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Automated image registration: II. Intersubject validation of linear and nonlinear models.

机译:自动图像配准:II。线性和非线性模型的主体间验证。

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PURPOSE: Our goal was to validate linear and nonlinear intersubject image registration using an automated method (AIR 3.0) based on voxel intensity. METHOD: PET and MRI data from 22 normal subjects were registered to corresponding averaged PET or MRI brain atlases using several specific linear and nonlinear spatial transformation models with an automated algorithm. Validation was based on anatomically defined landmarks. RESULTS: Automated registration produced results that were superior to a manual nine parameter variant of the Talairach registration method. Increasing the degrees of freedom in the spatial transformation model improved the accuracy of automated intersubject registration. CONCLUSION: Linear or nonlinear automated intersubject registration based on voxel intensities is computationally practical and produces more accurate alignment of homologous landmarks than manual nine parameter Talairach registration. Nonlinear models provide better registration than linear models but are slower.
机译:目的:我们的目标是使用基于体素强度的自动方法(AIR 3.0)验证线性和非线性对象间图像配准。方法:使用自动算法,使用几种特定的线性和非线性空间转换模型,将22位正常受试者的PET和MRI数据注册到相应的平均PET或MRI脑图集。验证基于解剖学定义的界标。结果:自动注册产生的结果优于Talairach注册方法的手动九参数变体。增加空间变换模型中的自由度可提高对象间自动配准的准确性。结论:基于体素强度的线性或非线性自动主体间配准在计算上是实用的,并且与手动九参数Talairach配准相比,可以生成更精确的同源界标对齐方式。非线性模型比线性模型提供更好的配准,但速度较慢。

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