Exploring Finetuned Audio-LLM on Heart Murmur Features
Adrian Florea, Xilin Jiang, Nima Mesgarani, Xiaofan Jiang

TL;DR
This study finetunes an audio large language model on heart sound data to classify detailed murmur features, outperforming existing methods and demonstrating robustness with limited data, aiding cardiology diagnosis.
Contribution
The paper introduces a novel application of finetuning an audio LLM for detailed heart murmur feature classification, surpassing prior approaches in accuracy and robustness.
Findings
Outperforms state-of-the-art in 8 of 11 features
Classifies long-tail murmur features with limited data
Demonstrates potential as a cardiology diagnostic aid
Abstract
Large language models (LLMs) for audio have excelled in recognizing and analyzing human speech, music, and environmental sounds. However, their potential for understanding other types of sounds, particularly biomedical sounds, remains largely underexplored despite significant scientific interest. In this study, we focus on diagnosing cardiovascular diseases using phonocardiograms, i.e., heart sounds. Most existing deep neural network (DNN) paradigms are restricted to heart murmur classification (healthy vs unhealthy) and do not predict other acoustic features of the murmur such as timing, grading, harshness, pitch, and quality, which are important in helping physicians diagnose the underlying heart conditions. We propose to finetune an audio LLM, Qwen2-Audio, on the PhysioNet CirCor DigiScope phonocardiogram (PCG) dataset and evaluate its performance in classifying 11 expert-labeled…
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Taxonomy
TopicsSpeech and Audio Processing
MethodsFocus
