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On variational solutions for whole brain serial-section histology using a Sobolev prior in the computational anatomy random orbit model

机译:在计算解剖学随机轨道模型中使用Sobolev先验对全脑序列切片组织学的变分解

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摘要

This paper presents a variational framework for dense diffeomorphic atlas-mapping onto high-throughput histology stacks at the 20 μm meso-scale. The observed sections are modelled as Gaussian random fields conditioned on a sequence of unknown section by section rigid motions and unknown diffeomorphic transformation of a three-dimensional atlas. To regularize over the high-dimensionality of our parameter space (which is a product space of the rigid motion dimensions and the diffeomorphism dimensions), the histology stacks are modelled as arising from a first order Sobolev space smoothness prior. We show that the joint maximum a-posteriori, penalized-likelihood estimator of our high dimensional parameter space emerges as a joint optimization interleaving rigid motion estimation for histology restacking and large deformation diffeomorphic metric mapping to atlas coordinates. We show that joint optimization in this parameter space solves the classical curvature non-identifiability of the histology stacking problem. The algorithms are demonstrated on a collection of whole-brain histological image stacks from the Mouse Brain Architecture Project.
机译:本文提出了在20μm中尺度上将高密度组织形态图谱映射到高通量组织学堆栈的变体框架。观察到的截面被建模为高斯随机场,其条件是通过截面刚性运动和三维图集的未知微分变换,以一系列未知截面为条件。为了规范化我们的参数空间的高维(这是刚性运动维和微分维维的乘积空间),组织学堆栈被建模为由一阶Sobolev空间平滑先验产生。我们显示,高维参数空间的联合最大a-后验,惩罚似然估计作为联合优化交错出现,用于组织学重新组织和将大变形微变形度量映射到地图集坐标的刚性运动估计。我们表明,在此参数空间中的联合优化解决了组织学堆叠问题的经典曲率不可识别性。在Mouse Brain Architecture Project的全脑组织学图像堆栈集合中演示了这些算法。

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