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Semi-automatic segmentation of normal female pelvic floor structures from magnetic resonance images.

机译:从磁共振图像中正常女性骨盆底结构的半自动分割。

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摘要

Stress urinary incontinence (SUI) and pelvic organ prolapse (POP) are important health issues affecting millions of American women. Investigation of the cause of SUI and POP requires a better understand of the anatomy of female pelvic floor. In addition, pre-surgical planning and individualized treatment plans require development of patient-specific three-dimensional or virtual reality models. The biggest challenge in building those models is to segment pelvic floor structures from magnetic resonance images because of their complex shapes, which make manual segmentation labor-intensive and inaccurate. In this dissertation, a quick and reliable semi-automatic segmentation method based on a shape model is proposed. The model is built on statistical analysis of the shapes of structures in a training set. A local feature map of the target image is obtained by applying a filtering pipeline, including contrast enhancement, noise reduction, smoothing, and edge extraction. With the shape model and feature map, automatic segmentation is performed by matching the model to the border of the structure using an optimization technique called evolution strategy. Segmentation performance is evaluated by calculating a similarity coefficient between semi-automatic and manual segmentation results. Taguchi analysis is performed to investigate the significance of segmentation parameters and provide tuning trends for better performance. The proposed method was successfully tested on both two-dimensional and three-dimensional image segmentation using the levator ani and obturator muscles as examples. Although the method is designed for segmentation of female pelvic floor structures, it can also be applied to other structures or organs without large shape variation.
机译:压力性尿失禁(SUI)和盆腔器官脱垂(POP)是影响数百万美国妇女的重要健康问题。调查SUI和POP的原因需要更好地了解女性骨盆底的解剖结构。此外,术前计划和个性化治疗计划需要开发患者特定的三维或虚拟现实模型。建立这些模型的最大挑战是,由于形状复杂,需要从磁共振图像中分割出骨盆底结构,这使得人工分割变得费力且不准确。本文提出了一种基于形状模型的快速可靠的半自动分割方法。该模型基于对训练集中的结构形状的统计分析。通过应用滤波管线(包括对比度增强,降噪,平滑和边缘提取)可以获取目标图像的局部特征图。对于形状模型和特征图,通过使用称为进化策略的优化技术将模型与结构的边界进行匹配来执行自动分割。通过计算半自动和手动分割结果之间的相似系数来评估分割性能。进行Taguchi分析以调查细分参数的重要性,并提供调整趋势以提高性能。以肛提肌和闭孔肌为例,对二维和三维图像分割方法进行了测试。尽管该方法是专为女性骨盆底结构的分割而设计的,但它也可以应用于其他结构或器官而不会产生较大的形状变化。

著录项

  • 作者

    Li, Xiaolong.;

  • 作者单位

    Cleveland State University.;

  • 授予单位 Cleveland State University.;
  • 学科 Engineering Biomedical.;Health Sciences Radiology.
  • 学位 D.Eng.
  • 年度 2010
  • 页码 190 p.
  • 总页数 190
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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