Exploring the Impact of Noise and Degradations on Heart Sound Classification Models
Davoud Shariat Panah, Andrew Hines, Susan McKeever

TL;DR
This study investigates how various noise types and degradations affect the accuracy of heart sound classification models using a synthetic dataset, revealing that some noises are more disruptive and informing targeted quality enhancement strategies.
Contribution
It provides a systematic analysis of the impact of different noise and degradation types on heart sound classification accuracy, which was previously unexplored.
Findings
Different noises affect model performance to varying degrees.
Some noise types are more disruptive to classification accuracy.
Findings align with clinicians' observations on auscultation disruptions.
Abstract
The development of data-driven heart sound classification models has been an active area of research in recent years. To develop such data-driven models in the first place, heart sound signals need to be captured using a signal acquisition device. However, it is almost impossible to capture noise-free heart sound signals due to the presence of internal and external noises in most situations. Such noises and degradations in heart sound signals can potentially reduce the accuracy of data-driven classification models. Although different techniques have been proposed in the literature to address the noise issue, how and to what extent different noise and degradations in heart sound signals impact the accuracy of data-driven classification models remains unexplored. To answer this question, we produced a synthetic heart sound dataset including normal and abnormal heart sounds contaminated…
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Taxonomy
TopicsPhonocardiography and Auscultation Techniques
