Valvular heart disease is a significant problem. The primary care physician initially does assessment through auscultation. Accuracy in classification of sounds is suboptimal (20–40%). Technological advances have paralleled an increase in referral for Doppler echocardiography and a decrease in auscultatory skill. An increase in the referral of functionally innocent heart murmurs has contributed to the increasing cost of care. A computer-aided analysis has been shown to improve the accuracy of primary care physicians. A remote centralized computer-aided analysis could provide physicians with an additional tool in the assessment of heart murmurs, especially in settings without access to echocardiography. iStethoscopePro is an application for the iPhone and iPod Touch capable of recording and emailing sounds. We developed a device, which interfaces with iStethoscopePro and any acoustic stethoscope. We used this device to capture heart sounds from a conventional acoustic stethoscope and email them using iStethoscopePro for analysis with an artificial neural network (ANN). Hypothesis: It is possible to record heart sounds from an acoustic stethoscope, email them, and classify them with an ANN. Our device recorded heart sounds with insignificant intersample variation. After training the ANN with representations of four heart murmurs (aortic regurgitation, aortic stenosis, mitral regurgitation, and mitral stenosis) and normal, we achieved an overall accuracy of 45% with sensitivities of 50–75%. A remote centralized analysis of sound captured from an acoustic stethoscope is possible and could augment traditional auscultatory exams by offering an objective classification. Improving the accuracy and specificity of the ANN is necessary. This collection modality offers a method for the collection of a great deal of sounds for further development of artificial intelligence systems.
Skip Nav Destination
Article navigation
Design Of Medical Devices Conference Abstracts
Artificial Neural Network Analysis of Heart Sounds Captured From an Acoustic Stethoscope and Emailed Using iStethoscopePro
Dustin Palm,
Dustin Palm
Medical School,
University of Minnesota
Search for other works by this author on:
Trichy Pasupathy,
Trichy Pasupathy
Itasca Community College
Search for other works by this author on:
Brian Stephenson,
Brian Stephenson
Itasca Community College
Search for other works by this author on:
Glenn Nordehn
Glenn Nordehn
University of Minnesota Duluth
Search for other works by this author on:
Dustin Palm
Medical School,
University of Minnesota
Stan Burns
University of Minneosta Duluth
Trichy Pasupathy
Itasca Community College
Eric Deip
Itasca Community College
Brittney Blair
Itasca Community College
Misty Flynn
Itasca Community College
Amanda Drewek
Itasca Community College
Matt Sjostrand
Itasca Community College
Brian Stephenson
Itasca Community College
Glenn Nordehn
University of Minnesota Duluth
J. Med. Devices. Jun 2010, 4(2): 027531 (1 pages)
Published Online: August 11, 2010
Article history
Published:
August 11, 2010
Citation
Palm, D., Burns, S., Pasupathy, T., Deip, E., Blair, B., Flynn, M., Drewek, A., Sjostrand, M., Stephenson, B., and Nordehn, G. (August 11, 2010). "Artificial Neural Network Analysis of Heart Sounds Captured From an Acoustic Stethoscope and Emailed Using iStethoscopePro." ASME. J. Med. Devices. June 2010; 4(2): 027531. https://doi.org/10.1115/1.3443737
Download citation file:
Get Email Alerts
Cited By
Related Articles
Variable Self-Optimizing Cochlear Model for Heart Murmur Detection/Classification
J. Med. Devices (June,2009)
Separating Aortic Stenosis From Nornal Heart Decision Spaces Using a Quadratic Model
J. Med. Devices (June,2009)
Detection of Self-Stimulatory Behaviors of Children with Autism Using Wearable and Environmental Sensors
J. Med. Devices (June,2009)
Obstruction-Induced Pulmonary Vascular Remodeling
J Biomech Eng (November,2011)
Related Proceedings Papers
Related Chapters
Role of Artificial Intelligence in Hepatitis B Diagnosis
International Conference on Mechanical and Electrical Technology, 3rd, (ICMET-China 2011), Volumes 1–3
A Review on Prediction over Pressured Zone in Hydrocarbon Well Using Seismic Travel Time through Artificial Intelligence Technique for Pre-Drilling Planing
International Conference on Software Technology and Engineering, 3rd (ICSTE 2011)
Spiking Neural Networks on Self-Updating System-on-Chip for Autonomous Control
International Conference on Mechanical Engineering and Technology (ICMET-London 2011)