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Unsupervised heart abnormality detection based on phonocardiogram analysis with Beta Variational Auto-Encoders

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arxiv 2101.05443 v1 pith:S77UU5FH submitted 2021-01-14 cs.SD eess.AS

Unsupervised heart abnormality detection based on phonocardiogram analysis with Beta Variational Auto-Encoders

classification cs.SD eess.AS
keywords analysisanomalybetabeta-normaltextdetectiondistribution
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Heart Sound (also known as phonocardiogram (PCG)) analysis is a popular way that detects cardiovascular diseases (CVDs). Most PCG analysis uses supervised way, which demands both normal and abnormal samples. This paper proposes a method of unsupervised PCG analysis that uses beta variational auto-encoder ($\beta-\text{VAE}$) to model the normal PCG signals. The best performed model reaches an AUC (Area Under Curve) value of 0.91 in ROC (Receiver Operating Characteristic) test for PCG signals collected from the same source. Unlike majority of $\beta-\text{VAE}$s that are used as generative models, the best-performed $\beta-\text{VAE}$ has a $\beta$ value smaller than 1. Further experiments then find that the introduction of a light weighted KL divergence between distribution of latent space and normal distribution improves the performance of anomaly PCG detection based on anomaly scores resulted by reconstruction loss. The fact suggests that anomaly score based on reconstruction loss may be better than anomaly scores based on latent vectors of samples

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