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基于D-UNET的胎儿产前超声检测 被引量:4

Fetal prenatal ultrasound detection based on D-UNET
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摘要 胎儿的产前超声检测对判断或预测孕妇孕期、估计胎儿尺寸和质量具有重要意义.超声检测主要是基于超声图像对胎儿的腹围(abdominal circumference)、股骨长(femur length)以及头臀径(crown-rump length)等参数进行测量.这些生物参数的测量可以用来判断胎儿的生长状况是否良好以及胎儿是否畸形.当前,这些参数需要依靠医生进行手动测量,该方法效率低下且严重依赖医生经验,从而导致检测准确率下降.对此,本文提出了一种基于深度学习的算法来对腹围、头围、股骨等部位进行自动分割,并对这些生物参数进行自动测量.该算法基于UNET结构,并采用扩张卷积(dilation convolution)以提高网络提取上下文信息的能力,因此本文将其命名为D-UNET.本文基于腹围、股骨以及头臀径三个临床数据集对所提D-UNET进行了实验验证,并与一些其他先进的深度学习分割算法进行了比较.实验结果表明,本文算法在三个数据集上都表现了与专家医师手动标注接近的测量结果.由此说明,本文算法能辅助医师对生物参数进行自动测量. The ultrasound detection of the fetus is of great significante to the pregnancy judgement or prediction,the fetal size and its weight estimation.Ultrasonic measurement is mainly to infer abdominal circumference,femur length and crown-rump length of the fetus based on Ultrasonic images.These biological parameters measurement can be used to determine whether the fetal growth is well or the fetal is deformed.In general,these parameters need to be measured by doctor manually,which is inefficient due to the doctor's experience dependant and would lead to reduced detection accuracy.Arming at this kind of problem,we propose a deep learning-based method to automatically measure the abdominal circumference,femur length and crown-rump length.The method,named D-UNET,is based on the UNET structure and combines the strategy of dilation convolution to improve the network's ability to extract context information.Validation was done on three datasets:abdominal circumference,femur and crown-rump length and compared with some other advanced deep learning segmentation algorithms.The experimental results demonstrate that the proposed algorithm shows the measurement results are close to the manual labeling by the expert physician on the three data sets and can assist the physician to automatically measure the biological parameter Clinically,our method demonstrates the measurements are very close to the manual labeling by expert physicians on all three datasets.This shows that our method can assist physicians in the automatic measurement of these biological parameters.
作者 李志昂 马宗庆 王艳 张波 罗红 周激流 LI Zhi-Ang;MA Zong-Qing;WANG Yan;ZHANG Bo;LUO Hong;ZHOU Ji-Liu(School of Electronic Information, Sichuan University, Chengdu 610065, China;School of Computer Science, Sichuan University, Chengdu 610065, China;Department of Ultrasound, West China Second Hospital, Sichuan University, Chengdu 610065, China)
出处 《四川大学学报(自然科学版)》 CAS CSCD 北大核心 2020年第4期733-740,共8页 Journal of Sichuan University(Natural Science Edition)
基金 国家自然科学基金(61701324)。
关键词 胎儿超声 图像分割 扩张卷积 Fetal ultrasound Image segmentation Dilation convolution
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