| Literature DB >> 33542220 |
Ahmet F Coskun1,2,3, Guojun Han4, Shambavi Ganesh5,6, Shih-Yu Chen4, Xavier Rovira Clavé4, Stefan Harmsen7,8, Sizun Jiang4, Christian M Schürch4,9, Yunhao Bai10, Chuck Hitzman11, Garry P Nolan12.
Abstract
Multiplexed ion beam imaging (MIBI) has been previously used to profile multiple parameters in two dimensions in single cells within tissue slices. Here, a mathematical and technical framework for three-dimensional (3D) subcellular MIBI is presented. Ion-beam tomography (IBT) compiles ion beam images that are acquired iteratively across successive, multiple scans, and later assembled into a 3D format without loss of depth resolution. Algorithmic deconvolution, tailored for ion beams, is then applied to the transformed ion image series, yielding 4-fold enhanced ion beam data cubes. To further generate 3D sub-ion-beam-width precision visuals, isolated ion molecules are localized in the raw ion beam images, creating an approach coined as SILM, secondary ion beam localization microscopy, providing sub-25 nm accuracy in original ion images. Using deep learning, a parameter-free reconstruction method for ion beam tomograms with high accuracy is developed for low-density targets. In cultured cancer cells and tissues, IBT enables accessible visualization of 3D volumetric distributions of genomic regions, RNA transcripts, and protein factors with 5 nm axial resolution using isotope-enrichments and label-free elemental analyses. Multiparameter imaging of subcellular features at near macromolecular resolution is implemented by the IBT tools as a general biocomputation pipeline for imaging mass spectrometry.Entities:
Year: 2021 PMID: 33542220 PMCID: PMC7862654 DOI: 10.1038/s41467-020-20753-5
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919