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Cross-linking breast tumor transcriptomic states and tissue histology

Muhammad Dawood, Mark Eastwood, Mostafa Jahanifar, Lawrence S. Young, Asa Ben‐Hur, Kim Branson, J. Louise Jones, Nasir Rajpoot, Fayyaz Minhas

2023Cell Reports Medicine12 citationsDOIOpen Access PDF

Abstract

Identification of the gene expression state of a cancer patient from routine pathology imaging and characterization of its phenotypic effects have significant clinical and therapeutic implications. However, prediction of expression of individual genes from whole slide images (WSIs) is challenging due to co-dependent or correlated expression of multiple genes. Here, we use a purely data-driven approach to first identify groups of genes with co-dependent expression and then predict their status from WSIs using a bespoke graph neural network. These gene groups allow us to capture the gene expression state of a patient with a small number of binary variables that are biologically meaningful and carry histopathological insights for clinical and therapeutic use cases. Prediction of gene expression state based on these gene groups allows associating histological phenotypes (cellular composition, mitotic counts, grading, etc.) with underlying gene expression patterns and opens avenues for gaining biological insights from routine pathology imaging directly.

Topics & Concepts

PhenotypeGene expressionGeneGene expression profilingComputational biologyBiologyTranscriptomeGene regulatory networkGrading (engineering)PathologyGeneticsMedicineEcologyAI in cancer detectionGene expression and cancer classificationCell Image Analysis Techniques
Cross-linking breast tumor transcriptomic states and tissue histology | Litcius