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Deep Learning-Based Automatic Endometrium Segmentation and Thickness Measurement for 2D Transvaginal Ultrasound

机译:基于深度学习的二维经阴道超声子宫内膜自动分割和厚度测量

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Endometrial thickness is closely related to gyneco-logical function and is an important biomarker in transvaginal ultrasound (TVUS) examinations for assessing female reproductive health. Manual measurement is time-consuming and subject to high inter- and intra- observer variability. In this paper, we present a fully automated endometrial thickness measurement method using deep learning. Our pipeline consists of: 1) endometrium segmentation using a VGG-based U-Net, and 2) endometrial thickness estimation using medial axis transformation. We conducted experimental studies on 137 2D TVUS cases (74/63 secretory phase/proliferative phase). On a test set of 27 cases/277 images, the segmentation Dice score is 0.83. For thickness measurement, we achieved mean absolute error of 1.23/1.38 mm and root mean squared error of 1.79/1.85 mm on two different test sets. The results are considered well within the clinically acceptable range of ±2 mm. Furthermore, our phase-stratified analysis shows that the measurement variance from the secretory phase is higher than that from the proliferative phase, largely due to the high variability of the endometrium appearance in the secretory phase. Future work will extend our current algorithm toward different clinical outcomes for a broader spectrum of clinical applications.
机译:子宫内膜厚度与妇科功能密切相关,是经阴道超声(TVUS)检查中评估女性生殖健康的重要生物标志物。手动测量非常耗时,而且观察者之间和观察者内部差异很大。在本文中,我们提出了一种使用深度学习的全自动子宫内膜厚度测量方法。我们的管道包括:1)使用基于VGG的U-Net进行子宫内膜分割,以及2)使用中轴变换进行子宫内膜厚度估计。我们对137例2D TVUS病例(74/63分泌期/增殖期)进行了实验研究。在27个案例/ 277张图像的测试集上,分割Dice得分为0.83。对于厚度测量,在两个不同的测试装置上,我们获得的平均绝对误差为1.23 / 1.38毫米,均方根误差为1.79 / 1.85毫米。在临床可接受的±2 mm范围内,结果被认为是很好的。此外,我们的阶段分层分析显示,分泌阶段的测量方差高于增殖阶段的测量方差,这在很大程度上是由于分泌期子宫内膜外观的高度可变性所致。未来的工作将把我们当前的算法扩展到不同的临床结果,以用于更广泛的临床应用。

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