Litcius/Paper detail

SpiDe-Sr: blind super-resolution network for precise cell segmentation and clustering in spatial proteomics imaging

Rui Chen, Jiasu Xu, Boqian Wang, Yi Ding, Aynur Abdulla, Yiyang Li, Lai Jiang, Xianting Ding

2024Nature Communications19 citationsDOIOpen Access PDF

Abstract

Spatial proteomics elucidates cellular biochemical changes with unprecedented topological level. Imaging mass cytometry (IMC) is a high-dimensional single-cell resolution platform for targeted spatial proteomics. However, the precision of subsequent clinical analysis is constrained by imaging noise and resolution. Here, we propose SpiDe-Sr, a super-resolution network embedded with a denoising module for IMC spatial resolution enhancement. SpiDe-Sr effectively resists noise and improves resolution by 4 times. We demonstrate SpiDe-Sr respectively with cells, mouse and human tissues, resulting 18.95%/27.27%/21.16% increase in peak signal-to-noise ratio and 15.95%/31.63%/15.52% increase in cell extraction accuracy. We further apply SpiDe-Sr to study the tumor microenvironment of a 20-patient clinical breast cancer cohort with 269,556 single cells, and discover the invasion of Gram-negative bacteria is positively correlated with carcinogenesis markers and negatively correlated with immunological markers. Additionally, SpiDe-Sr is also compatible with fluorescence microscopy imaging, suggesting SpiDe-Sr an alternative tool for microscopy image super-resolution.

Topics & Concepts

ProteomicsMicroscopyResolution (logic)Image resolutionFluorescence microscopeComputational biologyBiologyPathologyComputer scienceArtificial intelligencePhysicsMedicineFluorescenceOpticsBiochemistryGeneCell Image Analysis TechniquesImage Processing Techniques and ApplicationsAdvanced Fluorescence Microscopy Techniques
SpiDe-Sr: blind super-resolution network for precise cell segmentation and clustering in spatial proteomics imaging | Litcius