GeneQuery: A General QA-based Framework for Spatial Gene Expression Predictions from Histology Images
Ying Xiong, Linjing Liu, Yufei Cui, Shangyu Wu, Xue Liu, Antoni B., Chan, Chun Jason Xue

TL;DR
GeneQuery introduces a QA-based framework for predicting spatial gene expression from histology images, enabling better generalization to unseen genes and capturing gene dependencies.
Contribution
It reformulates gene expression prediction as a question-answering task, allowing for flexible, generalizable predictions of both known and unseen genes from histological images.
Findings
Outperforms existing methods on spatial transcriptomics datasets.
Successfully predicts gene expression for unseen genes.
Can analyze tissue structure through gene expression predictions.
Abstract
Gene expression profiling provides profound insights into molecular mechanisms, but its time-consuming and costly nature often presents significant challenges. In contrast, whole-slide hematoxylin and eosin (H&E) stained histological images are readily accessible and allow for detailed examinations of tissue structure and composition at the microscopic level. Recent advancements have utilized these histological images to predict spatially resolved gene expression profiles. However, state-of-the-art works treat gene expression prediction as a multi-output regression problem, where each gene is learned independently with its own weights, failing to capture the shared dependencies and co-expression patterns between genes. Besides, existing works can only predict gene expression values for genes seen during training, limiting their ability to generalize to new, unseen genes. To address…
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Taxonomy
TopicsAI in cancer detection · Cell Image Analysis Techniques · Gene expression and cancer classification
