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Main Authors: Bisgin, Pinar, Strube, Tom, Tschorn, Niklas, Pantförder, Michael, Fecke, Maximilian, Ljungvall, Ingrid, Häggström, Jens, Wess, Gerhard, Schummer, Christoph, Meister, Sven, Howar, Falk M.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.05950
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author Bisgin, Pinar
Strube, Tom
Tschorn, Niklas
Pantförder, Michael
Fecke, Maximilian
Ljungvall, Ingrid
Häggström, Jens
Wess, Gerhard
Schummer, Christoph
Meister, Sven
Howar, Falk M.
author_facet Bisgin, Pinar
Strube, Tom
Tschorn, Niklas
Pantförder, Michael
Fecke, Maximilian
Ljungvall, Ingrid
Häggström, Jens
Wess, Gerhard
Schummer, Christoph
Meister, Sven
Howar, Falk M.
contents Noisy labels pose significant challenges for AI model training in veterinary medicine. This study examines expert assessment ambiguity in canine auscultation data, highlights the negative impact of label noise on classification performance, and introduces methods for label noise reduction. To evaluate whether label noise can be minimized by incorporating multiple expert opinions, a dataset of 140 heart sound recordings (HSR) was annotated regarding the intensity of holosystolic heart murmurs caused by Myxomatous Mitral Valve Disease (MMVD). The expert opinions facilitated the selection of 70 high-quality HSR, resulting in a noise-reduced dataset. By leveraging individual heart cycles, the training data was expanded and classification robustness was enhanced. The investigation encompassed training and evaluating three classification algorithms: AdaBoost, XGBoost, and Random Forest. While AdaBoost and Random Forest exhibited reasonable performances, XGBoost demonstrated notable improvements in classification accuracy. All algorithms showed significant improvements in classification accuracy due to the applied label noise reduction, most notably XGBoost. Specifically, for the detection of mild heart murmurs, sensitivity increased from 37.71% to 90.98% and specificity from 76.70% to 93.69%. For the moderate category, sensitivity rose from 30.23% to 55.81% and specificity from 64.56% to 97.19%. In the loud/thrilling category, sensitivity and specificity increased from 58.28% to 95.09% and from 84.84% to 89.69%, respectively. These results highlight the importance of minimizing label noise to improve classification algorithms for the detection of canine heart murmurs. Index Terms: AI diagnosis, canine heart disease, heart sound classification, label noise reduction, machine learning, XGBoost, veterinary cardiology, MMVD.
format Preprint
id arxiv_https___arxiv_org_abs_2507_05950
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Improving AI-Based Canine Heart Disease Diagnosis with Expert-Consensus Auscultation Labeling
Bisgin, Pinar
Strube, Tom
Tschorn, Niklas
Pantförder, Michael
Fecke, Maximilian
Ljungvall, Ingrid
Häggström, Jens
Wess, Gerhard
Schummer, Christoph
Meister, Sven
Howar, Falk M.
Machine Learning
Noisy labels pose significant challenges for AI model training in veterinary medicine. This study examines expert assessment ambiguity in canine auscultation data, highlights the negative impact of label noise on classification performance, and introduces methods for label noise reduction. To evaluate whether label noise can be minimized by incorporating multiple expert opinions, a dataset of 140 heart sound recordings (HSR) was annotated regarding the intensity of holosystolic heart murmurs caused by Myxomatous Mitral Valve Disease (MMVD). The expert opinions facilitated the selection of 70 high-quality HSR, resulting in a noise-reduced dataset. By leveraging individual heart cycles, the training data was expanded and classification robustness was enhanced. The investigation encompassed training and evaluating three classification algorithms: AdaBoost, XGBoost, and Random Forest. While AdaBoost and Random Forest exhibited reasonable performances, XGBoost demonstrated notable improvements in classification accuracy. All algorithms showed significant improvements in classification accuracy due to the applied label noise reduction, most notably XGBoost. Specifically, for the detection of mild heart murmurs, sensitivity increased from 37.71% to 90.98% and specificity from 76.70% to 93.69%. For the moderate category, sensitivity rose from 30.23% to 55.81% and specificity from 64.56% to 97.19%. In the loud/thrilling category, sensitivity and specificity increased from 58.28% to 95.09% and from 84.84% to 89.69%, respectively. These results highlight the importance of minimizing label noise to improve classification algorithms for the detection of canine heart murmurs. Index Terms: AI diagnosis, canine heart disease, heart sound classification, label noise reduction, machine learning, XGBoost, veterinary cardiology, MMVD.
title Improving AI-Based Canine Heart Disease Diagnosis with Expert-Consensus Auscultation Labeling
topic Machine Learning
url https://arxiv.org/abs/2507.05950