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A Learning-Based Approach to Evaluate Registration Success

机译:一种基于学习的评估注册成功的方法

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摘要

Clinical trials are more and more relying on medical imaging technologies to quantify changes over time during longitudinal studies. This calls for having an unsupervised batch registration process. However, even good registration algorithms fail, whether that is because of a small capture range, local optima, or because the registration finds an optimum that is not meaningful since the input data contains different anatomical sites. We propose a new method to evaluate the success or failure of batch registrations, so that failed or suspicious registrations can be flagged and manually corrected. The evaluation is based on a support vector machine that evaluates features representing the "goodness" of the registration result. We devise the features to be the distance measured between optima produced by different similarity measures as well as optima resulting from registering subsections of the volumes. The features of 30 volume registrations have been labeled manually and used for the learning phase. Based on a test on unseen 67 volume pairs of varying anatomical sites, we are able to classify 90% of the registrations correctly.
机译:临床研究越来越依赖于医学成像技术来量化纵向研究期间随时间的变化。这要求具有无监督的批注册过程。但是,即使是良好的配准算法也会失败,这是由于捕获范围较小,局部最优,还是由于输入数据包含不同的解剖部位,配准找到了没有意义的最优值。我们提出了一种新的方法来评估批量注册的成功或失败,以便可以标记失败或可疑的注册并手动进行更正。该评估基于支持向量机,该支持向量机评估代表注册结果“良好”的特征。我们将特征设计为通过不同相似性度量产生的最优值之间以及通过记录体积的各个子部分而产生的最优值之间的距离。 30个批量注册的功能已被手动标记并用于学习阶段。基于对不可见的67个不同解剖部位的体积对的测试,我们能够正确分类90%的配准。

著录项

  • 来源
  • 会议地点 Beijing(CN);Beijing(CN)
  • 作者

    Christoph Vetter; Ali Kamen;

  • 作者单位

    Parmeshwar Khurd Siemens Corporate Research, Princeton NJ 08544, USA,Ruediger Westermann Computer Science Department, Technische Universitat Miinchen, Garching 85748, Germany;

    Parmeshwar Khurd Siemens Corporate Research, Princeton NJ 08544, USA;

  • 会议组织
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 医用物理学;
  • 关键词

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