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Algorithms for automatic lung scan registration.

机译:自动肺部扫描配准的算法。

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摘要

This thesis describes the design, implementation, and performance evaluation of ventilation (V) and perfusion (Q) lung scan registration algorithms. These algorithms transform images, superimpose images, produce composite images, and create V/Q ratios. V/Q functions are the key variable controlling the functionality of gas exchange in the lungs. Analyzing these images helps physicians make clinical decisions in consistent and unbiased ways.;Registration is an essential prerequisite for radionuclide lung scan analysis, classification of diseases, and detection of changes over time. Most current registration methods require some degree of user interaction. This study presents four new fully automated methods to register ventilation and perfusion (V/Q) lung scan images and tests them on a database of 49 pairs, which includes normal and abnormal images. Each V/Q scan was used to create a V/Q composite image, which is a superimposition of the registered ventilation and perfusion images. Color-enhanced V/Q composite images facilitate the measurement of V/Q ratios, the identification of defects, and the detection of temporal change and may assist in patient diagnosis and therapy.;The four algorithms are: the one-dimensional V/Q automatic registration (VQARM), the center-of-object (COO), the two-dimensional linear Pearson correlation with background subtraction (2DLPC), and the conditional entropy (CE) registration algorithms.;All four algorithms assume the ventilation and perfusion images have similar gray-levels. Similar object shapes between ventilation and perfusion images will result in RST-invariance and better error improvement. All algorithms are user friendly fully automated registration methods and result in reasonable V/Q ratios. VQARM, 2DLPC, and CE are categorized as pixel-based automated registration, while COO is feature-based automated registration. Each algorithm offers tradeoffs in terms of speed, complexity, and accuracy under different operating conditions. Considering the error improvement and deviation standard, 2DLPC is best. However, the COO algorithm has the fastest execution time with acceptable results. CE is less sensitive to noise compared with the other algorithms. These approaches provide a completely automated registration mechanism that also accelerates registration and visualization. Color visualization provides more functional details allowing a more comprehensive examination. The results of this research have been used to build an automatic registration system for use by physicians.
机译:本文介绍了通气(V)和灌注(Q)肺部扫描配准算法的设计,实现和性能评估。这些算法可转换图像,叠加图像,生成合成图像并创建V / Q比。 V / Q功能是控制肺部气体交换功能的关键变量。分析这些图像有助于医师以一致且无偏见的方式做出临床决策。配准是放射性核素肺扫描分析,疾病分类和随时间变化检测的必要先决条件。当前大多数注册方法都需要某种程度的用户交互。这项研究提出了四种新的全自动方法来记录通气和灌注(V / Q)肺部扫描图像,并在49对图像数据库中对其进行测试,其中包括正常图像和异常图像。每次V / Q扫描均用于创建V / Q复合图像,该图像是已记录的通气和灌注图像的叠加。颜色增强的V / Q复合图像有助于V / Q比的测量,缺陷的识别和时间变化的检测,并可能有助于患者的诊断和治疗。四种算法是:一维V / Q自动配准(VQARM),对象中心(COO),带有背景减法的二维线性Pearson相关性(2DLPC)和条件熵(CE)配准算法。所有四种算法均假设通气和灌注图像具有相似的灰度级。通气和灌注图像之间相似的物体形状将导致RST不变,并改善错误。所有算法都是用户友好的全自动注册方法,并导致合理的V / Q比。 VQARM,2DLPC和CE归为基于像素的自动注册,而COO为基于功能的自动注册。在不同操作条件下,每种算法都在速度,复杂性和准确性方面进行权衡。考虑到错误改善和偏差标准,最好使用2DLPC。但是,COO算法的执行时间最快,结果也可以接受。与其他算法相比,CE对噪声不太敏感。这些方法提供了一种完全自动化的注册机制,该机制还可以加速注册和可视化。颜色可视化提供了更多的功能细节,可以进行更全面的检查。这项研究的结果已被用于构建供医师使用的自动注册系统。

著录项

  • 作者

    Coutre, SuChin Chen.;

  • 作者单位

    Illinois Institute of Technology.;

  • 授予单位 Illinois Institute of Technology.;
  • 学科 Engineering Biomedical.;Engineering Electronics and Electrical.;Computer Science.
  • 学位 Ph.D.
  • 年度 2000
  • 页码 115 p.
  • 总页数 115
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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