Highly multiplexed immunofluorescence images and single-cell data of immune markers in tonsil and lung cancer

扁桃体和肺癌中免疫标志物的高通量免疫荧光图像和单细胞数据

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作者:Rumana Rashid ,Giorgio Gaglia ,Yu-An Chen,Jia-Ren Lin,Ziming Du ,Zoltan Maliga,Denis Schapiro,Clarence Yapp,Jeremy Muhlich,Artem Sokolov,Peter Sorger ,Sandro Santagata

Abstract

In this data descriptor, we document a dataset of multiplexed immunofluorescence images and derived single-cell measurements of immune lineage and other markers in formaldehyde-fixed and paraffin-embedded (FFPE) human tonsil and lung cancer tissue. We used tissue cyclic immunofluorescence (t-CyCIF) to generate fluorescence images which we artifact corrected using the BaSiC tool, stitched and registered using the ASHLAR algorithm, and segmented using ilastik software and MATLAB. We extracted single-cell features from these images using HistoCAT software. The resulting dataset can be visualized using image browsers and analyzed using high-dimensional, single-cell methods. This dataset is a valuable resource for biological discovery of the immune system in normal and diseased states as well as for the development of multiplexed image analysis and viewing tools.

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