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EchoVisuALL: From Echocardiography to Gene Discovery

MCML Authors

Link to Profile Carsten Marr PI Matchmaking

Carsten Marr

Prof. Dr.

Principal Investigator

Abstract

Cardiovascular diseases are a major global health burden, demanding phenotyping frame-works that can match the scale and complexity of contemporary mouse genetics. Here, we introduce EchoVisuALL, an AI-enabled pipeline for automated high-throughput transthoracic echocardiography (TTE) coupling deep-learning-based left-ventricular segmentation with data reporting. Across 65,000 recordings from over 18,000 mice, including single-gene knockouts from the International Mouse Phenotyping Consortium, the framework quantified cardiac morphology and function with minimal operator dependency and high reliability, validated against an expert-curated gold standard dataset. By extracting quantitative parameters across the cardiac cycle, EchoVisuALL in combination with multi-dimensional clustering uncovered nonlinear phenotypic relationships and revealed 37 of 715 genes associated with significant cardiac abnormalities, encompassing well-known human disease genes as well as 12 previously unrecognized candidates, including Cep70, Acot12, Atp8b3, Eea1, Kctd2, and Tspan15. These genotype-phenotype associations are involved in myocardial energetics, membrane biology, and cardiac remodeling. We demonstrate the potential of EchoVisuALL to move beyond image segmentation by delivering a standardized, quantitative foundation for scalable downstream analyses, enabling the discovery of novel cardiac disease genes.

misc GSM+26


Preprint

Nov. 2025

Authors

I. Galter • E. Schneltzer • C. Marr • N. Spielmann • M. Hrabě de Angelis

Links

DOI

Research Area

 C1 | Medicine

BibTeXKey: GSM+26

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