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Algorithms for automatic localization, segmentation and diagnosis of lumbar pathology.

机译:自动定位,分割和诊断腰椎病理的算法。

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摘要

Lower back pain is widely prevalent in people all over the world and negatively affects the quality of life due to chronic pain and change in posture. According to the American Academy of Orthopedic Surgeons (AAOS) four out of five adults experience low back pain at some point during their lives. The National Center for Health Statistics shows that more than 30 million MRI exams are conducted annually in the US and half of them are spine-related. A matter of great concern is that, in the last decade there has been a severe shortage of radiologists and projections show that there will be a significant boom in the ratio of their demand and supply. A CAD (Computer- Aided Diagnosis) system to generate diagnostic results from clinical lumbar (lower back) MR and CT scans would not only reduce the burden on a radiologist, but also boost the confidence on a diagnosis. This motivates us to strive towards the development of a robust, accurate and fully automated system to localize the various tissues like the vertebra, inter-vertebral discs and the spinal cord in clinical lumbar scans. A complete localization and segmentation would eventually be used by an automatic diagnostic system to detect lumbar abnormalities like disc herniation without any human intervention. Towards that end, my doctoral dissertation proposal consists of two parts :;1) Automatic Diagnosis of Lumbar Disorders : We propose algorithms for diagnosis of lumbar disorders using clinical CT and MRI scans. First, we present a fully automated method for robustly localizing and segmenting the lumbar vertebrae along with a method for diagnosis of wedge compression fracture from clinical lumbar CT. Second, we propose algorithms to circumvent the challenging issue of disc segmentation in MRI for disc herniation detection. Unlike past research, we present a localization method which combines supervised learning with heuristics to output a disc bounding box with enhanced localization accuracy. We also present feature extraction methods from the disc bounding boxes and report a performance comparison of individual and combined features for abnormal disc detection.;Generally a radiologist detects an abnormality like disc herniation using the sagittal scans, and then makes use of the axial scans to localize and quantify, i.e., to estimate the location and size of the lumbar pathology. With this in mind, we finally present encouraging results on the use of axial MRI slices for automatic diagnosis, which could be extended for localization and quantification of disc abnormalities.;2) Complete segmentation of lumbar MRI : We propose algorithms for complete segmentation of sagittal lumbar MRI using two approaches---first, is an atlas-based approach, while the second is an auto-context based approach, both of which intelligently utilizes neighborhood label information along with appearance information for complete MRI segmentation.;In the near future, we plan to utilize these algorithms towards the development of a completely automated and robust system to diagnose, locate and quantify lumbar disc disorders.
机译:下腰痛在世界各地的人们中普遍存在,并且由于慢性疼痛和姿势改变而对生活质量产生负面影响。根据美国骨科医师学会(AAOS)的研究,五分之四的成年人一生中的某些时候会出现腰痛。国家卫生统计中心显示,美国每年进行超过3,000万例MRI检查,其中一半与脊椎有关。令人十分关切的是,在过去十年中,放射科医生严重短缺,而且预测显示,放射科医生的需求和供应比例将出现显着增长。通过临床腰部(下背部)MR和CT扫描生成诊断结果的CAD(计算机辅助诊断)系统不仅可以减轻放射线医师的负担,还可以提高诊断的信心。这激励着我们努力开发一个强大,准确和全自动的系统,以在临床腰椎扫描中定位各种组织,例如椎骨,椎间盘和脊髓。最终,自动诊断系统将使用完整的定位和分段来检测腰椎异常,例如椎间盘突出症,而无需任何人工干预。为此,我的博士论文提案包括两个部分:; 1)腰椎疾病的自动诊断:我们提出了使用临床CT和MRI扫描诊断腰椎疾病的算法。首先,我们提出了一种用于对腰椎进行稳健定位和分段的全自动方法,以及一种根据临床腰CT诊断楔形压迫性骨折的方法。第二,我们提出了一些算法来规避用于椎间盘突出症的MRI椎间盘分割的挑战性问题。与以往的研究不同,我们提出了一种将监督学习与启发式方法相结合的定位方法,以输出具有增强的定位精度的磁盘边界框。我们还介绍了从椎间盘边界框中提取特征的方法,并报告了单个和组合特征的性能比较以进行异常椎间盘检测。通常,放射科医生会使用矢状扫描来检测诸如椎间盘突出的异常,然后利用轴向扫描来进行定位和量化,即估计腰椎病理的位置和大小。考虑到这一点,我们最终在使用轴向MRI切片进行自动诊断方面提出了令人鼓舞的结果,可以将其扩展用于椎间盘异常的定位和量化。腰部MRI使用两种方法-第一种是基于图谱的方法,而第二种是基于自动上下文的方法,这两种方法都会智能地利用邻域标签信息和外观信息来进行完整的MRI分割。 ,我们计划利用这些算法来开发完全自动化且功能强大的系统,以诊断,定位和量化腰椎间盘突出症。

著录项

  • 作者

    Ghosh, Subarna.;

  • 作者单位

    State University of New York at Buffalo.;

  • 授予单位 State University of New York at Buffalo.;
  • 学科 Computer science.;Medical imaging.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 158 p.
  • 总页数 158
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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