Back

Physics-informed self-supervised learning enables spectra-free multiplexed imaging on standard fluorescence microscopes

Xia, J.; Yan, J.; Tang, M.; Zhao, B.; Chen, K.

2026-04-30 biophysics
10.64898/2026.04.27.721244 bioRxiv
Show abstract

Multiplexed fluorescence imaging is limited by spectral overlap and the small number of excitation or emission channels available on standard microscopes, restricting most laboratories to low-plex imaging. Here we introduce physics-informed spectra-free multiplexed imaging (PhySMI), a self-supervised framework for underdetermined spectral unmixing that enables highly multiplexed imaging without dense spectral measurements after training. By embedding the spectral forward-mixing process into a self-consistent architecture, PhySMI recovers physically plausible source decompositions from unlabeled data without paired ground-truth labels while suppressing stochastic acquisition noise. PhySMI resolves five subcellular structures from only three excitation channels, overcoming the conventional channel-number limit while preserving spectral fidelity and minimizing crosstalk (<0.5%). The framework also generalizes across imaging systems, enabling zero-shot deployment on standard fluorescence microscopes. In live cells, PhySMI enables fast five-color imaging of dynamic multi-organelle interactions with improved temporal resolution and reduced photobleaching and phototoxicity relative to conventional spectral imaging. These results establish a general strategy for physics-informed learning in underdetermined imaging inverse problems and represent a step toward a general-purpose framework for highly multiplexed fluorescence imaging on standard microscopy platforms.

Matching journals

The top 2 journals account for 50% of the predicted probability mass.

1
Nature Methods
336 papers in training set
Top 0.1%
42.6%
2
Nature Communications
4913 papers in training set
Top 13%
13.4%
50% of probability mass above
3
ACS Photonics
13 papers in training set
Top 0.1%
3.9%
4
Proceedings of the National Academy of Sciences
2130 papers in training set
Top 19%
3.9%
5
Science
429 papers in training set
Top 10%
3.1%
6
Advanced Science
249 papers in training set
Top 9%
2.0%
7
Optica
25 papers in training set
Top 0.4%
2.0%
8
ACS Nano
99 papers in training set
Top 2%
1.9%
9
Nature Biotechnology
147 papers in training set
Top 4%
1.8%
10
Cell Systems
167 papers in training set
Top 8%
1.6%
11
Communications Biology
886 papers in training set
Top 12%
1.4%
12
PLOS ONE
4510 papers in training set
Top 58%
1.3%
13
Science Advances
1098 papers in training set
Top 22%
1.3%
14
Nature
575 papers in training set
Top 14%
1.0%
15
Nature Biomedical Engineering
42 papers in training set
Top 1%
1.0%
16
Biophysical Journal
545 papers in training set
Top 4%
1.0%
17
Light: Science & Applications
16 papers in training set
Top 0.5%
1.0%
18
Cell
370 papers in training set
Top 16%
0.8%
19
Nature Computational Science
50 papers in training set
Top 1%
0.8%
20
Nucleic Acids Research
1128 papers in training set
Top 16%
0.8%
21
eLife
5422 papers in training set
Top 55%
0.8%
22
Scientific Reports
3102 papers in training set
Top 77%
0.7%
23
Development
440 papers in training set
Top 4%
0.5%
24
Biophysical Reports
36 papers in training set
Top 0.6%
0.5%
25
IUCrJ
29 papers in training set
Top 0.4%
0.5%
26
New Phytologist
309 papers in training set
Top 5%
0.5%
27
Journal of Cell Biology
333 papers in training set
Top 6%
0.5%