Affiliation:
1. Department of Pathology and Molecular Pathology, Computational and Translational Pathology Laboratory (CTP), University Hospital of Zurich, University of Zurich , Zurich, Switzerland
Abstract
Abstract
Motivation
Generative Adversarial Nets (GAN) achieve impressive performance for text-guided editing of natural images. However, a comparable utility of GAN remains understudied for spatial transcriptomics (ST) technologies with matched gene expression and biomedical image data.
Results
We propose In Silico Spatial Transcriptomic editing that enables gene expression-guided editing of immunofluorescence images. Using cell-level spatial transcriptomics data extracted from normal and tumor tissue slides, we train the approach under the framework of GAN (Inversion). To simulate cellular state transitions, we then feed edited gene expression levels to trained models. Compared to normal cellular images (ground truth), we successfully model the transition from tumor to normal tissue samples, as measured with quantifiable and interpretable cellular features.
Availability and implementation
https://github.com/CTPLab/SST-editing.
Publisher
Oxford University Press (OUP)