Poster + Paper
3 April 2024 An unsupervised workflow for explainable biomarker identification based on multiplex data
Tillmann Falck, Harald Hessel, Florian Song, Markus Schick, Corina Cotoi, Nicolas Brieu
Author Affiliations +
Conference Poster
Abstract
Discovery of explainable biomarkers is a complex process which is typically driven by a-priori hypothesis and expert annotations. This contribution introduces an almost entirely annotation and hypothesis free workflow to discover predictive biomarkers derived from cell phenotypes. It relies on self-supervised learning, clustering and survival analysis of cell centric image patches. The workflow is successfully evaluated on mIF images of 2L+ mNSCLC samples from a clinical study (NCT01693562). Two potential biomarkers are identified that closely align with the known relevant biology.
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Tillmann Falck, Harald Hessel, Florian Song, Markus Schick, Corina Cotoi, and Nicolas Brieu "An unsupervised workflow for explainable biomarker identification based on multiplex data", Proc. SPIE 12933, Medical Imaging 2024: Digital and Computational Pathology, 1293316 (3 April 2024); https://doi.org/10.1117/12.2692908
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KEYWORDS
Machine learning

Cell phenotyping

Multiplexing

Artificial intelligence

Deep learning

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