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Validation of a Nonrigid Registration Error Detection Algorithm Using Clinical MRI Brain Data

机译:使用临床MRI脑数据验证非刚性配准错误检测算法

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摘要

Identification of error in nonrigid registration is a critical problem in the medical image processing community. We recently proposed an algorithm that we call “Assessing Quality Using Image Registration Circuits” (AQUIRC) to identify nonrigid registration errors and have tested its performance using simulated cases. In this paper, we extend our previous work to assess AQUIRC's ability to detect local nonrigid registration errors and validate it quantitatively at specific clinical landmarks, namely the anterior commissure and the posterior commissure. To test our approach on a representative range of error we utilize five different registration methods and use 100 target images and nine atlas images. Our results show that AQUIRC's measure of registration quality correlates with the true target registration error (TRE) at these selected landmarks with an . To compare our method to a more conventional approach, we compute local normalized correlation coefficient (LNCC) and show that AQUIRC performs similarly. However, a multi-linear regression performed with both AQUIRC's measure and LNCC shows a higher correlation with TRE than correlations obtained with either measure alone, thus showing the complementarity of these quality measures. We conclude the paper by showing that the AQUIRC algorithm can be used to reduce registration errors for all five algorithms.
机译:非刚性配准中错误的识别是医学图像处理界的一个关键问题。我们最近提出了一种算法,称为“使用图像配准电路评估质量”(AQUIRC),以识别非刚性配准错误,并已通过模拟案例测试了其性能。在本文中,我们扩展了先前的工作,以评估AQUIRC检测局部非刚性配准错误并在特定的临床标志(即前连合和后连合)上进行定量验证的能力。为了测试代表误差范围的方法,我们使用了五种不同的配准方法,并使用了100张目标图像和9张地图集图像。我们的结果表明,在这些选定的地标上,AQUIRC的注册质量度量与真实目标注册错误(TRE)相关,且带有。为了将我们的方法与更常规的方法进行比较,我们计算了局部归一化相关系数(LNCC),并证明了AQUIRC的性能类似。但是,使用AQUIRC的量度和LNCC进行的多线性回归显示,与TRE的相关性高于单独使用任一量度获得的相关性,因此显示了这些质量量度的互补性。我们通过证明AQUIRC算法可用于减少所有五种算法的配准错误来结束本文。

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