2022
DOI: 10.3389/fcvm.2022.1009445
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Deep learning automates detection of wall motion abnormalities via measurement of longitudinal strain from ECG-gated CT images

Abstract: Introduction4D cardiac CT (cineCT) is increasingly used to evaluate cardiac dynamics. While echocardiography and CMR have demonstrated the utility of longitudinal strain (LS) measures, measuring LS from cineCT currently requires reformatting the 4D dataset into long-axis imaging planes and delineating the endocardial boundary across time. In this work, we demonstrate the ability of a recently published deep learning framework to automatically and accurately measure LS for detection of wall motion abnormalities… Show more

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