Computational multiplex panel reduction to maximize information retention in breast cancer tissue microarrays
TL;DR: In this article , the authors examined several panel selection approaches and evaluated them based on their ability to reconstruct the full panel images and information within breast cancer tissue microarray datasets using cyclic immunofluorescence as a proof of concept.
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Abstract: Recent state-of-the-art multiplex imaging techniques have expanded the depth of information that can be captured within a single tissue sample by allowing for panels with dozens of markers. Despite this increase in capacity, space on the panel is still limited due to technical artifacts, tissue loss, and long imaging acquisition time. As such, selecting which markers to include on a panel is important, since removing important markers will result in a loss of biologically relevant information, but identifying redundant markers will provide a room for other markers. To address this, we propose computational approaches to determine the amount of shared information between markers and select an optimally reduced panel that captures maximum amount of information with the fewest markers. Here we examine several panel selection approaches and evaluate them based on their ability to reconstruct the full panel images and information within breast cancer tissue microarray datasets using cyclic immunofluorescence as a proof of concept. We show that all methods perform adequately and can re-capture cell types using only 18 of 25 markers (72% of the original panel size). The correlation-based selection methods achieved the best single-cell marker mean intensity predictions with a Spearman correlation of 0.90 with the reduced panel. Using the proposed methods shown here, it is possible for researchers to design more efficient multiplex imaging panels that maximize the amount of information retained with the limited number of markers with respect to certain evaluation metrics and architecture biases.
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Citations
3D multiplexed tissue imaging reconstruction and optimized region of interest (ROI) selection through deep learning model of channels embedding
Erik A. Burlingame,Luke Ternes,Jia-Ren Lin,Yu-An Chen,Eun Na Kim,Joe W. Gray,Young Hwan Chang +6 more
TL;DR: Generative modeling enables a 3D virtual CyCIF reconstruction of a colorectal cancer specimen given a small subset of the imaging data at training time and is demonstrated to be a simple convex optimization for objective ROI selection.
7
Dual-modality imaging of immunofluorescence and imaging mass cytometry for whole-slide imaging and accurate segmentation
Eun Na Kim,Phyllis Zixuan Chen,Dario Bressan,Monika Tripathi,Ahmad Miremadi,Massimiliano di Pietro,Lisa M. Coussens,Gregory J. Hannon,Rebecca C. Fitzgerald,Lizhe Zhuang,Young Hwan Chang +10 more
TL;DR: A highly practical dual-modality imaging method that combines high-resolution immunofluorescence (IF) and high-dimensional IMC on the same tissue slide is reported, applied in esophageal adenocarcinoma of different stages, and demonstrated the advantage of the dual- modality imaging strategy.
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MIM-CyCIF: masked imaging modeling for enhancing cyclic immunofluorescence (CyCIF) with panel reduction and imputation
Z. R. Sims,Gordon B. Mills,Young Hwan Chang +2 more
TL;DR: A computational panel reduction approach that can impute the information content from 25 markers using only 9 markers using only 9 markers is proposed, learning co-expression and morphological patterns while concurrently increasing speed and panel content and decreasing cost.
3
A Masked Image Modeling Approach to Cyclic Immunofluorescence (CyCIF) Panel Reduction and Marker Imputation
Z. R. Sims,Young Hwan Chang +1 more
TL;DR: In this paper , the authors developed a computational model that imputes a surrogate in silico high-plex CyCIF from only a few experimentally measured biomarkers by learning co-expression and morphological patterns at the single-cell level.
Dual-modality imaging of immunofluorescence and imaging mass cytometry for whole slide imaging with accurate single-cell segmentation
Eun Na Kim,Phyllis Zixuan Chen,Dario Bressan,Monika Tripathi,Ahmad Miremadi,Massimiliano di Pietro,Lisa M. Coussens,Gregory J. Hannon,Rebecca C. Fitzgerald,Lizhe Zhuang,Young Hwan Chang +10 more
TL;DR: In this article , a dual-modality imaging method that combines high-resolution immunofluorescence (IF) and high-dimensional IMC on the same tissue slide is presented.
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