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首页> 外文期刊>Medical image analysis >Rigid-body point-based registration: The distribution of the target registration error when the fiducial registration errors are given.
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Rigid-body point-based registration: The distribution of the target registration error when the fiducial registration errors are given.

机译:基于刚体点的配准:当给出基准配准错误时,目标配准错误的分布。

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摘要

Medical guidance systems often employ several data sources using different coordinate systems. In order to map positions from one coordinate system to the other, these guidance systems usually employ rigid-body point-based registration, using pairs of fiducial points: pairs which describe the same physical positions, but in different coordinate systems. The customary test for the quality of the registration is the fiducial registration error (FRE), which is the root-mean-square of the mismatch between the fiducials in each pair (after the registration). The FRE, however, does not give an answer to the question which is usually of interest, and that is the accuracy at a "target" point which is not part of the set of fiducial points. The statistics of the target registration error (TRE) have been studied before and approximate expressions were derived, but those expressions require as input the unknown true fiducial positions. In the present paper, it is proven that by replacing these unknowable true positions with the known measured positions in the expression for mean-square TRE, a higher order approximation is achieved. In other words, it is shown that more accurate estimates are obtained by using less accurate, but available, inputs. Furthermore, in previous approximations FRE and TRE were shown to be statistically independent, whereas here, due to the higher approximation level, it is shown that a slight dependence exists. Thus, the knowledge of FRE can in fact be employed to improve predictions of the TRE statistics. These results are supported by simulations and hold even for fiducial localization error (FLE) distributions with large standard deviations.
机译:医疗指导系统通常使用使用不同坐标系的多个数据源。为了将位置从一个坐标系映射到另一个坐标系,这些制导系统通常采用基于刚体点的配准,使用成对的基准点:描述相同物理位置但在不同坐标系中的成对。对注册质量的常规测试是基准注册错误(FRE),它是每对(注册后)基准之间不匹配的均方根。但是,FRE并没有给出通常令人感兴趣的问题的答案,那就是在“目标”点的精度,这不是基准点集的一部分。之前已经研究了目标配准误差(TRE)的统计数据,并推导出了近似表达式,但是这些表达式需要输入未知的真实基准位置作为输入。在本文中,已证明通过用均方TRE表达式中的已知测量位置替换​​这些未知的真实位置,可以实现更高阶的逼近。换句话说,表明通过使用不太准确但可用的输入获得了更准确的估计。此外,在先前的近似中,FRE和TRE被证明在统计上是独立的,而在这里,由于较高的近似水平,表明存在轻微的依存关系。因此,实际上可以使用FRE的知识来改进TRE统计信息的预测。这些结果得到了仿真的支持,甚至对于具有大标准偏差的基准定位误差(FLE)分布也成立。

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