Interactive Segmentation Model for Placenta Segmentation from 3D Ultrasound images.

Hao Li, Baris Oguz, Gabriel Arenas, Xing Yao, Jiacheng Wang, Alison Pouch, Brett Byram, Nadav Schwartz, Ipek Oguz
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Abstract

Placenta volume measurement from 3D ultrasound images is critical for predicting pregnancy outcomes, and manual annotation is the gold standard. However, such manual annotation is expensive and time consuming. Automated segmentation algorithms can often successfully segment the placenta, but these methods may not consistently produce robust segmentations suitable for practical use. Recently, inspired by the Segment Anything Model (SAM), deep learning-based interactive segmentation models have been widely applied in the medical imaging domain. These models produce a segmentation from visual prompts provided to indicate the target region, which may offer a feasible solution for practical use. However, none of these models are specifically designed for interactively segmenting 3D ultrasound images, which remain challenging due to the inherent noise of this modality. In this paper, we evaluate publicly available state-of-the-art 3D interactive segmentation models in contrast to a human-in-the-loop approach for the placenta segmentation task. The Dice score, normalized surface Dice, averaged symmetric surface distance, and 95-percent Hausdorff distance are used as evaluation metrics. We consider a Dice score of 0.95 a successful segmentation. Our results indicate that the human-in-the-loop segmentation model reaches this standard. Moreover, we assess the efficiency of the human-in-the-loop model as a function of the amount of prompts. Our results demonstrate that the human-in-the-loop model is both effective and efficient for interactive placenta segmentation. The code is available at https://github.com/MedICL-VU/PRISM-placenta.

基于交互式分割模型的胎盘三维超声图像分割。
从3D超声图像中测量胎盘体积对于预测妊娠结局至关重要,手工注释是金标准。然而,这种手工注释是昂贵和耗时的。自动分割算法通常可以成功分割胎盘,但这些方法可能不会始终产生适合实际使用的鲁棒分割。近年来,受SAM模型的启发,基于深度学习的交互式分割模型在医学影像领域得到了广泛的应用。这些模型从提供的指示目标区域的视觉提示中产生分割,这可能为实际使用提供可行的解决方案。然而,这些模型都不是专门为交互式分割3D超声图像而设计的,由于这种模式的固有噪声,这仍然具有挑战性。在本文中,我们评估了公开可用的最先进的3D交互式分割模型,与人在环方法相比,用于胎盘分割任务。Dice得分、标准化表面Dice、平均对称表面距离和95% Hausdorff距离被用作评估指标。我们认为0.95的Dice分数是一个成功的分割。结果表明,人在环分割模型达到了这一标准。此外,我们将人在循环模型的效率作为提示量的函数进行评估。我们的结果表明,人在环模型是有效和高效的交互式胎盘分割。代码可在https://github.com/MedICL-VU/PRISM-placenta上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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