Crum W R, Griffin L D, Hill D L G, Hawkes D J
Division of Imaging Sciences, The Guy's King's and St. Thomas' School of Medicine, London SE1 9RT, UK.
Neuroimage. 2003 Nov;20(3):1425-37. doi: 10.1016/j.neuroimage.2003.07.014.
Nonrigid registration (NRR) is routinely used in the study of neuroanatomy and function and is a standard component of analysis packages such as SPM. There remain many unresolved correspondence problems that arise from attempts to associate functional areas with specific neuroanatomy and to compare both function and anatomy across patient groups. Problems can result from ignorance of the underlying neurology which is then compounded by unjustified inferences drawn from the results of NRR. Usually the magnitude, distribution, and significance of errors in NRR are unknown so the errors in correspondences determined by NRR are also unknown and their effect on experimental results cannot easily be quantified. In this paper we review the principles by which the presumed correspondence and homology of structures is used to drive registration and identify the conceptual and algorithmic areas where current techniques are lacking. We suggest that for applications using NRR to be robust and achieve their potential, context-specific definitions of correspondence must be developed which properly characterise error. Prior knowledge of image content must be utilised to monitor and guide registration and gauge the degree of success. The use of NRR in voxel-based morphometry is examined from this context and found wanting. We conclude that a move away from increasingly sophisticated but context-free registration technology is required and that the veracity of studies that rely on NRR should be keenly questioned when the error distribution is unknown and the results are unsupported by other contextual information.
非刚性配准(NRR)在神经解剖学和功能研究中经常使用,并且是诸如SPM等分析软件包的标准组成部分。在将功能区域与特定神经解剖结构相关联以及跨患者群体比较功能和解剖结构的尝试中,仍然存在许多未解决的对应问题。问题可能源于对基础神经学的无知,然后又因从NRR结果中得出的不合理推断而变得更加复杂。通常,NRR中误差的大小、分布和显著性是未知的,因此由NRR确定的对应关系中的误差也是未知的,并且它们对实验结果的影响不容易量化。在本文中,我们回顾了利用结构的假定对应关系和同源性来驱动配准的原理,并确定了当前技术存在不足的概念和算法领域。我们建议,为了使使用NRR的应用程序稳健并发挥其潜力,必须开发针对特定上下文的对应关系定义,以正确表征误差。必须利用图像内容的先验知识来监测和指导配准,并评估成功程度。从这一背景出发,对NRR在基于体素的形态计量学中的应用进行了研究,发现存在不足。我们得出结论,需要摆脱日益复杂但无上下文的配准技术,并且当误差分布未知且结果没有其他上下文信息支持时,应强烈质疑依赖NRR的研究的准确性。