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  4. Thrilling AI - A novel, signal-based digital biomarker for diagnosing canine heart diseases
 
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2022
Journal Article
Title

Thrilling AI - A novel, signal-based digital biomarker for diagnosing canine heart diseases

Abstract
Auscultation methods enable non-invasive diagnosis of diseases, e.g. of the heart, based on heartbeat sounds. Regular, early examinations using machine learning techniques could help to detect diseases at an early stage to prevent serious health conditions and then provide optimal therapy through continuous monitoring. There is already a lot of work on human data using AI algorithms to detect patterns in signals or images. However, there is hardly no work on detecting heart murmurs with digital such as Myxomatous Mitral Valve Disease. In this paper, we present a canine auscultation project that aims to provide a tool to establish a baseline of classification parameters from audio signals that could be used to monitor canine health status by analyzing deviations from this baseline. In the future, data analysis could also lead to prediction and early detection of other diseases.
Author(s)
Bisgin, Pinar  
Fraunhofer-Institut für Software- und Systemtechnik ISST  
Strube, Tom
Fraunhofer-Institut für Software- und Systemtechnik ISST  
Henze, Jasmin  
Fraunhofer-Institut für Software- und Systemtechnik ISST  
Ljungvall, Ingrid
Häggström, Jens U.
Wess, Gerhard
Stadler, Julia
Schummer, Christoph
Meister, Sven
Howar, Falk
Journal
Current directions in biomedical engineering  
Conference
Joint Annual Conference of the Austrian, German and Swiss Societies for Biomedical Engineering 2022  
Open Access
DOI
10.1515/cdbme-2022-1195
Additional link
Full text
Language
English
Fraunhofer-Institut für Software- und Systemtechnik ISST  
Keyword(s)
  • AI

  • Classification

  • Digital Biomarkers

  • Machine-Learning

  • MMVD

  • Pattern Recognition

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