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Computer vision algorithms for retinal vessel detection and width change detection.

机译:用于视网膜血管检测和宽度变化检测的计算机视觉算法。

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摘要

Detection of width changes in blood vessels of the retina may be indicative of eye or systemic disease. However, fundus images taken at different times have different scales and are difficult to compare side by side. This research presents automated techniques for detection of vessel width change from two images acquired at different points in time.; In order to detect vessel width change; vessels must first be identified in available images. This research starts by making numerous improvements to an existing vessel tracing algorithm. However, even the improved results exhibit too much variance, primarily attributable to the discrete nature of the tracing algorithm. Thus new methods for estimating vessels are explored to address the limitations of the vessel tracing algorithm. These methods are designed to provide smooth, continuous boundaries. Five ribbon-like objects are put into an active contour framework, all initialized using the results from tracing. These ribbons are shown to provide more repeatable vessel boundaries than tracing with an innovative technique named in this research as cross section snakes selected as best.; In addition to estimating vessels from a single image, a technique is explored that uses information from multiple images acquired in a single sitting to estimate vessel boundaries in a single image with greater accuracy. This technique was subjectively evaluated by five people and was preferred at a rate that is double the sum of two other single image estimation techniques.; In detecting change, two approaches are tried. One that alternately tests vessel boundaries in the other image before determining change, and one that uses a statistical hypothesis test as the basis for the determination of change. The first method is the better of the two based on three criteria. First, method 1 achieves a positive predictive power of 78% and method 2, 57%. Second, method 1 correctly identifies 15 out of 20 vessel segments as changed compared with only 7 in method 2. Finally, method 1 is shown to be superior at correctly identifying no change (i.e. less false positives) over method 2.
机译:视网膜血管宽度变化的检测可以指示眼睛或全身性疾病。然而,在不同时间拍摄的眼底图像具有不同的比例,并且难以并排比较。这项研究提出了从在不同时间点获取的两个图像检测血管宽度变化的自动化技术。为了检测容器的宽度变化;首先必须在可用图像中识别船只。这项研究首先对现有的船舶跟踪算法进行了许多改进。但是,即使是改进的结果也显示出太多的差异,这主要归因于跟踪算法的离散性。因此,探索了估计船只的新方法来解决船只追踪算法的局限性。这些方法旨在提供平滑,连续的边界。将五个带状对象放入活动轮廓框架中,全部使用跟踪结果进行初始化。与通过本研究命名为最佳选择的截面蛇的创新技术进行追踪相比,这些色带可提供更多可重复的血管边界。除了从单个图像估计血管之外,还探索了一种技术,该技术使用来自在一次就诊中获取的多个图像的信息来以更高的精度估计单个图像中的血管边界。该技术由五个人主观评估,并且以两倍于其他两种单一图像估计技术之和的比率被首选。在检测变化时,尝试了两种方法。一种在确定变化之前交替测试另一幅图像中的血管边界,另一种使用统计假设检验作为确定变化的基础。根据三种标准,第一种方法是两者中较好的一种。首先,方法1实现了78%的正预测能力,方法2实现了57%的正预测能力。其次,与方法2中的7个相比,方法1正确地识别出20个变化中的15个血管段,而方法2中只有7个。最后,方法1在正确识别出没有变化(即误报少)方面优于方法2。

著录项

  • 作者

    Fritzsche, Kenneth H.;

  • 作者单位

    Rensselaer Polytechnic Institute.;

  • 授予单位 Rensselaer Polytechnic Institute.;
  • 学科 Computer Science.; Health Sciences Ophthalmology.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 163 p.
  • 总页数 163
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自动化技术、计算机技术;
  • 关键词

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