DEEP NETWORKS TO AUTOMATICALLY DETECT LATE-ACTIVATING REGIONS OF THE HEART

2021 IEEE 18TH INTERNATIONAL SYMPOSIUM ON BIOMEDICAL IMAGING (ISBI)(2021)

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摘要
This paper presents a novel method to automatically identify late-activating regions of the left ventricle from cine Displacement Encoding with Stimulated Echo (DENSE) MR images. We develop a deep learning framework that identifies late mechanical activation in heart failure patients by detecting the Time to the Onset of circumferential Shortening (TOS). In particular, we build a cascade network performing end-to-end (i) segmentation of the left ventricle to analyze cardiac function, (ii) prediction of TOS based on spatiotemporal circumferential strains computed from displacement maps, and (iii) 3D visualization of delayed activation maps. Our approach results in dramatic savings of manual labors and computational time over traditional optimization-based algorithms. To evaluate the effectiveness of our method, we run tests on cardiac images and compare with recent related works. Experimental results show that the proposed approach provides fast prediction of TOS with improved accuracy.
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关键词
Stimulated Echo MR images,deep learning framework,late mechanical activation,heart failure patients,TOS,cascade network,end-to-end segmentation,left ventricle,cardiac function,spatiotemporal circumferential strains,displacement maps,delayed activation maps,cardiac images,deep networks,cine displacement encoding,circumferential shortening,late-activating regions
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