Deep learning-based aberration compensation improves contrast and resolution in fluorescence microscopy [preprint]
Guo, Min ; Wu, Yicong ; Su, Yijun ; Qian, Shuhao ; Krueger, Eric ; Christensen, Ryan ; Kroeschell, Grant ; Bui, Johnny ; Chaw, Matthew ; Zhang, Lixia ... show 10 more
Citations
Authors
Wu, Yicong
Su, Yijun
Qian, Shuhao
Krueger, Eric
Christensen, Ryan
Kroeschell, Grant
Bui, Johnny
Chaw, Matthew
Zhang, Lixia
Liu, Jiamin
Hou, Xuekai
Han, Xiaofei
Ma, Xuefei
Zhovmer, Alexander
Combs, Christian
Moyle, Mark
Yemini, Eviatar
Liu, Huafeng
Liu, Zhiyi
La Riviere, Patrick
Colón-Ramos, Daniel
Shroff, Hari
Student Authors
Faculty Advisor
Academic Program
UMass Chan Affiliations
Document Type
Publication Date
Subject Area
Collections
Files
Embargo Expiration Date
Link to Full Text
Abstract
Optical aberrations hinder fluorescence microscopy of thick samples, reducing image signal, contrast, and resolution. Here we introduce a deep learning-based strategy for aberration compensation, improving image quality without slowing image acquisition, applying additional dose, or introducing more optics into the imaging path. Our method (i) introduces synthetic aberrations to images acquired on the shallow side of image stacks, making them resemble those acquired deeper into the volume and (ii) trains neural networks to reverse the effect of these aberrations. We use simulations to show that applying the trained 'de-aberration' networks outperforms alternative methods, and subsequently apply the networks to diverse datasets captured with confocal, light-sheet, multi-photon, and super-resolution microscopy. In all cases, the improved quality of the restored data facilitates qualitative image inspection and improves downstream image quantitation, including orientational analysis of blood vessels in mouse tissue and improved membrane and nuclear segmentation in C. elegans embryos.
Source
Guo M, Wu Y, Su Y, Qian S, Krueger E, Christensen R, Kroeschell G, Bui J, Chaw M, Zhang L, Liu J, Hou X, Han X, Ma X, Zhovmer A, Combs C, Moyle M, Yemini E, Liu H, Liu Z, La Riviere P, Colón-Ramos D, Shroff H. Deep learning-based aberration compensation improves contrast and resolution in fluorescence microscopy. bioRxiv [Preprint]. 2023 Oct 24:2023.10.15.562439. doi: 10.1101/2023.10.15.562439. PMID: 37986950; PMCID: PMC10659418.
Year of Medical School at Time of Visit
Sponsors
Dates of Travel
DOI
Permanent Link to this Item
PubMed ID
Other Identifiers
Notes
This article is a preprint. Preprints are preliminary reports of work that have not been certified by peer review. The PDF available for download is Version 2. The complete version history of this preprint is available at bioRxiv, https://doi.org/10.1101/2023.10.15.562439.