CVMar 28, 2025

EchoFlow: A Foundation Model for Cardiac Ultrasound Image and Video Generation

arXiv:2503.22357v17 citationsh-index: 13Has Code
Originality Incremental advance
AI Analysis

This addresses data scarcity and privacy issues in medical imaging research, enabling broader, compliant studies in cardiac ultrasound.

The paper tackles the problem of limited medical data due to privacy concerns by introducing EchoFlow, a framework for generating synthetic cardiac ultrasound images and videos, and shows that models trained on these synthetic datasets achieve performance parity with those trained on real data.

Advances in deep learning have significantly enhanced medical image analysis, yet the availability of large-scale medical datasets remains constrained by patient privacy concerns. We present EchoFlow, a novel framework designed to generate high-quality, privacy-preserving synthetic echocardiogram images and videos. EchoFlow comprises four key components: an adversarial variational autoencoder for defining an efficient latent representation of cardiac ultrasound images, a latent image flow matching model for generating accurate latent echocardiogram images, a latent re-identification model to ensure privacy by filtering images anatomically, and a latent video flow matching model for animating latent images into realistic echocardiogram videos conditioned on ejection fraction. We rigorously evaluate our synthetic datasets on the clinically relevant task of ejection fraction regression and demonstrate, for the first time, that downstream models trained exclusively on EchoFlow-generated synthetic datasets achieve performance parity with models trained on real datasets. We release our models and synthetic datasets, enabling broader, privacy-compliant research in medical ultrasound imaging at https://huggingface.co/spaces/HReynaud/EchoFlow.

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