Objective. This work investigates the use of deep convolutional neural networks (CNN) to automatically perform measurements of fetal body parts, including head circumference, biparietal diameter, abdominal circumference and femur length, and to estimate gestational age and fetal weight using fetal ultrasound videos. Approach. We developed a novel multi-task CNN-based spatio-temporal fetal US feature extraction and standard plane detection algorithm (called FUVAI) and evaluated the method on 50 freehand fetal US video scans. We compared FUVAI fetal biometric measurements with measurements made by five experienced sonographers at two time points separated by at least two weeks. Intra- and inter-observer variabilities were estimated. Main results. We found that automated fetal biometric measurements obtained by FUVAI were comparable to the measurements performed by experienced sonographers The observed differences in measurement values were within the range of inter- and intra-observer variability. Moreover, analysis has shown that these differences were not statistically significant when comparing any individual medical expert to our model. Significance. We argue that FUVAI has the potential to assist sonographers who perform fetal biometric measurements in clinical settings by providing them with suggestions regarding the best measuring frames, along with automated measurements. Moreover, FUVAI is able perform these tasks in just a few seconds, which is a huge difference compared to the average of six minutes taken by sonographers. This is significant, given the shortage of medical experts capable of interpreting fetal ultrasound images in numerous countries.
翻译:这项工作调查了使用深卷神经神经网络自动测量胎儿器官的方法,包括头环、双胎直径、腹围和股骨长度,并使用胎儿超声波视频估计妊娠年龄和胎儿体重。 方法。我们开发了一个新型的多任务CNN光谱时空美国特征提取和标准飞机探测算法(称为FUVAI),并评价了50次免费美产视频扫描的方法。我们比较了FUI胎儿生物测定法与5名有经验的女声学家在至少两周内分开的两个时间点进行的测量方法。估计了妊娠年龄和胎儿体重的变异性。我们发现FOVAI获得的自动化胎儿生物测定法与有经验的女声学家测量法相比,观察到的测量值差异在于50次自由心机骨的距离和内部变异性。此外,我们比较了FUIFI的胎儿生物测定法测量方法,这些差异并不在统计上具有显著意义,在比得力的六种直径的血管测量法系中,我们所观测到的体系生物统计专家在模型中表现最显著的体力。