Predicting molecular phenotypes from histopathology images: a transcriptome-wide expression-morphology analysis in breast cancer
Yinxi Wang, Kimmo Kartasalo, Masi Valkonen, Christer Larsson, Pekka, Ruusuvuori, Johan Hartman, Mattias Rantalainen

TL;DR
This study demonstrates that deep learning models can predict gene expression profiles, including spatial heterogeneity, directly from histopathology images in breast cancer, enabling scalable molecular phenotyping.
Contribution
First transcriptome-wide analysis linking histopathology image features to gene expression, including spatial intra-tumour variability, validated across datasets.
Findings
52.75% of genes significantly predicted from images
87-90% validation success in internal and external datasets
Spatial expression predictions correlated with transcriptomics data
Abstract
Molecular phenotyping is central in cancer precision medicine, but remains costly and standard methods only provide a tumour average profile. Microscopic morphological patterns observable in histopathology sections from tumours are determined by the underlying molecular phenotype and associated with clinical factors. The relationship between morphology and molecular phenotype has a potential to be exploited for prediction of the molecular phenotype from the morphology visible in histopathology images. We report the first transcriptome-wide Expression-MOrphology (EMO) analysis in breast cancer, where gene-specific models were optimised and validated for prediction of mRNA expression both as a tumour average and in spatially resolved manner. Individual deep convolutional neural networks (CNNs) were optimised to predict the expression of 17,695 genes from hematoxylin and eosin (HE)…
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Taxonomy
TopicsAI in cancer detection · Cell Image Analysis Techniques · Molecular Biology Techniques and Applications
