Deep Learning Based Classification of Unsegmented Phonocardiogram Spectrograms Leveraging Transfer Learning
Cardiovascular diseases (CVDs) are the main cause of deaths all over the world. Heart murmurs are the most common abnormalities detected during the auscultation process. The two widely used publicly available phonocardiogram (PCG) datasets are from the PhysioNet/CinC (2016) and PASCAL (2011) challen...
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Zusammenfassung: | Cardiovascular diseases (CVDs) are the main cause of deaths all over the
world. Heart murmurs are the most common abnormalities detected during the
auscultation process. The two widely used publicly available phonocardiogram
(PCG) datasets are from the PhysioNet/CinC (2016) and PASCAL (2011) challenges.
The datasets are significantly different in terms of the tools used for data
acquisition, clinical protocols, digital storages and signal qualities, making
it challenging to process and analyze. In this work, we have used short-time
Fourier transform (STFT) based spectrograms to learn the representative
patterns of the normal and abnormal PCG signals. Spectrograms generated from
both the datasets are utilized to perform three different studies: (i) train,
validate and test different variants of convolutional neural network (CNN)
models with PhysioNet dataset, (ii) train, validate and test the best
performing CNN structure on combined PhysioNet-PASCAL dataset and (iii)
finally, transfer learning technique is employed to train the best performing
pre-trained network from the first study with PASCAL dataset. We propose a
novel, less complex and relatively light custom CNN model for the
classification of PhysioNet, combined and PASCAL datasets. The first study
achieves an accuracy, sensitivity, specificity, precision and F1 score of
95.4%, 96.3%, 92.4%, 97.6% and 96.98% respectively while the second study shows
accuracy, sensitivity, specificity, precision and F1 score of 94.2%, 95.5%,
90.3%, 96.8% and 96.1% respectively. Finally, the third study shows a precision
of 98.29% on the noisy PASCAL dataset with transfer learning approach. All the
three proposed approaches outperform most of the recent competing studies by
achieving comparatively high classification accuracy and precision, which make
them suitable for screening CVDs using PCG signals. |
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DOI: | 10.48550/arxiv.2012.08406 |