3-D Image-to-Image Fusion in Lightsheet Microscopy by Two-Step Adversarial Network: Contribution to the FuseMyCells Challenge
Journal:
arXiv
Published Date:
Mar 20, 2025
Abstract
Lightsheet microscopy is a powerful 3-D imaging technique that addresses
limitations of traditional optical and confocal microscopy but suffers from a
low penetration depth and reduced image quality at greater depths. Multiview
lightsheet microscopy improves 3-D resolution by combining multiple views but
simultaneously increasing the complexity and the photon budget, leading to
potential photobleaching and phototoxicity. The FuseMyCells challenge,
organized in conjunction with the IEEE ISBI 2025 conference, aims to benchmark
deep learning-based solutions for fusing high-quality 3-D volumes from single
3-D views, potentially simplifying procedures and conserving the photon budget.
In this work, we propose a contribution to the FuseMyCells challenge based on a
two-step procedure. The first step processes a downsampled version of the image
to capture the entire region of interest, while the second step uses a
patch-based approach for high-resolution inference, incorporating adversarial
loss to enhance visual outcomes. This method addresses challenges related to
high data resolution, the necessity of global context, and the preservation of
high-frequency details. Experimental results demonstrate the effectiveness of
our approach, highlighting its potential to improve 3-D image fusion quality
and extend the capabilities of lightsheet microscopy. The average SSIM for the
nucleus and membranes is greater than 0.85 and 0.91, respectively.