A review of advances in imaging methodology in fluorescence molecular tomography

Phys Med Biol. 2022 May 2;67(10). doi: 10.1088/1361-6560/ac5ce7.

Abstract

Objective.Fluorescence molecular tomography (FMT) is a promising non-invasive optical molecular imaging technology with strong specificity and sensitivity that has great potential for preclinical and clinical studies in tumor diagnosis, drug development and therapeutic evaluation. However, the strong scattering of photons and insufficient surface measurements make it very challenging to improve the quality of FMT image reconstruction and its practical application for early tumor detection. Therefore, continuous efforts have been made to explore more effective approaches or solutions in the pursuit of high-quality FMT reconstructions.Approach.This review takes a comprehensive overview of advances in imaging methodology for FMT, mainly focusing on two critical issues in FMT reconstructions: improving the accuracy of solving the forward physical model and mitigating the ill-posed nature of the inverse problem from a methodological point of view. More importantly, numerous impressive and practical strategies and methods for improving the quality of FMT reconstruction are summarized. Notably, deep learning methods are discussed in detail to illustrate their advantages in promoting the imaging performance of FMT thanks to large datasets, the emergence of optimized algorithms and the application of innovative networks.Main results.The results demonstrate that the imaging quality of FMT can be effectively promoted by improving the accuracy of optical parameter modeling, combined with prior knowledge, and reducing dimensionality. In addition, the traditional regularization-based methods and deep neural network-based methods, especially end-to-end deep networks, can enormously alleviate the ill-posedness of the inverse problem and improve the quality of FMT image reconstruction.Significance.This review aims to illustrate a variety of effective and practical methods for the reconstruction of FMT images that may benefit future research. Furthermore, it may provide some valuable research ideas and directions for FMT in the future, and could promote, to a certain extent, the development of FMT and other methods of optical tomography.

Keywords: deep learning; fluorescence tomography; forward and inverse problem; ill-posedness; reconstruction method.

Publication types

  • Review
  • Research Support, Non-U.S. Gov't

MeSH terms

  • Algorithms
  • Fluorescence
  • Image Processing, Computer-Assisted* / methods
  • Molecular Imaging / methods
  • Neural Networks, Computer
  • Phantoms, Imaging
  • Tomography / methods
  • Tomography, Optical*
  • Tomography, X-Ray Computed