GAICN: Graph Attention Iterative Contraction Network for Bioluminescence Tomography

Heng Zhang;Hongbo Guo;Yuqing Hou;Xiaowei He;Shuangchen Li;Beilei Wang;Jingjing Yu;Yanqiu Liu;Mengxiang Chu;Xuelei He;Huangjian Yi
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Abstract

Bioluminescence tomography (BLT) can provide non-invasive quantitative three-dimensional tumor information which has been widely applied in pre-clinical studies. Meanwhile, in recent years, deep learning methods have significantly improved the reconstruction resolution and speed by establishing a non-linear mapping relationship between surface-measured bioluminescence and light source distribution. However, this mapping relationship only works for specific biological tissues and light transmission processes under fixed wavelengths, resulting in poor stability and generalizability. To meet the requirements of diverse practical scenarios and inspired by more effective sparse regularization and graph representation theory, we propose a novel Graph Attention Iterative Contraction Network (GAICN) to conduct a finite element mesh spatial representation study. In the GAICN framework, two learnable spatial topological transforms based on the graph attention mechanism and an iterative contraction activation function were devised to achieve non-local feature aggregation and dynamic adjustment of weights between first-order neighboring nodes in the mesh. As a deep unrolling method, GAICN naturally inherits the coherence of surface bioluminescence with the light source in Forward-Backward Splitting (FBS), thus enhancing the generalizability, stability and interpretability of the network. Both simulation and in-vivo experiments further indicated that GAICN achieved superior reconstruction performance in terms of spatial location, dual light source resolution, stability, generalizability, as well as in-vivo practicability.
生物发光层析成像的图注意迭代收缩网络
生物发光断层扫描(BLT)可以提供无创的肿瘤三维定量信息,已广泛应用于临床前研究。同时,近年来,深度学习方法通过建立表面测量生物发光与光源分布之间的非线性映射关系,显著提高了重建分辨率和速度。然而,这种映射关系只适用于特定的生物组织和固定波长下的光传输过程,稳定性和泛化性较差。为满足各种实际场景的需求,受更有效的稀疏正则化和图表示理论的启发,我们提出了一种新的图注意迭代收缩网络(GAICN)来进行有限元网格空间表示研究。在GAICN框架中,设计了两个基于图注意机制的可学习空间拓扑变换和一个迭代收缩激活函数,实现了网格中一阶相邻节点间的非局部特征聚合和权值动态调整。GAICN作为一种深度展开方法,自然地继承了前向后分裂(FBS)中表面生物发光与光源的相干性,从而增强了网络的泛化性、稳定性和可解释性。仿真和体内实验进一步表明,GAICN在空间定位、双光源分辨率、稳定性、通用性和体内实用性等方面都具有优越的重建性能。
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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