University of Ljubljana, Faculty of Computer and Information Science, Večna pot 113, Ljubljana, 1000, Slovenia.
University of Ljubljana, Faculty of Medicine, Vrazov trg 2, Ljubljana, 1000, Slovenia.
Comput Biol Med. 2024 Aug;178:108794. doi: 10.1016/j.compbiomed.2024.108794. Epub 2024 Jun 27.
The uterus is the most important organ in the female reproductive system. Its shape plays a critical role in fertility and pregnancy outcomes. Advances in medical imaging, such as 3D ultrasound, have significantly improved the exploration of the female genital tract, thereby enhancing gynecological healthcare. Despite well-documented data for organs like the liver and heart, large-scale studies on the uterus are lacking. Existing classifications, such as VCUAM and ESHRE/ESGE, provide different definitions for normal uterine shapes but are not based on real-world measurements. Moreover, the lack of comprehensive datasets significantly hinders research in this area. Our research, part of the larger NURSE study, aims to fill this gap by establishing the shape of a normal uterus using real-world 3D vaginal ultrasound scans. This will facilitate research into uterine shape abnormalities associated with infertility and recurrent miscarriages.
We developed an automated system for the segmentation and alignment of uterine shapes from 3D ultrasound data, which consists of two steps: automatic segmentation of the uteri in 3D ultrasound scans using deep learning techniques, and alignment of the resulting shapes with standard geometrical approaches, enabling the extraction of the normal shape for future analysis. The system was trained and validated on a comprehensive dataset of 3D ultrasound images from multiple medical centers. Its performance was evaluated by comparing the automated results with manual annotations provided by expert clinicians.
The presented approach demonstrated high accuracy in segmenting and aligning uterine shapes from 3D ultrasound data. The segmentation achieved an average Dice similarity coefficient (DSC) of 0.90. Our method for aligning uterine shapes showed minimal translation and rotation errors compared to traditional methods, with the preliminary average shape exhibiting characteristics consistent with expert findings of a normal uterus.
We have presented an approach to automatically segment and align uterine shapes from 3D ultrasound data. We trained a deep learning nnU-Net model that achieved high accuracy and proposed an alignment method using a combination of standard geometrical techniques. Additionally, we have created a publicly available dataset of 3D transvaginal ultrasound volumes with manual annotations of uterine cavities to support further research and development in this field. The dataset and the trained models are available at https://github.com/UL-FRI-LGM/UterUS.
子宫是女性生殖系统中最重要的器官。其形状对生育和妊娠结局起着至关重要的作用。医学成像技术的进步,如 3D 超声,极大地提高了对女性生殖道的探索,从而增强了妇科保健。尽管有肝脏和心脏等器官的大量有据可查的数据,但缺乏对子宫的大规模研究。现有的分类,如 VCUAM 和 ESHRE/ESGE,对正常子宫形状提供了不同的定义,但不是基于实际测量。此外,缺乏全面的数据集极大地阻碍了该领域的研究。我们的研究是更大的 NURSE 研究的一部分,旨在使用真实的 3D 阴道超声扫描来建立正常子宫的形状。这将有助于研究与不孕和反复流产相关的子宫形状异常。
我们开发了一种用于从 3D 超声数据中分割和对齐子宫形状的自动系统,该系统由两个步骤组成:使用深度学习技术自动分割 3D 超声扫描中的子宫,以及使用标准几何方法对齐所得形状,从而提取正常形状用于未来分析。该系统在来自多个医疗中心的 3D 超声图像的综合数据集上进行了训练和验证。通过将自动结果与专家临床医生提供的手动注释进行比较,评估了系统的性能。
所提出的方法在从 3D 超声数据中分割和对齐子宫形状方面表现出了很高的准确性。分割达到了 0.90 的平均骰子相似系数(DSC)。与传统方法相比,我们的子宫形状对齐方法显示出最小的平移和旋转误差,初步平均形状表现出与专家发现的正常子宫一致的特征。
我们提出了一种从 3D 超声数据中自动分割和对齐子宫形状的方法。我们训练了一个深度学习 nnU-Net 模型,该模型达到了很高的准确性,并提出了一种使用标准几何技术组合的对齐方法。此外,我们创建了一个包含手动子宫腔注释的 3D 经阴道超声容积的公共可用数据集,以支持该领域的进一步研究和开发。该数据集和训练好的模型可在 https://github.com/UL-FRI-LGM/UterUS 上获得。