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2020 | OriginalPaper | Chapter

Channel Embedding for Informative Protein Identification from Highly Multiplexed Images

Authors : Salma Abdel Magid, Won-Dong Jang, Denis Schapiro, Donglai Wei, James Tompkin, Peter K. Sorger, Hanspeter Pfister

Published in: Medical Image Computing and Computer Assisted Intervention – MICCAI 2020

Publisher: Springer International Publishing

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Abstract

Interest is growing rapidly in using deep learning to classify biomedical images, and interpreting these deep-learned models is necessary for life-critical decisions and scientific discovery. Effective interpretation techniques accelerate biomarker discovery and provide new insights into the etiology, diagnosis, and treatment of disease. Most interpretation techniques aim to discover spatially-salient regions within images, but few techniques consider imagery with multiple channels of information. For instance, highly multiplexed tumor and tissue images have 30–100 channels and require interpretation methods that work across many channels to provide deep molecular insights. We propose a novel channel embedding method that extracts features from each channel. We then use these features to train a classifier for prediction. Using this channel embedding, we apply an interpretation method to rank the most discriminative channels. To validate our approach, we conduct an ablation study on a synthetic dataset. Moreover, we demonstrate that our method aligns with biological findings on highly multiplexed images of breast cancer cells while outperforming baseline pipelines. Code is available at https://​sabdelmagid.​github.​io/​miccai2020-project/​.

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Appendix
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Metadata
Title
Channel Embedding for Informative Protein Identification from Highly Multiplexed Images
Authors
Salma Abdel Magid
Won-Dong Jang
Denis Schapiro
Donglai Wei
James Tompkin
Peter K. Sorger
Hanspeter Pfister
Copyright Year
2020
DOI
https://doi.org/10.1007/978-3-030-59722-1_1

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