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Computer-assisted segmentation and tracking of brain lesions in magnetic resonance images based on probabilistic reasoning in space and time.

机译:基于时空的概率推理,计算机辅助分割和跟踪磁共振图像中的脑部病变。

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摘要

There is an urgent need to develop computer-based automated techniques to detect abnormal tissue (i.e. lesions) in medical images and track progression in size, shape and intensity. The best accepted measure of brain tumor viability is interval change in tumor size and decisions on efficacy of clinical treatments in a given patient and in clinical trials are most commonly based on this measure.; Medical imaging modalities include magnetic resonance imaging (MRI), computed tomography (CT), and positron emission tomography (PET). MRI provides the best structural imaging of soft tissue, such as the brain, and is used to provide the data for analysis in this dissertation. Even with the best medical imaging techniques, medical image segmentation is a difficult problem as the pixel intensities of various tissues overlap and borders between tissues are not always sharp. Automating techniques to detect and track progression of brain tumors in MR images has been an ongoing research goal, but routine clinical applications for fully automated segmentation do not exist. Since there is some relation between images of a patient acquired at different times, temporal information has the potential to improve segmentation of lesions in medical images. It is hypothesized that using both temporal and spatial properties of the 4D image set will improve the automatic segmentation of lesions (e.g. tumors) compared with techniques that independently detect lesions from one scan to the next or focus only on areas of change in the dynamic series. A proposed method for lesion segmentation that uses probabilistic reasoning over space and time is the basis of this dissertation.; In this dissertation, the hidden Markov model (HMM) is explored for the first time in the context of medical image segmentation and novel transition matrices are developed. By incorporating both spatial and temporal information, we show an improvement in the accuracy of segmentation over previous methods that use spatial or temporal information alone. The framework of the 4D segmentation and tracking method developed in this dissertation is general enough to be applied to other applications not related to medical imaging such as tracking of objects in video sequences.
机译:迫切需要开发基于计算机的自动化技术,以检测医学图像中的异常组织(即病变)并跟踪尺寸,形状和强度的进展。公认的脑肿瘤生存能力的最佳衡量标准是肿瘤大小的间隔变化,并且在给定患者和临床试验中临床治疗疗效的决策通常是基于此衡量标准。医学成像模式包括磁共振成像(MRI),计算机断层扫描(CT)和正电子发射断层扫描(PET)。 MRI提供了最好的软组织(如大脑)的结构成像,并用于提供数据进行分析。即使采用最好的医学成像技术,医学图像分割也是一个难题,因为各种组织的像素强度重叠并且组织之间的边界并不总是很清晰。用于检测和跟踪MR图像中脑肿瘤进展的自动化技术一直是一项持续的研究目标,但是不存在用于全自动分割的常规临床应用。由于在不同时间获取的患者图像之间存在某种关系,因此时间信息具有改善医学图像中病变分割的潜力。假设使用4D图像集的时间和空间属性与独立检测从一次扫描到下一次扫描或仅关注动态序列变化区域的技术相比,将改善病变(例如肿瘤)的自动分割。提出了一种基于时空的概率推理的病灶分割方法。本文在医学图像分割的背景下,首次探索了隐马尔可夫模型(HMM),并开发了新型的转移矩阵。通过合并空间和时间信息,我们显示出比单独使用空间或时间信息的先前方法提高了分割的准确性。本文所开发的4D分割与跟踪方法的框架足够通用,可以应用于与医学成像无关的其他应用,例如视频序列中对象的跟踪。

著录项

  • 作者

    Solomon, Jeffrey M.;

  • 作者单位

    George Mason University.;

  • 授予单位 George Mason University.;
  • 学科 Computer Science.; Engineering Biomedical.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 167 p.
  • 总页数 167
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;生物医学工程;
  • 关键词

  • 入库时间 2022-08-17 11:42:18

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