-intelligence-based-on-seismocardiography-acquired-with-a-smartphone-in-the-emergency-department2023

Point-of-care aid-to-diagnosis for heart failure using artificial intelligence based on seismocardiography acquired with a smartphone in the emergency department

This study shows that a smartphone app using heart vibrations and AI can help diagnose heart failure quickly and accurately in emergency settings.

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