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Descriptor: Heart and Lung Sounds Dataset Recorded...
Journal article

Descriptor: Heart and Lung Sounds Dataset Recorded From a Clinical Manikin Using Digital Stethoscope (HLS-CMDS)

Abstract

Heart and lung sounds are crucial for healthcare monitoring. Recent improvements in stethoscope technology have made it possible to capture patient sounds with enhanced precision. In this dataset, we used a digital stethoscope to capture both heart and lung sounds, including individual and mixed recordings. To our knowledge, this is the first dataset to offer both separate and mixed cardiorespiratory sounds. The recordings were collected from a clinical manikin, a patient simulator designed to replicate human physiological conditions, generating clean heart and lung sounds at different body locations. This dataset includes both normal sounds and various abnormalities (i.e., murmur, atrial fibrillation, tachycardia, atrioventricular block, third and fourth heart sound, wheezing, rhonchi, pleural rub, fine crackle, and coarse crackle sounds). The dataset includes audio recordings of chest examinations performed at different anatomical locations, as determined by specialist nurses. Each recording has been enhanced using frequency filters to highlight specific sound types. This dataset is useful for applications in artificial intelligence, such as automated cardiopulmonary disease detection, sound classification, unsupervised separation techniques, and deep learning algorithms related to audio signal processing. IEEE SOCIETY/COUNCIL IEEE Engineering in Medicine and Biology Society (EMBS) DATA TYPE/LOCATION Audio (.wav file); Hamilton, ON, Canada DATA DOI/PID https://doi.org/10.17632/8972jxbpmp

Authors

Torabi Y; Shirani S; Reilly JP

Journal

IEEE Data Descriptions, Vol. 2, , pp. 133–140

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

Publication Date

January 1, 2025

DOI

10.1109/ieeedata.2025.3566012

ISSN

2995-4274
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