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Spatially Resolved Gene Expression Prediction from H&E Histology Images via Bi-modal Contrastive Learning

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Histology imaging is an important tool in medical diagnosis and research, enabling the examination of tissue structure and composition at the microscopic level. Understanding the underlying molecular mechanisms of tissue architecture is critical in uncovering disease mechanisms and developing effective treatments. Gene expression profiling provides insight into the molecular processes underlying tissue architecture, but the process can be time-consuming and expensive. We present BLEEP (Bi-modaL Embedding for Expression Prediction), a bi-modal embedding framework capable of generating spatially resolved gene expression profiles of whole-slide Hematoxylin and eosin (H&E) stained histology images. BLEEP uses contrastive learning to construct a low-dimensional joint embedding space from a reference dataset using paired image and expression profiles at micrometer resolution. With this approach, the gene expression of any query image patch can be imputed using the expression profiles from the reference dataset. We demonstrate BLEEP's effectiveness in gene expression prediction by benchmarking its performance on a human liver tissue dataset captured using the 10x Visium platform, where it achieves significant improvements over existing methods. Our results demonstrate the potential of BLEEP to provide insights into the molecular mechanisms underlying tissue architecture, with important implications in diagnosis and research of various diseases. The proposed approach can significantly reduce the time and cost associated with gene expression profiling, opening up new avenues for high-throughput analysis of histology images for both research and clinical applications.

Ronald Xie, Kuan Pang, Sai W. Chung, Catia T. Perciani, Sonya A. MacParland, Bo Wang, Gary D. Bader• 2023

Related benchmarks

TaskDatasetResultRank
gene expression predictionHHK
MSE1.338
16
gene expression predictionHER2+
MSE1.002
16
gene expression predictionPSC
MSE0.366
16
gene expression predictionBreast cancer
MSE0.6266
8
Spatial gene expression predictionHer2ST (cross-validation)
MSE0.7426
8
Spatial gene expression predictionSCC (cross-validation)
MSE0.6079
8
gene expression predictionHER2
MSE0.9507
8
gene expression predictionKidney
MSE0.8246
8
Spatial gene expression predictionST-Net (cross-validation)
MSE0.3756
8
Spatially resolved gene expression predictionSTNet dataset
MSE0.235
7
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