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Enrico Caiani

Verified Contributor2 Publications in Hub

Research Bibliography

ID: deep-learning-for-identifying-systolic-complexes-in-scg-traces-a-cross-dataset-analysis2024

Deep Learning for identifying systolic complexes in SCG traces: a cross-dataset analysis

This study shows how deep learning can identify heart activity from chest vibrations, even in real-world conditions, by using data from multiple sensors and personalizing the model for each user.

ID: cardiovascular-adaptation-to-simulated-microgravity-and-countermeasure-efficacy-assessed-by-ballistocardiography-and-seismocardiography2020

Cardiovascular adaptation to simulated microgravity and countermeasure efficacy assessed by ballistocardiography and seismocardiography

This research shows that portable devices using body vibrations can track heart health changes during simulated space conditions and prove the benefits of exercise in preventing heart deconditioning.

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