English

Fluorescence Diffraction Tomography using Explicit Neural Fields

Optics 2024-08-20 v2 Image and Video Processing

Abstract

Simultaneous imaging of fluorescence-labeled and label-free phase objects in the same sample provides distinct and complementary information. Most multimodal fluorescence-phase imaging operates in transmission mode, capturing fluorescence images and phase images separately or sequentially, which limits their practical application in vivo. Here, we develop fluorescence diffraction tomography (FDT) with explicit neural fields to reconstruct the 3D refractive index (RI) of phase objects from diffracted fluorescence images captured in reflection mode. The successful reconstruction of 3D RI using FDT relies on four key components: a coarse-to-fine structure, self-calibration, a differential multi-slice rendering model, and partially coherent masks. The explicit representation integrates with the coarse-to-fine structure for high-speed, high-resolution reconstruction, while the differential multi-slice rendering model enables self-calibration of fluorescence illumination, ensuring accurate forward image prediction and RI reconstruction. Partially coherent masks efficiently resolve discrepancies between the coherent light model and partially coherent light data. FDT successfully reconstructs the RI of 3D cultured label-free bovine myotubes in a 530 ×\times 530 ×\times 300 μm3\mu m^3 volume at 1024 ×\times 1024 pixels across 24 zz-layers from fluorescence images, demonstrating high resolution and high accuracy 3D RI reconstruction of bulky and heterogeneous biological samples in vitro.

Keywords

Cite

@article{arxiv.2407.16657,
  title  = {Fluorescence Diffraction Tomography using Explicit Neural Fields},
  author = {Renzhi He and Yucheng Li and Junjie Chen and Yi Xue},
  journal= {arXiv preprint arXiv:2407.16657},
  year   = {2024}
}
R2 v1 2026-06-28T17:51:10.326Z