Heart Sound Recognition Technology Based on Deep Learning

With the development of medical technology, many diseases can be cured. However, the mortality rate of cardiovascular disease is still high and showing an upward trend. Reducing the mortality of such diseases is one of the difficulties that modern medicine needs to overcome. Heart sound auscultation is one of the most basic detection methods for cardiovascular disease, but it is more difficult for inexperienced medical staff. Therefore, it’s urgent to develop assistive technology to assist heart sound auscultation.

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