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Algorithms for accurate 3D registration of neuronal images acquired by confocal scanning laser microscopy

机译:通过共聚焦扫描激光显微镜获得的神经元图像的精确3D配准算法

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This paper presents automated and accurate algorithms based on high-order transformation models for registering three-dimensional (3D) confocal images of dye-injected neurons. The algorithms improve upon prior methods in several ways, and meet the more stringent image registration needs of applications such as two-view attenuation correction recently developed by us. First, they achieve high accuracy (approximate to 1.2 voxels, equivalent to 0.4 mum) by using landmarks, rather than intensity correlations, and by using a high-dimensional affine and quadratic transformation model that accounts for 3D translation, rotation, non-isotropic scaling, modest curvature of field, distortions and mechanical inconsistencies introduced by the imaging system. Second, they use a hierarchy of models and iterative algorithms to eliminate potential instabilities. Third, they incorporate robust statistical methods to achieve accurate registration in the face of inaccurate and missing landmarks. Fourth, they are fully automated, even estimating the initial registration from the extracted landmarks. Finally, they are computationally efficient, taking less than a minute on a 900-MHz Pentium III computer for registering two images roughly 70 MB in size. The registration errors represent a combination of modelling, estimation, discretization and neuron tracing errors. Accurate 3D montaging is described; the algorithms have broader applicability to images of vasculature, and other structures with distinctive point, line and surface landmarks. [References: 34]
机译:本文提出了基于高阶变换模型的自动且准确的算法,用于配准染料注入神经元的三维(3D)共聚焦图像。该算法以几种方式对现有方法进行了改进,并满足了我们最近开发的诸如两视点衰减校正之类应用的更严格的图像配准需求。首先,它们通过使用界标而不是强度相关性,并通过使用考虑了3D平移,旋转,非各向同性缩放的高维仿射和二次变换模型,可以实现高精度(大约1.2体素,相当于0.4微米) ,成像系统引入的适度场曲,畸变和机械不一致性。其次,他们使用模型和迭代算法的层次结构来消除潜在的不稳定性。第三,它们结合了可靠的统计方法,可以在面对不正确和丢失的地标时实现准确的配准。第四,它们是完全自动化的,甚至可以从提取的地标中估计初始注册。最后,它们的计算效率很高,在一台900 MHz的奔腾III计算机上花费不到一分钟的时间即可注册大约70 MB大小的两个图像。配准误差代表了建模,估计,离散化和神经元跟踪误差的组合。描述了准确的3D蒙太奇;该算法对脉管图像以及其他具有独特点,线和表面界标的结构具有更广泛的适用性。 [参考:34]

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