AI Article Synopsis

  • Heart sound auscultation helps detect cardiac issues but requires specialized skills, limiting its widespread application.
  • Deep learning has recently advanced heart sound analysis by utilizing large datasets and neural networks to enhance accuracy in identifying heart sounds.
  • This review aims to compile existing heart sound datasets, introduce cutting-edge techniques, and assess practical applications and limitations of deep learning in heart sound analysis, while highlighting the need for further research to improve clinical use.

Article Abstract

Heart sound auscultation is a routinely used physical examination in clinical practice to identify potential cardiac abnormalities. However, accurate interpretation of heart sounds requires specialized training and experience, which limits its generalizability. Deep learning, a subset of machine learning, involves training artificial neural networks to learn from large datasets and perform complex tasks with intricate patterns. Over the past decade, deep learning has been successfully applied to heart sound analysis, achieving remarkable results and accumulating substantial heart sound data for model training. Although several reviews have summarized deep learning algorithms for heart sound analysis, there is a lack of comprehensive summaries regarding the available heart sound data and the clinical applications. This review will compile the commonly used heart sound datasets, introduce the fundamentals and state-of-the-art techniques in heart sound analysis and deep learning, and summarize the current applications of deep learning for heart sound analysis, along with their limitations and areas for future improvement. The integration of deep learning into heart sound analysis represents a significant advancement in clinical practice. The growing availability of heart sound datasets and the continuous development of deep learning techniques contribute to the improvement and broader clinical adoption of these models. However, ongoing research is needed to address existing challenges and refine these technologies for broader clinical use.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11461928PMC
http://dx.doi.org/10.34133/hds.0182DOI Listing

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