三维重建的骨盆骨MRI扫描

Egor O. Ikryannikov
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引用次数: 0

摘要

背景:骨盆测量是产科检查的重要组成部分,用于预测胎儿和母亲骨盆大小不匹配,从而导致阴道分娩困难或不可能。骨盆收缩是产妇分娩创伤和围产期发病率和死亡率的主要原因之一。目的:建立骨盆骨自动分割和三维重建的计算机视觉模型。方法:采用基于u - net的三维神经网络对T2加权图像进行正面投影训练(重复时间,7500;回声时间,130;切片厚度,4mm;场,4039;矩阵,256256)。样本量涵盖49例患者。训练样本42个,测试样本7个。感兴趣区域的分割是手工完成的,并由专家进行验证。样本量通过实现数据的代表性来获得定性模型(根据SorensenDice系数)。结果:获得骨盆骨三维重建。测试样本中骨盆骨分割精度的平均Sorensen-Dice系数为0.86。结果证明使用基于3D u - net的神经网络作为工具能够感知图像的3D结构并进行定性分割。该结果允许在重建过程中进一步自动化关键点的确定。结论:建立了骨盆骨自动分割的计算机视觉模型,获得三维重建图像。这使得研究的下一阶段成为可能,即开发一个模型来确定图像中的关键点和点之间的距离。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Three-dimensional reconstruction of the pelvic bones on MRI scans
BACKGROUND: Pelvimetry is an important part of the obstetric examination for predicting a mismatch between the size of the fetus and the mothers pelvis, which leads to difficulty or impossibility of vaginal delivery. Contracted pelvis is one of the main causes of maternal birth trauma and perinatal morbidity and mortality. AIM: To create a computer vision model for automatic segmentation and three-dimensional (3D) reconstruction of the pelvic bones. METHODS: A 3D U-Net-based neural network was used and trained on T2 weighted images in frontal projection (repetition time, 7500; echo time, 130; slice thickness, 4mm; field-of-view, 4039; matrix, 256256). The sample size covered 49 patients. The training and test samples included 42 and 7 examinations, respectively. The segmentation of areas of interest was done manually and verified by a specialist. The sample size was justified by achieving representativeness of the data for obtaining a qualitative model (according to the SorensenDice coefficient). RESULTS: 3D reconstructions of the pelvic bones were obtained. The average Sorensen-Dice coefficient on the accuracy of pelvic bone segmentation in the test sample was 0.86. The result justified the use of a 3D U-Net-based neural network as a tool capable of perceiving a 3D structure of images and conducting qualitative segmentation. The results allow further work on automating the determination of key points at reconstructions. CONCLUSIONS: A computer vision model for automatic segmentation of the pelvic bones to obtain 3D reconstruction of images was created. This enabled the next stage of the study, i.e. the development of a model for determining the key points in the images and the distances between the points.
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来源期刊
CiteScore
1.30
自引率
0.00%
发文量
44
审稿时长
5 weeks
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