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Segmentation of Echocardiography Based on Deep Learning Model

Helin Huang, Zhenyi Ge, Hairui Wang, Jing Wu, Chunqiang Hu, Nan Li, Xiaomei Wu, Cuizhen Pan

2022Electronics12 citationsDOIOpen Access PDF

Abstract

In order to achieve the classification of mitral regurgitation, a deep learning network VDS-UNET was designed to automatically segment the critical regions of echocardiography with three sections of apical two-chamber, apical three-chamber, and apical four-chamber. First, an expert-labeled dataset of 153 echocardiographic videos and 2183 images from 49 subjects was constructed. Then, the convolution layer in the VGG16 network was used to replace the contraction path in the original UNet network to extract image features, and depth supervision was added to the expansion path to achieve the segmentation of LA, LV, and MV. The results showed that the Dice coefficients of LA, LV, and MV were 0.935, 0.915, and 0.757, respectively. The proposed deep learning network can achieve simultaneous and accurate segmentation of LA, LV, and MV in multi-section echocardiography, laying a foundation for quantitative measurement of clinical parameters related to mitral regurgitation.

Topics & Concepts

Mitral regurgitationSegmentationDeep learningArtificial intelligenceComputer scienceMedicinePath (computing)CardiologyPattern recognition (psychology)Computer visionBiomedical engineeringRadiologyProgramming languageCardiac Valve Diseases and TreatmentsCardiac Imaging and DiagnosticsInfective Endocarditis Diagnosis and Management
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