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Fast Geodesic Regression for Population-Based Image Analysis

机译:基于人口的图像分析的快速测地回归

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摘要

Geodesic regression on images enables studies of brain development and degeneration, disease progression, and tumor growth. The high-dimensional nature of image data presents significant computational challenges for the current regression approaches and prohibits large scale studies. In this paper, we present a fast geodesic regression method that dramatically decreases the computational cost of the inference procedure while maintaining prediction accuracy. We employ an efficient low dimensional representation of diffeomorphic transformations derived from the image data and characterize the regressed trajectory in the space of dif-feomorphisms by its initial conditions, i.e., an initial image template and an initial velocity field computed as a weighted average of pairwise diffeomorphic image registration results. This construction is achieved by using a first-order approximation of pairwise distances between images. We demonstrate the efficiency of our model on a set of 3D brain MRI scans from the OASIS dataset and show that it is dramatically faster than the state-of-the-art regression methods while producing equally good regression results on the large subject cohort.
机译:图像上的测地线回归可以研究大脑发育和退化,疾病进展和肿瘤生长。图像数据的高维性质对当前的回归方法提出了重大的计算挑战,并禁止进行大规模研究。在本文中,我们提出了一种快速的测地线回归方法,该方法可以在保持预测精度的同时显着降低推理过程的计算成本。我们使用有效的低维表示形式从图像数据中获取的微分变换,并通过其初始条件(即初始图像模板和初始速度场作为成对的加权平均值来计算),描述了微分形空间中的回归轨迹。微晶图像配准结果。通过使用图像之间成对距离的一阶近似来实现此构造。我们在来自OASIS数据集的一组3D脑MRI扫描中证明了我们模型的效率,并表明它比最新的回归方法快得多,同时在大型受试者群体中产生了同样好的回归结果。

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