Jenkinson M, Smith S
University of Oxford, John Radcliffe Hospital, FMRIB Centre, Oxford OX3 9DU, UK.
Med Image Anal. 2001 Jun;5(2):143-56. doi: 10.1016/s1361-8415(01)00036-6.
Registration is an important component of medical image analysis and for analysing large amounts of data it is desirable to have fully automatic registration methods. Many different automatic registration methods have been proposed to date, and almost all share a common mathematical framework - one of optimising a cost function. To date little attention has been focused on the optimisation method itself, even though the success of most registration methods hinges on the quality of this optimisation. This paper examines the assumptions underlying the problem of registration for brain images using inter-modal voxel similarity measures. It is demonstrated that the use of local optimisation methods together with the standard multi-resolution approach is not sufficient to reliably find the global minimum. To address this problem, a global optimisation method is proposed that is specifically tailored to this form of registration. A full discussion of all the necessary implementation details is included as this is an important part of any practical method. Furthermore, results are presented for inter-modal, inter-subject registration experiments that show that the proposed method is more reliable at finding the global minimum than several of the currently available registration packages in common usage.
配准是医学图像分析的一个重要组成部分,对于分析大量数据而言,拥有全自动配准方法是很有必要的。迄今为止,已经提出了许多不同的自动配准方法,几乎所有方法都共享一个通用的数学框架——即优化一个代价函数。尽管大多数配准方法的成功取决于这种优化的质量,但迄今为止,很少有人关注优化方法本身。本文使用跨模态体素相似性度量来研究脑图像配准问题背后的假设。结果表明,将局部优化方法与标准的多分辨率方法结合使用不足以可靠地找到全局最小值。为了解决这个问题,提出了一种专门针对这种配准形式的全局优化方法。本文还对所有必要的实现细节进行了全面讨论,因为这是任何实用方法的重要组成部分。此外,还给出了跨模态、跨个体配准实验的结果,表明所提出的方法在找到全局最小值方面比目前常用的几种配准软件包更可靠。