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Fetal Ultrasound Image Segmentation for Measuring Biometric Parameters Using Multi-Task Deep Learning

机译:使用多任务深度学习测量生物识别参数的胎儿超声图像分割

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Ultrasound imaging is a standard examination during pregnancy that can be used for measuring specific biometric parameters towards prenatal diagnosis and estimating gestational age. Fetal head circumference (HC) is one of the significant factors to determine the fetus growth and health. In this paper, a multi-task deep convolutional neural network is proposed for automatic segmentation and estimation of HC ellipse by minimizing a compound cost function composed of segmentation dice score and MSE of ellipse parameters. Experimental results on fetus ultrasound dataset in different trimesters of pregnancy show that the segmentation results and the extracted HC match well with the radiologist annotations. The obtained dice scores of the fetal head segmentation and the accuracy of HC evaluations are comparable to the state-of-the-art.
机译:超声成像是妊娠期间的标准检查,可用于测量特异性生物识别参数,以促进产前诊断和估算孕期年龄。胎头围绕(HC)是确定胎儿生长和健康的重要因素之一。本文通过最小化由椭圆参数和椭圆参数的MSE组成的复合成本函数,提出了一种多任务深卷积神经网络,用于通过最小化复合成本函数来自动分割和估计HC椭圆。妊娠不同修身者胎儿超声数据集的实验结果表明,分段结果和提取的HC与放射科注释匹配。获得的胎儿头部分割的骰子评分和HC评估的准确性与最先进的胎儿评估相当。

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