4.7 Article

Spatial transcriptomics prediction from histology jointly through Transformer and graph neural networks

Journal

BRIEFINGS IN BIOINFORMATICS
Volume 23, Issue 5, Pages -

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/bib/bbac297

Keywords

spatial transcriptomics; histology image; Transformer; graph neural networks; convolutional neural networks; self-distillation mechanism

Funding

  1. National Key R&D Program of China [2020YFB0204803]
  2. National Natural Science Foundation of China [12126610]
  3. Guang dong Key Field RD Plan [2019B020228001, 2018B010109006]
  4. Guangzhou ST Research Plan [202007030010]
  5. Introducing Innovative and Entrepreneurial Teams [2016ZT06D211]

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The rapid development of spatial transcriptomics enables the prediction of gene expression from histology images. Hist2ST, a deep learning-based model, is developed to predict RNA-seq expression by capturing the relationships between 2D vision features and the spatial dependency between spots. Comprehensive tests show that Hist2ST outperforms existing methods in gene expression prediction and spatial region identification.
The rapid development of spatial transcriptomics allows the measurement of RNA abundance at a high spatial resolution, making it possible to simultaneously profile gene expression, spatial locations of cells or spots, and the corresponding hematoxylin and eosin-stained histology images. It turns promising to predict gene expression from histology images that are relatively easy and cheap to obtain. For this purpose, several methods are devised, but they have not fully captured the internal relations of the 2D vision features or spatial dependency between spots. Here, we developed Hist2ST, a deep learning-based model to predict RNA-seq expression from histology images. Around each sequenced spot, the corresponding histology image is cropped into an image patch and fed into a convolutional module to extract 2D vision features. Meanwhile, the spatial relations with the whole image and neighbored patches are captured through Transformer and graph neural network modules, respectively. These learned features are then used to predict the gene expression by following the zero-inflated negative binomial distribution. To alleviate the impact by the small spatial transcriptomics data, a self-distillation mechanism is employed for efficient learning of the model. By comprehensive tests on cancer and normal datasets, Hist2ST was shown to outperform existing methods in terms of both gene expression prediction and spatial region identification. Further pathway analyses indicated that our model could reserve biological information. Thus, Hist2ST enables generating spatial transcriptomics data from histology images for elucidating molecular signatures of tissues.

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