Literature DB >> 33826514

UHR-DeepFMT: Ultra-High Spatial Resolution Reconstruction of Fluorescence Molecular Tomography Based on 3D Fusion Dual-Sampling Deep Neural Network.

Peng Zhang, Guangda Fan, Tongtong Xing, Fan Song, Guanglei Zhang.   

Abstract

Fluorescence molecular tomography (FMT) is a promising and high sensitivity imaging modality that can reconstruct the three-dimensional (3D) distribution of interior fluorescent sources. However, the spatial resolution of FMT has encountered an insurmountable bottleneck and cannot be substantially improved, due to the simplified forward model and the severely ill-posed inverse problem. In this work, a 3D fusion dual-sampling convolutional neural network, namely UHR-DeepFMT, was proposed to achieve ultra-high spatial resolution reconstruction of FMT. Under this framework, the UHR-DeepFMT does not need to explicitly solve the FMT forward and inverse problems. Instead, it directly establishes an end-to-end mapping model to reconstruct the fluorescent sources, which can enormously eliminate the modeling errors. Besides, a novel fusion mechanism that integrates the dual-sampling strategy and the squeeze-and-excitation (SE) module is introduced into the skip connection of UHR-DeepFMT, which can significantly improve the spatial resolution by greatly alleviating the ill-posedness of the inverse problem. To evaluate the performance of UHR-DeepFMT network model, numerical simulations, physical phantom and in vivo experiments were conducted. The results demonstrated that the proposed UHR-DeepFMT can outperform the cutting-edge methods and achieve ultra-high spatial resolution reconstruction of FMT with the powerful ability to distinguish adjacent targets with a minimal edge-to-edge distance (EED) of 0.5 mm. It is assumed that this research is a significant improvement for FMT in terms of spatial resolution and overall imaging quality, which could promote the precise diagnosis and preclinical application of small animals in the future.

Year:  2021        PMID: 33826514     DOI: 10.1109/TMI.2021.3071556

Source DB:  PubMed          Journal:  IEEE Trans Med Imaging        ISSN: 0278-0062            Impact factor:   10.048


  5 in total

1.  Attention mechanism-based locally connected network for accurate and stable reconstruction in Cerenkov luminescence tomography.

Authors:  Xiaoning Zhang; Meishan Cai; Lishuang Guo; Zeyu Zhang; Biluo Shen; Xiaojun Zhang; Zhenhua Hu; Jie Tian
Journal:  Biomed Opt Express       Date:  2021-11-18       Impact factor: 3.732

2.  Encoder-decoder deep learning network for simultaneous reconstruction of fluorescence yield and lifetime distributions.

Authors:  Jiaju Cheng; Peng Zhang; Fei Liu; Jie Liu; Hui Hui; Jie Tian; Jianwen Luo
Journal:  Biomed Opt Express       Date:  2022-08-11       Impact factor: 3.562

3.  In vivo accurate detection of the liver tumor with pharmacokinetic parametric images from dynamic fluorescence molecular tomography.

Authors:  Fei Liu; Peng Zhang; Zeyu Liu; Fan Song; Chenbin Ma; Yangyang Sun; Youdan Feng; Yufang He; Guanglei Zhang
Journal:  J Biomed Opt       Date:  2022-07       Impact factor: 3.758

4.  Editorial: Optical Molecular Imaging in Cancer Research.

Authors:  Guanglei Zhang; Xueli Chen; Shouju Wang; Jiao Li; Xu Cao
Journal:  Front Oncol       Date:  2022-03-28       Impact factor: 6.244

5.  Monte Carlo-based data generation for efficient deep learning reconstruction of macroscopic diffuse optical tomography and topography applications.

Authors:  Navid Ibtehaj Nizam; Marien Ochoa; Jason T Smith; Shan Gao; Xavier Intes
Journal:  J Biomed Opt       Date:  2022-04       Impact factor: 3.758

  5 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.