Population data-based federated machine learning improves automated echocardiographic quantification of cardiac structure and function: the Automatisierte Vermessung der Echokardiographie project

Caroline Morbach,Goetz Gelbrich,Marcus Schreckenberg, Maike Hedemann, Dora Pelin,Nina Scholz,Olga Miljukov, Achim Wagner, Fabian Theisen,Niklas Hitschrich, Hendrik Wiebel, Daniel Stapf, Oliver Karch,Stefan Frantz,Peter U. Heuschmann,Stefan Stoerk

EUROPEAN HEART JOURNAL - DIGITAL HEALTH(2024)

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摘要
Aims Machine-learning (ML)-based automated measurement of echocardiography images emerges as an option to reduce observer variability. The objective of the study is to improve the accuracy of a pre-existing automated reading tool ('original detector') by federated ML-based re-training.Methods and results Automatisierte Vermessung der Echokardiographie was based on the echocardiography images of n = 4965 participants of the population-based Characteristics and Course of Heart Failure Stages A-B and Determinants of Progression Cohort Study. We implemented federated ML: echocardiography images were read by the Academic Core Lab Ultrasound-based Cardiovascular Imaging at the University Hospital Wurzburg (UKW). A random algorithm selected 3226 participants for re-training of the original detector. According to data protection rules, the generation of ground truth and ML training cycles took place within the UKW network. Only non-personal training weights were exchanged with the external cooperation partner for the refinement of ML algorithms. Both the original detectors as the re-trained detector were then applied to the echocardiograms of n = 563 participants not used for training. With regard to the human referent, the re-trained detector revealed (i) superior accuracy when contrasted with the original detector's performance as it arrived at significantly smaller mean differences in all but one parameter, and a (ii) smaller absolute difference between measurements when compared with a group of different human observers.Conclusion Population data-based ML in a federated ML set-up was feasible. The re-trained detector exhibited a much lower measurement variability than human readers. This gain in accuracy and precision strengthens the confidence in automated echocardiographic readings, which carries large potential for applications in various settings. Graphical Abstract
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关键词
Automated measurement,Machine learning,Measurement variability,Observer variability,Sample size,Population-based cohort
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