Connectivity-based Cortical Parcellation via Contrastive Learning on Spatial-Graph Convolution.

IF 5 Q1 ENGINEERING, BIOMEDICAL
BME frontiers Pub Date : 2022-03-08 eCollection Date: 2022-01-01 DOI:10.34133/2022/9814824
Peiting You, Xiang Li, Fan Zhang, Quanzheng Li
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引用次数: 0

Abstract

Objective. Objective of this work is the development and evaluation of a cortical parcellation framework based on tractography-derived brain structural connectivity. Impact Statement. The proposed framework utilizes novel spatial-graph representation learning methods for solving the task of cortical parcellation, an important medical image analysis and neuroscientific problem. Introduction. The concept of "connectional fingerprint" has motivated many investigations on the connectivity-based cortical parcellation, especially with the technical advancement of diffusion imaging. Previous studies on multiple brain regions have been conducted with promising results. However, performance and applicability of these models are limited by the relatively simple computational scheme and the lack of effective representation of brain imaging data. Methods. We propose the Spatial-graph Convolution Parcellation (SGCP) framework, a two-stage deep learning-based modeling for the graph representation brain imaging. In the first stage, SGCP learns an effective embedding of the input data through a self-supervised contrastive learning scheme with the backbone encoder of a spatial-graph convolution network. In the second stage, SGCP learns a supervised classifier to perform voxel-wise classification for parcellating the desired brain region. Results. SGCP is evaluated on the parcellation task for 5 brain regions in a 15-subject DWI dataset. Performance comparisons between SGCP, traditional parcellation methods, and other deep learning-based methods show that SGCP can achieve superior performance in all the cases. Conclusion. Consistent good performance of the proposed SGCP framework indicates its potential to be used as a general solution for investigating the regional/subregional composition of human brain based on one or more connectivity measurements.

Abstract Image

Abstract Image

Abstract Image

基于连通性的基于空间图卷积对比学习的皮层分割。
客观的这项工作的目的是开发和评估一种基于纤维束成像衍生的大脑结构连接的皮层分割框架。影响声明。所提出的框架利用新颖的空间图表示学习方法来解决皮层分割任务,这是一个重要的医学图像分析和神经科学问题。介绍“连接指纹”的概念激发了许多关于基于连接的皮层分割的研究,特别是随着扩散成像的技术进步。先前对多个大脑区域的研究已经取得了有希望的结果。然而,这些模型的性能和适用性受到相对简单的计算方案和缺乏大脑成像数据的有效表示的限制。方法。我们提出了空间图卷积分解(SGCP)框架,这是一种基于两阶段深度学习的图表示脑成像建模。在第一阶段,SGCP通过与空间图卷积网络的骨干编码器的自监督对比学习方案来学习输入数据的有效嵌入。在第二阶段,SGCP学习监督分类器来执行体素分类,以对所需的大脑区域进行分割。后果SGCP在15个受试者DWI数据集中的5个大脑区域的分割任务中进行评估。SGCP、传统分割方法和其他基于深度学习的方法之间的性能比较表明,SGCP在所有情况下都能获得优异的性能。结论所提出的SGCP框架的持续良好性能表明,它有潜力作为基于一个或多个连通性测量来研究人脑区域/次区域组成的通用解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.10
自引率
0.00%
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审稿时长
16 weeks
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