School of Mathematics and Computing (Computational Science and Engineering), Yonsei University, Seoul 03722, Republic of Korea.
Department of Obstetrics and Gynecology, Institute of Womens Life Medical Science, Yonsei University College of Medicine, Seoul 03722, Republic of Korea.
Med Image Anal. 2021 Apr;69:101951. doi: 10.1016/j.media.2020.101951. Epub 2021 Jan 7.
The estimation of antenatal amniotic fluid (AF) volume (AFV) is important as it offers crucial information about fetal development, fetal well-being, and perinatal prognosis. However, AFV measurement is cumbersome and patient specific. Moreover, it is heavily sonographer-dependent, with measurement accuracy varying greatly depending on the sonographer's experience. Therefore, the development of accurate, robust, and adoptable methods to evaluate AFV is highly desirable. In this regard, automation is expected to reduce user-based variability and workload of sonographers. However, automating AFV measurement is very challenging, because accurate detection of AF pockets is difficult owing to various confusing factors, such as reverberation artifact, AF mimicking region and floating matter. Furthermore, AF pocket exhibits an unspecified variety of shapes and sizes, and ultrasound images often show missing or incomplete structural boundaries. To overcome the abovementioned difficulties, we develop a hierarchical deep-learning-based method, which consider clinicians' anatomical-knowledge-based approaches. The key step is the segmentation of the AF pocket using our proposed deep learning network, AF-net. AF-net is a variation of U-net combined with three complementary concepts - atrous convolution, multi-scale side-input layer, and side-output layer. The experimental results demonstrate that the proposed method provides a measurement of the amniotic fluid index (AFI) that is as robust and precise as the results from clinicians. The proposed method achieved a Dice similarity of 0.877±0.086 for AF segmentation and achieved a mean absolute error of 2.666±2.986 and mean relative error of 0.018±0.023 for AFI value. To the best of our knowledge, our method, for the first time, provides an automated measurement of AFI.
产前羊水(AF)体积(AFV)的评估非常重要,因为它提供了关于胎儿发育、胎儿健康和围产期预后的关键信息。然而,AFV 的测量很繁琐,并且具有个体差异性。此外,它严重依赖于超声医师,测量的准确性因超声医师的经验而有很大差异。因此,开发准确、稳健且可采用的方法来评估 AFV 是非常需要的。在这方面,自动化有望减少超声医师的个体差异和工作量。然而,自动测量 AFV 非常具有挑战性,因为由于各种混淆因素(如反射伪影、AF 模拟区域和漂浮物),准确检测 AF 袋非常困难。此外,AF 袋表现出不确定的形状和大小,并且超声图像通常显示缺失或不完整的结构边界。为了克服上述困难,我们开发了一种基于深度学习的分层方法,该方法考虑了临床医生基于解剖学知识的方法。关键步骤是使用我们提出的深度学习网络 AF-net 对 AF 袋进行分割。AF-net 是 U-net 的变体,结合了三个互补概念——空洞卷积、多尺度侧输入层和侧输出层。实验结果表明,该方法提供的羊水指数(AFI)测量值与临床医生的结果一样稳健和精确。该方法在 AF 分割方面的 Dice 相似性为 0.877±0.086,在 AFI 值方面的平均绝对误差为 2.666±2.986,平均相对误差为 0.018±0.023。据我们所知,我们的方法首次提供了 AFI 的自动测量。