Doppler Spectrum Classification with CNNs via Heatmap Location Encoding and a Multi-head Output Layer
Andrew Gilbert, Marit Holden, Line Eikvil, Mariia Rakhmail, Aleksandar, Babic, Svein Arne Aase, Eigil Samset, Kristin McLeod

TL;DR
This paper presents a CNN-based method for automatic classification of cardiac Doppler spectra, using heatmap location encoding and a multi-head output layer, achieving high accuracy suitable for clinical use.
Contribution
The study introduces a novel CNN architecture with heatmap encoding and a confidence metric for accurate, resource-efficient Doppler spectrum classification in clinical settings.
Findings
Achieved 96% accuracy on clinical test data.
Effective confidence metric reduces misclassifications.
Demonstrated suitability for fully automated echocardiographic analysis.
Abstract
Spectral Doppler measurements are an important part of the standard echocardiographic examination. These measurements give important insight into myocardial motion and blood flow providing clinicians with parameters for diagnostic decision making. Many of these measurements can currently be performed automatically with high accuracy, increasing the efficiency of the diagnostic pipeline. However, full automation is not yet available because the user must manually select which measurement should be performed on each image. In this work we develop a convolutional neural network (CNN) to automatically classify cardiac Doppler spectra into measurement classes. We show how the multi-modal information in each spectral Doppler recording can be combined using a meta parameter post-processing mapping scheme and heatmaps to encode coordinate locations. Additionally, we experiment with several…
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Taxonomy
TopicsAdvanced SAR Imaging Techniques · Geophysical Methods and Applications · Wireless Signal Modulation Classification
MethodsTest
