CVMay 5, 2025

Completing Spatial Transcriptomics Data for Gene Expression Prediction Benchmarking

arXiv:2505.02980v23 citationsh-index: 2Medical Image Anal.
Originality Incremental advance
AI Analysis

This provides a standardized benchmark for researchers working on Spatial Transcriptomics, though it is incremental in improving evaluation consistency.

The researchers tackled the problem of inconsistent evaluation in gene expression prediction from histology images by creating SpaRED, a standardized database of 26 public datasets, and SpaCKLE, a transformer-based model that reduces mean squared error by over 82.5% compared to existing approaches.

Spatial Transcriptomics is a groundbreaking technology that integrates histology images with spatially resolved gene expression profiles. Among the various Spatial Transcriptomics techniques available, Visium has emerged as the most widely adopted. However, its accessibility is limited by high costs, the need for specialized expertise, and slow clinical integration. Additionally, gene capture inefficiencies lead to significant dropout, corrupting acquired data. To address these challenges, the deep learning community has explored the gene expression prediction task directly from histology images. Yet, inconsistencies in datasets, preprocessing, and training protocols hinder fair comparisons between models. To bridge this gap, we introduce SpaRED, a systematically curated database comprising 26 public datasets, providing a standardized resource for model evaluation. We further propose SpaCKLE, a state-of-the-art transformer-based gene expression completion model that reduces mean squared error by over 82.5% compared to existing approaches. Finally, we establish the SpaRED benchmark, evaluating eight state-of-the-art prediction models on both raw and SpaCKLE-completed data, demonstrating SpaCKLE substantially improves the results across all the gene expression prediction models. Altogether, our contributions constitute the most comprehensive benchmark of gene expression prediction from histology images to date and a stepping stone for future research on Spatial Transcriptomics.

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