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使用几何深度学习进行监督式纤维束成像滤波

Supervised tractogram filtering using Geometric Deep Learning.

作者信息

Astolfi Pietro, Verhagen Ruben, Petit Laurent, Olivetti Emanuele, Sarubbo Silvio, Masci Jonathan, Boscaini Davide, Avesani Paolo

机构信息

NILab, TeV, Fondazione Bruno Kessler, Trento, Italy; PAVIS, Istituto Italiano di Tecnologia, Geonva, Italy; Center for Mind/Brain Sciences (CiMeC), University of Trento, Rovereto, Italy.

NILab, TeV, Fondazione Bruno Kessler, Trento, Italy.

出版信息

Med Image Anal. 2023 Dec;90:102893. doi: 10.1016/j.media.2023.102893. Epub 2023 Jul 17.

Abstract

A tractogram is a virtual representation of the brain white matter. It is composed of millions of virtual fibers, encoded as 3D polylines, which approximate the white matter axonal pathways. To date, tractograms are the most accurate white matter representation and thus are used for tasks like presurgical planning and investigations of neuroplasticity, brain disorders, or brain networks. However, it is a well-known issue that a large portion of tractogram fibers is not anatomically plausible and can be considered artifacts of the tracking procedure. With Verifyber, we tackle the problem of filtering out such non-plausible fibers using a novel fully-supervised learning approach. Differently from other approaches based on signal reconstruction and/or brain topology regularization, we guide our method with the existing anatomical knowledge of the white matter. Using tractograms annotated according to anatomical principles, we train our model, Verifyber, to classify fibers as either anatomically plausible or non-plausible. The proposed Verifyber model is an original Geometric Deep Learning method that can deal with variable size fibers, while being invariant to fiber orientation. Our model considers each fiber as a graph of points, and by learning features of the edges between consecutive points via the proposed sequence Edge Convolution, it can capture the underlying anatomical properties. The output filtering results highly accurate and robust across an extensive set of experiments, and fast; with a 12GB GPU, filtering a tractogram of 1M fibers requires less than a minute.

摘要

纤维束成像图是脑白质的虚拟表示。它由数百万条虚拟纤维组成,编码为三维折线,近似于白质轴突通路。迄今为止,纤维束成像图是最精确的白质表示形式,因此被用于术前规划以及神经可塑性、脑部疾病或脑网络的研究等任务。然而,一个众所周知的问题是,很大一部分纤维束成像图纤维在解剖学上是不合理的,可以被视为追踪过程的伪影。使用Verifyber,我们采用一种新颖的全监督学习方法来解决过滤掉此类不合理纤维的问题。与其他基于信号重建和/或脑拓扑正则化的方法不同,我们利用白质的现有解剖学知识来指导我们的方法。使用根据解剖学原理标注的纤维束成像图,我们训练我们的模型Verifyber,将纤维分类为解剖学上合理或不合理。所提出的Verifyber模型是一种原创的几何深度学习方法,它可以处理可变大小的纤维,同时对纤维方向不变。我们的模型将每根纤维视为一个点的图,并通过所提出的序列边缘卷积学习连续点之间边缘的特征,从而能够捕捉潜在的解剖学特性。在大量实验中,输出的过滤结果高度准确且稳健,并且速度很快;使用12GB的GPU,过滤一个包含100万根纤维的纤维束成像图所需时间不到一分钟。

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