Predicting fetal weight at birth is an important aspect of perinatal care, particularly in the context of antenatal management, which includes the planned timing and the mode of delivery. Accurate prediction of weight using prenatal ultrasound is challenging as it requires images of specific fetal body parts during advanced pregnancy which is difficult to capture due to poor quality of images caused by the lack of amniotic fluid. As a consequence, predictions which rely on standard methods often suffer from significant errors. In this paper we propose the Residual Transformer Module which extends a 3D ResNet-based network for analysis of 2D+t spatio-temporal ultrasound video scans. Our end-to-end method, called BabyNet, automatically predicts fetal birth weight based on fetal ultrasound video scans. We evaluate BabyNet using a dedicated clinical set comprising 225 2D fetal ultrasound videos of pregnancies from 75 patients performed one day prior to delivery. Experimental results show that BabyNet outperforms several state-of-the-art methods and estimates the weight at birth with accuracy comparable to human experts. Furthermore, combining estimates provided by human experts with those computed by BabyNet yields the best results, outperforming either of other methods by a significant margin. The source code of BabyNet is available at https://github.com/SanoScience/BabyNet.
翻译:分娩时胎儿体重预测是围产期护理的一个重要方面,特别是在产前管理方面,这包括计划的时间和分娩方式。精确预测使用产前超声波对体重的预测具有挑战性,因为它需要早孕期胎儿特定器官的图像,由于缺乏羊膜液导致图像质量差,难以捕捉。因此,依赖标准方法的预测往往出现重大错误。在本文中,我们提议残余变异器模块,扩展基于3D ResNet的网络,用于分析2D+tspatspatio-时空超声波视频扫描。我们的端对端方法,称为BabyNet,根据胎儿超声波视频扫描自动预测胎儿身体部分的胎儿体重。我们使用由225 2D 胎儿超声波视频组成的专门临床数据集评估婴儿网,在分娩前一天75名病人怀孕情况。实验结果显示,婴儿网超越了几个状态技术方法,估计出生体重,与人类专家的准确性能相当。此外,我们用胎儿超声波扫描仪/网络提供的重要比例。