Convolutional Neural Networks For Automated Fetal Cardiac Assessment Using 4d B-Ode Ultrasound

2019 IEEE 16TH INTERNATIONAL SYMPOSIUM ON BIOMEDICAL IMAGING (ISBI 2019)(2019)

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摘要
Structural and functional assessment of the fetal heart is currently performed using ultrasound-based imaging biomarkers that require annotation by a trained observer. This requires experience and expertise and is subject to observer variability. In this work, a Convolutional Neural Network (CNN) was implemented for segmentation of the fetal annulus in 250 cases to provide automated measurements of the excursion of the mitral and tricuspid valve annular planes ('IAPSE/MAPSE). These were evaluated against manual annotation. After training, the CNN achieved a Dice score of 0.78 (+0.02; a) and the excursion measures had an RMS1i of < 0.16 cm. Results show the feasibility of using a CNN to detect the fetal annuli and measure TAPSE/MAPSE for cardiac functional assessment.
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关键词
Fetal heart, ultrasound, cardiac, neural network, U-net, image segmentation, Computer aided diagnosis.
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