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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http://dx.doi.org/10.34133/hds.0182 | DOI Listing |
Indian J Med Res
November 2024
Department of Diabetology, Madras Diabetes Research Foundation & Dr.Mohan's Diabetes Specialities Centre, Chennai, Tamil Nadu, India.
Background & objectives Biobanks are crucial for biomedical research, enabling new treatments and medical advancements. The biobank at the Madras Diabetes Research Foundation (MDRF) aims to gather, process, store, and distribute biospecimens to assist scientific studies. Methods This article details the profile of two cohorts: the Indian Council of Medical Research-India Diabetes (ICMR-INDIAB) study and the Registry of people with diabetes in India with young age at onset (ICMR-YDR).
View Article and Find Full Text PDFJ Yeungnam Med Sci
December 2024
Department of Internal Medicine, Yeungnam University College of Medicine, Daegu, Korea.
The coronavirus disease 2019 pandemic has underscored the limitations of traditional diagnostic methods, particularly in ensuring the safety of healthcare workers and patients during infectious outbreaks. Smartphone-based digital stethoscopes enhanced with artificial intelligence (AI) have emerged as potential tools for addressing these challenges by enabling remote, efficient, and accessible auscultation. Despite advancements, most existing systems depend on additional hardware and external processing, increasing costs and complicating deployment.
View Article and Find Full Text PDFAm J Kidney Dis
December 2024
Division of Nephrology, Department of Medicine, University of Washington, Seattle, Washington; VA Puget Sound Healthcare System, Seattle, Washington.
Historically, the paradigm for all maladies was associated with an imbalance of the 4 humors: blood, black bile, yellow bile, and phlegm. Although our understanding of disease has evolved significantly since the time of Hippocrates, a similar cornerstone of inpatient and ambulatory care involves understanding and correcting imbalances of volume. The kidneys are the principal organs controlling extracellular volume, capable of both sensing and altering salt retention through multiple redundant pathways, including the sympathetic nervous system and the renin-angiotensin-aldosterone system.
View Article and Find Full Text PDFBJU Int
December 2024
Division of Urology, Department of Oncology, San Luigi Gonzaga Hospital, University of Turin, Orbassano, Italy.
Objectives: To evaluate the role of the TYTOCARE™ telemedicine programme for home telemonitoring during the early postoperative period following radical cystectomy (RC) in a prospective single-centre study.
Materials And Methods: The study included patients aged <80 years with internet access who underwent RC at our institution between March 2021 and August 2023. Upon discharge, patients were monitored at home using the TYTOCARE™ telemedicine system.
Sports Med
December 2024
Australian Catholic University, North Sydney, NSW, Australia.
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