论文标题
皮质流:皮质表面重建的差异网状变形模块
CorticalFlow: A Diffeomorphic Mesh Deformation Module for Cortical Surface Reconstruction
论文作者
论文摘要
在本文中,我们介绍了CorticalFlow,这是一种新的几何深度学习模型,鉴于三维图像,它学会了将参考模板变形为靶向对象。为了保护模板网格的拓扑特性,我们在一组差异变换上训练模型。流动的新实现普通微分方程(ODE)框架受益于小的GPU内存足迹,从而使具有数十万个顶点的表面产生。为了减少其离散分辨率引入的拓扑误差,我们得出数字条件,从而改善了预测的三角形网格的多种多样。为了展示皮质流的实用性,我们证明了它在脑皮质表面重建的挑战性任务中的表现。与当前的最新面积相反,皮质流可产生优越的表面,同时将计算时间从9分半分钟减少到一秒钟。更重要的是,皮质流可以实现解剖上合理的表面的产生。它的缺乏是限制此类表面重建方法临床相关性的主要障碍。
In this paper we introduce CorticalFlow, a new geometric deep-learning model that, given a 3-dimensional image, learns to deform a reference template towards a targeted object. To conserve the template mesh's topological properties, we train our model over a set of diffeomorphic transformations. This new implementation of a flow Ordinary Differential Equation (ODE) framework benefits from a small GPU memory footprint, allowing the generation of surfaces with several hundred thousand vertices. To reduce topological errors introduced by its discrete resolution, we derive numeric conditions which improve the manifoldness of the predicted triangle mesh. To exhibit the utility of CorticalFlow, we demonstrate its performance for the challenging task of brain cortical surface reconstruction. In contrast to current state-of-the-art, CorticalFlow produces superior surfaces while reducing the computation time from nine and a half minutes to one second. More significantly, CorticalFlow enforces the generation of anatomically plausible surfaces; the absence of which has been a major impediment restricting the clinical relevance of such surface reconstruction methods.