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Accurate Spatial Gene Expression Prediction by integrating Multi-resolution features

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Recent advancements in Spatial Transcriptomics (ST) technology have facilitated detailed gene expression analysis within tissue contexts. However, the high costs and methodological limitations of ST necessitate a more robust predictive model. In response, this paper introduces TRIPLEX, a novel deep learning framework designed to predict spatial gene expression from Whole Slide Images (WSIs). TRIPLEX uniquely harnesses multi-resolution features, capturing cellular morphology at individual spots, the local context around these spots, and the global tissue organization. By integrating these features through an effective fusion strategy, TRIPLEX achieves accurate gene expression prediction. Our comprehensive benchmark study, conducted on three public ST datasets and supplemented with Visium data from 10X Genomics, demonstrates that TRIPLEX outperforms current state-of-the-art models in Mean Squared Error (MSE), Mean Absolute Error (MAE), and Pearson Correlation Coefficient (PCC). The model's predictions align closely with ground truth gene expression profiles and tumor annotations, underscoring TRIPLEX's potential in advancing cancer diagnosis and treatment.

Youngmin Chung, Ji Hun Ha, Kyeong Chan Im, Joo Sang Lee• 2024

Related benchmarks

TaskDatasetResultRank
gene expression predictionPSC
MSE0.338
16
gene expression predictionHER2+
MSE1.073
16
gene expression predictionHHK
MSE1.372
16
gene expression predictionKidney
MSE0.7168
8
Spatial gene expression predictionST-Net (cross-validation)
MSE0.1472
8
Spatial gene expression predictionSCC (cross-validation)
MSE0.4891
8
gene expression predictionHER2
MSE0.9356
8
gene expression predictionBreast cancer
MSE0.6672
8
Spatial gene expression predictionHer2ST (cross-validation)
MSE0.8982
8
Spatially resolved gene expression predictionSkin
MSE0.268
7
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