High-Resolution Spatial Transcriptomics from Histology Images using HisToSGE
Spatial transcriptomics (ST) is a groundbreaking genomic technology that enables spatial localization analysis of gene expression within tissue sections. However, it is significantly limited by high costs and sparse spatial resolution. An alternative, more cost-effective strategy is to use deep lear...
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Zusammenfassung: | Spatial transcriptomics (ST) is a groundbreaking genomic technology that
enables spatial localization analysis of gene expression within tissue
sections. However, it is significantly limited by high costs and sparse spatial
resolution. An alternative, more cost-effective strategy is to use deep
learning methods to predict high-density gene expression profiles from
histological images. However, existing methods struggle to capture rich image
features effectively or rely on low-dimensional positional coordinates, making
it difficult to accurately predict high-resolution gene expression profiles. To
address these limitations, we developed HisToSGE, a method that employs a
Pathology Image Large Model (PILM) to extract rich image features from
histological images and utilizes a feature learning module to robustly generate
high-resolution gene expression profiles. We evaluated HisToSGE on four ST
datasets, comparing its performance with five state-of-the-art baseline
methods. The results demonstrate that HisToSGE excels in generating
high-resolution gene expression profiles and performing downstream tasks such
as spatial domain identification. All code and public datasets used in this
paper are available at https://github.com/wenwenmin/HisToSGE and
https://zenodo.org/records/12792163. |
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DOI: | 10.48550/arxiv.2407.20518 |