TL;DR
Echo-SyncNet is a self-supervised framework that synchronizes cardiac views in echocardiography without external signals, outperforming supervised methods and enabling keyframe detection across diverse views.
Contribution
It introduces a novel self-supervised learning approach for cardiac view synchronization in echocardiography, eliminating the need for ECG signals and generalizing across views.
Findings
Outperforms supervised methods in view synchronization tasks.
Enables accurate keyframe detection without fine-tuning.
Generalizes to unseen cardiac views.
Abstract
In echocardiography (echo), an electrocardiogram (ECG) is conventionally used to temporally align different cardiac views for assessing critical measurements. However, in emergencies or point-of-care situations, acquiring an ECG is often not an option, hence motivating the need for alternative temporal synchronization methods. Here, we propose Echo-SyncNet, a self-supervised learning framework to synchronize various cross-sectional 2D echo series without any external input. The proposed framework takes advantage of both intra-view and inter-view self supervisions. The former relies on spatiotemporal patterns found between the frames of a single echo cine and the latter on the interdependencies between multiple cines. The combined supervisions are used to learn a feature-rich embedding space where multiple echo cines can be temporally synchronized. We evaluate the framework with multiple…
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