Early detection of pathological behaviors by studying heart sounds
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University of Tlemcen
Abstract
This thesis investigates advanced signal processing techniques for the early detection and
management of cardiac pathologies, focusing on the analysis of phonocardiogram (PCG)
signals and intracardiac pressure estimation. It emphasizes the significance of accurate
cardiovascular health assessment as a critical factor in improving patient outcomes. The
research employs artificial intelligence (AI) methodologies, leveraging machine learning
algorithms to enhance the accuracy of pathological identification in PCG signals. Additionally,
it explores non-invasive methods for estimating cardiac pressures, highlighting
their crucial role in diagnosing conditions such as heart failure, valvular disorders, and pulmonary
hypertension. The findings demonstrate that integrating AI with traditional cardiac
monitoring can significantly improve diagnostic precision, facilitating timely clinical
interventions and paving the way for more effective cardiovascular disease management.