Salvato in:
Dettagli Bibliografici
Autori principali: Stenhede, Elias, Sulkowska, Joanna, Orstad, Eivind Bjørkan, Schirmer, Henrik, Ranjbar, Arian
Natura: Preprint
Pubblicazione: 2026
Soggetti:
Accesso online:https://arxiv.org/abs/2605.05447
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866909019977809920
author Stenhede, Elias
Sulkowska, Joanna
Orstad, Eivind Bjørkan
Schirmer, Henrik
Ranjbar, Arian
author_facet Stenhede, Elias
Sulkowska, Joanna
Orstad, Eivind Bjørkan
Schirmer, Henrik
Ranjbar, Arian
contents We introduce EchoXFlow, a clinical echocardiography dataset for learning from ultrasound in its native acquisition geometry rather than from scan-converted Cartesian videos. Existing public datasets offer limited opportunities to study cross-modal relationships between cardiac anatomy, myocardial motion, and blood flow, as Doppler is typically absent or fused as RGB overlays, and acquisitions are released after lossy vendor display processing. EchoXFlow comprises 37125 recordings from 666 routine-care examinations, preserving the timing, geometry, and modality relationships needed for physically grounded echo learning. Each recording is retained as separable modality-specific streams: temporally resolved 1D, 2D, and 3D data alongside multiple Doppler modalities, paired with a synchronized ECG. Clinical annotations span guideline-based measurements to dense 2D myocardial contours and 3D left-ventricular endocardial meshes. With its associated open-source tooling, EchoXFlow enables cross-modal, acquisition-aware learning tasks that cannot be formulated from conventional scan-converted videos alone, and serves as a testbed for 4D vision and physically grounded multi-modal learning more broadly.
format Preprint
id arxiv_https___arxiv_org_abs_2605_05447
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle EchoXFlow: A Beamspace Echocardiography Dataset for Cardiac Motion, Flow, and Function
Stenhede, Elias
Sulkowska, Joanna
Orstad, Eivind Bjørkan
Schirmer, Henrik
Ranjbar, Arian
Computer Vision and Pattern Recognition
We introduce EchoXFlow, a clinical echocardiography dataset for learning from ultrasound in its native acquisition geometry rather than from scan-converted Cartesian videos. Existing public datasets offer limited opportunities to study cross-modal relationships between cardiac anatomy, myocardial motion, and blood flow, as Doppler is typically absent or fused as RGB overlays, and acquisitions are released after lossy vendor display processing. EchoXFlow comprises 37125 recordings from 666 routine-care examinations, preserving the timing, geometry, and modality relationships needed for physically grounded echo learning. Each recording is retained as separable modality-specific streams: temporally resolved 1D, 2D, and 3D data alongside multiple Doppler modalities, paired with a synchronized ECG. Clinical annotations span guideline-based measurements to dense 2D myocardial contours and 3D left-ventricular endocardial meshes. With its associated open-source tooling, EchoXFlow enables cross-modal, acquisition-aware learning tasks that cannot be formulated from conventional scan-converted videos alone, and serves as a testbed for 4D vision and physically grounded multi-modal learning more broadly.
title EchoXFlow: A Beamspace Echocardiography Dataset for Cardiac Motion, Flow, and Function
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2605.05447