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M2OST: Many-to-one Regression for Predicting Spatial Transcriptomics from Digital Pathology Images

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The advancement of Spatial Transcriptomics (ST) has facilitated the spatially-aware profiling of gene expressions based on histopathology images. Although ST data offers valuable insights into the micro-environment of tumors, its acquisition cost remains expensive. Therefore, directly predicting the ST expressions from digital pathology images is desired. Current methods usually adopt existing regression backbones along with patch-sampling for this task, which ignores the inherent multi-scale information embedded in the pyramidal data structure of digital pathology images, and wastes the inter-spot visual information crucial for accurate gene expression prediction. To address these limitations, we propose M2OST, a many-to-one regression Transformer that can accommodate the hierarchical structure of the pathology images via a decoupled multi-scale feature extractor. Unlike traditional models that are trained with one-to-one image-label pairs, M2OST uses multiple images from different levels of the digital pathology image to jointly predict the gene expressions in their common corresponding spot. Built upon our many-to-one scheme, M2OST can be easily scaled to fit different numbers of inputs, and its network structure inherently incorporates nearby inter-spot features, enhancing regression performance. We have tested M2OST on three public ST datasets and the experimental results show that M2OST can achieve state-of-the-art performance with fewer parameters and floating-point operations (FLOPs).

Hongyi Wang, Xiuju Du, Jing Liu, Shuyi Ouyang, Yen-Wei Chen, Lanfen Lin• 2024

Related benchmarks

TaskDatasetResultRank
Spatial gene expression predictionAlex
PCC15.13
10
Spatial gene expression predictionLymph Node
PCC30.97
10
Spatial gene expression predictionPancreas 1
PCC15.12
10
Spatial gene expression predictionPancreas 2
PCC (%)38.35
10
Spatial gene expression predictioncSCC
PCC24.88
10
Spatial gene expression predictionHER2+
PCC18.24
10
Spatial gene expression predictionVisium BC
PCC (%)6.52
10
Spatial Transcriptomics PredictionPRAD Hest-1k
PCC Overall0.515
6
Spatial Transcriptomics PredictionBRCA Hest-1k
PCC (overall)0.558
6
Spatial Transcriptomics PredictionCOAD Hest-1k
PCC Overall0.514
6
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