Skip to Content
Merck
CN
  • Deep learning enables stochastic optical reconstruction microscopy-like superresolution image reconstruction from conventional microscopy.

Deep learning enables stochastic optical reconstruction microscopy-like superresolution image reconstruction from conventional microscopy.

iScience (2023-10-23)
Lei Xu, Shichao Kan, Xiying Yu, Ye Liu, Yuxia Fu, Yiqiang Peng, Yanhui Liang, Yigang Cen, Changjun Zhu, Wei Jiang
ABSTRACT

Despite its remarkable potential for transforming low-resolution images, deep learning faces significant challenges in achieving high-quality superresolution microscopy imaging from wide-field (conventional) microscopy. Here, we present X-Microscopy, a computational tool comprising two deep learning subnets, UR-Net-8 and X-Net, which enables STORM-like superresolution microscopy image reconstruction from wide-field images with input-size flexibility. X-Microscopy was trained using samples of various subcellular structures, including cytoskeletal filaments, dot-like, beehive-like, and nanocluster-like structures, to generate prediction models capable of producing images of comparable quality to STORM-like images. In addition to enabling multicolour superresolution image reconstructions, X-Microscopy also facilitates superresolution image reconstruction from different conventional microscopic systems. The capabilities of X-Microscopy offer promising prospects for making superresolution microscopy accessible to a broader range of users, going beyond the confines of well-equipped laboratories.

MATERIALS
Product Number
Brand
Product Description

Sigma-Aldrich
Anti-Mouse IgG (whole molecule)−Atto 488 antibody produced in goat, ~1 mg/mL
Sigma-Aldrich
Methanol, suitable for HPLC, ≥99.9%
Sigma-Aldrich
Monoclonal Anti-α-Tubulin antibody produced in mouse, ascites fluid, clone B-5-1-2
Sigma-Aldrich
Anti-Tubulin Antibody, clone YL1/2, clone YL1/2, Chemicon®, from rat