Benchmarking Self-Supervised Models for Cardiac Ultrasound View Classification
Youssef Megahed, Salma I. Megahed, Robin Ducharme, Inok Lee, Adrian D. C. Chan, Mark C. Walker, Steven Hawken

TL;DR
This study compares two self-supervised learning models, USF-MAE and MoCo v3, on a large cardiac ultrasound dataset, demonstrating that USF-MAE consistently outperforms MoCo v3 in view classification accuracy and robustness.
Contribution
The paper introduces USF-MAE, a new self-supervised learning framework, and provides a comprehensive comparison with MoCo v3 on the CACTUS dataset for cardiac ultrasound view classification.
Findings
USF-MAE achieves higher ROC-AUC and accuracy than MoCo v3.
USF-MAE's performance improvements are statistically significant.
Both models perform robustly across multiple data splits.
Abstract
Reliable interpretation of cardiac ultrasound images is essential for accurate clinical diagnosis and assessment. Self-supervised learning has shown promise in medical imaging by leveraging large unlabelled datasets to learn meaningful representations. In this study, we evaluate and compare two self-supervised learning frameworks, USF-MAE, developed by our team, and MoCo v3, on the recently introduced CACTUS dataset (37,736 images) for automated simulated cardiac view (A4C, PL, PSAV, PSMV, Random, and SC) classification. Both models used 5-fold cross-validation, enabling robust assessment of generalization performance across multiple random splits. The CACTUS dataset provides expert-annotated cardiac ultrasound images with diverse views. We adopt an identical training protocol for both models to ensure a fair comparison. Both models are configured with a learning rate of 0.0001 and a…
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Taxonomy
TopicsCardiovascular Function and Risk Factors · Phonocardiography and Auscultation Techniques · Congenital heart defects research
